A weather-based prediction model of Malaria prevalence in Amenfi West District, Ghana

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Abstract

This study investigated the effects of climatic variables, particularly, rainfall and temperature, on malaria incidence using time series analysis. Our preliminary analysis revealed that malaria incidence in the study area decreased at about 0.35% annually. Also, the month of November recorded approximately 21% more malaria cases than the other months while September had a decreased effect of about 14%. The forecast model developed for this investigation indicated that mean minimum (P=0.01928) and maximum (P=0.00321) monthly temperatures lagged at three months were significant predictors of malaria incidence while rainfall was not. Diagnostic tests using Ljung-Box and ARCH-LM tests revealed that the model developed was adequate for forecasting. Forecast values for 2016 to 2020 generated by our model suggest a possible future decline in malaria incidence. This goes to suggest that intervention strategies put in place by some nongovernmental and governmental agencies to combat the disease are effective and thus should be encouraged and routinely monitored to yield more desirable outcomes.

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APA

Darkoh, E. L., Larbi, J. A., & Lawer, E. A. (2017). A weather-based prediction model of Malaria prevalence in Amenfi West District, Ghana. Malaria Research and Treatment, 2017. https://doi.org/10.1155/2017/7820454

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