Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East Africa
Tirualem Zeleke Yehuala, Nebebe Demis Baykemagn, Bewuketu Terefe

TL;DR
This study uses machine learning to predict feeding practices during diarrhea in under-five children in East Africa and identifies key factors influencing these practices.
Contribution
The novel use of machine learning to model and predict feeding practices during diarrheal disease in East African children.
Findings
Random Forest achieved the highest performance with 97.86% accuracy in predicting feeding practices.
Household wealth, maternal education, and health-seeking behavior were positively associated with improved feeding practices.
Only 11 out of 100 children received acceptable feeding practices during diarrhea episodes.
Abstract
Diarrhea is the leading cause of childhood malnutrition. Although replacement, continued feeding, and increasing appropriate fluid at home during diarrhea episodes are the cornerstones of treatment packages, food and fluid restrictions are common during diarrheal illnesses in Africa. To fill the methodological and current evidence gaps, this study aimed to build models and predict determinants to increase feeding practices of children in East Africa during diarrheal outbreaks. We used the most recent demographic and health survey (DHS) statistics from 12 East African nations collected between 2012 and 2023. The analyses included a total weighted sample of 20,059 children aged 5 years. Python software was utilized for data processing and machine learning model building. We employed four ML algorithms, such as Random Forest (RF), Decision Tree (DT), XGB (Extreme Gradient Boosting), and…
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Taxonomy
TopicsChild Nutrition and Water Access · Food Security and Health in Diverse Populations · Global Maternal and Child Health
