Literature DB >> 31470245

Predicting women's height from their socioeconomic status: A machine learning approach.

Adel Daoud1, Rockli Kim2, S V Subramanian3.   

Abstract

The social determinants of health literature routinely deploy socio-economic status (SES) as a key factor in accounting for women's height-an established indicator of human welfare at the population level-using traditional regression. However, this literature lacks a systematic identification of the predictive power of SES as well as the possible non-linear relationships between the measures of SES (education, occupation, and material wealth) in predicting variation in women's height. This study aims to evaluate this predictive power. We used the Demographic and Health Surveys (DHS) from 66 low- and middle-income countries (women = 1,273,644), sampled between 1994 and 2016. The analysis consisted of training seven machine-learning algorithms of different function classes and assessing their predictive power out-of-sample, vis-à-vis OLS regression. In an OLS framework, SES accounts for 0.7%, R2, of the total variance in women's height (from σOLSFix2 = 31.82 to σOLSSES2 = 31.57), adjusting for country, community, and sampling year fixed effects. The country-specific variances range from as low as 25.10 units in Egypt to as high as 74.46 units in Sao Tome and Principe. With the same set of SES measures, the best performing learner, a Bayesian neural net, produces a predictive variance of σBnnSES2 = 31.52. This is a negligible improvement in variance explained by 0.3% (σBnnSES2-σOLSSES2). Given our selection of algorithms, our findings indicate no relevant non-linear relationships between SES and women's height, and also the predictive limits of SES. We recommend that scholars report both the average effect of SES on health outcomes as well as its contribution to the variance explained. This will improve our understanding of how key social and economic factors affect health, deepening our understanding of the social determinants of health.
Copyright © 2019 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Global health; Health inequality; Machine learning; Prediction; Social class; Social determinants of health; Socio-economic status; Women's height

Year:  2019        PMID: 31470245     DOI: 10.1016/j.socscimed.2019.112486

Source DB:  PubMed          Journal:  Soc Sci Med        ISSN: 0277-9536            Impact factor:   4.634


  8 in total

1.  The Relative Contributions of Socioeconomic and Genetic Factors to Variations in Body Mass Index Among Young Adults.

Authors:  Rockli Kim; Adam M Lippert; Robbee Wedow; Marcia P Jimenez; S V Subramanian
Journal:  Am J Epidemiol       Date:  2020-11-02       Impact factor: 4.897

2.  Machine learning analysis of non-marital sexual violence in India.

Authors:  Anita Raj; Nabamallika Dehingia; Abhishek Singh; Julian McAuley; Lotus McDougal
Journal:  EClinicalMedicine       Date:  2021-08-01

3.  Application of machine learning to understand child marriage in India.

Authors:  Anita Raj; Nabamallika Dehingia; Abhishek Singh; Lotus McDougal; Julian McAuley
Journal:  SSM Popul Health       Date:  2020-12-05

4.  Machine learning algorithms for predicting undernutrition among under-five children in Ethiopia.

Authors:  Fikrewold H Bitew; Corey S Sparks; Samuel H Nyarko
Journal:  Public Health Nutr       Date:  2021-10-08       Impact factor: 4.022

5.  Gender differences in under-reporting hiring discrimination in Korea: a machine learning approach.

Authors:  Jaehong Yoon; Ji-Hwan Kim; Yeonseung Chung; Jinsu Park; Glorian Sorensen; Seung-Sup Kim
Journal:  Epidemiol Health       Date:  2021-11-17

6.  Using machine learning to understand determinants of IUD use in India: Analyses of the National Family Health Surveys (NFHS-4).

Authors:  Arnab K Dey; Nabamallika Dehingia; Nandita Bhan; Edwin Elizabeth Thomas; Lotus McDougal; Sarah Averbach; Julian McAuley; Abhishek Singh; Anita Raj
Journal:  SSM Popul Health       Date:  2022-09-29

7.  Maternal Height-standardized Prevalence of Stunting in 67 Low- and Middle-income Countries.

Authors:  Omar Karlsson; Rockli Kim; Barry Bogin; S V Subramanian
Journal:  J Epidemiol       Date:  2021-07-10       Impact factor: 3.809

Review 8.  A scoping review on the use of machine learning in research on social determinants of health: Trends and research prospects.

Authors:  Shiho Kino; Yu-Tien Hsu; Koichiro Shiba; Yung-Shin Chien; Carol Mita; Ichiro Kawachi; Adel Daoud
Journal:  SSM Popul Health       Date:  2021-06-05
  8 in total

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