GIS-based prediction of malaria risk in Egypt

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Abstract

Environmental variables in a malaria geographic information system (GIS) database were analysed to discriminate between governorates at high and low risk of malaria. Only Fayoum governorate was categorized as a high risk area for malaria during the last 2 decades. Discriminant models correctly classified 96.3% of the risk categories and indicated that the most important predictor of risk is hydrogeology. Further GIS spatial analysis indicated that the high malaria risk in Fayoum is associated with a unique environmental envelope of biotic (presence of both efficient malaria vectors) and abiotic (hydrogeology and soil) variables. Recommendations for surveillance and control are discussed.

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APA

Hassan, A. N., Kenawy, M. A., Kamal, H., Abdel Sattar, A. A., & Sowilem, M. M. (2003). GIS-based prediction of malaria risk in Egypt. Eastern Mediterranean Health Journal, 9(4), 548–558. https://doi.org/10.26719/2003.9.4.548

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