MALARIA DISEASE PREDICTION IN WEST AFRICA USING SELECTED MACHINE LEARNING TECHNIQUE
Keywords:
Malaria, Machine learning, Algorithm, Confusion matrixAbstract
Malaria, a life-threatening disease caused by Plasmodium parasite, remains a global health challenge with significant morbidity and modularity, particularly in sub-Saharan Africa. According to estimates from the World Health Organization (WHO), there were approximately 229 million clinical cases of malaria in 2019 and 409,000 deaths as a result (World Malaria Report, 2019). As a result of an increase in cases and fatalities, malaria is becoming a serious public health concern in West Africa. The focus of this study is to ensure machine learning can help people make a preliminary judgement about malaria according to their daily physical examination data and it can serve as a reference for doctors. The dataset was collected from Kaggle public repository and used to develop a predictive supervised machine learning models such as random forest, decision tree, k-nearest neighbor, artificial neural network and gradient boosting algorithms. Gradient boosting and Decision tree models were found to be the best performing model with an accuracy of 98.3% and 91.3% respectively. The evaluation metrics deployed for the study showed that RMSE (0.11), MAE (0.012), MSE (0.012), F1-score(0.80, 1.00). To further strengthen the evaluation method, confusion matrix produced TP 4 ,0, TN 1,76. The model will help health works, medical personnel and even the patients when diagnosing, to correctly predict Malaria among pateients suspected to have malaria
Downloads
Published
How to Cite
Issue
Section
License
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.