Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East Africa

BackgroundDiarrhea 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 fi...

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Main Authors: Tirualem Zeleke Yehuala, Nebebe Demis Baykemagn, Bewuketu Terefe
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-07-01
Series:Frontiers in Public Health
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Online Access:https://www.frontiersin.org/articles/10.3389/fpubh.2025.1513922/full
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author Tirualem Zeleke Yehuala
Nebebe Demis Baykemagn
Bewuketu Terefe
author_facet Tirualem Zeleke Yehuala
Nebebe Demis Baykemagn
Bewuketu Terefe
author_sort Tirualem Zeleke Yehuala
collection DOAJ
description BackgroundDiarrhea 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.MethodsWe 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 Logistic Regression (LR). In this work, we evaluated the predictive models' performance using performance assessment criteria such as accuracy, precision, recall, and the AUC curve.ResultsIn this study, 20,059 children aged 5 years were used in the final analysis. Among the proposed machine learning models, random forest performed best overall in the proposed classifier, with an accuracy of 97.86%, precision of 98%, recall of 77%, F-measure of 86%, and AUC curve of 97%. The most significant determinants of increasing feeding practice were richest household, faculty delivery, use of modern contraception method, the number of children 3–5, women's employment status, maternal age is 25–34, having media exposure, and health-seeking decisions made by mothers were associated positively, whereas not using contraception, home delivery, the total number of children is large, and the sex of the household was male, which was associated negatively with feeding practice during diarrhea in East Africa.ConclusionMachine learning (ML) algorithms have provided valuable insights into the complex factors influencing feeding practices during diarrheal disease in under-five children in East Africa. During diarrhea, only 11 of the 100 children received acceptable child feeding practices. More than one-third of the patients received less than usual or nothing. Reducing diarrhea-related child mortality by improving diarrhea management practices is recommended, particularly focusing on the identified aspects.
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spelling doaj-art-b48e4db2b5f74ce99de0da9194561f722025-08-20T02:50:52ZengFrontiers Media S.A.Frontiers in Public Health2296-25652025-07-011310.3389/fpubh.2025.15139221513922Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East AfricaTirualem Zeleke Yehuala0Nebebe Demis Baykemagn1Bewuketu Terefe2Department Health informatics, Institute of Public Health, College of Medicine and Health Sciences, University of Gondar, Gondar, EthiopiaDepartment Health informatics, Institute of Public Health, College of Medicine and Health Sciences, University of Gondar, Gondar, EthiopiaDepartment of Community Health Nursing, School of Nursing, College of Medicine and Health Sciences, University of Gondar, Gondar, EthiopiaBackgroundDiarrhea 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.MethodsWe 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 Logistic Regression (LR). In this work, we evaluated the predictive models' performance using performance assessment criteria such as accuracy, precision, recall, and the AUC curve.ResultsIn this study, 20,059 children aged 5 years were used in the final analysis. Among the proposed machine learning models, random forest performed best overall in the proposed classifier, with an accuracy of 97.86%, precision of 98%, recall of 77%, F-measure of 86%, and AUC curve of 97%. The most significant determinants of increasing feeding practice were richest household, faculty delivery, use of modern contraception method, the number of children 3–5, women's employment status, maternal age is 25–34, having media exposure, and health-seeking decisions made by mothers were associated positively, whereas not using contraception, home delivery, the total number of children is large, and the sex of the household was male, which was associated negatively with feeding practice during diarrhea in East Africa.ConclusionMachine learning (ML) algorithms have provided valuable insights into the complex factors influencing feeding practices during diarrheal disease in under-five children in East Africa. During diarrhea, only 11 of the 100 children received acceptable child feeding practices. More than one-third of the patients received less than usual or nothing. Reducing diarrhea-related child mortality by improving diarrhea management practices is recommended, particularly focusing on the identified aspects.https://www.frontiersin.org/articles/10.3389/fpubh.2025.1513922/fullfeeding practicediarrheadeterminantsEast Africamachine learning modelprediction
spellingShingle Tirualem Zeleke Yehuala
Nebebe Demis Baykemagn
Bewuketu Terefe
Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East Africa
Frontiers in Public Health
feeding practice
diarrhea
determinants
East Africa
machine learning model
prediction
title Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East Africa
title_full Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East Africa
title_fullStr Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East Africa
title_full_unstemmed Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East Africa
title_short Machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under-five children in East Africa
title_sort machine learning algorithms to predict feeding practices during diarrheal disease and its determinants among under five children in east africa
topic feeding practice
diarrhea
determinants
East Africa
machine learning model
prediction
url https://www.frontiersin.org/articles/10.3389/fpubh.2025.1513922/full
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