Predicting malaria incidence using case load and metrological data in Sidama Regional State
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Date
2024-07-12
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Hawassa University
Abstract
Malaria remains a significant public health challenge, particularly in tropical regions like
Ethiopia's Sidama Regional State, where climatic factors heavily influence transmission dynamics. This study utilizes an ANN feed forward model to integrate meteorological data (minimum
temperature, maximum temperature, and rainfall) with historical malaria case records (2017–2022)
to construct a predictive model for malaria incidence. Data were obtained from the Ethiopian
National Meteorological Agency and the Sidama Regional Health Bureau. Four districts Boricha, Dale, Hawassa Zuria, and Shebedino were used to validate the model. To determine the most
effective machine learning technique for malaria prediction, this study compared the ANN feed
forward model with Random Forest and Decision Tree models. Among these, the ANN feed
forward model demonstrated superior predictive accuracy, achieving the lowest RMSE values
across districts, with Shebedino (0.4787) and Hawassa Zuria (0.7359) performing best. However, challenges remain in capturing short-term fluctuations, particularly in Boricha (RMSE: 2.610).The
results emphasize the importance of incorporating meteorological factors into malaria prediction
models and highlight the ANN model's potential as a robust early warning system. By enabling
public health officials to forecast outbreaks and allocate resources more effectively, predictive
models like ANN can significantly enhance malaria prevention efforts. Future research should
focus on improving model accuracy by integrating additional variables and exploring advanced
machine learning techniques to handle complex transmission scenarios
