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UNIVERSITÀ POLITECNICA DELLE MARCHE FACOLTÀ DI AGRARIA Dipartimento di Scienze Agrarie, Alimentari ed Ambientali Scuola di Dottorato di Ricerca Curriculum Produzioni Vegetali e Ambiente X Ciclo (2009-2011) Selection and analysis of differentially expressed genes in the interaction between Fusarium and Verticillium wilt pathogens and eggplant carrying the Rfo-sa1 resistance locus introgressed from S. aethiopicum. Tutore Prof. Bruno Mezzetti Co-tutore Dott. Giuseppe Leonardo Rotino Dottoranda Dott.ssa Valeria Barbierato Coordinatore del Curriculum Prof. Bruno Mezzetti Direttore della Scuola Prof. Natale Giuseppe Frega Index Chapter 1…………………………………………………………………………………………………...p004 1.1Epplant………………………………………………………………………………………………….p004 1-1.2 Production……………………………………………………………………………………………p005 1-1.3 Features………………………………………………………………………………………………p006 1-1.4 Production method and grafting ………………………………………………………….................p008 1-1.5Genepool …………………………………………………………………………………………..p009 1-2 Eggplant genome ……………………………………………………………………………………...p010 1-3.1 Fusarium oxysporum ………………………………………………………………………………..p011 1-3.2 Epidemilogy and management ……………………………………………………………………...p013 1-4 Verticillium Dahliae …………………………………………………………………………………..p014 1-5 Plant responses to pathogens ……………………………………………………………….................p015 1-5.1 PTI or PAMP-Triggered Immunity …………………………………………………………………p018 1-5.2 ETI or Effectors-Triggered Immunity…………………………………………………….................p018 1-5.3 Resistance (R) proteins………………………………………………………………………………p019 1-5.4 Active Oxygen Species, Lipoxygenases, and Disruption of Cell Membranes ……………………p021 1-5.5 Transduction of Pathogen Signals in Plants……………………………………………… ………..p022 1-5.6 Nitric oxide in signal transduction………………………………………………………..................p023 1-5.7 Salicylic acid in signalling defence response in plants……………………………………………..p023 1-5.8 Jasmonate signalling (JAs) in induction of defence responce………………………………………p024 1-5.9 Ethylene-dependent signalling pathway…………………………………………………………….p024 1-5.10 Abscisic acid signalling……………………………………………………………………………p025 1-5.11 Pathogenesis-related proteins (PRs) ………………………………………………………………p026 Chapter 2 Phenotypical analysis of Rfo-sa1 resistant eggplants interaction with Fusarium oxysporum f. sp. melongenae and/or Verticillium dahliae …………………………..................p029 2-1 Introduction…………………………………………………………………………………………….p029 2-3 Materials and methods…………………………………………………………………………………p030 2-4 Results and Discussion………………………………………………………………………………...p032 Chapter 3 Molecular analyses of Rfo-sa1 resistant eggplant interaction with Fusarium oxysporum f. sp. melongenae and/or Verticillium dahliae……………………………………………………...........................................................................p039 3-1 Introduction…………………………………………………………………………………………….p039 3-2 Materials and methods…………………………………………………………………………………p043 3-2.1-Plant material and growing conditions; Fusarium, Verticillium and mixed inoculations………………………………………………………………………………………………...p043 3-2.2-Functional characterization……………………………………………………………….................p044 3-2.3-SSH validation: qRT-PCR…………………………………………………………………………..p045 2 3-2.4-Microarray ………………………………………………………………………………..................p046 3-2.5-Functional characterization and validation by qRT-PCR……………………………………………p047 3-3 Results………………………………………………………………………………………………….p048 3-3.1-SSH and functional characterization………………………………………………………………...p052 3-3.2-SSH validation: qRT-PCR…………………………………………………………………………...p056 3-3.3-Induction after Fom inoculation: ……………………………………………………………………p057 3-3.4-Induction after Vd inoculation. ……………………………………………………………………...p057 3-3.5-Induction after Fom +Vd inoculation: ………………………………………………………………p060 3-3.6-Genes with an interesting expression profiles……………………………………………………….p060 3-3.7-Microarray and functional classification of the differentially expressed genes…………..................p066 3-3.8-Array validation by qRT-PCR……………………………………………………………………….p070 3-3.9- F3C3 : Fusarium oxysporum f. sp. lycopersici six1 gene, fot5 gene, six2 gene, shh1 gene and ORF2……………………………………………………………………………p071 3-4 Discussion……………………………………………………………………………………………...p073 Chapter 4 Housekeeping gene selection using an external control for qRT-PCR analysis of differentially expressed genes in eggplant roots after three different fungal inoculations…………………………………………………………………….................p079 4-1 Introduction…………………………………………………………………………………………….p079 4-2 Materials and methods…………………………………………………………………………………p082 4-2.1 Plant materials and growth conditions……………………………………………………………….p082 4-2.2 RNA isolation and reverse transcription…………………………………………………..................p082 4-2.3 Primer design ……………………………………………………………………………..................p083 4-2.4 Two step real-time quantitative PCR……………………………………..………………………….p084 4-2.4 Data acquisition……………………………………………………………………………………...p085 4-3 Results and discussion…………………………………………………………………………………p086 4-3.1 Pre-analytical assessment of the panel of candidate genes………………………………..................p087 4-3.2 Evaluation of the expression stability of the External Reference Gene……………………………………………………………………………p088 4-3.3 Evaluation of the relative expression levels of the candidate reference gene with respect to the external control. …………………………………………………………………………………......p088 4-4 Discussion……………………………………………………………………………………………...p092 Refrences…………………………………………………………………………………………………...p097 3 Chapter 1 1-1.1 Eggplant Eggplant (Solanum melongena L. 2n = 2x = 24) is an economically important non tuberous crop belonging to Solanaceae family. The Solanaceae family is one of the plant families most employed in our daily lives that included tomato (Solanum lycopersicum), potato (Solanum tuberosum) and pepper (Capsicum annuum). Eggplant and the closely related Solanum species belonging to the subgenus Leptostemonum are some of the most important vegetable crops in Asia, the Middle and Near East, Southern Europe and Africa (Daunay and Lester, 1988). Solanum melongena L. (known as eggplant in the United States and aubergine in France and 4 England) is one of the few cultivated solanaceous species originating from the Old World. It is assumed to have been first domesticated in South and East Asia (Polignano et al., 2010) and brought to Europe by Arab traders and immigrants around 600 CE (Daunay and Lester, 1988). The scientific name Solanum melongena is derived from an Arabic term of 16th century and used for one variety. 1-1.2 Production Eggplant world production has been grown year by year during the last two decades, and reached 35 million tons in 2009 (FAOSTAT, http://faostat.org). In production terms, eggplant is the third most important solanaceous crop species (after potato and tomato; http://faostat.fao.org), and is cultivated all over the world, but most intensively in China and India(Table 1). About 2.4% of world production in 2009 is sited in Europe, with Italy being the single largest producer. More than 2,043,788 hectares are devoted to the cultivation of eggplant in the world. Country Production (Tonnes) Area harvested (Ha) China 25912524 738797 India 10377600 600300 Egypt 1250000 50000 Turkey 816134 27461 Indonesia 449997 46000 Iraq 396 155 21200 Japan 349 200 10400 Italy 245300 9400 Philippines 200 942 21200 Spain 205000 3500 Table 1. Production (tonnes) and area harvested (Ha) regarding the countries that in 2009 reached the 150000 tonnes of eggplant production (FAOSTAT). 5 1-1.3 Features Germination takes 8–12 days at the optimalm range of temperatures (22– 28°C). The expansion of the cotyledons takes a few days and the first true leaf appears after one week. Depending on the cultivar, the first flowers appear when the plant has developed 5–12 leaves (20–30 cm tall). Vegetative growth and flowering are then continuous: every 2 leavesm developed, a new flower appears on each branch. In temperate climates eggplant is grown as an annual, in tropical climates it is a shortlived perennial (up to 2 years in commercial fields). The eggplant is a shrub that grows up from 20 cm to over 2 m in height, often much-branched, with long taproot; stems and leaves could be with or without prickles. Leaves are alternate, simple, the petiole is 6–10 cm long; the leaf blade may be ovate or ovate-oblong, 3–25 cm × 2–15 cm, the leaf shape could be straight or dentate. Flowers usually are bisexual, regular, the pedicel is 1–3 cm long, but up to 8 cm in fruit; the calyx is campanulate, sometimes whit prickles. The corolla shows a broad range of colours, from white to pink and violet; stamens are inserted near the base of the corolla tube and alternate with corolla lobes, filaments are short and thick, anthers connivent, yellow, opening by terminal pores; the ovary is superior, 2–manycelled, the style should be long, longer or less than stamens, the stigma is green, capitate and lobed ( Fig 1a). Eggplant is autogamous but with a fairly high rate of cross pollination. Pollination occurs mostly by insects (mostly bumble bees or bees such as Exomalopsis), as shown in Fig 1b) 6 Fig 1 a:. Bumble bee during flower pollination; b: Eggplant flowers Fig. 2 a and b : Eggplant fruits The fruit is a globose or snake-shaped, furrowed or smooth berry, 2–35 cm long (sometimes longer) and 2–20 cm broad, whit smoothness and shininess variable. The colours at commercial stage are white, green, violet-purple or black, sometimes striped, many-seeded (some examples of different fruit shapes and colours are showed in Fig 2 a and b). Seeds are lenticular to reniform, flattened, 3 mm × 4 mm. Fruit sets one week after anthesis, and 3–6 weeks are needed to reach commercial 7 ripeness, depending on climatic conditions. Fruits reach physiological maturity 6–13 weeks after flowering, also depending on the climate. 1-1.4 Production method and grafting Eggplant is traditionally grown in open field, also large scale culture in heated or unheated glass and plastic houses was developed in Europe from the 1970s. Grafting is mostly used in conditions of intensive production. In Europe, eggplant is grafted mostly onto tomato or tomato interspecific hybrids (L. esculentum x L. hirsutum) which, in addition to their resistance to several soil born pathogens, have a good tolerance to low soil temperatures (Ginoux and Laterrot, 1991). Solanum torvum, a wild species which has also a wide range of soil borne disease resistances, is another valuable rootstock which brings also a higher yield, but its use is limited so far by the difficulty to get a rapid and homogeneous germination (Ginoux and Laterrot, 1991) (Fig 3). An other type of rootstocks are based on the use of S. integrifolium - i.e. S. aethiopicum Aculeatum Group (Fig 4) - which carries resistance traits to Fusarium and bacterial wilts, and presents a good graft affinity with S. melongena. It is used directly as a rootstock (Yoshida et al., 2004b) or as parent crossed with S. melongena varieties for producing interspecific hybrid rootstocks [S. integrifolium x S. melongena] cumulating resistances from both parents (Mian et al., 1995). 8 Fig 3 Plantlets of eggplant grafted onto Solanum torvum Fig 4 Fruits of S. integrifolium 1-1.5 Genepool Eggplant genetic resources consist of three genepools. The primary genepool consists of traditional and modern cultivars of Solanum melongena; the diversity is important in terms of fruit size (from some tens of g to over one kg), fruit shape and fruit colour (white, green, pink to violet or purple or even black, uniform, striped, mottled or netted). The secondary genepool is formed by some 20 related Solanum species that are relatively easily crossable with eggplant and give relatively fertile hybrids; Solanum aethiopicum belongs to this genepool, but the hybrids, though quite easily obtained, have very low fertility. The tertiary genepool consists of about 20 other Solanum species that are crossable with eggplant using particular procedures 9 such as embryo rescue or colchicine treatment, and produce interspecific hybrids of low fertility; Solanum macrocarpon belongs to this genepool. 1-2 Eggplant genome The eggplant genome is still rather unexplored, the estimated size is about 1.1 Gbp (Arumuganathan et al, 1991). Knowledge of its genome organization is limited compared to that of either tomato or potato (http://solgenomics. net/, http://www.potatogenome.net), but different genetic maps are publicly available. The first one, developed in 2002 by Doganlar et al, is based on a inter-specific cross (S. linnaeanum Jaegaer & Hepper MM195 and S. melongena L. MM738 were used). This map, based on restriction fragment length polymorphism (RFLP), consists of 12 linkage groups, spans 1480 cM, and contains 233 markers. Comparison between the eggplant and tomato maps revealed conservation of large traits of colinear markers, a common feature of genome evolution in the Solanaceae and other plant families. However, eggplant and tomato were differentiated by 28 rearrangements, which could be explained by 23 paracentric inversions and five translocations. A second inter-specific map was developed in 2009 by Wu et al. This map was based on Conserved Ortholog Set II (COSII) markers (Wu et al. 2006). This last map was constituted of 347 COS and RFLP markers spanning 1,535 cM. Two different intra-specific maps, based on SSR (simple sequence repeat) markers, were constructed by Nunome et al (2003) and Barchi et al (2010) and comprise 236 markers, spanning 951.4 cM and 238 markers, spanning 718.7, respectively. Barchi et al (2011) also combined the recently developed Restrictionsite Associated DNA (RAD) approach with Illumina DNA sequencing for rapid and mass discovery of both SNP and SSR markers for eggplant. Whit this method, a total of 384 SNPs were developed from an original dataset of 2435 candidate for genotyping assay. The screening of the non redundant genomic dataset originated from Illumina genotyping resulted also in the identification of 1885 microsatellites. 10 This high number of molecular marker represent an important building materials for the construction of a new genetic map, based on intra-specific cross and improved whit SNP, SSR and other molecular markers. The releasing of the new framework map is in progress. 1-3.1 Fusarium oxysporum Fusarium oxysporum f. melongenae is a major soil-borne pathogen of eggplant (Solanum melongena). The distribution of Fusarium oxysporum is known to be cosmopolitan, however, the different special forms (formae speciales) of F. oxysporum often have varying degrees of distribution. The Fusarium wilt occurs in Europe both in greenhouse and open-field cultivation (Urrutia Herrada et al. 2004; Altinok, 2005). In plant inoculation studies, the recovered isolate could not infect other Solanaceae species (including Lycopersicon esculentum, Nicotiana tabacum, Solanum tuberosum, and Capsicum annuum). Fusarium oxysporum and its various formae speciales have been characterized as causing the following symptoms: vascular wilt, yellows, corm rot, root rot, and damping-off. The most important of these symptoms is vascular wilt. In general, wilts caused by Fusarium first appear as slight vein clearing on the outer portion of the younger leaves, followed by epinasty (downward drooping) of the older leaves. At the seedling stage, plants infected by F. oxysporum may wilt and die soon after symptoms appear. In older plants, vein clearing and leaf epinasty are often followed by stunting, yellowing of the lower leaves, formation of adventitious roots, wilting of leaves and young stems, defoliation, marginal necrosis of remaining leaves, and finally death of the entire plant. Browning of the vascular tissue is strong evidence of wilt. In solid media culture, such as potato dextrose agar (PDA), the different special forms of F. oxysporum can have varying shapes (Fig.5). In general, the aerial 11 mycelium first appears white, and then may change to a variety of colors - ranging from violet to dark purple-according to the strain (or special form) of F. oxysporum. Fig. 5 F. oxysporum in solid media culture (potato dextrose agar) F. oxysporum produces three types of asexual spores: microconidia, macroconidia, and chlamydospores. Microconidia are composed by one- or twocelled, and are the type of spore most abundantly and frequently produced by the fungus under all the conditions. It is also the type of spore most frequently produced within the vessels of infected plants. Macroconidia are three to five celled, gradually pointed and curved toward the ends. These spores are commonly found on the surface of plants killed by this pathogen. Chlamydospores are round, thick-walled spores, produced on older mycelium or in macroconidia. These spores are either by one or two cells. F. oxysporum is an abundant and active saprophyte in soil and organic compounds. Its saprophytic ability enables it to survive in the soil between crop cycles in infected plant debris. The fungus can survive either as mycelium, or as any of its three different spore types. Healthy plants can become infected by F. oxysporum if the soil in which they are growing is contaminated with the fungus. The fungus can invade a plant either with its sporangial germ tube or its mycelium by invading the plant's roots. The roots can be infected directly through the root tips (Mendgen et al., 1996), through wounds in the roots or at the formation point of 12 lateral roots. Once inside the plant, the mycelium grows through the root cortex between the cells. When the mycelium reaches the xylem, it invades the vessels through the xylem's pits. At this point, the mycelium remains in the vessels, where it usually advances upwards toward the stem and crown of the plant. As it grows, the mycelium branches and produces microconidia, which are carried upward within the vessel by way of the plant's sap stream. When the microconidia germinate, the mycelium can penetrate the upper wall of the xylem vessel, enabling more microconidia to be produced in the next vessel. The fungus can also advance laterally as the mycelium penetrates the adjacent xylem vessels through the xylem pits. Adhesion or close contact of the fungal spores with plant surface appears to be important in sensing the plant signals. The recognition process is initiated almost at the first contact of the plant surface by pathogen. Initiation of the signaling process has been demonstrated even within 20 s of the first . 1-3.2 Epidemilogy and management F. oxysporum is primarily spread over short distances by irrigation water and contaminated farm equipment. The fungus can also be spread over long distances either in infected transplants or in soil. It is also possible that the spores are spread by wind. Strategies to control this soil-borne disease have been based, especially in greenhouse cultivation, on soil treatments with methyl bromide, but this compound has officially been phased out in the European Union. As F. oxysporum and its many special forms affect a wide variety of hosts, the management of this pathogen includes: disinfestation of the soil and planting material with fungicidal chemicals, crop rotation with non-hosts plants, or by using resistant cultivars (Jones et al., 1982; Smith et al., 1988). 13 1-4 Verticillium Dahliae Over 300 woody and herbaceous plant species are known to be susceptible to Verticillium dahliae including tomato, eggplant, pepper, potato, peppermint, chrysanthemum, cotton, asters, fruit trees, strawberries, raspberries, roses. V. dahliae occurs worldwide but is more important in temperate zones, and naturally occurs at low levels in soils and grows better at slightly higher temperatures 25 -28° C. The fungus belongs to the fungal class Deuteromycetes , a group of fungi which do not have a known sexual stage. The vegetative mycelium is septate and multinucleate. The nuclei are haploid in culture. Conidia are ovoid or ellipsoid and usually singlecelled. Symptoms vary among hosts, and none is absolutely diagnostic. Premature foliar chlorosis and necrosis and a tan to brown colored discoloration or streaking of the vascular system, however, are characteristic of all hosts. Symptoms of wilting are most evident on warm, sunny days. The fungus can overwinter as mycelium in perennial hosts, plant debris, and vegetative propagative parts. The fungus can survive for many years (10 years or more) in soil in the form of tiny, black, seed-like structures called microsclerotia that are stimulated to germinate by root exudates of both host and non-host plants. The fungus penetrates a root of a susceptible plant in the region of elongation and the cortex is colonized. From the cortex, the hyphae penetrate the endodermis and invade the xylem vessels where conidia are formed. Vascular colonization occurs as conidia are drawn up into the plant along with water. As the diseased plant senesces, the fungus reached the cortical tissue and produces microsclerotia, which are released into the soil with the decomposition of plant material. The management of this fungal disease is similar to F. oxysporum: disinfestation of the soil and planting material with fungicidal chemicals, crop rotation with non-hosts of the fungus, or by using resistant cultivars (Jones et al., 1982; Smith et al., 1988) are the most common. 14 1-5 Plant responses to pathogens When a plant and a pathogen come into contact, close communications occur between the two organisms (Hammond-Kosack and Jones 1996). Pathogen activities focus on colonization of the host and utilization of its resources, while plants are adapted to detect the presence of pathogens and to respond with antimicrobial defences and other defence responses. Plant and pathogen species are often highly coevolved, meaning for example that standard plant barriers to microbial infection can be circumvented by particular pathogen species. As an infection plays out, the plant's metabolism often represents a variable mixture of disease resistance and disease susceptibility responses. Interactions between plants and pathogens induce a series of plant defence responses (Hammond-Kosack and Jones 1996). Plants rely on mechanisms of innate immunity, that can be present in two forms: basal (or horizontal) resistance and R gene-based (or vertical) resistance. The first one (horizontal resistance) is based on the recognition of a pattern recognition receptor (PRR) and a pathogen-associated molecular pattern (PAMP), that trigger basal or non-cultivar-specific defense responses in plants. The second one (R gene-based resistance) is based on the highly specific interaction of pathogen effectors and the products of plant R genes according to the gene-for-gene theory. This recognition event leads to hypersensitive response, characterized by rapid apoptotic cell death and local necrosis (Boller and Felix, 2009). The perception of danger signals occur in the immediate surroundings of pathogen invasion sites. Plant species and plant cultivar-specific resistance represent evolutionarily linked types of immunity that are collectively referred to as the plant innate immune system. Signal transduction cascades that mediate activation of innate immune responses comprise elements that are common to both forms of plant immunity, such as the alterations in cytoplasmic calcium levels, the mitogen activated protein kinase activities or the production of reactive oxygen species. Not surprisingly, host transcriptional activity is substantially modulated and redirected over the course of such defense responses (Scheideler et al., 2002). When a pathogen-derived avirulence (avr) protein of a virus, bacterium, 15 fungus, nematode or insect is recognized directly or indirectly by the corresponding resistance (R) protein in the plant, the R protein typically activates defence response to make the infection unsuccessful (Dangl and Jones 2001). Hence R genes form an important “front end” of the plant immune system, and are exploited widely for disease control in crop plants. The R gene-mediated pathogen surveillance system allows particularly rapid activation of the defence responses. The hypersensitive response (HR), a programmed plant cell death response at the site of pathogen infection, is often associated with gene-for-gene disease resistance. Systemic acquired resistance (SAR) and induced systemic resistance (ISR) are related but distinct versions of systemic host response, and they share two components: elevated production of antimicrobial compounds are activated more strongly and rapidly in response to subsequent infections (Glazebrook et al., 2005). The term “pathogenesis-related protein” (PR protein) was introduced in the 1970s in reference to the proteins that are newly synthesized or present at substantially increased levels after a plant has been infected (van Loon et al., 2006). A number of the classically defined PR genes do encode proteins such as chitinases, glucanases or defensins that have been shown to carry antimicrobial activity. However, individual PR proteins apparently make only small quantitative contributions to defence, and the contribution will vary depending on the pathogen target. 16 Fig 6 Microbe-associated molecular patterns (MAMPs), damage-associated molecular patterns (DAMPs), and effectors are perceived as signals of danger. Extracellular MAMPs of prototypical microbes and DAMPs released by their enzymes are recognized through pattern recognition receptors (PRRs). In the course of coevolution, pathogens gain effectors as virulence factors, and plants evolve new PRRs and resistance (R) proteins to perceive the effectors. When MAMPs, DAMPs, and effectors are recognized by PRRs and R proteins, a stereotypical defense syndrome is induced. RLK, receptor-like kinase; RLP, receptor-like protein; NBLRR, nucleotide binding-site–leucine-rich repeat. (Boller and Felix, 2009) 17 1-5.1 PTI or PAMP-Triggered Immunity PAMPs (pathogen-associated molecular pattern) constitute highly conserved determinants typical of whole classes of pathogens that are not found in potential host organisms and that are indispensable for the microbial lifestyle, such as chitin for fungi or peptidoglycan for bacteria. PAMPs can be also divided in microbeassociated molecular patterns (MAMPs) derived only from pathogen, and damageassociated molecular patterns (DAMPs), derived from plant itself because of the damage caused by microbe. Anyhow, plants posses pattern recognition receptors (PRRs) able to perceive both MAMPs and DAMPs. The perception of PAMPs by PRRs initiates an active defence response, called basal immunity. Well-adapted microbial pathogens, however, have found ways to breach this first line of active defence. Plants have evolved a second line of defence, called R-gene-based resistance which is higher specific than the basal one. 1-5.2 ETI or Effectors-Triggered Immunity ETI , or R-gene-based resistance, is based on direct or indirect interaction of pathogen effectors and the products of plant R genes according to the gene-for-gene theory. This recognition events leads to a vigorous type of defence reaction called hypersensitive response, characterized by rapid apoptotic cell death and local necrosis (Martin et al., 2003). The genetic basis for plant cultivar-specific disease resistance is determined by gene pairs called pathogen-derived avirulence (Avr) genes and plant derived resistance (R) genes. Avr gene-encoded proteins are likely (sometimes dispensable) effectors that contribute to host infection. An important consideration regards the defence program induced by PTI or ETI: plants seem not to discriminate from PAMPs and elicitors. The perception of all these signals appears to trigger the same defence responses, albeit with kinetic and 18 quantitative differences in induction. The response induced by ETI seems to be stronger and longer than the response induced by PTI (Tao et al., 2003). 1-5.3 Resistance (R) proteins Innate immunity relies on specialized receptors that can be divided into two groups: the PRRs and the R proteins. PPRs recognize PAMPs, that are highly conserved molecules, and allow plants to recognize distinct invaders using a limited set of receptors (Gerber van Ooijen et al., 2007). In contrast to PPRs, R proteins respond to molecules called avirulence proteins (avr) or elicitors, that are generally not conserved between species or isolates of given pathogen. R protein are encoded by large gene families, numbering several hundred of genes per genome (Meyers et al., 2003). Resistance mediated by R protein is often associated with hypersensitive response. R genes confer resistance to very different pathogens, but the encoded proteins share a limited number of conserved domain. Based on these, R proteins can be divided in four classes. Most of these contain a central nucleotide-binding (NB) domain as part of a larger entity called NB-ARC domain. C-terminal to the NB-ARC domain lies a leucine-rich repeat (LRR) domain, witch is sometimes followed by an extension of variable length. Hence, this group of R proteins is collectively referred to as NB-LRR proteins. On the basis of their N-terminal region, we can classified TNL and CNL proteins. If the N-terminal region shows homology to a protein domain found in the Drosophila Toll and human Interleukin-1 Receptor (IL-1R), it is called the TIR domain and these protein referred to as TIR-NB-LRR or TNL protein (Whitam et al., 1994). Because some non-TIR proteins contain predicted coiled-coil structures (CC) in their N-terminal domain, non-TIR-NB-LRR proteins are referred to as CC- NB-LRR or CNL proteins. A limited number of R proteins are extracellularly and they contain a predicted extracellular LRR (eLRR) domain at their N-terminus. This eLRR is connected via a transmembrane domain to a variable cytoplasmatic C-terminal region. When the cytoplasmic domain contains a protein kinase domain the protein belong to the RLK class (Receptor Like Kinase). if no such 19 domain are present, the protein is placed in the RLP class (Receptor Like Protein). A schematic representation of the typical members of the four R protein classes is show in Fig.2. Fig 7 Schematic representation of typical members of the four R protein classes. Protein domains and putative cellular localization are indicated. The Receptor-Like Protein (RLP) and the Receptor-Like Kinase (RLK) classes of R proteins span the plasma membrane (PM) and contain an extracellular Leucine Rich Repeat (LRR) domain. The CNL and TNL classes of R proteins are located intracellularly (cytoplasmic, nuclear, or membrane-bound) and contain a central NBARC domain (consisting of NB, ARC1 and ARC2 subdomains) coupled to an LRR domain. TNLs carry an N-terminal TIR domain, while CNLs contain either a CC or an extended CC domain (van Ooijen et al., 2007). In the Solanaceae, the larger class of R protein is the CNL class ( van Ooijen et al., 2007). We can find indirect and direct Avr/R interaction; for most R protein, this mechanism is still unknown. Activation of NB-LRR proteins likely requires a series of conformational changes, mediated via nucleotide hydrolysis by the central 20 nucleotide binding site. Determine the 3-D structure of NB-LRR and RLP proteins will improve the understanding of molecular mechanisms underlying their function. 1-5.4 Active Oxygen Species, Lipoxygenases, and Disruption of Cell Membranes The plant cell membrane consists of a phospholipid bilayer in which many different kinds of protein and glycoprotein molecules are embedded. The cell membrane is also an active site for the induction of defense mechanisms; as, it serves as the anchor of R gene-coded proteins that recognize the elicitors released by the pathogen and subsequently trigger the hypersensitive response. The most important membrane- associated defence responses include the release of molecules important in signal transduction within and around the cell and, possibly, systemically through the plant and the release and accumulation of reactive oxygen “species” and of lipoxygenase enzymes. The first events of the defence response are perturbations in ion fluxes and the pattern of protein phosphorylation, which precede the accumulation of ROS (mainly O−2 and H2O2) and NO as well as the transcriptional activation of defence-related genes (McDowell and Dangl 2000; Cohn et al., 2001). The attack of cells by pathogens, or exposure to pathogen toxins and enzymes, often results in structural and permeability changes of the cell membrane. In many plant-pathogen interactions, one of the first events detected in attacked host cells is the rapid and transient generation of activated oxygen species, including superoxide (O2 -), hydrogen peroxide (H2O2), and hydroxyl radical (OH). The generation of superoxide and of other reactive oxygen species as defence response happens most dramatically in localized infections, but also in general and systemic infections, as well as in plants treated with chemicals that induce systemic acquired resistance. These highly reactive oxygen species are thought to be released by the multisubunit NADPH oxidase enzyme complex of the host cell plasma membrane, they appear to be released in affected cells within seconds or minutes from contact of the cell with the pathogen. The activated oxygen species trigger the hydroperoxidation of membrane 21 phospholipids, producing mixtures of lipid hydroperoxides. The latter are toxic, as their production disrupts the plant cell membranes, and they seem to be involved in normal or HR-induced cell collapse and death. The presence of active oxygen species, however, also affects the membranes and the cells of the advancing pathogen either directly or indirectly through the hypersensitive response of the host cell. The production of reactive oxygen species in affected but surviving nearby cells is kept under control by the radical scavenger enzymes superoxide dismutase, catalase, ascorbate peroxidase, etc. Several isoenzymes of each of these molecules are produced, with different ones of them appearing at different stages after inoculation. The oxygenation of membrane lipids seems to involve various lipoxygenases as well. These are enzymes that catalyze the hydroperoxidation of unsaturated fatty acids, such as linoleic acid and linolenic acid, which have been released previously from membranes by phospholipases. The lipoxygenase-generated hydroperoxides formed from such fatty acids, in addition to disrupting the cell membranes and leading to HR-induced cell collapse of host and pathogen, are also converted by the cell into several biologically active molecules, such as jasmonic acid, that play a role in the response of plants to wounding and other stresses. 1-5.5 Transduction of Pathogen Signals in Plants Plants are able to recognize pathogen-derived elicitor molecules that trigger a number of induced defenses in plants. The recognition of a potential pathogen results in activation of intracellular signaling events including ion fluxes, phosphorylationdephosphorylation cascades, kinase cascades, and generation of reactive oxygen species (ROS) (Radman et al., 2003). Intercellular signaling system involves ROS, nitric oxide (NO), salicylic acid (SA), jasmonic acid (JA), and ethylene (ET). Two major pathways in defence signalling, one SA-dependent and the other SAindependent but involving JA and ET, are recognized (Kunkel and Brooks, 2002). These signalling events lead to reinforcement of plant cell walls and the production of defence proteins and phytoalexins. These events proceed in both susceptible and 22 resistant interactions, probably with different speed and intensity. The pathogens also produce suppressor molecules to counteract the action of elicitors, resulting in susceptibility. 1-5.6 Nitric oxide in signal transduction NO is a gaseous free radical that diffuses readily through biomembranes (Bethke et al., 2004). It is now well established that NO is involved in the plant defence signalling (Delledonne et al., 2001;). NO production was observed in tobacco cells within 5 min after treatment with the cryptogein elicitor, and reaches the maximum within 30 min (Lamotte et al., 2004). Plants synthesize NO from nitrite. Nitrate reductase has been found to catalyze the NAD(P)H-dependent reduction of nitrite to NO (Morot-Gaudry-Talarmain et al., 2002). Nitrate reductase reduces nitrate to nitrite and can further reduce nitrite to NO. Nitrite-dependent NO production has been observed in soybean (Delledonne et al., 1998) and sunflower (Rockel et al., 2002). NO induces defense gene expression via signaling pathways that likely involve cyclic GMP and cADPR . 1-5.7 Salicylic acid in signalling defence response in plants SA is a phenolic compound commonly present in the plant kingdom. Plants synthesize SA (O-hydroxybenzoic acid) by the action of PAL (phenylalanine ammonia lyase), which is a key regulator of the phenylpropanoid pathway and yields a variety of phenolics with structural and defense-related functions. SA has been reported as one of the most important signal molecules, which acts locally in intracellular signal transduction and also systemically in intercellular signal transduction (Raskin, 1992). SA accumulates in plants inoculated with pathogens, its level increases both in proximal and distal tissue with respect to the infection. The increased levels of SA resulted in induction of various defence-related genes (Dorey et al., 1997). The importance of SA-signalling system in induction of host defences was studied by developing transgenic plants expressing the bacterial gene NahG. This 23 gene encodes for the enzyme salicylate hydroxylase, which inactivates SA by converting it to catechol. Some of the NahG transgenic plants were unable to accumulate SA and consequently incapable of developing HR, indicating that SA accumulation is required for HR to occur (Delaney et al., 1994). Disease resistance is also induced in plants by spray treatments with SA (Navarre and Mayo, 2004) 1-5.8 Jasmonate signalling (JAs) in induction of defence responce JAs, which were first detected in essential oils of Jasminum grandiflorum (Demole et al., 1962), occur ubiquitously in all plant tissues, and they are a major group of signalling compounds in inducing host defence. JA and its cyclic precursors and derivatives are collectively referred to as JAs (Li et al., 2005). The JAs, derived from peroxidized linolenic acid, are members of a large class of oxygenated lipids called oxylipins (Hamberg and Gardner, 1992). Oxylipins are acyclic or cyclic oxidation products derived from the catabolism of fatty acids (Creelman and Mulpuri, 2002). JA, MeJA, 12-oxo-phytodienoic acid (OPDA), and other oxylipins act as signals for defence against pathogens (Krumm et al., 1995). The accumulation of JAs is followed by the activation of JA-mediated defense responses (Wasternack and Hause, 2002). The importance of JA in signaling induction of defense genes has been demonstrated by using plant mutants deficient in JA synthesis and perception. Constitutive production of JA in an Arabidopsis mutant was accompanied by constitutive expression of defensin PDF1.2, thionin Thi2.1, and chitinase CHI genes (Ellis et al., 1999), and this mutant showed enhanced resistance against E. cichoracearum and a bacterial pathogen Pseudomonas syringae . 1-5.9 Ethylene-dependent signalling pathway The increased production of ET is one of the earliest chemically detectable events in pathogen-infected plants or in plants treated with elicitors (Toppan and Esquerre-Tugaye, 1982). The role of ET in plant–pathogen interaction is complex (Geraats et al., 2003). ET stimulates defence mechanisms against several pathogens, 24 and it also induces susceptibility to several other pathogens (Boller, 1991). ET applied as pre-treatment induces resistance against Botrytis cinerea in tomato (Dı´az et al., 2002), whereas exogenous application of ET enhances B. cinerea (gray mold) incidence in tomato, pepper, cucumber, bean, rose, and carnation (Boller, 1991). The ET-insensitive mutant of tomato showed enhanced resistance to Fusarium oxysporum (Lund et al., 1998), and soybean mutants with reduced sensitivity to ET were less susceptible to Phytophthora sojae (Hoffman et al., 1999). By contrast, ET insensitivity enhanced susceptibility to various pathogens in different plants, for example Arabidopsis mutant ein2-1 (for ethyleneinsensitive 2-1) showed enhanced susceptibility to B. cinerea (Thomma et al., 2001a) After its synthesis, ET is perceived and its signal is transduced through transduction machinery to trigger specific biological responses. The signaling system consists of two proteins, a histidine kinase and a response regulator. The histidine kinase acts as the sensor that autophosphorylates an internal histidine residue in response to signals, and the response regulator activates the downstream components upon receiving a phosphate from the histidine residue of the sensor on its aspartate residue (Pirrung, 1999). 1-5.10 Abscisic acid signalling Several recent papers have proposed that ABA signalling, in addition to regulating plant development and response to abiotic stress, also plays a role in the regulation of innate immunity (Adie et al., 2007, Berrocal-Lobo, M. et al., 2002). Meta-analysis of pathogen-inducible genes in Arabidopsis reveals that a significant subset of ABA-regulated genes are activated upon pathogen infection (Adie et al., 2007). In some plant-pathogen interactions, such as that between Arabidopsis and the vascular bacterium Ralstonia solanacearum, ABA signalling plays a direct function in the activation of the defensive response (Hernandez-Blanco et al., 2007) . Instead, in other plant-pathogen interactions, ABA seems to play a negative regulatory function by inactivating other defence signalling pathways, such as those mediated by SA or JA/ET (Anderson et al., 2004). These negative function of ABA has been 25 proposed to be a mechanism used by some pathogens to suppress plant basal resistance (Melotto et al., 2006) 1-5.11 Pathogenesis-related proteins (PRs) Pathogenesis-related proteins were discovered in tobacco reacting hypersensitively to Tobacco mosaic virus (TMV) and later in other plant species. The recognized PRs currently comprise 17 families described in Table 1, numbered whit respect to the order of discovery (van Loon et al., 2006). A type member, usually the first one, was chosen and families were defined on the basis of their common biochemical and biological properties. A role of several families in limiting pathogen activity, growth and spread fits the identification of PR-2 family as So, the member of PR-2 family as β -1,3-endonucleases, PR -3, -4, -8, and -11 as endochitinases and PR-6 as proteinase inhibitors. Members of PR-8 family also play an important role against bacteria whit their lysozyme activity, while PR-12 (defencins) and PR-13 (thionins) have both antibacterial and antifungal activities (Lay and Anderson, 2005; Epple et al., 1997). PR-14 family included also lipid transfer proteins whit antibacterial and antifungal activities (Garcia-Olmedo et al., 1997), while member of PR-1 and PR-5 (thaumatin-like) families have been associated with activity against oomycetes. PR-7 is an endoproteinase that might aid in microbial cell wall dissolution (Jorda et al., 2000) . PR-9 is a specific type of peroxidase that could act in cell wall reinforcement by catalyzing lignification (Passardi et al., 2004). The families PR-15, -16, and -17 have been added recently. PR-15 and -16 are typical of monocots and comprise families of germinlike oxalate oxidases and oxalate oxidaselike proteins with superoxide dismutase activity (Bernier and Berna, 2001), respectively. These proteins generate hydrogen peroxide that can be toxic to different types of attackers or could directly or indirectly stimulate plant-defence responses. PR-17 proteins have been found as an additional family of PRs in infected tobacco, wheat, and barley and contain sequences resembling the active site of zincmetalloproteinases (Christensen et al., 2002), but have remained uncharacterized 26 so far. A putative novel family (PR-18) comprises fungus- and SA-inducible carbohydrate oxidases, as exemplified by proteins with hydrogen peroxide-generating and antimicrobial properties from sunflower (Custer set al., 2004). Tab 2 recognised families of PRs proteins (van Loon et al., 2006) PR proteins, through their specific hydrolytic activities, may also be expressed during plant development in specific stages or organs and contribute to the generation of signal molecules that can act as morphogenetic factors. However, their widespread induction upon pathogen attack and their regulation by the defence regulatory hormones SA, JA, and ET suggest that they play an important role in alleviating the effects of attack by pathogens and insects, as well as some forms of abiotic stress. In several instances, quantitative resistance against pathogens has been shown to be associated with constitutively expressed PRs (Liu et al., 2004). In SAR, the presence 27 of induced PR-type proteins is likely to contribute to some extent to the enhanced defensive capacity. In contrast, in ISR, no defence-related proteins are present in induced leaves before challenge, but upon infection activation of JA-responsive genes in particular is accelerated and enhanced, a phenomenon known as priming (Conrath et al., 2002). 28 Chapter 2 Phenotypical analysis of Rfo-sa1 resistant eggplants interaction with Fusarium oxysporum f. sp. melongenae and/or Verticillium dahliae 2-1 Introduction The two fungal wilts caused by Verticillium dahliae (Vd) (Bhat et al., 1999) and Fusarium oxysporum f.sp melongenae (Fom) (Urrutia Herrada et al., 2004, Cappelli et al. 1995) are among the most serious diseases of eggplant (Kennet et al., 1970; Stravato et al., 1993; Urrutia Herrada et al., 2004). The resistance to Fom was introgressed from the allied specie S. aethiopicum and molecular characterization of the ILs enabled to demonstrate that the introgressed resistance trait is controlled by a single locus (named Rfo-sa1, Resistance to Fusarium oxysporum f. sp. melongenae from Solanum aethiopicum 1). In order to characterize the plant-pathogen interactions of eggplant lines subjected to inoculation with Fom and/or Vd, a phenotypical investigation was set up. The aim of this approach was to confirm the capacity of the locus Rfo-sa1 to protect eggplant under Fom inoculation and the severity of symptoms after Vd inoculation. Another aspect investigated was the improved tolerance of ILs to Vd after simultaneous inoculation with Vd+Fom compared with inoculation with Vd alone, previously observed in inoculation test due to breeding intent. The hypothesis was that the activation of Rfo-sa1 caused by Fom inoculation improve the response also to Vd. In order to better understand this method of Fom/Vd interaction, a set of mixed inoculations were planned. Obviously, a single Fom and Vd inoculations were done in comparison to mixed inoculations, while mock inoculation whit water was used as control. Five different eggplant lines were subjected to the same conditions, three of those carrying the locus Rfo-sa1. The three resistant lines were: All96/6, All96/6x1F59 and 305E40, while the susceptible ones were 1F59 and Tal 1/1. All96/6x1F59 is an advanced breeding line 29 derived from the IL All96/6, while 1F59 was used as recurrent susceptible parent in backcrosses. The correlation between All96/6x1F59 and 1F59 was the same between 305E40 and Tal 1/1. Tal 1/1 was used as recurrent susceptible parental in backcrosses to the achievement of the line 305E40. An experiment scheme was designed on the basis of literature (Beye et al., 1985 and 1988). The criteria were based on the extent and intensity of foliar symptoms and on the disease progression along the stem. 2-2 Materials and Methods Five different eggplant lines (All96/6, All96/6x1F59 and 305E40 resistant to Fom, 1F59 and Tal 1/1 susceptible) were separately inoculated whit a conidial suspension of Fom and/or Vd. Both the pathogenic strains of Fom and Vd were conserved in Potato Dextrose Agar (PDA, Merk) at 25° C without light. Before use fungi were transferred on CZAPEC liquid medium. The liquid cultures were shaken in the orbital incubator for 4 days at 25°C. The inoculation was carried out using a Fom conidial suspension whit a concentration of 1.5x106/ml, intead for Vd inoculation was used a concentration of 1.0x106/ml. In the mixed inoculation the fungal suspension was prepared using the same concentrations reported before. Artificial inoculation was performed according to the root-dip method described in Cappelli et al. (1995), using plantlets at the 3-4th true leaf stage. The experiments were conducted in order to understand the Fom/Vd interaction, so five different types of mixed inoculations were prepared. In addiction to a Fom and Vd inoculation alone, the two fungi were used to inoculate the plantlets together or a two-steps. So, the plantlets were inoculated before with Fom and then after 24 and 48 hours with Vd. The same experiment was conducted using before Vd 30 and then after 24 and 48 hours Fom. In Table 1 was reported the experimental design used for the five eggplant lines described before. Fungal inoculation Fom Vd Fom + Vd Control Fom + 24h Vd Vd + 24h Fom Control Fom + 48h Vd Vd + 48h Fom Control inoculation day Fom Vd Fom+ Vd Water Fom Vd Water Fom Vd Water 24 h after 48 h after Vd Fom Water Vd Fom Water Tab.3: Schematic representation of the different types of fungal inoculations. The same experimental design was followed for each eggplant lines. As shown in Table 1, three control (mock-inoculation with water) were performed. This multiple-control set ensured the same experimental conditions at each inoculation. The phenotypical observations were conducted after 15, 22 and 30 days of inoculation. Two distinct parameters were used to evaluate the severity of symptoms: the extent and intensity of foliar symptoms and on the disease progression along the stem. This parameters were used by Beye et al., (1985) to compare each others different criteria of evaluation of fungal disease, so the same original abbreviation in French were used also in this work. Thereby, the percentage value attributed to disease progression along the stem was called I.E.S.F. (from the original “indice d’étendue des symptoms foliares”), and the percentage value of intensity of foliar symptoms was called I.A.F. (from “indice d’altération foliares”). I.E.S.F. was calculated observing the progression of the disease along the stem from the ground to the first leaf that present symptoms. A note was attributed to each plant in function to the sick portion, following the criteria: 0: no symptoms 31 1: 20% of the plants presents symptoms of the wilt 2: 40% of the plants presents symptoms of the wilt 3: 60% of the plants presents symptoms of the wilt 4: 80% of the plants presents symptoms of the wilt 5: plant totally compromised To calculate I.E.S.F. was applied the formula: note attributed /max note x100 Maximum note is 5. if a group of plants were considered, the formula was: sum of note /max note x100 in this case, the maximum note was 5 x number of plants. I.A.F. was calculated on the base of intensity of foliar symptoms. At each leaf was attributed a note from 0 to 4. Zero was a leaf without symptoms, 4 was a died leaf. the intermediated 1-2-3 represented various disease manifestations, from yellowing to necrosis. To calculate I.A.F. was applied the formula: sum of note of a plant /max note x100 Maximum note is 4. A consistent amount of phenotypical data was collected, considering this two different parameters, the five eggplant lines and the 3 time points. All this data were submitted to statistical analysis, using ANOVA (analysis of variance) and performing the means comparison with Tukey’s test. 2-3 Results and discussion The aim of this work is a detailed investigation about the improved tolerance of resistant-to-Fom eggplants to Vd after simultaneous inoculation with Vd+Fom 32 compared with inoculation with Vd alone. The experimental design was planned to make clear the mechanism of protection caused by the activation of Rfo-sa1 after Fom, also in concomitance with Vd treatment. Five different mixed inoculations were conducted : Fom+Vd at the same time, Fom and after 24h Vd, Fom and after 48h Vd, Vd and after 24h Fom and Vd and after 48h Fom. were performed also Fom and Vd inoculation using individually the two fungi. I.E.S.F. The disease progression along the stem to the top of the plant (I.E.S.F.) during 30 days after inoculations showed 2 distinct trends. Very similar I.E.S.F. values were observed considering the 3 resistant and the 2 susceptible eggplant lines. All96/6, All96/6x1F59 and 305E40 presented a good resistance after Fom inoculation as reported in Tab 4 (a, b and c). All 96/6 Type of inoculation Fusarium Fom+ Vd Verticillium Fom+ 24h Vd Fom+ 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 3,33 6,67 51,67 40,00 38,33 35,83 33,33 ± se 22 dai % 4,32 6,18 5,18 5,31 5,30 3,36 7,19 6,67 53,33 71,67 40,00 43,33 60,00 65,00 ± se 6,18 1,57 6,76 1,60 2,50 2,75 1,94 30 dai % 43,33 56,67 100,00 41,67 45,00 65,00 86,67 ± se 1,92 3,36 0,00 0,96 2,45 0,99 3,81 Tab 4a: I.E.S.F percentage variation and standard error of All96/6 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation. All 96/6 X 1F5(9) Type of inoculation Fusarium Fom + Vd Verticillium Fom + 24h Vd Fom + 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 20,00 41,67 83,33 61,67 71,67 83,33 81,67 ± se 22 dai % 4,45 5,05 3,47 4,09 3,82 3,47 3,46 33 25,00 60,00 81,67 60,00 65,00 83,33 81,67 ± se 3,78 3,60 1,29 3,23 2,51 3,47 2,33 30 dai % 25,00 66,67 95,00 65,00 55,00 83,33 98,33 ± se 3,42 0,00 3,74 3,01 3,31 1,49 3,74 Tab 4b: I.E.S.F percentage variation and standard error of All96/6x1F59 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation 305E40 Type of inoculation 15 dai % Fusarium Fom + Vd Verticillium Fom + 24h Vd Fom + 48h Vd Vd + 24h Fom Vd + 48h Fom ± se 0,00 6,67 25,00 18,33 13,33 38,33 21,67 22 dai % 0,00 6,18 3,78 10,78 3,81 3,37 8,49 0,00 23,33 83,33 20,00 35,00 56,67 66,67 ± se 0,00 1,31 2,42 3,27 2,51 3,44 7,33 30 dai % 13,33 48,33 90,00 20,00 30,00 61,67 76,67 ± se 2,38 0,96 1,86 3,27 2,72 3,37 2,17 Tab 4c: I.E.S.F percentage variation and standard error of All96/6x1F59 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation. 305E40 was the line with the less disease progression after Fom inoculation, as demonstrated by the I.E.S.F. percentage (from 0% at 15 dai to 13,33% at 30 dai), especially in comparison to All96/6 (from 3,33% to 43,33% at 15 and 30 dai, respectively). Also the tolerance after Vd was better with respect to All96 and All96/6x1F59 (90%, 95% and 100% at 30dai, respectively). About the different mixed inoculations, the 3 resistant lines followed the same trend: after Fom+Vd at the same time, Fom+24h Vd and Fom+48h Vd inoculations the I.E.S.F. percentages were lower than after Vd treatment. This evidence was particularly pronounced at 30 days after inoculation. Instead, Vd +24h Fom and Vd +48h Fom inoculations showed values more similar to Vd inoculation but lower. The addiction of Fom after 24 and 48 h seems to improve the defence response, also weakly with respect to mixed and the Fom+24h and 48h Vd . The two susceptible eggplant lines (1F59 and Tal 1/1) presented the same trend, as showed in Table 5 (a and b). 34 1F59 Type of inoculation Fusarium Fom+ Vd Verticillium Fom+ 24h Vd Fom+ 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 100,00 100,00 56,67 100,00 95,00 100,00 76,67 ± se 22 dai % 0,00 0,00 2,50 0,00 5,41 0,00 1,31 100,00 100,00 93,33 100,00 100,00 100,00 100,00 ± se 0,00 0,00 6,45 0,00 0,00 0,00 0,00 30 dai % 100,00 100,00 100,00 100,00 100,00 100,00 100,00 ± se 0,00 0,00 0,00 0,00 0,00 0,00 0,00 Tab 5a: I.E.S.F percentage variation and standard error of 1F59 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation. TAL 1-1 Type of inoculation Fusarium Fom + Vd Verticillium Fom + 24h Vd Fom + 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 100,00 88,33 76,67 100,00 95,00 86,67 85,00 ± se 22 dai % 0,00 6,53 2,98 0,00 3,74 2,38 2,75 100,00 100,00 88,33 100,00 100,00 100,00 100,00 ± se 0,00 0,00 5,91 0,00 0,00 0,00 0,00 30 dai % 100,00 100,00 100,00 100,00 100,00 100,00 100,00 ± se 0,00 0,00 0,00 0,00 0,00 0,00 0,00 Tab 5b: I.E.S.F percentage variation and standard error of Tal 1-1 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation. 1F59 and Tal 1/1 had a very clear disease progression: after Fom treatment (alone or in concomitance with Vd) the plants showed a 100% of sick portion, in 1522 days. I.A.F. The intensity of foliar symptoms (I.A.F.) during 30 days after inoculations showed 2 distinct trends, as observed by I.E.S.F. analysis. Obviously, an important difference of the values was observed among the 3 resistant and the 2 susceptible eggplant lines. All96/6, All96/6x1F59 and 305E40 presented a good resistance after Fom inoculation as reported in Tab 6 (a, b and c). 35 All 96/6 Type of inoculation Fusarium Fom+ Vd Verticillium Fom+ 24h Vd Fom+ 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 5,17 1,30 20,83 13,37 9,29 13,58 6,22 ± se 22 dai % 2,43 2,09 1,92 1,47 0,64 2,26 2,09 4,95 24,48 47,81 19,20 14,79 30,42 45,52 ± se 3,31 3,52 2,28 1,78 1,68 1,62 2,85 30 dai % 12,25 24,72 58,37 19,24 14,48 31,71 50,90 ± se 0,94 3,22 1,82 1,50 2,38 1,26 4,35 Tab 6a: I.A.F percentage variation and standard error of All96/6 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation. All 96/6 X 1F5(9) Type of inoculation Fusarium Fom + Vd Verticillium Fom + 24h Vd Fom + 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 20,31 30,80 34,38 22,40 29,34 38,19 34,20 ± se 22 dai % 1,72 1,96 1,31 2,63 0,95 3,55 1,27 16,67 38,13 53,75 28,96 30,63 49,41 49,58 ± se 7,30 1,46 0,85 1,42 1,44 1,32 3,28 30 dai % 15,21 31,91 60,02 22,60 20,76 42,99 57,57 ± se 2,10 1,51 0,64 3,25 3,52 2,77 0,88 Tab 6b: I.A.F percentage variation and standard error of All96/6x1F59 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation 305E40 Type of inoculation Fusarium Fom + Vd Verticillium Fom + 24h Vd Fom + 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 1,56 1,56 6,77 4,69 4,58 6,30 2,71 ± se 22 dai % 0,70 2,98 1,46 3,90 1,67 2,74 4,80 0,42 16,67 48,02 3,54 12,08 24,65 39,69 ± se 1,51 1,19 1,27 5,53 2,60 0,23 4,65 30 dai % 4,90 16,25 60,45 6,04 10,38 30,76 46,15 ± se 1,47 1,54 1,14 2,26 1,84 1,61 2,14 Tab 6c: I.A.F percentage variation and standard error of 305E40 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation 36 All these 3 lines demonstrated its resistance to Fom, and not very significant differences among All96/6, All96/6x1F59 and 305E40 subjected to Fom inoculation were reported, though 305E40 was the less affected in terms of I.A.F.. About the mixed inoculations, the observations were very similar to those conducted on I.E.S.F.: after Fom+Vd at the same time, Fom+24h Vd and Fom+48h Vd inoculations the I.A.F. percentages were lower than after Vd treatment alone. This evidence was particularly pronounced at 30 days after inoculation. Instead, Vd +24h Fom and Vd +48h Fom inoculations showed values more similar to Vd inoculation but lower. About 1F59 and Tal 1/1, the intensity of foliar symptoms was very high after all the Fom inoculation types (Table 7 a and b). 1F59 Type of inoculation Fusarium Fom+ Vd Verticillium Fom+ 24h Vd Fom+ 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 76,91 72,12 16,67 74,65 74,24 61,35 35,78 ± se 22 dai % 1,44 0,91 2,58 2,49 2,99 1,42 1,36 100,00 100,00 58,13 99,17 98,96 98,96 93,85 ± se 0,00 0,00 1,16 2,63 2,94 2,94 4,97 30 dai % ± se 100,00 100,00 69,76 100,00 100,00 100,00 100,00 0,00 0,00 0,56 0,00 0,00 0,00 0,00 Tab 7a: I.A.F percentage variation and standard error of 1F59 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation. TAL 1-1 Type of inoculation Fusarium Fom + Vd Verticillium Fom + 24h Vd Fom + 48h Vd Vd + 24h Fom Vd + 48h Fom 15 dai % 62,05 58,40 27,08 64,93 68,75 79,03 33,51 ± se 22 dai % 1,50 2,47 0,94 1,68 1,18 11,35 1,35 100,00 99,48 58,75 100,00 100,00 100,00 89,76 ± se 0,00 2,07 0,74 0,00 0,00 0,00 5,97 30 dai % 100,00 100,00 65,69 100,00 100,00 100,00 100,00 ± se 0,00 0,00 1,39 0,00 0,00 0,00 0,00 Tab 7b: I.A.F percentage variation and standard error of Tal 1-1 line under all the inoculation type at three time points: 15, 22 and 30 days after inoculation. 37 Despite Fom inoculations, the Vd inoculation was particularly interesting following I.A.F.. The five eggplant lines showed a foliar symptoms very similar if compared each others. The range of I.A.F. percentage was about 60% in all the 5 lines. The aim of this work was the confirmation of a preliminary observation, related to the improved tolerance to Vd in eggplants resintant inoculated with Fom. 38 Chapter 3 Molecular analyses of Rfo-sa1 resistant eggplant interaction with Fusarium oxysporum f. sp. melongenae and/or Verticillium dahliae 3-1 Introduction Eggplant (S. melongena L.) is widely grown in both open fields and greenhouses in Asia, Africa, and the subtropical areas, including the southern USA and the Mediterranean region. The two fungal wilts caused by Verticillium dahliae (Vd) (Bhat et al., 1999) and Fusarium oxysporum f.sp melongenae (Fom) (Urrutia Herrada et al., 2004, Cappelli et al. 1995) are among the most serious diseases of eggplant (Kennet et al., 1970; Stravato et al., 1993; Urrutia Herrada et al., 2004). Fusarium is most important for the subtropical area, while Verticillium is mostly present in the Mediterranean climates. The resistance levels found in the gene pool of S. melongena are often insufficient for effective utilization in breeding programs (Rotino et al. 2005), while a source of valuable traits of resistance to diseases may be represented by the allied species of S. melongena . The resistance to Fom was introgressed from S. aethiopicum through somatic hybridization followed by anther culture of the tetraploid somatic hybrid to obtain dihaploid plants (Rizza et al., 2002) which were successfully backcrossed with different typology of recurrent eggplants. Advanced introgression lines (IL) were obtained through 6-8 cycles of backcross and selection, followed by selfing and/or anther culture to obtain pure lines. Molecular characterization of the ILs enabled to demonstrate that the introgressed resistance trait is controlled by a single dominant gene (named Rfo-sa1, Resistance to Fusarium oxysporum f. sp. melongenae from Solanum aethiopicum 1) and to develop molecular markers associated to the resistance locus (Toppino et al., 2008). 39 Perception of the plant-pathogen interaction in model plants (e.g. Arabidopsis thaliana-Fusarium, Berrocal-Lobo & Molina, 2008) follows the concept of the elicitor-induced immune response, which in turn activates several defence signalling pathways. In susceptible model plants, this fungal disease is able to multiply and spread throughout the plant, leading to the appearance of the typical disease symptoms: the fungus penetrates through the roots and proliferates in the vascular tissue, and wilting progresses from lower to upper leaves, followed by collapse of the plant. In resistant plants, the activation of a rapid and localized cell death at the site of infection, known as the hypersensitive response (HR), limits the pathogen growth and minimizes disease symptoms. In many plant-pathogen interactions, the development of a HR is associated with several cellular responses that contribute to resistance (Hammond-Kosack and Jones 1996). These responses include the production of reactive oxygen species (ROS), transient opening of ion channels, cell wall fortifications, production of phytoalexins, and synthesis of pathogenesis-related (PR) proteins. Resistance or susceptibility in the plant is dictated by the genetic backgrounds of both the host and the invading pathogen. The recent development of genomics techniques for the study of gene expression profiles (cDNA-AFLP, PCR-select, RNAseq, microarray analysis) , together with the availability of sequenced genomes and expressed sequence tag (EST) databases for many plant species, has allowed a significant progress in the characterization of the plant responses to pathogen attack (Wan et al. 2002). However, much remains to be learned about defence responses and signalling pathways activated during the interaction of eggplant either with Fusarium oxysporum f.sp. melongena, for which reports are limited (Mutlu et al 2008, Toppino et al 2008) or Verticillium dahliae. Therefore, in order to characterize genes involved during the early phase of these plant-pathogen interactions , we analysed the radical extracts of the advanced introgression lines resistant to Fusarium oxysporum sp melongenae (Fom) inoculated with Fom and Verticillium dahliae (Vd). Another aspect that we investigated was the 40 improved tolerance of ILs to Vd after simultaneous inoculation using Vd+Fom compared with inoculation with Vd alone. Our choice to characterize the very early timings after inoculation was based on preliminary biochemical studies conducted by Mennella et al. (2010). In this work the radical extract of the advanced introgression line All96/6x1F59 was analysed after inoculation with Fom at different timings. The spectrophotometer and RP-HPLC analyses of the total protein contents suggested that the first 8 hours after inoculation were the more suitable (among T0+24h to 72h) to study the eggplant interaction with Fom. As a first step toward the identification of plant genes involved in the eggplant defence response to Fom and/or Vd, we plan to construct three cDNA libraries enriched for Fom-, Vd- and Fom+Vd- modulated genes, using suppression subtractive hybridization (SSH) (Diatchenko et al 1996). SSH is a capable technique for the isolation of genes expressed in plants subjected to both biotic and abiotic stress, because it increases the relative abundance of some cDNA species (Diatchenko et al 1996). The advantages of this technique include the detection of low-abundant and differentially expressed transcripts through suppression of the abundant ones, and the capacity of isolating genes with no previous knowledge of their sequence or identity (Diatchenko et al., 1999). To help the unscrambling of the complex molecular mechanisms of eggplant defence response to fungal inoculation, we decided to combine the SSH technique with cDNA microarray technologies. In a previous study, Yang et al (1999) combined SSH and cDNA microarray analysis for the identification of differentially expressed genes in a human breast cancer cell line, but also in works regarding tomato (Gibly et al., 2004; Oliveira, Magalhães, & Lima, 2008; Ouyang et al., 2007) and bamboo (Lin et al., 2006) the same approach was used. The array technology opens up significant opportunities to identified pathogenesis-related genes and the associated regulatory systems, and to reveal interaction between different signalling pathways (Wan, Dunning, & Bent, 2002) as it 41 allows to study contemporaneously the expression of many genes in one single experiment. As no ready-to-use microarray chips are available for eggplant, our idea is to construct a new CombiMatrix platform, with a 4x2K customized chip and containing 2000x4 eggplant probe sets. The sequences for the chip design will be selected from the genes collection retrieved from the three eggplant SSH cDNA libraries of which after categorization will result to be putatively involved in the plant-pathogen interaction. The probe set will be will be enriched with a panel of resistance eggplant genes, selected from NCBI (The National Centre for Biotechnology Information, http://www.ncbi.nlm.nih.gov/) and PRGdb (http://www.prgdb.org), 5 sequences of putative housekeeping genes (β tubulin, elongation factor 1- α, catalitc subunit of phosphatase 2A, 18s rRNA and glyceraldeyde-3-phosphate dehydrogenase) and in addition 200 genes selected from a collection of RAD-derived sequences (Barchi et al., 2011) which after GO categorization resulted to be related to biotic stresses. We plan to compare changes in gene expression between three different timings (0, 4 and 8 hours after dipping in fungal suspension), considering the different fungal inoculations and the control (mock inoculation with water). All the modulated genes identified will be then functionally assigned according to the principal GO categories and their expression profiles following Fusarium, Verticillium and mixed inoculations. Both SSH and microarray techniques will be validated using qRT-PCR. At present, qRT-PCR is the most suitable tool in quantitative gene expression studies due to its precision and sensitivity (Gutierrez et al., 2008). The most diffused approach with this technique is relative quantification, whereby the expression level of a target gene is normalized depending on an internal reference gene, also called housekeeping (Brunner et al, 2004). In our work, the selection of an adequate internal control is particularly challenging, considering that if our purpose is to compare the expression levels of the selected genes among the three different plant-pathogen interactions, the putative reference gene should be not affected by any of the fungal 42 inoculations and any timing considered after root dipping. However, this topic will be argued with more details in chapter 4. The combination of suppression subtractive hybridization (SSH) and microarray analysis will allow to identify a set of genes that are putatively involved in the plant-pathogen interaction in order to select some candidate for a functional study. 3-2 Materials and methods 3-2.1-Plant material and growing conditions; Fusarium, Verticillium and mixed inoculations Seed-derived plantlets of an advanced introgression line (All 96-6 x 1F5(9)) resistant to Fusarium oxysporum have been grown under greenhouse conditions. Artificial inoculation was performed according to the root-dip method described in Cappelli et al. (1995), using plantlets at the 3-4th true leaf stage. Samples of inoculated and mock-inoculated (dipping in water) roots were harvested at 0, 4 (T0+4h) and 8 hours (T0+8h) after artificial inoculation using a conidia suspension of Fom (1.5x106/ml), or Vd (1.0x106/ml) or both the pathogens. Root samples were subsequently frozen in liquid N2 and stored at -80°C. For each treatment and timings, root samples from 8 inoculated plantlets were harvested, pooled and used for the extraction of mRNA or total RNA. T0+4h and T0+8h stages where chosen because preliminary Northern analysis of tobacco chitinase IV gene expression and RP-HPLC analyses of the total protein contents suggested that T0+4h and T0+8h stages were the more suitable (among T0+4h to 72h) to study early interaction with Fom. For subtractive hybridization, we employed samples of inoculated and mockinoculated roots of the resistant breeding line ALL96-6 x 1F5(9), harvested 8 hours after root dipping in the fungal suspension or in water. mRNA was isolated through a phenol-chloroform extraction, enriched for poly(A)+ RNA by chromatography on 43 oligo(dT)-cellulose (Sigma). The poly(A) RNA was then used for cDNA and used for cDNA synthesis, followed by the digestion with RSA I. A two-step subtraction followed by PCR amplification was performed using the Clontech PCR-select cDNA subtraction Kit (BD Bioscience): mRNA from mock-inoculated roots (Driver) was subtracted from mRNA from inoculated roots (Tester) (Diatchenko et al., 1996), leading to enrichment of the resulting sample in differentially expressed sequences. The product of the subtraction was amplified using two-step PCR in accordance with the procedure recommended by the manufacturer. The amplified products were cloned into the PGEM T-easy vector (Promega) to obtain three libraries (one for each inoculation) of genes involved in the interaction between eggplant and fungi. For molecular characterization, the most promising 1000 cDNAs were selected from the three libraries, by comparing the intensity of spots in Dot blot analysis. The clones were selected through comparison of the different hybridization intensity of the correspondent spots in the two filter series obtained using both mRNAs of inoculated and mock-inoculated samples as labeled probes (confirmed in the inverted hybridization, as well). The selected clones were grown in LB containing 100 mg L-1 ampicillin overnight. Plasmids were extracted using the Pure Yield TM Plasmid Miniprep System (Promega) and sequenced. FASTA sequences were trimmed and cleaned using the Vector NTI software. (www. Invitrogen.com) 3-2.2-Functional characterization Cleaned sequences were subjected to Blast analyses, using the BlastN homology search tool, employing the NCBI (The National Centre for Biotechnology Information, http://www.ncbi.nlm.nih.gov/), SGN (SOL Genomics Network, http://www.sgn.cornell.edu/) and MiBASE (MicroTom Database, http://www.kazusa.or.jp/jsol/microtom/) databases. All the analysed sequences were grouped into three major categories: clones with no alignment in the database, clones aligned with sequences of unknown or hypothetical function and clones aligned with sequences of known function. The sequences belonging to the last category were 44 subjected to: Uniprot (http://www.uniprot.org/), Brenda (http://www.brenda- enzymes.info/) and Kegg (http://www.genome.jp/kegg/pathway.html) databases for the allocation in metabolic groups of interest. 3-2.3-SSH validation: qRT-PCR For molecular analysis, pooled samples of inoculated and mock-inoculated roots of the advanced introgression line (All 96-6 x 1F5(9)), harvested at 0, 4 and 8 hours after inoculation, were employed. Total RNA was purified from root samples using the RNeasy® plant RNA extraction kit (Qiagen). Root tissue was ground into a fine powder in liquid nitrogen and dispersed into extraction buffer. RNA integrity and quantification was determined with Nanodrop (Thermo Scientific Wilmington, USA). Contaminating DNA was then removed from pooled RNA using RQ1 RNase-Free DNase Treatment (Promega). Then reverse transcription was performed with ImProm-II™ Reverse Transcription System (Promega). The reactions were incubated at 25°C for 5 min (primer annealing) at 42°C for 1 h (cDNA synthesis) 15 min at 70°C (stop), and diluted 20-fold with sterile water. The resulting cDNA was amplified using primers specific to the 18s gene. A total of 50 putative differentially expressed sequences were chosen from the three subtractive libraries. The selection was based on the previous functional characterization and covers all the functional categories, unknown sequences included. Primer pairs were designed from these sequences using PRIMER3 software and checked for secondary structure using MFold program (http://www.bioinfo.rpi.edu/applications/mfold/cgi-bin/dna). Realtime analysis was performed in 72-Well Rotor with Rotor-Gene RG-6000 (Corbett Research) using SYBR Green (IQTM Supermix Master, Bio-Rad) detection chemistry. For each gene, the performance of the designed primers was tested by PCR. Efficiency of primers was calculated using Rotor-Gene software on a standard curve generated using a serial dilution of cDNA in triplicate and ranged from 88.0 to 101.0 %. The cycling conditions were set as follows: initial denaturation step of 95°C for 3 min , followed by 50 cycles of denaturation at 95°C for 15 s, annealing and 45 extension at 59°C for 40 s. The amplification process was followed by a melting curve analysis, ranging from 55°C to 95°C, with temperature increasing steps of 0.5°C every 5 s. All primer pairs were optimized for equivalent annealing temperatures. The threshold was set at 0.004 fluorescent units, and the cycle threshold (Ct) values were plotted against the starting template concentration. We tested the 49 genes in two independent runs, each one composed at least of two technical replicates. We performed a Tukey’s test to calculate the significance of Ct between the means of expression levels in inoculated roots compared with the corresponding control tissues, and only the statistically significant results were taken under consideration. 3-2.4-Microarray For array analysis, we employed samples of inoculated and mock-inoculated roots of the advanced introgression line (All 96-6 x 1F5(9)) harvested at 0, 4 and 8 hours after the fungal inoculation from an independent experiment. For array analysis, we prepared a biological replicate of the three fungal inoculations using the same conditions described before: plantlets of All 96-6 x 1F5(9) at the 3-4th true leaf stage have been grown under greenhouse conditions, artificial inoculation was performed according to the root-dip method described in Cappelli et al. (1995). Total RNA was purified from tissue samples using the RNeasy® plant RNA extraction kit (Qiagen). Root tissue (100 mg) was ground into a fine powder in liquid nitrogen and dispersed into extraction buffer. RNA integrity and quantification were determined, respectively, with Bioanalyzer (Agilent Bioanalyzer 2100) and Nanodrop. Expression analysis was performed on a custom 4x2K CombiMatrix array (CustomArray, Mulkiteo, USA) containing 2000 probes of 35-40 bp in length designed using OligoArray 2.1 software (Rouillard JM et al, 2003). Three biological replicates were used for each sample. Reverse transcription, amplification and labelling was performed with manufacturer’s RNA AmpULSe amplification and labelling kit instructions (Kreatech Diagnostics, 46 The according to Netherlands). Pre- hybridization, hybridization, washing and imaging were performed according to the manufacturer's protocols (CustomArray, Mulkiteo, USA). The array was scanned with a GenePix 4400A scanner and data extraction was done using GenePix Pro 7 software. The normalization between arrays was performed using the “quantile” method. Analysis of differentially expressed genes was performed using linear modelling and empirical Bayes methods, as implemented in the Limma R package. P-values were adjusted for multiple testing with the Benjamini and Hochberg method. Genes were called significant when log2 fold change was >= 1 (up-regulated gene) or <= -1 (down-regulated gene) and the adjusted P-value was <=0.05. 3-2.5-Functional characterization and validation by qRT-PCR The modulated genes were assigned to the principal GO categories using their A. thaliana orthologs (http://www.arabidopsis.org/tools/bulk/go/index.jsp) as input in GoSlim database (http://www.agbase.msstate.edu/cgi-bin/tools/goslimviewer.pl). The array validation was conducted on 8 modulated genes (about 5% of the modulated ones). Primer pairs were designed from these sequences using PRIMER3 software as described before. Real-time analysis was performed respecting the run conditions described above: all the analysis were performed in 72-Well Rotor with Rotor-Gene RG-6000 (Corbett Research) using SYBR Green (IQTM Supermix Master, Bio-Rad) detection chemistry. For each gene, the performance of the designed primers was tested by PCR. Efficiency of primers was calculated using Rotor-Gene software on a standard curve generated using a serial dilution of cDNA in triplicate and ranged from 88.0 to 101.0 %. The cycling conditions were set as follows: initial denaturation step of 95°C for 3 min , followed by 50 cycles of denaturation at 95°C for 15 s, annealing and extension at 59°C for 40 s. The amplification process was followed by a melting curve analysis, ranging from 55°C to 95°C, with temperature increasing steps of 0.5°C every 5 s. All primer pairs were optimized for equivalent annealing temperatures. The threshold was set at 0.004 fluorescent units, and the threshold cycle (Ct) values were plotted against the starting 47 template concentration. We tested the genes in three independent runs, each one composed at least of two biological replicates. We performed a Tukey’s test to calculate the significance of Ct between the means of expression levels in inoculated roots compared with the corresponding control tissues, and only the statistically significant results were taken under consideration. 3-3 Results 3-3.1-SSH and functional characterization As a first step toward the identification of eggplant genes involved in the defence response mechanism to Fom and Vd, we constructed three subtractive cDNA libraries from Fom, Vd and Fom+Vd inoculated roots, using a mock inoculation (water) as control. Each library was composed by 960 clones containing putative differentially accumulated transcripts. Root tissues used for preparation of the three libraries derived from plants of the advanced IL All96/x1F(5)9, carrying resistance to Fom. For each treatment, root samples were harvested 8 hours after dipping in fungal suspension or in water, were pooled and used for the extraction of mRNA,cDNA synthesis and subtractive hybridization. Dot Blot analysis was carried out to select the putative differentially expressed genes by comparing the different intensity of spots in the two filter series obtained using both mRNAs of inoculated and mockinoculated samples as labeled probes. After this previous screening, a total of 822 cDNAs were chosen for sequencing analysis. As first consideration, we reported that the selected clones of the three libraries bearing an insert were about 54% of the total (Tab.1). Considering the three libraries, a higher number of up-regulated clones was always found with respect to the down-regulated ones (Tab.8). 48 Library Clones Clones with insert Total Sequenced Total Upregulated Downregulated Fusarium 960 233 155 76.7 % 23.3 % Verticillium 960 236 119 95.8 % 4.2 % Fusarium / Verticillium 960 353 168 88.1 % 11.9 % Tab.8 Total number, number of sequenced clones and percentage of up- and down-regulated clones of the three cDNA libraries. The three libraries of selected clones were normalized by eliminating redundant sequences and a total of 100, 88 and 132 sequences from libraries of roots inoculated with Fom, Vd and Fom+Vd, were respectively obtained. Putative function was assigned to each sequence on the basis of its significant alignment in the databases Kegg, Uniprot and Brenda. All the sequences were subsequently grouped in fourteen functional categories: primary metabolism and photosynthesis, DNA replication/ regulation and expression, translation, protein synthesis/ degradation and modification, cell wall/ division and cytoskeleton, secondary metabolism, development, signal transduction, transport and translocation/membrane associated, stress induced, disease resistance, fungal, unknown function, no matches (Tab.9). Considering the assigned categories, the different expression profiles distinctive for each inoculation experiment (Fom, Vd and Fom+Vd) were evaluated and subjected to comparison . 49 Functional category Unknown function No match Primary metabolism and photosynthesis Secondary metabolism Protein Synthesis, Degradation and Modification DNA Replication, Regulation and Expression Translation Cell Wall, Division and Cytoskeleton Signal Transduction Transport and translocation/ Membrane associated Development Stress induced Defence response Fungal Fom updownregulated regulated 20% 12% 6% 4% 7% 8% 4% 4% 9% 16% 4% 0% 9% 12% 11% 4% 2% 4% 8% 4% 1% 4% 0% 4% 18% 24% 1% 0% Vd updownregulated regulated 22% 26% 13% 50% 1% 14% 8% 3% 2% 50% 1% 4% 0% 2% 4% 0% Fom + Vd updownregulated regulated 14% 22% 21% 5% 11% 9% 2% 0% 8% 9% 0% 5% 2% 9% 6% 5% 9% 13% 13% 9% 0% 5% 5% 0% 9% 9% 0% 0% Table 9. Percentage distribution and frequency (in percentage) of the upregulated and down-regulated sequences belonging to the three libraries, grouped according to their functional categorisation Particular interest was dedicated to the investigation of genes specifically associated to the different inoculations utilized. In the library from Vd inoculated roots, only two down-regulated genes (belonging to “basal metabolism” and “cell wall division and cytoskeleton”) were found, while all the other clones were upregulated (98%) among them, 22% of the sequences having “unknown function” and 26% with no matches were observed. Most of the sequences with known function were associated to primary and secondary metabolism, while few sequences belonging to the “defence response” group were identified (4%); 2% of the known sequences were stress induced. Conversely, in the library from Fom inoculated roots, “genes involved in defence responses” was the most represented category of upregulated genes (18%). With regard the up-regulated genes involved in “defence response” and “cell wall division and cytoskeleton” categories, marked differences between libraries from Fom (18% and 11%) and Vd (4% and 2%) inoculated roots were identified, suggesting that a specific resistance reaction is triggered in the Fom resistant line when the Rfo-sa1 gene is activated by Fom attack. Cell wall modifications represent a well characterized defence response (Hammond-Kosack 50 and Jones, 1996) and in our experimental system could also represent a Rfo-sa1 genespecific response to Fom. Some of the ESTs were expected as originating from fungi, because of the inoculation system, but only one gene was found to align with Fusarium sequences and was obtained from the library of Fom inoculated roots. In the library Fom+Vd, besides the well represented category of sequences with no matches (21%) and unknown function (14%), a significant number of up-regulated genes were classified as “related to defence” (9%), “cell wall” (6%), “transport” (13%), “signal transduction” (9%) and “stress induced” (5%). Therefore, genes derived from roots of Fom and Fom+Vd inoculations have a more similar expression profiles with each other than when compared to the Vd library. Moreover, the plants infected with Fom+Vd showed significanty lower symptoms with respect to plants inoculated with Vd (see chapter 2). Both phenotypical and molecular characterizations lead to the conclusion that a defence strategy mediated by the Rfosa1 locus in the IL seems to be able to improve the responses against a different fungal wilt infection (i.e. Vd), towards which the plant wouldn’t be otherwise able to organize a response. 1 a: upregulated 1 b: downregulated 100% 100% 90% 80% 80% 70% 60% 60% 50% 40% 40% 30% 20% 20% 10% 0% 0% 1 Fom Fom2+ Vd Vd3 1 Fom Fungal Translation Stress induced Development Defence responce DNA Replication, Regulation and Expression Cell Wall, Division and Cytoskeleton Secondary metabolism Transport and translocation/ Membrane associated Primary metabolism and photosynthesis Protein Synthesis, Degradation and Modification Unknown function Signal Transduction No alignment 51 Fom 2+ Vd Fig. 8 Distribution of the up-regulated (1a) and down-regulated (1b) sequences belonging to the three libraries, grouped in each functional group and graphical representation of the percentage number assigned to each functional category. When the sequences of the three libraries were compared, we observed that very few sequences (15) are in common between at least two of them. The higher similarity degree (9 common sequences) was observed between Fom and Fom+Vd libraries, (common genes are for example xyloglucan endonuclease inhibitors, PR proteins, osmotin precursors and TMV induced proteins). Three common genes were identified between Vd and mixed inoculation libraries, and only two between Fom and Vd libraries (2-nitropropane dioxigenase releated, caffeoyl CoA methyl transferase, but in opposing expression). Finally, only one sequence was shared by the three libraries (a TMV-induced protein). To further investigate the biological processes implicated in these plant-pathogen interactions, a panel of putative genes of interest was validated by qRT-PCR. 3-3.2-SSH validation: qRT-PCR A subset of 49 putative defence-induced genes were selected for further analysis by qRT-PCR to validate the SSH results by analysis of their expression patterns in a eggplant line resistant to Fom. Primer pairs were designed for each gene and tested for specificity by Blast comparisons against the NCBI database. The list of the primer pairs referred to relative sequence code and the corresponding annotation is reported in Table 10. Considering the complexity of the experiment (three fungal inoculations and three time points), the first critical aspect relied on the choice of the correct housekeeping gene. In order to find the most suitable housekeeping gene for our study, we performed a preliminary characterization of the most common housekeeping genes known in literature for plant-pathogen interaction (β tubulin, elongation factor 1- α, ubiquitin, 18S rRNA and glyceraldeyde-3-phosphate 52 dehydrogenase). The selection of the best candidate was particularly challenging and time expensive, this topic is presented in detail in a following dedicated chapter., The final result of this work showed that GAPDH (glyceraldeyde-3-phosphate dehydrogenase) was the best housekeeping gene under our conditions and was used to normalize gene expression by means of the comparative Ct method 53 FUNCTIONAL CATEGORY SEQUENCE CODE Defence response M4B10 Stress induced Unknow function no match Primary metabolism Transport and traslocation Secondary metabolism for 5'AGGAACTCCGTGAAGAAGGA 3' rev 3'CGATTAGGGAGATAACCAGCA 5' 172 119 PR5-like protein osmotin-like protein (OSM1) SGN-U314100 osmprec osmotin-like protein (OSM1) SGN-U314100 for 5'CACGTATATGGGGCCGTACT 3' rev 3'AGTTGCCGAATTGATCCAAG 5' 150 179 F5A12 Nitroxyrel 2-Nitropropane dioxygenase- related SGN-U580200 for 5'TGTTGATGCAGGTGTAGATGC 3' 3'CCAGAGCAGCAACATAACCA 5' F8E4 Xylogluinib Putative xyloglucanase inhibitor SGN-U314071 for 5'GAATCAAAACAAGCCCCAAA 3' rev 3'AGGTGTCGGTGGAACAAAAC 5' 150 for 5'TACCTCAGACCCCACCCTT3' rev 3'GCAACTGTCTGGTGAAACGA 5' rev 158 V6A5 Disresprot Disease resistance protein SGN-U585507 M4H2 PR10/TSI pathogenesis-related protein 10 SGN-U312370 for 5'TTCCAATTTGTCTCCAAGAGC 3' 3'AGGGAGATGGTGTTGGAAGT 5' 150 rev 152 F9G6 TMVind TMV induced protein 1-2 (Tin1-2) SGN-U571888 for 5'ACGATGCACCCAACAACTCT 3' rev 3'GGGCATCAAATTACATGAACG 5' F9B9 BPR1 PR-1 protein precursor SGN-U312367 for 5'TACCACCCATTGTTGCATCT 3' rev 3'GTCAAGATGTGGGTCGATGA 5' 149 M3H1 chitin Chitinase SGN-U313266 for 5'GTACCCGATCCGATCTTCC 3' rev 3'ATGCCATGACGTTATCATCG 5' 153 V1F11 Bet v SGN-U314971 for 5'CCAACAGTACCCCATTCACC 3' rev 3'TGAAGGAAGGTTGGTTTCACA 5' 150 136 M7G2 STH-21 S.tub pathogenesis-related protein SGN-U315737 for 5'TGGAGGATGTGTTTGCAAGT 3' rev 3'AGGATTGGCGAGGAGATATG 5' V1B10 radicalind dehydration-responsive protein-related SGN-U317230 for 5'GAGTACCTCCACCAGGGAAAG 3' rev 3'AAGAAGTCAATTGGATGGCCTA 5' 142 V5F4 REF rubber elongation factor SGN-U321960 for 5'GGCCGTAGAAGCCACTGTTA 3' rev 3'TTAACAGAGCTTTGGATGATGC 5' 170 lipocalin temperature stress-induced lipocalin SGN-U313836 for 5'ACAGTGCCATCTGGATTCAA 3' rev 3'GGCTACAAAAGTAATGGAAGTGG 5' M7H1 stressrelat stress-related protein SGN-U313525 for 5'TTACACCAAATACGAGCCAATG 3' 3'CTGCTGTTTGCTGGACCAT 5' F4H6 extensinlike extensin-like protein SGN-U313108 for 5'GAACATGCACGTCTTCACCTT 3' rev 3'GCTGAGGATTTGGACAATCAA 5' F5H7 Caffemetran caffeoyl-CoA O-methyltransferase SGN-U581378 V3C10 ACT101 Actin-101 SGN-U318495 for 5'CCAGTCTACAAGCACAAATCTCC 3' 3'AACTGGAGGAGGTGGTGGA 5' 155 150 rev 132 for 5'CAAGGCCAACAGAGAGAAAA 3' rev 3'TGACTGACACCATCACCAGA 5' for 5'TCCCTCTCGATATCCTTCTCAA 3' 3'AAGGCATCCCTGAGGAAGTC 5' 150 rev 147 rev F2C6 spindle putative spindle disassembly related protein SGN-U580237 F8F3 GPIanc GPI-anchored protein SGN-U323291 for 5'CTGCTATTGTCGTCCCAACA 3' rev 3'GGTGATGGGTTTCCAACAAA 5' M1D1 glucan endo-1,4-beta glucanase SGN-U328622 for 5'ACGGCAGGTCAATTTTGC 3' rev 3'ATGGCAGCCAATGTATTTCC 5' 161 M4F4 mucin mucin-like glycoprotein SGN-U315189 for 5'GTTGGTGAGGGATGATACGG 3' 3'ACCACCAGCGACACCATAC 5' 111 M10C5 cinnamoyl-CoA reductase SGN-U320036 for 5'ACACTGTTCACGCCACTGTT 3' rev 3'AATGCAAGGAGAAGCAAGGT 5' 179 M3D8 caffeoyl caffeoyl-CoA O-methyltransferase S. tuberosum SGN-U313985 for 5'AAGGTTCCAAGGGTGTTTTG 3' rev 3'GTCGAGCAATGGAGAAAATG 5' 163 F3H2 hypotetical protein SGN-U318407 for 5'ACAAGATAGTGCCCAAGGATG 3' 3'ATTCCCAAGTCCACGCTTC 5' V4B11 Solanum melongena BAC 77N19 SGN-U322775 for 5'CCCCAAGTGTAATGAACTAGCA 3' 3'CACCTCGGTATTGTTTTTAACG 5' M5C11 hypotetical protein SGN-U314996 F5F4 rev rev 155 rev 150 for 5'GCTGGCAGAACAAGGAAAAA 3' rev 3'CCACATGTTACTTGCGAGCTT 5' for 5'TCATTTGTAGAATAATGCCCACA 3' 3'GGCGGAAATAAGAGTCTTGC 5' no mach 158 153 152 rev 127 V4A5 Cytb5 Cytochrome b5 SGN-U314583 for 5'CTGAATTCCAGCTTCCATCG 3' rev 3'GCACATAGCAATTGTGAAGCA 5' V1D10 Trepho Trehalose-phosphate phosphatase SGN-U319739 for 5'ATTCAACCCCAACGATTCAA 3' rev 3'TGGACGAAGAGAGTTGGTCA 5' 167 170 152 154 M6F5 Chlorlyc Chloroplast genome SGN-U575915 for 5'GGATCCGCATATGTTTGGTA 3' rev 3'GAATTCATTGGATCCTTGTCC 5' M5D11 glucosid glucan 1,3-beta-glucosidase SGN-U312944 for 5'CAGGCTTTCTTGGACTACCC 3' rev 3'CTTGGATCAAACAGGACAGG 5' 156 149 M3H2 desat microsomal oleic acid desaturase SGN-U346467 for 5'TGTCCGAAATGTGATGGAAG 3' rev 3'TGAACGGCTTCATAGTGTTGA 5' V5H6 PEMT Phosphoethanolamine N-methyltransferase SGN-U314975 for 5'GGAAGTCACCTCCTCCAATG 3' rev 3'TGGCATACTACGCTATGAACGC 5' V2A8 chlortub Chloroplast M9B3 LTP protease inhibitor/seed storage/lipid transfer protein family protein SGN-U575965 F3F2 PutImp7 putative Importin 7 SGN-U564933 for 5'TACTCCGAAAGGAAGGATGG 3' 3'ACAGGCATCCTTTGTGCAT 5' tryinib trypsin and protease inhibitor family prot SGN-U573941 for 5'ATGTTTTTGCTAATTTCGATGG 3' 3'TGCTTCTCTCAAAGGATTGC 5' rev 131 rev 153 for 5'GACGATTTTAGCGATGACGA 3' rev 3'TGCTTGATAACGGAAGTCCA 5' for 5'GTTGTGAGGATTTTACAGTGTGG 3' 3'CCTGAACCAGTTCCTTATTCG 5' 153 rev 101 M9C11 Miraculin-like protein SGN-U315288 for 5'CCACCGGCAAGATGTAGTAA 3' rev 3'TGAAGACCAACCAACTTTTCC 5' V8G8 methsynt S-adenosyl-L-methionine synthetase SGN-U312579 for 5'TTGGTCCGCAACAAGAATTA 3' rev 3'TGAGAGGAGGCAACTACAGGT 5' 180 M3D12 protinibII protease inhibitor type II, CEVI57 SGN-U312589 for 5'CTCTCCTGCAGTGCAACAAT 3' rev 3'AAAGACGGCAAGTTTGTGTG 5' 150 V8F11 methsytub methionine synthase (mennella) SGN-U334026 for 5'CGGTGCTTCTTGGATTCAGT 3' rev 3'CTCAGCAGGAACATCAGCAA 5' 157 139 150 M2G5 AADC aromatic amino acid decarboxylase SGN-U578403 for 5'CCTGGCAGTCGTAATGGTTT 3' rev 3'TTCCTGCTTGTTGAAGACGA 5' V8B10 Lemept Metallothionein-like protein SGN-U313038 for 5'TCATAGGTGCAACACCCTCA 3' rev 3'ACATGTCTTGCTGTGGAGGA 5' 135 THT7 N-hydroxycinnamoyl transferase SGN-U312993 for 5'AGCAAGTTGGCTAAGGAGGA 3' rev 3'GCATCATCGGAAAACAACAA 5' 170 sesqui sesquiterpene synthase SGN-U572430 F8G3 Signal Transduction SGN-U314559 F2C9 M6D10 DNA Regulation , Expression PRIMER SEQUENCE F3G1 M5D1 Protein synthesis Lipoxygenase AMPLICON (bp) SGN CODE for 5'CCACGTTTGGAGGACAACA 3' rev 3'CGTTGGATCATCTTGAGGGTA 5' M1H3 Cell wall ANNOTATION for 5'GGTTGAACCTGTCAGGATATGA 3' 3'CGAGGAATCAACCATTCAAA 5' rev 135 V8H4 TGA bZIP family transcription factor SGN-U566338 for 5'CTTCCCATTCCAGTGGTCAT 3' rev 3'TGAGCCATTGTCAGATCAGC 5' V1F10 zinc finger(C3HC4-type RING finger)family protein SGN-U583727 for 5'CCCTTTGTCGTTTTTCTAGTCC 3' rev 3'GGCTATCATGAGAAAATCGTTG 5' 159 F7E11 leurich leucine-rich repeat protein SGN-U583216 for 5'CTGTGGCTGTAAAGGGGAAT 3' rev 3'CTCCATTGCAAGTGACATGA 5' 141 54 147 Tab 10: List of the sequences selected for qRT-PCR analysis, with the corresponding SGN code, primer pairs sequences and amplicon length (bp) The selection of the 49 candidate genes was conducted after the functional classification, also considering their appearance in more than one library (common sequences) and was based on the annotations reported in Table 3. Investigation was especially performed on the “defence response” category, 12 primer pairs were designed on the sequences from this group. These putative genes were: PR5-like protein, Nitropropane dioxygenase- related protein, osmotin-like protein, putative Xyloglucanase inhibitor, disease resistance protein, Pathogenesis-related protein 10, TMV induced protein 1-2 (Tin1-2), PR-1 protein precursor, Chitinase, Bet v, STH-21 pathogenesis-related protein and Lipoxygenase. Only lipoxygenase was selected as down-regulated from Dot-Blot, while the other 11 putative genes were up-regulated. From the “stress induced” category four up-regulated putative stress-related genes were chosen: dehydration-responsive protein-related, rubber elongation factor, temperature stress-induced and stress-related protein. . The “cell wall” category provided extensin-like protein, Caffeoyl-CoA O-methyltransferase, Actin-101, putative spindle disassembly related protein, GPI-anchored protein, Endo-1,4-beta glucanase, mucin-like glycoprotein, cinnamoyl-CoA reductase and caffeoyl-CoA Omethyltransferase; in this category two down-regulated putative genes GPI-anchored protein and caffeoyl-CoA O-methyltransferase are included. Cytochrome b5, trehalose-phosphate phosphatase, two sequences belonging to chloroplast genome, plus 1,3-beta-glucosidase, microsomal oleic acid desaturase and phosphoethanolamine N-methyltransferase were picked out from the “primary metabolism” category, all up-regulated on the basis of the Dot-Blot analysis. From “transport and translocation” group five primer pairs were designed on the upregulated sequences corresponding to LTP l(lipid transfer protein), putative importin, 55 trypsin, protease inhibitor and miraculin-like protein. Other selected putative upregulated genes belonged to “protein synthesis” (S-adenosyl-L-methionine synthetase, protease inhibitor type II, methionine synthase), “secondary metabolism” (AADC aromatic amino acid decarboxylase, metallothionein-like protein, Nhydroxycinnamoyl transferase and sesquiterpene synthase), “DNA regulation and expression” (TGA bZIP family transcription factor, C3HC4-type zinc finger family protein) and a down-regulated leucine-rich repeat protein sequences belonging to “signal transduction” category. From the “unknown function” and “no alignment” categories, with4 primer pairs were designed to analyze the correspondent sequences. The higher number of up-regulated genes with respect to the down-regulated ones reflects the different percentage of clones classified as up- and down-regulated in the subtractive libraries. The list of the genes analyzed by qRT-PCR and the corresponding conditions of induction were reported in Tab 4. For each of the 49 genes qRT-PCR analyses was carried out considering all the inoculations and timings (despite the library from which it had been selected), in order to validate the different expression pattern between the inoculated samples and the control, and also to find significant differences in gene expression after Fom, Vd and Fom+Vd inoculations. Concerning candidate genes identified through Dot Blot analysis, a modulation in at least one conditions or timings was demonstrated for 40 of 49 candidate genes by qRT-PCR. A total of 9 genes were not significantly induced, in contrast to the prediction from Dot-Blot results. About the others 40, a significant proportion was up-regulated in response to fungi inoculation. 3-3.3-Induction after Fom inoculation: After Fom inoculation, 32 out of the 49 analyzed genes were found to be upregulated in the eggplant roots. The relative abundance of the transcripts of 13 of these 32 genes was in agreement with the outcomes of the Dot-blot confirming their 56 up-regulation following inoculation with Fusarium. On the contrary, the other 19 were up-regulated according to the qRT-PCR analysis although they had been considered unaffected in the Dot-Blot analysis of the clones after Fom inoculation. . This fact can be easily explained if we taken under consideration the much lower sensibility of Dot Blot when compared to qRT-PCR analysis, the last technique is much more reliable and therefore the results obtained through qrt-PCR were considered valid, About the 17 genes not affected by Fom inoculation, 9 of these had never been inducted. Considering the two different timings analyzed (T0+4h and T0+8h), most of the genes (15) were found to be induced both at 4 and 8 hours after Fom inoculation. Interestingly, 13 genes were induced only at T0+4h after inoculation, instead only 4 were inducted at T0+8h. 3-3.4-Induction after Vd inoculation. After Vd inoculation, 30 genes showed a significant induction. The 66,6% of the induced genes were up-regulated and the 33,4% was down-regulated after qRTPCR analysis. Five genes were exclusively induced after Vd inoculation, the remaining were equally up-regulated after both Fom and Vd inoculation. With respect to Dot-Blot results, 7 genes were confirmed in qRT-PCR analysis, 8 showed an opposite induction (selected as up-regulated were down-regulated in qRT-PCR or vice-versa) and half of them (15/30) resulted as Vd induced without a specific selection. On the contrary of the Fom inoculation, most of the Vd-induction (14 of the 30 genes) happened 8 hours after inoculation , 10 genes were induced at both time points and 6 were over-expressed only 4h after inoculation. 3-3.5-Induction after Fom +Vd inoculation: After Fom+Vd inoculation, a total of 31 differentially expressed genes were identified. The percentage of up-regulated genes was higher than down-regulated ones(80,64% and 19,36%, respectively). Almost all the genes (28/31) were coinduced with respect to at least one other inoculation: 22 genes resulted co-induced 57 under the three types of inoculations, 5 were common to Fom and mixed inoculation and only one (Phosphoethanolamine N-methyltransferase) was common to Vd and mixed inoculation. The 3 genes specifically induced following the Fom+Vd inoculation wereEndo-1,4-beta glucanase , dehydration-responsive protein related and one with no match. A low level of agreement was revealed between the Dot-Blot and qRT-PCR analyses: only 11 out of the 31 genes showed the same type of induction. About the others genes, 17 were differentially expressed only in qRT-PCR analysis, the remaining 4 genes showed an opposite induction. Similarly to the Fom inoculation, the most of the genes (16) were induced at both T0+4h and T0+8h after inoculation, followed by 10 genes induced exclusively at T0+4h. Tab 11: Total genes analyzed by qRT-PCR. The ↑ represent a positive induction, the ↓ represent a negative induction. 58 coordinate Annotation Fom M4B10 Lipoxygenase F2C9 PR5-like protein F3G1 F5A12 osmotin-like protein (OSM1) 2-Nitropropane dioxygenase- related F8E4 Putative xyloglucanase inhibitor V6A5 M4H2 F9G6 Disease resistance protein PR10/TSI pathogenesis-related protein 10 TMV induced protein 1-2 (Tin1-2) F9B9 PR-1 protein precursor M3H1 Chitinase V1F11 Bet v M7G2 STH-21 pathogenesis-related protein V1B10 dehydration-responsive protein-related V5F4 rubber elongation factor M1H3 temperature stress-induced lipocalin M7H1 stress-related protein F4H6 extensin-like protein F5H7 caffeoyl-CoA O-methyltransferase V3C10 Actin-101 F2C6 putative spindle disassembly related protein F8F3 GPI-anchored protein M1D1 M4F4 endo-1,4-beta glucanase mucin-like glycoprotein M10C5 cinnamoyl-CoA reductase M3D8 caffeoyl-CoA O-methyltransferase F3H2 Dem2 V4B11 smBAC Solanum melongena BAC 77N19 M5C11 no match F5F4 no match V4A5 Cytochrome b5 V1D10 Trehalose-phosphate phosphatase M6F5 Chloroplast genome M5D11 glucan 1,3-beta-glucosidase M3H2 microsomal oleic acid desaturase V5H6 Phosphoethanolamine N-methyltransferase V2A8 Chloroplast M9B3 LTP lipid transfer protein F3F2 putative Importin 7 M5D1 trypsin and protease inhibitor family prot M9C11 Miraculin-like protein V8G8 S-adenosyl-L-methionine synthetase M3D12 protease inhibitor type II V8F11 methionine synthase (mennella) M2G5 aromatic amino acid decarboxylase V8B10 Metallothionein-like protein M6D10 THT7 N-hydroxycinnamoyl transferase F8G3 sesquiterpene synthase V8H4 TGA bZIP family transcription factor V1F10 zinc finger(C3HC4-type RING finger)family protein F7E11 leurich leucine-rich repeat protein T0+4h T0+8h ↑ ↑ ↑ ↑ ↑ qRT-PCR Vd T0+4h T0+8h ↑ ↑ ↑ ↓ ↑ ↑ ↓ ↑ ↑ ↓ ↑ ↑ Fom+Vd T0+4h T0+8h ↑ ↑ ↑ ↑ ↑ ↓ ↑ ↑ ↓ ↑ ↓ ↑ ↓ ↓ ↑ ↑ ↓ ↑ ↑ ↓ ↑ ↑ ↓ ↑ ↑ ↓ ↓ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↓ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↑ ↓ ↑ ↑ ↑ ↑ ↑ ↓ ↓ ↑ ↑ ↓ ↑ ↑ ↓ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↓ ↓ ↓ ↑ ↓ ↑ ↓ ↑ ↑ ↑ ↑ ↑ ↑ ↑ 59 ↑ ↓ ↑ ↓ ↓ ↑ ↓ ↑ ↑ ↑ ↑ ↓ ↓ ↓ ↓ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↓ 3-3.6-Genes with an interesting expression profiles After these time-expensive qRT-PCR experiments, we conducted another selection step among the 40 induced genes. Our intention was to identify a set of genes strictly correlated with the introgression of Rfo-sa1, locus that triggered the resistance to Fom. Obviously, the genes most interesting for our purposes were belong to the collection of genes inducted by Fom and mixed inoculations. Also the genes induced by the three fungal inoculations were taken under consideration, in particular if it was a significant difference in the gene expression profiles among the three different inoculations. So, we focused on genes that showed significant induction under Fom inoculation (only Fom or with Vd in the mixed inoculation), or induced also by Vd but together with the other inoculations. That way, our interest was fixed on: PR5-like protein, osmotin-like protein, lipoxygenase, PR-1 protein precursor, PR-10 protein, STH-21 pathogenesis-related protein, caffeoyl-CoA Omethyltransferase, trehalose-phosphate phosphatase, LTP or lipid transfer protein, miraculin-like protein, protease inhibitor, and sesquiterpene synthase. Some of those showed very important differences in gene expression, as reported in Fig2. 3-3.7-Microarray and functional classification of the differentially expressed genes. In order to identify transcripts expressed at different levels during fungal inoculation (after inoculation with Fusarium, Verticillium and both fungi together), a customized chip containing probes from a set of cDNA clones putatively involved in defence response was constructed. The cDNA collection derived from the SSH analysis was further enriched with a new set of clones chosen randomly from the three subtractive libraries. In total, we added 17, 28 and 34 sequences from Fom, Vd and mixed library, respectively. Globally, probes were designed on more than 400 clones, selected from the three SSH libraries (Toppino et al 2010), and synthesised in 60 triplicate on microarray slides. The array also included 50 more sequences derived from the databases NCBI and PRGdb (Sanseverino et al. 2010) and encoding for known eggplant defence-related genes and 200 new eggplant sequences involved in root’s stress response and retrieved from a RAD-tag sequencing of two eggplant genotypes (Barchi et al., 2011). In addition, we selected 5 sequences of putative housekeeping genes (β tubulin, elongation factor 1- α, catalitc subunit of phosphatase 2A, 18s rRNA and glyceraldeyde-3-phosphate dehydrogenase). For array hybridization, a technical replicate was prepared of the three fungal inoculations as described before: plantlets of All 96-6 x 1F5(9) at the 3-4th true leaf stage have been grown under greenhouse conditions and inoculated with Fom, Vd and Fom+Vd, while water inoculation was performed as control. In total, 8 different conditions were analyzed: the 4 different treatments (inoculations with Fom, Vd and Fom+Vd and un-inoculated control) at 2 time points (T4/T0 and T8/T0), using three biological replicates for each treatment. Total RNA was extracted from roots and was used for the preparation of fluorescent probes, which were then hybridized to the microarray slide. With this approach, almost 25% of the probes (more than 150 genes) resulted differentially expressed with statistical significance (P<=0.05) in at least one treatment. The genes were identified and then functionally assigned according to the principal GO categories (molecular function, biological process and cellular localization), and their expression profiles were examined following Fusarium, Verticillium and mixed inoculations. This high percentage of modulation with respect to a whole transcriptome microarray approach can be easily explained by considering the probes were previously selected by means of SSH procedures. The number of differentially expressed genes at every conditions and timings is reported in Fig.3. It includes 105 up-regulated and 94 down-regulated genes. 61 70 upregulated 60 downregulated 59 54 51 49 48 50 45 37 37 36 Control Vert. 39 36 Mixed 37 Fus. 38 40 34 37 31 30 20 T4/T0 T8/T0 T4/T0 Mixed Fus. Vert. Control Mixed Fus. Vert. Control Mixed Fus. Vert. 0 Control 10 T4/T0 Fig 9 Number of up- and down-regulated genes after the 3 different fungal inoculations and the control at T4h versus T0 and T8h versus T0. The number of up-regulated genes is higher than down-regulated ones and slightly higher in T8 versus T0 than in T4 versus T0. Whilst, the down-regulated genes remains comparable between T8/T0 and T4/T0. The predominance of the genes with a positive induction was a confirmation of the results obtained first by SSH-Dot-Blot and, then, by qRT-PCR analysis. The functional classification of the genes that showed an induction after the fungal inoculations was performed consulting TAIR database (http://www.arabidopsis.org/tools/bulk/go/index.jsp) . This alternative database was used in order to improve the number of annotations, because the first functional classification, based on Kegg, Uniprot and Brenda and referred to the three subtractive libraries, assigned a metabolic function only to the 50% of the available sequences. In this new characterization, we didn’t obtain the expected results, and the percentage of sequences with a putative annotation was 53,8%, only slightly higher than the first one. 62 The modulated genes were distributed according to the principal GO categories, Molecular Function (MF) Cellular Component (CC) and Biological Process (BP) (Fig. 10 a and b). BP CC MF % Fig 10a: Functional characterization of the up-regulated genes according to the GO categories (Biological Process, Cellular Component, Molecular Function) 63 BP CC MF % Fig 10 b: Functional characterization of the down-regulated genes according to the GO categories (Biological Process, Cellular Component, Molecular Function) 64 About the BP terms, the first evidence is the high percentage of unknown sequences. The eggplant genome is still rather unexplored, this may explain why a lot of sequences find no correlation match in any databases, even using a new classification method. Regarding the GO categorization of the assigned sequences, we can resume that among the up-regulated sequences, the most representative categories are “metabolic, cellular and biological processes”. The principal interest was focused on the sub-categories: “response to jasmonic acid”, “incompatible interaction”, “lateral root primordium development”, “response to abscisic acid”, “response to oxidative stress”, “systemic acquired resistance”. All of these subcategories are strictly correlated with response to pathogen attack. Highly represented after Fusarium inoculation is also the “response to biotic stimulus” sub-category, that included the “response to fungus” GOs. Looking at BP classification of downregulated sequences (Fig.3b), should be noted that the most representative categories are also “metabolic, cellular and biological processes”, but in this case the subcategories regarded the primary metabolism and the oxidation-reduction process. The MF terms “catalytic activity” and “hydrolase activity” occurred most frequently both in the up- and down-regulated genes, but in the classification of down-regulated ones the MF term “binding” was also well represented. Finally, the CC terms indicated that the differentially expressed genes were active in every category, with a particular induction in the “cell wall”, “extracellular region”, “plastid” and “plasma membrane”. The same trend was observed between up- and down-regulated genes. A critical observation about the total number of the genes positively coinduced was that the majority of the inducted genes showed a modulation after all the four treatments, i.e. the three kinds of fungal inoculations and the mock inoculation (control), as well. Not surprisingly, these co-induced genes were PR proteins, osmotin precursor, xiloglucanase inhibitor, proteinase inhibitor and others genes strictly correlated with the defence response mechanism. About the down-regulated genes, we observed a similar co-induction, but the selected genes were less -involved in the defence mechanism: stress related protein, helicase, tubulin beta, 265 oxoglutarate-dependent dioxygenase and xyloglucan endotransglucosylase-hydrolase were some examples of this panel of genes. Subsequently, we performed the array validation using qRT-PCR and a comparison between the results of the two approach (SSH + qRT-PCR and array + qRT-PCR). The array was validated by qRT-PCR analysing the expression profiles of 8 genes, the results obtained will be discussed in the next section. 3-3.8-Array validation by qRT-PCR The microarray results required verification and validation by an alternative and complementary gene expression profiling method. We decided to use quantitative Real-time PCR, because represented the most rigorous, reliable and commonly used technology for our purpose, and SYBER Green was the easiest and least expansive qRT-PCR detention method. It was no doubt about the major bottleneck to array confirmation: the process of design and optimization of gene-specific primer pairs. Taking in consideration all the specific conditions in the primer design (e.g. GC content, melting temperature, possible development of secondary structures), the most important rule regarded the position of the amplicon over the sequence to amplify. The primer pairs had to amplify the probe sequence (30-40 bp) for every gene under validation. We respected these condition for all the primer pairs designed in order to validate the chip results. Fortunately, 7/8 primer pairs previously designed satisfied the conditions reported above, so we designed only 1 new primer pair (Tab.12) 66 SEQUENCE CODE ANNOTATION SGN CODE F2C9 PR5-like protein osmotin-like protein (OSM1) SGN-U314100 F3G1 osmprec osmotin-like protein (OSM1) SGN-U314100 F8E4 Xylogluinib Putative xyloglucanase inhibitor SGN-U314071 M2G5 AADC aromatic amino acid decarboxylase SGN-U578403 M3H1 Chitinase SGN-U313266 M9B3 LTP protease inhibitor/seed storage/lipid transfer protein family protein SGN-U575965 M9C11 Miraculin-like protein SGN-U315288 *F3C3 Fusarium oxysporum f. sp. lycopersici six1 gene PRIMER SEQUENCE for 5'CCACGTTTGGAGGACAACA 3' rev 3'CGTTGGATCATCTTGAGGGTA 5' for 5'CACGTATATGGGGCCGTACT 3' rev 3'AGTTGCCGAATTGATCCAAG 5' for 5'GAATCAAAACAAGCCCCAAA 3' rev 3'AGGTGTCGGTGGAACAAAAC 5' for 5'CCTGGCAGTCGTAATGGTTT 3' rev 3'TTCCTGCTTGTTGAAGACGA 5' for 5'GTACCCGATCCGATCTTCC 3' rev 3'ATGCCATGACGTTATCATCG 5' for 5'ATGTTTTTGCTAATTTCGATGG 3' rev 3'TGCTTCTCTCAAAGGATTGC 5' for 5'CCACCGGCAAGATGTAGTAA 3' rev 3'TGAAGACCAACCAACTTTTCC 5' for 5'GACGGGATGGACCTCTTGAAA 3' rev 3'CAGTAGCTGTCCGTGAAGCA 5' AMPLICON (bp) 119 150 150 139 153 153 150 171 Tab 12: List of the primer pairs used for array validation by qRT-PCR. The * is associated to the primer pair newly designed. So, Eight genes were selected from the total of modulated ones (5% of the total, as suggested in literature by Morey et al., 2006). We decided to select both upand down-regulated genes, and also genes that showed marked or slight differences in gene modulation. The selection was based also on functional classification, hence defence-related genes were considered more interesting than other ones. So, we obtained a panel of 8 genes in representation of the whole array. The results from qRT-PCR whth the specific primers confirmed the reliability of the microarray data. The expression value determined in inoculated roots versus control by qRTPCR analysis were higher than the fold-change determined by our array hybridization; in some cases, with a dramatic difference. We found a similar tendency for the inoculated versus control expression value, albeit not to the same extent. These results reflect the fact that qRT-PCR is a more sensitive technique than transcript profiling using arrays and, likely, is not affected by related transcripts that cause problems of cross-hybridization, at least with gene-specific primers. On the basis of this consideration, we planned to extent our qRT-PCR experiments to others nine modulated genes, in order to and to better discriminate the specific fungalresponse. In this sense, the microarray gave us a general information about the modulated genes, and allowed us to screen a panel of genes for a specific and more accurate second step of qRT-PCR experiments. The nine genes selected with the corresponding primer pair sequences are reported in Tab 13. 67 SEQUENCE CODE ANNOTATION SGN CODE M3D8 caffeoyl-CoA O-methyltransferase SGN-U313985 V8G8 methsynt S-adenosyl-L-methionine synthetase SGN-U312579 M4H2 PR10/TSI pathogenesis-related protein 10 SGN-U312370 V1D10 Trehalose-phosphate phosphatase SGN-U319739 M7G2 STH-21 S.tub pathogenesis-related protein SGN-U315737 F8E4 Xylogluinib Putative xyloglucanase inhibitor SGN-U314071 M3D12 protinibII protease inhibitor type II, CEVI57 SGN-U312589 *F10F7 xyloglucan endotransglucosylase-hydrolase xth3 SGN-U579445 *M9E2 xyloglucan-specific fungal endoglucanase inhibitor SGN-U274748 *M9F6 fe-superoxide dismutase SGN-U271296 *M4C2 RNA helicase SDE3 AMPLICON (bp) PRIMER SEQUENCE for 5'AAGGTTCCAAGGGTGTTTTG 3' rev 3'GTCGAGCAATGGAGAAAATG 5' for 5'TTGGTCCGCAACAAGAATTA 3' rev 3'TGAGAGGAGGCAACTACAGGT 5' for 5'TTCCAATTTGTCTCCAAGAGC 3' rev 3'AGGGAGATGGTGTTGGAAGT 5' for 5'ATTCAACCCCAACGATTCAA 3' rev 3'TGGACGAAGAGAGTTGGTCA 5' for 5'TGGAGGATGTGTTTGCAAGT 3' rev 3'AGGATTGGCGAGGAGATATG 5' for 5'GAATCAAAACAAGCCCCAAA 3' rev 3'AGGTGTCGGTGGAACAAAAC 5' for 5'CTCTCCTGCAGTGCAACAAT 3' rev 3'AAAGACGGCAAGTTTGTGTG 5' for 5'CATTGTAATTGGGGGCAAGT 3' rev 3'GAGCTGCATGTGAATTTTACCA 5' for 5'GCTGCATCAAGATTGGGATT 3' rev 3'ATGCGCATTATTCACACCTG 5' for 5'AATCGGCGACCTGACTACAT 3' rev 3'CTTAATGCGCATCTCCCTTC 5' for 5'CAGCACTCAAACCCGAAACT 3' rev 3'GGCAAGTGAATACCTTTCCACA 5' 163 180 152 167 136 150 150 169 224 160 158 Tab 13: list of the 9 genes analysed after the array validation. The * symbol is for the new primer pairs designed. In total, we analysed 18 genes, 5 of those were newly selected after the array results. The mRNA used for both microarray and qRT-PCR experiment was extracted from a technical replicate of the starting material. We chose 9 up-regulated and 9 down-regulated genes, and the correlation between qRT-PCR and the induction trend (from microarray output) was almost 100%: only AADC (aromatic amino acid decarboxylase), S-adenosyl-L-methionine synthetase and fe-superoxide dismutase showed an opposite induction if we compare array and qRT-PCR results. If we considered the single inoculation type and the two distinct time points, the agreement between array and qRT-PCR results was lower: the details of these comparison are in Tab 14. coordinate Annotation qRT-PCR Vd T0+8h Fom F2C9 F3G1 F8E4 M4H2 T0+4h T0+8h ↑ ↑ ↑ T0+4h ↑ ↑ PR5-like protein osmotin-like protein (OSM1) Putative xyloglucanase inhibitor Fom+Vd T0+4h T0+8h ↑ ↑ ↑ PR10/TSI pathogenesis-related protein 10 M3H1 Chitinase M7G2 STH-21 pathogenesis-related protein V1D10 Trehalose-phosphate phosphatase M9B3 LTP lipid transfer protein M9C11 Miraculin-like protein V8G8 S-adenosyl-L-methionine synthetase M3D12 protease inhibitor type II M2G5 aromatic amino acid decarboxylase M3D8 caffeoyl-CoA O-methyltransferase F3C3 Fusarium oxysporum f. sp. lycopersici six1 gene F10F7 xyloglucan endotransglucosylase-hydrolase xth3 M4C2 RNA helicase SDE3 M9E2 xyloglucan-specific fungal endoglucanase inhibitor M9F6 fe-superoxide dismutase ↓ ↑ ↑ ↑ ↑ ↓ ↑ ↓ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↑ ↑ ↑ ↑ ↓ ↑ ↓ ↓ ↓ ↓ ↑ ↑ ↑ ↓ ↓ ↑ 68 array Vd Fom T0+4h T0+8h T0+4h T0+8h ↑ ↑ ↑ ↑ ↓ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↑ ↓ ↑ ↑ ↓ ↑ ↑ ↑ ↑ ↑ ↓ ↑ ↓ ↑ ↑ ↓ ↑ ↓ ↓ ↓ ↓ Fom+Vd T0+4h T0+8h ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↑ ↓ ↑ ↓ ↑ ↑ ↑ ↑ ↓ ↓ ↑ ↑ ↑ ↓ ↓ ↑ ↑ ↓ ↑ ↓ ↓ ↑ ↓ ↑ ↓ ↓ ↑ ↑ ↓ Tab 14: Expression trends of the 18 genes selected to validate the array in qRT-PCR compared with the array output in the different conditions (Vd, Fom and Vd+Fom) and time points (T0+4h, T0+8h) . The ↑ represent a positive induction, the ↓ represent a negative induction For our purposes, the most important and significant comparison was between the same genes analysed in the two technical replicates by qRT-PCR: only the genes with a confirmed expression profiles represented a good candidate for a subsequent functional study. Then, attention was focused on a set of twelve genes analysed in both replicates. As showed in Tab 8, osmotin like precursor, putative xyloglucanase inhibitor, STH21, caffeoyl Co-A methyltransferase, LTP miraculin and proteinase inhibitor were the genes having a most consistent correlation between the two replicates. To facilitate this comparison, the induction was analysed considering only the fungal inoculation and not the two distinct time points. Not surprisingly, all of this genes were up-regulated (Tab.15). coordinate F2C9 Annotation qRT-PCR (1 replicate) Fom Vd Fom+Vd ↑ ↑ ↑ PR5-like protein F3G1 osmotin-like protein (OSM1) F8E4 Putative xyloglucanase inhibitor M4H2 ↑ ↑ ↑ ↑ qRT-PCR (2 replicate) Fom Vd Fom+Vd ↑ ↑ ↑ ↑ PR10/TSI pathogenesis-related protein 10 M3H1 Chitinase M7G2 STH-21 pathogenesis-related protein V1B10 dehydration-responsive protein-related M3D8 caffeoyl-CoA O-methyltransferase M9B3 LTP lipid transfer protein M9C11 Miraculin-like protein V8G8 S-adenosyl-L-methionine synthetase M3D12 protease inhibitor type II M2G5 aromatic amino acid decarboxylase ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↑ ↑ ↓ ↑ ↑↓ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↑ ↓ ↑ ↓ ↑ ↑ ↑ ↑ ↓ ↑ ↑ Tab 15: comparison between the genes analysed in the two technical replicates by qRT-PCR. The emphasised genes showed the most correspondence in the two replicates. In conclusion, our verification studies by SSH, array and qRT-PCR yielded a total of 7 genes corresponding to a range of functional classes, the most prominent 69 one being defence response. These seven genes represent the panel of candidates for a subsequent functional study, based on an accurate and complete analysis of their expression profiles under three fungal inoculations, two time points and two technical replicates, each one composed by three biological replicates. 3-3.9-F3C3 : Fusarium oxysporum f. sp. lycopersici six1 gene, fot5 gene, six2 gene, shh1 gene and ORF2 Another important result regarded the sequence F3C3, the only one sequence identified from Fom and selected in the Fom inoculation library. This sequence was annotated at the first functional classification using Blast homology search tool, and its expression profile was analyzed after array hybridizations. To confirm the array induction after Fom and mixed inoculation, we designed a specific primer pair for qRT-PCR analysis. The expression profile of this gene is reported in Fig 5. In this case, , after Vd inoculation and in the control there was no detection of the Fom gene, and after Fom and mixed inoculation we found a positive induction. These data are a confirmation of the array results. 18 16 14 12 c 10 8 f v 6 4 m 2 0 T0 T4 T8 Fig 11. Expression profile of the six 1 gene after Fom inoculation (red line) and mixed inoculation (blue line). 70 For the unraveling of molecular mechanisms of disease resistance in plants, it is important to identify the avirulence factors from the pathogen. Identification of such factors may also lead to a better understanding of the molecular basis of pathogenicity, as their secretion in planta could play a positive role in colonization of a susceptible host plants. From fungal plant pathogens, few avirulence factors have yet been identified. The majority of these are small cysteine-rich proteins (Rep et al., 2004). However, six1 gene is required for I-3 mediated resistance of tomato towards Fusarium oxysporum f.sp. lycopersici (Rep et al., 2004). The biological function of the six 1 protein remains to be established. 3-4 Discussion The combination of suppression subtractive hybridization (SSH) and microarray techniques allowed to identify a large number of eggplant genes differentially regulated during the response of an eggplant introgression line (All96/6x1F59) to three fungal inoculations: Fom, Vd and Fom +Vd. As a first step for the elucidation of cellular events taking place during the interaction between fungi and the eggplant line resistant to Fom, SSH libraries were prepared from root tissues of the resistant plants inoculated with the three kinds of fungal suspensions. SSH combines suppression PCR with subtraction and normalization steps in a single reaction, thus increasing, therefore the possibility rescuing low expressed genes (Diatchenko et al., 1999). Genes with unknown roles were identified in the three subtractive libraries, which indicates the possibility of identifying new genes which have not yet been reported in previous studies of stress/defense response. Similar results were observed in SSH libraries from Arabidopsis, potato and tomato, in biotic stress conditions (Oliveira et al., 2008). Table 1 shows that the higher number of genes involved in defense mechanisms were found in the Fom and mixed inoculation libraries. 71 Plant genes with known roles involved in biotic stress response were identified both in Fom and mixed inoculation libraries, while in the Vd inoculation library the most representative categories are “primary metabolism” and “protein synthesis”. Therefore, the kind of genes belonging to the libraries derived from roots inoculated with Fom and Fom+Vd and also their expression profiles are more similar with each other than when compared to the Vd library. This evidence is strictly correlated to the fact that the eggplant line used in this work triggers the resistance locus to Fom, therefore it seems that the genes activated as a consequence to the Fom inoculation (also when present in the mixed inoculation) allow the plant to set a more organized and specific response to the infection; otherwise, while the response after Vd inoculation , for which the line considered doesn’t possess a tolerance locus, seems to be less specific and limited to the modulation of genes involved in primary metabolism.. Some of the genes identified in the “defense response” category in both Fom and mixed inoculation libraries are xyloglucan, endonuclease inhibitors, PR proteins, osmotin precursors and TMV induced proteins. The group of unknown genes represents the 20%, the 22% and the 14% of the Fom, Vd and mixed inoculation libraries of up-regulated genes, respectively. By monitoring kinetics of the defense-related gene expression at two time points during a 8h time course after fungal inoculations, initial changes in the eggplant transcriptome were detected at 4h and 8h after inoculations. Assuming that, during this limited period of time, the defense responses were already induced by the plants. This assumption is based on previous biochemical analyses (Mennella et al, 2010). qRT-PCR analysis was performed on 49 genes from the three SSH libraries selected on the basis of their functional classification . The results of these time-expensive experiments represented an important starting points for the next analysis conducted by array. Of the 49 genes analyzed, 40 showed a significant modulation after at least one type of inoculation or timing. The agreement between Dot-Blot and qRT-PCR data was slightly higher than 50%: from the screened 49 genes from Dot-Blot filters, 9 didn’t show any induction and 11 were modulated but in an opposite trend. Twenty-eight of 72 the genes analyzed by qRT-PCR were consistent with the Dot-Blot results, but also among these genes we found some discrepancies: some genes showed a significant induction after a type of fungal inoculation, but ever were selected as inducted from another inoculation type. These genes were considered as differentially expressed because the different reliability of the two techniques used, qRT-PCR represent the most reliable technique in studies for monitoring gene expression (Gutierrez et al., 2008), while SSHis most suitable as screening method. Some of the genes selected showed a very high differences in gene expression if we compare the three inoculation profiles with the control (Fig 2). For example, lipoxygenase, proteinase inhibitor, miraculin and sesquiterpene shyntase were genes that showed differences in the expression level after Fom and mixed inoculation and not after Vd when compared to the control. All these genes were correlated with defense mechanism. Sesquiterpene shyntase showed a similar induction profile, but over-expression of this gene was particularly evident after Fom inoculation. In this work, SSH and microarray approaches were used to identify a panel of genes differentially expressed during fungal inoculation from a eggplant line resistant to Fom. This study focused on the early stages of fungal inoculation in root tissues due to important role of early response genes in mediating the effect of fungal attack. A customized Combimatrix chip was used in order to analyze all the 400 sequences previously selected using SSH. In addition, 200 sequences from RAD tag sequencing of two eggplant genotypes (Barchi et al., 2011)and from NCBI and PRGdb (Sanseverino et al., 2010) databases were included. Others 5 sequences were selected as putative housekeeping genes used in plant/pathogen interaction works. Probes on all these selected sequences were designed for the chip hybridization.. A technical replicate of the three fungal inoculations described in this work was prepared. In total, 8 different treatments were analyzed (4 inoculation types at 2 time points (T4/T0 and T8/T0). 73 The hybridisations of the chip lead to the identification of 150 induced genes (25%). This high percentage was easily explained by the previous selection of the probes among a set of defence-related genes. The number of up-regulated genes was higher than down-regulated ones and slightly higher in T8 versus T0 than in T4 versus T0. Instead, the down-regulated genes remains comparable between T8/T0 and T4/T0. The predominance of the genes with a positive induction was a confirmation of the results obtained first by Dot-Blot and then by qRT-PCR analysis. The functional classification of the modulated was genes performed consulting Tair database (http://www.arabidopsis.org/tools/bulk/go/index.jsp) instead of Uniprot, Kegg and Brenda databases used for the functional classification of the SSH libraries. The use of an alternative database for functional classification was done because of the low number of annotations obtained by using Kegg, Uniprot and Brenda. However, using TAIR the percentage of sequences with a putative annotation was only slightly higher (53,8%) than the previous ones (50%). The modulated genes were distributed according to the principal GO categories, Molecular Function (MF) Cellular Component (CC) and Biological Process (BP) (Fig. 3a and b). About the BP terms, the first evidence is the high percentage of unknown sequences. Regarding the GO categorization of the assigned sequences, we can resume that among the up- and down-regulated sequences, the most representative categories are metabolic, cellular and biological processes. The MF terms “catalytic activity” and “hydrolase activity” occurred most frequently both in the up- and downregulated genes, the MF term “binding” was also well represented in the classification of down-regulated genes. Finally, the CC terms indicated that the differentially expressed genes were active in every categories, especially in the “cell wall”, “extracellular region”, “plastid” and “plasma membrane” The array validation by qRT-PCR was conducted on a percentage of 5% of the modulated genes. The array(?) was less sensitive than qRT-PCR, like reported in 74 literature (Morey et al., 2006). As example, the modulation of the gene “protein like precursor” ranked from 1,5- to 3,7-fold by array results, instead by qRT-PCR the same gene showed an induction between 4- to 18-fold. The qRT-PCR analysis was extended to 10 additional genes, of which four never analysed by real time. This panel of genes was investigated , in a technical replicate. Considering the first 8 genes selected for array validation, a total of 18 genes were tested, and its expression profiles were compared first with the array results, than with the expression profiles of the same genes previously analyzed by qRT-PCR (Tab. 7 and 8). Seven genes showed a tight agreement across the techniques utilized, especially qRT-PCR and microarray, because these data were obtained from independent biological and technical replicates, the results were consistent, reliable and repeteable. These seven genes were: osmotin like precursor, putative xyloglucanase inhibitor, STH21, caffeoyl Co-A methyltransferase, LTP (Lipid transfer protein), miraculin and proteinase inhibitor. The sequence F3G1 was selected from the Fom inoculation library, and its annotation was complex. We had a SGN code (SGN-U314100) corresponding to an osmotin like precursor, but we found no At code and no EC number corresponding to this SGN. The osmotin like precursor was up-regulated, and its expression profiles was confirmed after Fom inoculation in both the qRT-PCR experiments. By array, F3G1 results always modulated. Typically, osmotin is correlated whit defence mechanism, there are some evidence in literature that is one “stress protein” isolated from tobacco cell cultures (Singh et al., 1989). The accumulation of osmotin mRNA is developmentally regulated and controlled by a variety of hormonal or environmental signals, including abscisic acid (ABA), ethylene, viral infection, salinity, desiccation, and wounding (Zhu et al., 1995). Based on its structure and expression patterns, osmotin has also been classified as a member of PR 5 proteins and, thus, implicated to have dual function in osmotic stress and plant pathogen defence (Zhu et al., 1995). 75 The sequence F8E4 was selected from the Fom inoculation library, and its annotation was composed of the annotation (SGN-U314071) corresponded to xyloglucanase inhibitor. The role of xyloglucanase inhibitor in plant-pathogen interaction is related to cell wall protection. The cell wall of plants is composed of various polysaccharides, such as cellulose and hemicellulose. Cellulose is a major component of the plant cell wall, and cellulose microfibrils are linked via hemicellulose. The network of cellulose–hemicellulose provides tensile strength. In most dicotyledonous plants, hemicellulose comprises xyloglucan, which consists of a cellulosic backbone substituted with side chains. These b-linked glucans, namely cellulose and xyloglucan, are constantly exposed to degradation by various endoβglucanases, such as cellulase and xyloglucanase from pathogenic bacteria and fungi. To protect the cell wall from degradation by such enzymes, plants secrete proteinaceous inhibitors against endo-b-glucanases. The first endo-b-glucanase inhibitor protein discovered was the so-called xyloglucan-specific endo-b-1,4glucanase inhibitor protein (XEGIP) (Yoshizawa et al., 2011) a tomato protein that inhibits fungal xyloglucan-specific endo-b-1,4-glucanase (XEG), an enzyme classified as a member of the PR protein. The sequence M7G2 was selected from the mixed inoculation library, and its annotation was referred only to a SGN code (SGN-U315737) corresponding to a STH21 pathogenesis-related protein. This gene showed a positive induction after Fom and mixed inoculation, but also after Vd treatment (only in the qRT-PCR experiment regarding the second replicates). Caffeoyl Co-A methyltransferase (M3D8) was selected from the mixed inoculation library. Its SGN code (SGN- U313985) corresponds to the functional classification of a transferases that specifically transfers one-carbon group methyltransferases. The systematic name of this enzyme class is S-adenosyl-Lmethionine:caffeoyl-CoA 3-O-methyltransferase. Other names in common use include caffeoyl coenzyme A methyltransferase, caffeoyl-CoA 3-O- methyltransferase, and trans-caffeoyl-CoA 3-O-methyltransferase. This enzyme 76 participates in phenylpropanoid biosynthesis, a diverse family of organic compounds that are synthesized by plants from the amino acid phenylalanine. The name ”phenylpropanoid” is derived from the six-carbon, aromatic phenyl group and the three-carbon propene tail of cinnamic acid, which is synthesized from phenylalanine in the first step of phenylpropanoid biosynthesis. Phenylpropanoids are found throughout the plant kingdom, where they serve as essential components of a number of structural polymers, provide protection from ultraviolet light, defend against herbivores and pathogens, and mediate plant-pollinator interactions as floral pigments and scent compounds. LTP (M9B3- SGN-U575965) was selected from the mixed inoculation library and was up-regulated after the three fungal inoculations. The induction after Fom and mixed inoculation was higher than after Vd treatment and control. The involvement of LTP in plant-pathogen interaction was previously reported in literature (Blilou et al., 2000). One of the major inducible plant defence responses is the accumulation of plant defence proteins, including PR proteins and other with toxic or inhibitory activity towards pathogens. In this sense, plant lipid transfer protein or LTP, previously thought to be involved in the transfer of a broad range of lipids between membranes in vitro (Kader 1996) have also been implicated in plant defence (Blilou et al., 2000). The defensive role of plant LTPs was found because of their ability to inhibit bacterial and fungal pathogens growth, their distribution at high concentration over exposed surfaces, and the response of Ltp gene expression to infection with pathogens (Garcia-Olmedo et al., 1995). Miraculin (M9C11) was selected from the mixed library. Annotation to this sequence was given only using its SGN code (SGN- U315288). Miraculin showed a very strong positive induction after Fom and mixed inoculation, in both the replicates. Miraculin is a plant protein, which can modify a sour taste into a sweet taste, purified from extracts of red berries of Richadella dulcifera (Masuda et al.,1995). Purified native miraculin protein has an amino acid sequence of 191 residues with a molecular mass of 24,600, and a cDNA encoding miraculin also has 77 been cloned and sequenced (Masuda et al., 1995). LeMir is rapidly induced and localized in tomato root tips by nematode infection, and is predicted to be secreted from the roots into the surrounding environment (Brenner et al., 1998). Some other cDNAs appearing in an internet database from EST programs of model plants, such as Arabidopsis, also showed sequence similarity to miraculin and have been designated as miraculin-like protein genes (Tsukuda et al., 2006). PR-6 or proteinase inhibitors (M3D12- SGN-UU312589) was also selected from the mixed inoculation library, and its induction was the strongest among all the qRT-PCR analysis carried out. After Fom and mixed inoculation its expression level reached, respectively, 200- and 300-fold with respect to the control. In conclusion, by using SSH combined with microarray approach, we identified a group of genes differentially expressed during the response of eggplant to Fom and/or Vd inoculations. The qRT-PCR experiments performed on a panel of these genes allowed us to better understand the expression trends of the selected genes. These genes represent candidates for further functional genomic studies. Moreover, their potential use as molecular markers could be explored by looking for the allelic variation in the eggplant gene pool to discover superior alleles having an improved response to pathogen attacks. 78 Chapter 4 Housekeeping gene selection using an external control for qRT-PCR analysis of differentially expressed genes in eggplant roots after three different fungal inoculations 4-1 Introduction The two fungal wilts caused by Verticillium dahliae (Bath R.G. et al 1999) and Fusarium oxisporum f. sp. melongenae (Urrutia Herrada M.T. et al 2004) are among the most serious diseases of eggplant. They occur in Asian countries and in Europe, both in greenhouse and open-field cultivation (Baysal et al, 2010). At the moment, little is known about the mechanisms involved in the plant-pathogen interaction occurring in eggplant during these two fungal infection, therefore our purpose is to highlight the role of many differentially expressed genes which we isolated, and putatively acting in response to these fungal infections and at different timings after root inoculation. The locus Rfo-Sa1 carrying resistance to Fusarium oxysporum (Toppino et al, 2008), was introgressed from the allied species S. aethiopicum into Solanum melongena background by somatic hybridization, followed by several cycles of backcrosses of the androgenetic dihaploids from the somatic hybrid with different cultivated lines of eggplant. One of the so-obtained Fusarium-resistant Advanced Backcrossed eggplant Lines (ABLs), ALL96-6 x 1F5(9), was utilized for identification and characterization of the differentially expressed genes involved in the plant-pathogen interaction. Plantlets of this ABL were separately inoculated with Fusarium, Verticillium and both fungi together, while roots dipping in water was used as mock inoculation. Through selective-suppression hybridization we created three cDNA libraries of differentially expressed genes putatively involved in the plant-pathogen interaction; from these libraries we chosen the most interesting genes which underwent a more accurate characterization. Our final purpose is to investigate 79 the expression of these selected genes among the three inoculations and at four different times: 0, 4, 8 and 24 hours after roots dipping. At present, qPCR is the most suitable tool in quantitative gene expression studies due to its precision and sensitivity (Gutierrez et al., 2008). The most diffused approach with this technique is relative quantification, whereby the expression level of a target gene is normalized depending on an internal reference gene, also called housekeeping (Brunner et al, 2004). However, the reliability of the results is strictly correlated whit the selection of the internal reference gene, which is usually chosen among the list of genes expressed at a constant level under different experimental conditions. Evidently, the first critical aspect in a Real Time analysis lays in the selection of an adequate housekeeping, considering that a failure in this preliminary step may result in biased gene expression profiles and therefore leading to false conclusions (Gutierrez et al, 2008). The stable expression of a reference gene turn out to be mandatory in any qPCR analysis (Turabelidze et al 2010). Many recent studies (Vandesompele et al 2002) showed that also internal standard genes could vary depending on different experimental conditions, and not often a reliable control has been reported. In addiction, Vandesompele et al (2002) showed that the use of only one reference gene may lead to errors in expression data rising up to 20-fold, and therefore recommended, for an accurate normalisation, the use at least two or three reference genes. In our work, the selection of an adequate internal control is particularly challenging, considering that if our purpose is to compare the expression levels of the selected genes among the three different plantpathogen interactions, the putative reference gene should be not affected by any of the fungal inoculations and any timing considered after root dipping. Therefore, an accurate validation of the stability of candidate housekeeping genes is essential as first step. For our purposes, a list of putative housekeeping genes was selected from literature, searching for genes acknowledged to be used as housekeeping in 80 experiments of pathogen-mediated stress induction in plant. We found 7 potential candidates from those most frequently used as references: β tubulin, elongation factor 1- α, ubiquitin, catalitc subunit of phosphatase 2A, 18s rRNA, glyceraldeyde-3phosphate dehydrogenase and actin (Lovdal and Lillo, 2009). Actin was discharged from this analysis, considering its presence in our libraries of putative differentially expressed genes. The expression stability of the remaining candidate genes was tested in our experimental conditions. Nevertheless, also to validate the supposed stable expression of each putative housekeeping gene, we would need a prior knowledge of a stable gene-expression measure, to be used itself as control for the tested candidate genes. To solve this circular problem, and therefore to make possible an accurate gene expression normalization, several statistical algorithms have been recently developed, like geNorm (Vandesompele et al 2002), BestKeeper (Pfaffl et al, 2004) and Normfinder (Andersen et al, 2004). The statistical method geNorm is a freely available and well-recognized Excel based tool for normalization of experimental data from gene expression analysis (http://allserv.ugent.be/;jvdesomp/genorm/index.html). This method based on the principle that in all samples the expression ratio of two housekeeping genes remains constant and invariable. This algorithm uses pair wise comparison and geometric averaging across a matrix of candidate genes. The output is the gene-stability measure M: at the lowest M values corresponds the most unvarying couple of genes; the gene corresponding to the highest M value is eliminated until the two most stable expressed genes remains. This simple approach is largely used in gene-expression studies in mammals, yeast and bacteria, but remains undervalued in studies regarding plants (Gutierrez et al., 2008). Smith et al (2003) proposed an alternative method to verify the stability of the candidate housekeeping genes in human cells among different experimental conditions. Its method uses an exogenous sequence (RuBisCo transcript) as an external reference gene which allows comparison between the variation of the target 81 genes of interest. We developed the same approach but in plant, as suggested by McMaugh et al (2003), as external standard we used the bacterial gene for the resistance to Kanamycin, but we used the external reference gene like a fixed point to normalize the candidate internal reference genes. We also applied the geNorm algorithm to all the genes tested, external transcript included, and we find a strong correlation by the two different approaches. This work can serve as resource to help select and screen eggplant reference genes for gene expression studies in root tissue under biotic stress. 4-2 Materials and methods 4-2.1 Plant materials and growth conditions Seed-derived plantlets of an advanced introgressed line of eggplant resistant to Fusarium oxysporum, (ALL 96-6 x 1F5(9)), grown in greenhouse, were individually inoculated at the 3-4th true leaf stage, according to the root-dip method described in Cappelli et al. (1995) with a conidia suspension of Fusarium (1,5 x 106 conidia/ml), Verticillium (1 x 106 conidia/ml), or both fungi together (mixed inoculation), while root dipping in water was used as mock-inoculation. Inoculated and mock-inoculated eggplant roots were harvested at 0, 4, 8 and 24 hours after artificial inoculation, frozen in liquid N2 and stored at -80 °C. 4-2.2 RNA isolation and reverse transcription 100 mg of root tissue were ground into a fine powder in liquid nitrogen, and total RNA was purified using the RNeasy® plant RNA extraction kit (Qiagen, Clifton Hill, Victoria, Australia) according to the manufacturer’s instructions. RNA purity and quantification was determined with Nanodrop (Thermo Scientific Wilmington, 82 USA). A fixed amount of 30 ng of the heterologous Kanamycin 1.2 kb Control RNA (Kan 1.2; Promega, Madison, WI, USA) was then added to 3000 ng of total RNA (the concentration ratio kanamicin RNA /total RNA was 1/100 in all the samples), in order to introduce an External Reference Transcript (ERT) in each sample which would undergo the processing of reverse transcription together with the endogenous sequences. Contaminating DNA was then removed from each sample of “pooled” RNA (endogenous plus ERT) using RQ1 RNase-Free DNase Treatment 1U/µl (Promega) according to the manufacturer’s instructions. Reverse transcription was then performed with the ImProm-II™ Reverse Transcription System (Promega, Madison, WI, USA), in a total volume of 20 L. The reactions were incubated at 25°C for 5 min (primer annealing), then at 42°C for 1 h (cDNA synthesis). The cDNA solutions were then incubated for 15 min at 70°C to stop the reaction, and diluted 20-fold with sterile water 4-2.3 Primer design We selected from databanks 6 potential reference genes (Table 16) which are commonly used as internal control for expression studies in tomato, such as GAPDH (glyceraldehyde-3-phosphate dehydrogenase), EFα1 (elongation factor α1), TUB ( alpha-tubulin), PP2Asc (catalytic subunit of protein phosphatase 2A), 18S (18s rRNA) and UBI (ubiquitin). Primers to amplify each candidate housekeeping in eggplant were designed on the basis of the homologous sequences of the corresponding genes in tomato, retrieved from the DFCI-TGI (Tomato Gene Index) EST database (http://compbio.dfci.harvard.edu/tgi/cgi-bin/tgi/gimain.pl?gudb=tomato). Six primer pairs were designed (Table1) on these sequences (170 bp maximum length, optimal Tm at 59°C, GC% between 40% and 60%) using PRIMER3 software. A check for secondary structure within the amplicon was performed using the MFold program (http://www.bioinfo.rpi.edu/applications/mfold/cgi-bin/dna). 83 Primer’s specificity was confirmed by checking of the correct PCR product sizes on an 1% agarose gel and then by sequencing of the amplicons. The S. melongena amplified sequences were compared to Tomato sequences with BLAST 2 sequences software (http://www.ncbi.nlm.nih.gov/blast/bl2seq/bl2.html). All the amplified sequences shared more than 96% identities with their tomato homologues. Specific primer pairs were then designed on the sequence of the external Kan 1.2 reference gene as described before. Table 16. primers used in this work. (1) Optimal annealing and elongation temperature in PCR program. (2) Percentage sequence identity between the amplicon and the corresponding homolog tomato sequence from Genbank. (3) Measure of the real-time PCR reaction efficiency (calculated by standard curve method). (4) Reproducibility of the real-time PCR reaction. n.d. = no data because the gene was excluded from the study. 4-2.4 Two step real-time quantitative PCR Real-time amplifications were performed in a Rotor-Gene RG-6000 thermal cycler (Corbett Research) using SYBR Green (IQTM Supermix Master Bio-Rad) detection chemistry. For each gene, the performance of the designed primers was tested by real-time. Two negative controls and a 4-fold dilution series of pooled 84 cDNA were included in each run. This pooled samples consisted of cDNA from roots from both groups (inoculated and mock-inoculated). The cycling conditions were set as follows: initial denaturation step of 95°C for 3 min, followed by 50 cycles of denaturation at 95°C for 15 s, annealing and extension at 59°C for 40 s. The amplification process was followed by the measurement of fluorescence during a melting curve in which the temperature raised from 55 to 95°C in sequential steps of 0.5°C for 5 seconds. This insured the detection of one gene-specific peak and the absence of primer-dimer peaks. The 4-fold dilution series with 4 measuring points were used to construct a relative standard curve to determine the PCR efficiency. Each reaction was run in duplicate, whereby two negative controls were included. The real-time PCR efficiency (E) was determined for each gene with the slope of a linear regression model. The efficiency of primers was calculated using Rotor gene software according to the equation: E= 10[-1/slope] Primer conditions were optimized by determining the correspondent best annealing temperature and primer concentration. We analyzed the expression of the candidate reference transcript in all the experimental conditions (i.e. types of fungal inoculation and timings). All samples were amplified in duplicate and the mean was obtained for further calculations. CT values over 45 cycles were excluded from further mathematical calculations. 4-2.4 Data acquisition Expression levels were determined as the number of cycles needed for the amplification to reach a constant fluorescence level (threshold) fixed in the exponential phase of PCR reaction (Ct) . The threshold was set at 0.004 fluorescent 85 units, and the threshold cycle (Ct) values were plotted against the starting template concentration. Next, in order to compare the transcription level of the selected genes across different type of fungal inoculation and timings, the average Ct-value of each duplicate reaction was converted to raw data (relative quantities) for subsequent analysis with the geNorm software (http://allserv.ugent.be/;jvdesomp/genorm/index.html). 4-3 Results and discussion 4-3.1 Pre-analytical assessment of the panel of candidate genes Total RNA was isolated from eggplant roots at different timings from the three inoculations plus the mock inoculations. All the collected RNA samples were characterized with respect to their concentration and purity, in order to determine the quality of the RNA that is used for the subsequent expression analyses. RNA purity and quantification was determined with Nanodrop (Thermo Scientific Wilmington, USA). Primer pairs were designed on the basis of the consensus sequence retrieved from tomato and used in a PCR-based screening of the six potential reference genes on cDNA samples of eggplant and confirmed that all these genes were expressed in eggplant roots. Amplification of all the candidate genes gave an univocal amplicon of the expected size in a 1% agarose gel electrophoresis, except for Ubiquitin, which despite the use of several alternative primer pairs designed on the consensus sequence, still revealed the presence of un-specific amplification, therefore was excluded from this study. 86 All the other amplicons were sequenced for verification and all shared more than 96% of identity with the tomato consensus sequences on which primer design was based (Table 1). For each candidate reference gene, a qPCR standard curve was then generated, using 4-fold serial dilutions of cDNA obtained from both inoculated and mockinoculated eggplant roots. All the five candidate genes (TUB, EF1, PP2Asc, GADPH and 18S) displayed good PCR efficiency varying from 0.88 to 1.01 (the PCR efficiency value E characterizing each standard curve is given in Table 16). The identity of each qPCR product was confirmed by observation of a single melt peak at the end of each real time course. 4-3.2 Evaluation of the expression stability of the External Reference Gene A fixed amount of 1.2 Kanamycin mRNA transcript was added in a constant ratio (1:100) to the RNA of each sample extracted from inoculated and mockinoculated eggplant roots before DNAse treatment and retrotranscription (see methods, the experimental design is shown in Fig.1). A qPCR standard curve was generated also for the 1.2 Kanamycin transcript which showed a very high PCR efficiency: E = 1.05. qPCR analysis was then performed to establish the stability of expression of the ERT among the samples; duplicate reactions at each experimental condition were amplified along with no-template controls, and the identity of each qPCR product was confirmed by observation of a single melt peak at the end of each real time course. In total, the exogenous Kanamycin transcript was amplified in 228 replicates, giving a mean Ct value of 5,96 cycles with a standard error of 0,30, thus revealing a very stable expression which remains nearly unaltered among all our experimental conditions. After proving the reliability of expression of the kanamycin transcript, we used it as a reference gene to normalize the experimental data of the other candidate genes, in order to correct for any difference in the amount of starting material. 87 4-3.3 Evaluation of the relative expression levels of the candidate reference gene with respect to the external control. qPCR analysis was then performed to establish the expression of the five candidate reference genes (TUB, EF1, PP2Asc, GADPH and 18S) in all the root cDNA samples at different fungal inoculations (plus mock inoculation) and timings 0, 4, 8, 24 h after root dipping, in order to identify among the panel the gene whose expression is less affected by the different experimental conditions and therefore is eligible as housekeeping. The expression levels of these five candidates were normalized against the ERT. For each one, Ct between candidate gene and kanamycin were calculated and the results are shown as boxplot in Figure 12. Each data point represents the average of two experiments (performed in duplicate) and the error bars indicate the standard error of the mean of four replicates. The five genes displayed a wide range of relative expression levels with respect to the kanamycin transcript, the mean values of CT ranging from +16,78 (PP2Asc) and -3,5 (18S). Figure 12 Expression profiles of the candidate housekeeping genes after different types of fungal inoculation (C: control, V: Verticillium, F: Fusarium, M: Mixed) and timings (0, 4, 8, 24 hours) using the external control as reference gene 88 For each candidate reference gene, differences in the expression levels across the considered samples representing different fungal inoculations and timings were evaluated. The highest CT variability can be detected in the expression levels of elongation factor 1- α (EF, green line), which proves severely affected by all the inoculations ( Ct between a minimum value of 7,02 and a maximum of 10,4); a slighter variability also happens both for 18S rRNA and β tubulin (18S and TUB, pink and red line, respectively) whose fluctuating expression is evident under all the considered samples. Protein Phosphatase 2A (PP2Asc, violet line in figure 1) showed variation ( Ct value between 14,7 and 16,7) in gene expression after Fusarium and mixed inoculation at every times considered, while no differences are detected after Verticillium and mock inoculations. GAPDH (blue line) reveals to be the most stable gene and shows the slightest CT value variability (between 9,7 and 10,6) in mock and fungal inoculations among different timings. Expression level stability of our panel of external and native candidates was also investigated with geNorm, the freely available and well-known Excel-based tool for gene expression normalisation (Vandesompele et al., 2002). The geNorm algorithm calculates the gene expression stability measure “M” for each reference gene as the average pairwise variation “V” for each one with respect to all other reference genes. Stepwise exclusion of the gene with the highest M value allows ranking of the tested genes according to their expression stability, giving way to the selection of the couple of candidates which show the most stable expression with respect to each other. This approach assumes that stably expressed genes stay in a constant ratio with respect to each other; co-regulated genes are an exception to this assumption and they must not to be included in the test. The panel of chosen candidates included genes that are involved in basal metabolism, but distantly related in metabolic function, therefore being all suitable to be employed in a test for stability of expression through the geNorm algorithm. 89 Therefore, the Ct values obtained from the qPCR analysis of all these candidate genes were converted in raw data (relative quantities) in order to apply geNorm algorithm. The graph in figure 3A represents the output of the geNorm software, which leads to the identification of Gapdh/KANAr as best couple of reference genes for our given conditions. In Table 17 is shown the expanded ranking of the native candidate genes and the ERT, according to their M value (average expression stability): from the most stable (lowest M value) to the least stable (highest M value) Gapdh/KANAr < 18S < PP2Asc < Tub < EF1. Table 17. Candidate reference genes for normalization ranked according to their expression stability (calculated as the average M Value after stepwise exclusion of the worst scoring gene) by geNorm. GeNorm algorithm confirm our hypothesis: the best gene-pair for qPCR analysis in eggplant roots affected by fungal inoculation is Gapdh and KANAr. The geNorm programme can also determine the optimal number of genes required for accurate normalisation, based on the pairwise variation between two sequential normalization factors containing an increasing number of genes (Vn/Vn+1). The cutoff Vn/Vn+1 value was set at 0,15 by geNorm manual (http://allserv.ugent.be/;jvdesomp/genorm/index.html), but as suggested in the manual itself must not to be considered as a very strict threshold. As shown in figure 3B, the V4/5 value of 0,165 obtained in this study was close to the cut-off threshold of 0,15, in addition it is lower than V5/6 value (0,298). An increasing variation in the ratio V5/V6 corresponds to a reduction in expression stability due to the addition of a relative unstable 5th gene, so for accurate normalisation external kanamycin and three internal gene (Gapdh, 18S and PP2A) are required. GeNorm algorithm allows to 90 confirm the selection of the native candidate Gapdh as the best reference gene for qPCR analysis in eggplant roots affected by fungal inoculation. Fig 13A: Average expression stability values of control genes: elongation factor 1- α (EF), β tubulin (TUB) , catalitc subunit of phosphatase 2A (PP2A), 18s rRNA (18S), glyceraldeyde-3-phosphate dehydrogenase (GAPDH) and Kanamycin (KANAr). Fig 13 B. Pair wise variation analysis between the normalisation factors NFn and NFn+1, to determine the minimum number of reference genes for normalisation 91 4-4 Discussion Gene expression studies by qPCR technique often use reference gene levels as a means for assessing sample processing and normalizing for the mRNA content of a sample (Andersen et al., 2004). For an accurate evaluation of gene expression, it is essential to normalize experimental data to one or, better, to more reference genes that are stably expressed at the same level among all the samples and whose expression is not affected by the experimental conditions (Huggett et al., 2005). However, while these reference genes constitute the most appropriate normalization strategy, a major problem is that their expression is often influenced by the experimental conditions (Schmittgen et al.,2000). The expression stability of several genes commonly used as references is often untrustworthy (Dheda et al., 2004), indicating that their use as references is inappropriate (Vandesompele et al., 2002). To date, the validation of reference genes in plants has received very little attention and only few candidate genes have been investigated with some detail in rice (Jain et al., 2006; Ding et al.2004, Kim et al.,2003 ) poplar (Brunner et al., 2004) potato (Nicot et al., 2005), coffee (Barsalobres- Cavallari et al., 2009), tobacco (Schmidt et al., 2010), soybean (Jian et al., 2008; Libault et al., 2008) , tomato (ExpósitoRodríguez et al., 2008). Suitable reference genes have not been yet defined for a great number of crop species, including eggplant, and still putative housekeeping genes tend to be used as references without any appropriate validation. The implications of using an inappropriate reference gene for normalization of experimental data, could lead to severe effect on data analysis (Bustin et al., 2002; Drehda et al., 2005; Gutierrez et al., 2008): if unrecognized, unexpected changes in reference gene expression can result in erroneous conclusion about real biological effects. In addition, this type of changes often remains unnoticed because most experiments only include single reference gene which cannot in turn be subdued to check for stability. 92 For all these reasons, the experimenter needs to carefully assess whether a certain reference gene is stably expressed in the experimental design under study (Hong et al., 2010, Schmidt et al., 2010). The large number of publications that focus on the validation of an internal reference gene reflects the ongoing difficulty in selecting the most suitable candidates (Logan et al., 2009): Also several companies have identified the problem and now provide validated reference gene panels for various organisms (Vandesompele et al., 2009). The accurate choice of the best reference genes is mandatory, considering that more and more recent works highlight the lack of a systematic validation of the reference genes; but how can expression stability of a candidate be evaluated if no reliable measure is available to evaluate the stability of expression of a candidate? The debates on the unraveling of this circular problem and on the criteria for selecting the best reference are still a hot spot among the scientific community, (Vandesompele et al., 2009) as demonstrated by the continue raising of workgroups and focused on the argument (like the External RNA controls consortium), or the development of platforms and forums devoted to discussion about gene expression (like the qPCRforum or the portal www.Gene-Quantification.info ) and also by the development of more and more Algorithms and software for evaluation of candidate reference genes like BestKeeper (Pfaffl et al., 2004) Genorm (Vandesompele et al.,2002), or Normfinder (Andersen et al., 2004). GeNorm is one of the best known and freely available systems for selecting the best candidate reference gene for a given experimental scenario. Its algorithm calculates and compares the so called M-value of all candidate genes, eliminate the gene with highest M-value, and repeats the process until there is only two genes left and determines the optimum pair of reference gene from a set of tested genes in a given cDNA sample panel. According to Vandesompele et al., (2002), to best perform geNorm analysis in an ideal condition the user usually should measures the expression of 6 to 12 reference genes in a representative panel of samples; this kind 93 of analysis it’s time and sample consuming and requests pre-analytical knowhow about candidate gene sequences. Acceptable results can be however obtained also from test of a reduced number of candidate genes, although a slighter accuracy is endangered. The aim of this work was to develop an efficient strategy to assist the selection of the most stable candidate housekeeping gene in gene expression studies in which different experimental conditions (different biotic stresses) have to be compared, at least one of them that could affect the expression levels of the reference genes themselves. Most common reference genes are involved in basic cellular functions (e.g. βactin and ubiquitin genes) and are often assumed to have a uniform expression pattern, but there are experimental conditions like biotic stress whose could have severe effects on the plant metabolism and also interfere with expression of the so called housekeeping genes. On the other hand, in vitro produced artificial RNA molecules (also called RNA spike-ins) can be introduced into the sample RNA extract prior to reverse transcription (Smith et al., 2003) and can act as valuable tool for internal standardization of real-time PCR experiments as they are completely independent of the biological process (Gilsbach et al., 2006). Spiking of the native RNA with an artificially synthesized sequence is a strategy known in human (Smith et al., 2003) while is an extremely less applied in plants. The only information about spiking in plants regards an expression investigation in Bermuda grass following infection with the fungal root pathogen Ophiosphaerella narmari (McMaugh et al., 2003) and confirmed the suitability of the external reference gene for experimental data normalization. In our work, we decided to combine the two different approaches of spiking an artificial kanamycin transcript in the RNA samples and of evaluating all the panel of native and artificial transcripts with the geNorm algorithm, basing on the idea that an 94 heterologous transcript which is stably expressed as unaffected by experimental conditions can be used not only as reference gene itself but also as a normaliser to evaluate the expression of the candidate native genes. We investigated the expression data of the 6 native candidate genes and of the spike: after confirming the reliability of the expression of the spike sequence, we decided to use it as external control for the expression of the housekeeping candidates. Ct comparison of gene expression of the candidate genes with respect to the extreme stability of expression of the kanamycin transcript, allows to indicate Gapdh as the gene that display the slighter variation among all the samples. However, to compare this technical method whit a statistical one, the geNorm algorithm was applied. With the algorithm, the best pair of housekeeping genes was: Gapdh/KANAr. In our case, the pair wise variation suggest that three or four genes are the minimum number request for a robust validation. There are strong similarities between the two different approaches, as they both assigned the best expression stability to Gapdh and KANAr. Although all these candidate genes are reported in literature to be suitable as reference genes in plant, our approach enables us to reveal their slight variability of expression among our different experimental conditions, and also to select Gapdh as the best reference for the evaluation of the expression of our collection of genes involved in different plant/pathogen interactions. We have explored the possibility of using kanamycin as external control to check the internal reference genes in eggplant root, but this approach should find a broad range of other applications. External reference should turn into the ideal reference gene, because its expression is independent from tissue or experimental condition. Considering the reliability of this result, the proposed method should be exploited in any qPCR based study. We suggest that use of an external control may led to a fast and easy solution when validation of the best reference genes is particularly difficult due to the experimental conditions, or when in literature there are few example of candidate 95 housekeeping, as it may speed up the process of identification of the best reference gene also if the panel is constituted by a reduced number of candidates. 96 References Alert, I., & Standardization, A. (n.d.). High-Quality External RNA Control Detects Inhibitors in RNA Samples. Strategies, 19(2), 1-2. 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