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dc.contributor.authorMariki, Martina
dc.date.accessioned2024-05-03T07:55:09Z
dc.date.available2024-05-03T07:55:09Z
dc.date.issued2023-08
dc.identifier.urihttps://dspace.nm-aist.ac.tz/handle/20.500.12479/2581
dc.descriptionA Dissertation Submitted in Partial Fulfilment of the Requirements for the Degree of Doctor of Philosophy in Information and Communication Science and Engineering of the Nelson Mandela African Institution of Science and Technologyen_US
dc.description.abstractPresumptive treatment and self-medication with anti-malaria drugs is a common practice in most limited resource settings that hinders proper management of malaria. However, these approaches have been considered unreliable due to the unnecessary use of malaria medication and untreated diseases that relate to malaria. This study aimed to develop a machine-learning model for malaria diagnosis using patients’ symptoms and non-symptomatic features in high and low endemic areas of Tanzania. The malaria diagnosis dataset with 2556 patient’s records and 36 features was collected in two regions of Tanzania: Morogoro and Kilimanjaro from 2015 -2019. Machine learning classifiers with the k-fold cross-validation methods were used to train and validate the model. To improve the performance of the diagnostic model, important features for malaria diagnosis were selected, and it was observed that the ranking of features differs among regions and when combined dataset. Significant features selected are residence area, fever, age, general body malaise, visit date, and headache. Random Forest and Decision Tree algorithms were the best performing classifiers in modelling malaria diagnosis datasets and attained 96%, 99% and 98% prediction accuracy for Kilimanjaro, Combined and Morogoro dataset respectively. These best-performing classifiers were evaluated using the unseen malaria diagnosis dataset and performed well in classifying malaria patients from sick patients. The final developed model showed that only a specific combination of features can predict malaria accurately. The results of this study revealed that malaria diagnosis using patients’ symptoms and demographic features is possible. Also, the study results offer additional knowledge and shed light on the state diagnosis of malaria in the country. The developed machine learning model enables prediction of patient’s malaria state using symptoms observed and non- symptomatic features before prescription of anti-malaria drugs. Apart from that the output of this study will be a necessary step in designing a malaria diagnosis decision support system through the developed model. Furthermore, towards reducing drug resistance, the results of this study can be used by the policymakers and the Ministry of Health for better management of malaria disease in health facilities and drug dispensing outlets to avoid self-medication and presumptive treatment.en_US
dc.language.isoenen_US
dc.publisherNM-AISTen_US
dc.titleMachine learning model for prediction of malaria in low and high endemic areas of Tanzaniaen_US
dc.typeThesisen_US


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