Improving machine learning models through explainable AI for predicting the level of dietary diversity among Ethiopian preschool children.

Gizachew Mulu Setegn, Belayneh Endalamaw Dejene
Author Information
  1. Gizachew Mulu Setegn: Department of Computer Science, Debark University, Debark, 90, Ethiopia. Gizachew.Mulu@dku.edu.et. ORCID
  2. Belayneh Endalamaw Dejene: University of Gondar, Gondar, 196, Ethiopia.

Abstract

BACKGROUND: Child nutrition in Ethiopia is a significant concern, particularly for preschool-aged children. Children must have a varied diet to ensure they receive all the essential nutrients for good health. Unfortunately, many children in Ethiopia lack access to a range of foods, which can lead to malnutrition and other health issues. While machine learning (ML) has the potential to analyse extensive datasets, the lack of transparency in these models can impede their effectiveness in real-world applications, especially in public health. This research aims to enhance machine learning models by integrating Explainable AI (XAI) methods to more accurately predict the level of dietary diversity in Ethiopian preschool children.
METHODS: To Improve the ML Model for Predicting the Level of Dietary Diversity among Ethiopian Preschool Children. We employed an ensemble ML approach with XAI. The Ethiopian demographic health survey collected a dataset consisting of dietary information and relevant socioeconomic variables. The data were preprocessed to obtain quality data that are suitable for the ensemble ML algorithms to develop a model. We applied filter (chi-square and mutual information) and wrapper (sequential backwards) feature selection methods to identify the most influential factors for dietary diversity (DD). Ethiopia demographic health survey (from 2011 to 2019). Datasets were used. We developed a predictive model using a decision tree, random forest, gradient boosting, light gradient boosting, CatBoost, and XGBClassifier. We evaluated it using accuracy, precision, recall, F1_score, and receiver operating characteristic (ROC)-based evaluation techniques.
RESULTS: The ensemble ML models exhibited robust predictive performance, and light gradient boosting outperformed the other ensemble ML algorithms by 95.3%. The explainability of the Light Gradient Boosting Ensemble Model was determined using Eli5 and LIME. The child's age, household wealth index, household region, source of drinking water, frequency of listening to the radio, and mother's education level were the most crucial variables for the prediction of Minimum Dietary Diversity (MDD) in Ethiopia.
CONCLUSIONS: The research effectively demonstrated that integrating Explainable AI with machine learning can accurately predict dietary diversity in preschoolers in Ethiopia. The results of this study have significant implications for stakeholders in child development and nutrition, as well as for policymakers and medical experts. Targeted interventions and policies to enhance the nutritional health of Ethiopian preschool children are made possible by the explainable AI model that has been constructed.
TRIAL REGISTRATION: Retrospectively registered.

Keywords

References

  1. BMC Nutr. 2022 Jul 29;8(1):71 [PMID: 35906680]
  2. Bull World Health Organ. 2000;78(10):1207-21 [PMID: 11100616]
  3. Foods. 2023 Dec 12;12(24): [PMID: 38137262]
  4. Nat Food. 2022 Sep;3(9):716-728 [PMID: 37118143]
  5. Glob Pediatr Health. 2021 Feb 22;8:2333794X21996630 [PMID: 33748344]
  6. J Biosoc Sci. 2020 Jul;52(4):596-609 [PMID: 31658911]
  7. Int J Pediatr. 2020 Aug 21;2020:3040845 [PMID: 32908551]
  8. Int J Public Health. 2023 Jun 01;68:1605807 [PMID: 37325176]
  9. BMC Nutr. 2024 Mar 6;10(1):47 [PMID: 38449007]
  10. Matern Child Nutr. 2019 Jan;15(1):e12654 [PMID: 30101576]
  11. BMC Pregnancy Childbirth. 2024 Sep 16;24(1):600 [PMID: 39285277]
  12. Comput Struct Biotechnol J. 2014 Nov 15;13:8-17 [PMID: 25750696]
  13. BMC Med Inform Decis Mak. 2022 Sep 5;22(1):232 [PMID: 36064400]
  14. Ital J Pediatr. 2021 Dec 11;47(1):233 [PMID: 34895268]
  15. BMC Pediatr. 2021 Dec 11;21(1):565 [PMID: 34895180]
  16. BMC Nutr. 2017 Mar 21;3:28 [PMID: 32153810]
  17. PLoS One. 2022 Dec 19;17(12):e0279223 [PMID: 36534691]
  18. SN Comput Sci. 2021;2(3):160 [PMID: 33778771]

MeSH Term

Humans
Ethiopia
Machine Learning
Child, Preschool
Female
Male
Diet

Word Cloud

Created with Highcharts 10.0.0EthiopiachildrenhealthMLlearningAIdietarydiversityEthiopianmachinemodelslevelensemblecanpreschoolDietarymodelusinggradientboostingnutritionsignificantChildrenlackresearchenhanceintegratingExplainableXAImethodsaccuratelypredictModelPredictingDiversityamongPreschooldemographicsurveyinformationvariablesdataalgorithmspredictivelighthouseholdexplainableBACKGROUND:Childconcernparticularlypreschool-agedmustvarieddietensurereceiveessentialnutrientsgoodUnfortunatelymanyaccessrangefoodsleadmalnutritionissuespotentialanalyseextensivedatasetstransparencyimpedeeffectivenessreal-worldapplicationsespeciallypublicaimsMETHODS:ImproveLevelemployedapproachcollecteddatasetconsistingrelevantsocioeconomicpreprocessedobtainqualitysuitabledevelopappliedfilterchi-squaremutualwrappersequentialbackwardsfeatureselectionidentifyinfluentialfactorsDD20112019DatasetsuseddevelopeddecisiontreerandomforestCatBoostXGBClassifierevaluatedaccuracyprecisionrecallF1_scorereceiveroperatingcharacteristicROC-basedevaluationtechniquesRESULTS:exhibitedrobustperformanceoutperformed953%explainabilityLightGradientBoostingEnsembledeterminedEli5LIMEchild'sagewealthindexregionsourcedrinkingwaterfrequencylisteningradiomother'seducationcrucialpredictionMinimumMDDCONCLUSIONS:effectivelydemonstratedpreschoolersresultsstudyimplicationsstakeholderschilddevelopmentwellpolicymakersmedicalexpertsTargetedinterventionspoliciesnutritionalmadepossibleconstructedTRIALREGISTRATION:RetrospectivelyregisteredImprovingpredictingExplanatoryFoodgroupMachinealgorithm

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