socio-demographic determinants of malaria in highly infected rural
Transcription
socio-demographic determinants of malaria in highly infected rural
SOCIO-DEMOGRAPHIC DETERMINANTS OF MALARIA IN HIGHLY INFECTED RURAL AREAS: REGIONAL INFLUENTIAL ASSESSMENT USING GIS Prashanthi Devi, M., Ranganathan, C R and Balasubramanian, S Division of RS and GIS Department of Environmental Sciences Bharathiar University, Coimbatore – 641 046 India INTRODUCTION • Natural ecosystems throughout the world have been severely altered by the human intervention . • The rapid urbanization in many parts of the world is changing the context for human population and the natural ecosystem interaction …. • Resulting in occurrence of diseases MALARIA To understand the complex nature of the mosquito human relationship, it is required to identify the type of • human migration, • population growth, • socio economic status, • behavior and • the environmental aspects around them. This underscores the importance of • how humans modify the environment to affect the mosquito vector population and • the intensity parasitic transmission in the endemic areas, be it rural or urban areas. To understand the influence of human activity on malaria vector population dynamics is very important • So as to identify the areas in need for the source reduction efforts and further control • The key determinants of the outcome of malaria have been related to human host, the parasite, vector or the environmental parameters • Vector densities have been normally higher in rural areas due to favourable habitats than in urban areas Poverty Farming activities Deteriorating infrastructure Over crowding Less protection in the house holds The potential factors could be identified based on • • • • • • • the type of house construction the socio economic status of the public livestock dependence behavioral aspects among the residents drainage the distance to streams the infectious-bite avoidance pattern Objectives • to record the socio economic and the demographic data in highly endemic zones of the Salem district • using a Questionnaire and • a hand held GPS (Garmin III Plus). • As all the data were collected with house hold identifiers, opportunities for examining the spatial hypothesis exist. • The map of study of households and the related surveyed region can be linked to the existing data sources through GIS. Status of Malaria in Salem à The Directorate of Health under the Government of Tamil Nadu - 74 Primary Health Centers (PHC) in the district in both rural and urban areas. à As the climatic condition favours the survival of mosquitoes this region had been demarked as one the highly endemic zones in the state. à The major species identified are Anopheles and Culex sps. Malaria in Salem à The present selected region has been marked has an highly endemic PHC region with at least a minimum of 5 cases reported every month. à Outbreaks of epidemics in this area, in 1996 and 2004, prove that the habitat of the vector has increased. à After the outbreak, this region has been taken under close examination. Survey • The hamlets that could be visited by either walk or by tractors were only chosen for the study. • Each household data was collected based on the house number and the questionnaire was filled in by personal interview with the people. • The living habitats of the people, occupational pattern and basic village amenities were also enquired about. • The distance to the village hospital from the hamlet was also measured • The survey was carried out during the month of October 2004 at four infected villages that come under the Vellar PHC and one non-infected village under the Santhaithanapatty PHC. • Random sampling was done in each village for 206 samples which were geocoded using Garmin III Plus GPS • The surveyed information was recorded into a database using EpiInfo where a questionnaire is prepared as a sheet. • The data were later imported into the Arcview GIS 3.2a • The slope of the study area was calculated by the generation of a Digital Elevated Model (DEM) using Arcview • The NDVI of these villages calculated using ERDAS Imagine 8.5 image processing software for the subsequent month of Nov 2004 Disease determinants • • • • • • Presence of mosquitoes Vegetation (NDVI) Slope (DEM) Drainage facility Wood storage Sanitation • • • • • • Livestock Dependance Waterbody Education House type (Reinforced concrete, Tiled, Thatched, Combined) Source of water Prevention measures or avoidance behavior logit y = β0 + β1(X1) + β2(X2) + β3(X3) + β4(X4) + β5(X5)+ β6(X6)+ βa(Xa)+ βb(Xb) + βc(Xc)+ βc(X10) +βc(X11) SIGNIFICANCE Infected Areas • The proximity to water body • House type • The avoidance behavior Controlled Areas • Insignificant FINDINGS • As the main occupation of the people is farming, the economic status is low and even below poverty level • The people were found live closer to their farms and hence stagnation of water in the fields and also the stagnation caused due to improper drainage had lead to breeding of the mosquitoes. • The houses had mostly thatched roofs. Even in case of house type being reinforced concrete, the adjacent cattle barns were made of thatched roofs, which provide a suitable place to mosquito breeding. • The usage of open ground tanks for water storage is the another main breeding site. • Awareness of proper sanitation facilities and avoidance behavior also has added to the context. • The people stayed outside their houses most of the days i.e., the people slept outside their houses in the evenings or nights when the mosquito activity is at its peak • Clothing habits referred to partial or improper clothing to facilitate the daytime heat. • Mostly people reared cattle and other livestock within their house premises which led to constant favorable moisture for mosquito proliferation. • In the infected areas, the schools were situated closer to the farms or had water storage tanks near them. This led to the children being infected more than the elders. CONCLUSIONS • Identify target variables that potentially favour the mosquito breeding sites in the survey area • In behaviourly focusing social mobilization and communication programs that may be implemented to reduce the breeding sites based on community involvement • Resource allocation can be recommended to such areas and also other infected areas based on population-basedsurveys, which can be conducted as a component of malaria control surveillance. THANK YOU