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

Md Mohsan KhudriKang Keun RheeMohammad Shabbir HasanKarar Zunaid Ahsan
Published in: PloS one (2023)
To 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.
Keyphrases
  • machine learning
  • healthcare
  • public health
  • polycystic ovary syndrome
  • type diabetes
  • deep learning
  • metabolic syndrome
  • risk factors
  • big data
  • physical activity
  • risk assessment
  • body mass index