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首页|Predicting nutritional status for women of childbearing age from their economic, health, and demographic features: A supervised machine learning approach

Predicting nutritional status for women of childbearing age from their economic, health, and demographic features: A supervised machine learning approach

Predicting nutritional status for women of childbearing age from their economic, health, and demographic features: A supervised machine learning approach

来源:medRxiv_logomedRxiv
英文摘要

Abstract BackgroundMalnutrition imposes enormous costs resulting from lost investments in human capital and increased healthcare expenditures. There is a dearth of research focusing on the prediction of women’s body mass index (BMI), and the malnutrition outcomes (underweight, overweight and obesity) in developing countries. This paper attempts to fill out this knowledge gap by predicting the BMI and the risks of malnutrition outcomes for Bangladeshi women of childbearing age from their economic, health, and demographic features. MethodsData from the 2017-18 Bangladesh Demographic and Health Survey and a series of supervised machine learning (SML) techniques are used. Additionally, this study circumvents the imbalanced distribution problem in obesity classification by utilizing an oversampling approach. ResultsStudy findings demonstrate that support vector machine and k-nearest neighbor are the two best-performing methods in BMI prediction based on coefficient of determination (R2), root mean square error (RMSE), and mean absolute error (MAE). The combined predictor algorithms consistently yield top specificity, Cohen’s kappa, F1-score, and AUC in classifying the malnutrition status, and their performance is robust to alternative standards. The feature importance ranking based on several nonparametric and combined predictors indicates that socioeconomic status, women’s age, and breastfeeding status are the most important features in predicting women’s nutritional outcomes. Furthermore, the conditional inference trees corroborate that those three features along with the partner’s educational attainment and employment significantly predict malnutrition risks. ConclusionTo the best of our knowledge, this is the first study that predicts BMI and one of the pioneer studies to classify all three malnutrition outcomes for women of childbearing age in Bangladesh, let alone in any lower-middle income country, using SML techniques. Moreover, in the context of Bangladesh, this paper is the first to identify and rank features that are critical in predicting nutritional outcomes using several feature selection algorithms. The estimators from this study predict the outcomes of interest most accurately and efficiently compared to other existing studies in the relevant literature. Therefore, study findings can aid policymakers in designing policy and programmatic approaches to address the double burden of malnutrition among Bangladeshi women, thereby reducing the country’s economic burden.

Rhee Kang Keun、Hasan Mohammad Shabbir、Ahsan Karar Zunaid、Khudri Md. Mohsan

Department of Economics, Fogelman College of Business and Economics, The University of MemphisDepartment of Computer Science, Virginia TechPublic Health Leadership Program, Gillings School of Global Public Health, The University of North Carolina at Chapel HillDepartment of Economics, Fogelman College of Business and Economics, The University of Memphis

10.1101/2022.11.03.22281896

预防医学医学研究方法医药卫生理论

Rhee Kang Keun,Hasan Mohammad Shabbir,Ahsan Karar Zunaid,Khudri Md. Mohsan.Predicting nutritional status for women of childbearing age from their economic, health, and demographic features: A supervised machine learning approach[EB/OL].(2025-03-28)[2025-05-22].https://www.medrxiv.org/content/10.1101/2022.11.03.22281896.点此复制

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