Abstract
Currently available anthropometric body composition prediction equations were often developed on small participant samples, included only several measured predictor variables, or were prepared using conventional statistical regression methods. Machine learning approaches are increasingly publicly available and have key advantages over statistical modeling methods when developing prediction algorithms on large datasets with multiple complex covariates. This study aimed to test the feasibility of predicting DXA-measured appendicular lean mass (ALM) with a neural network (NN) algorithm developed on a sample of 576 participants using 10 demographic (sex, age, 7 ethnic groupings) and 43 anthropometric dimensions generated with a 3D optical scanner. NN-predicted and measured ALM were highly correlated (n = 116; R2, 0.95, p < 0.001, non-significant bias) with small mean, absolute, and root-mean square errors (X ± SD, −0.17 ± 1.64 kg and 1.28 ± 1.04 kg; 1.64). These observations demonstrate the application of NN body composition prediction algorithms to rapidly emerging large and complex digital anthropometric datasets. Clinical Trial Registration: NCT03637855, NCT05217524, NCT03771417, and NCT03706612.
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Data and computer code will made available to investigators following request and review by the authors.
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Funding
This work was partially supported by National Institutes of Health NORC Center Grants P30DK072476, Pennington Biomedical Research Center and P30DK040561, Harvard Medical School and by the National Institute of Diabetes and Digestive and Kidney Diseases (NIH R01DK111698 & R01DK109008).
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CM, JAS, and SBH designed the study; FM, CM, RHF, HN, TN, JAS, GMT, and SBH conducted the analyses; SBH and JAS acquired essential materials; FM, CM, RHF, HN, TN, JAS, GMT, and SBH prepared the manuscript; and FM, CM, RHF, HN, TN, JAS, GMT, and SBH reviewed and approved the final manuscript.
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SBH reports his role on the Medical Advisory Boards of Tanita Corporation, Amgen, and Medifast. GMT has received support for his research laboratory, in the form of research grants or equipment loan or donation, from manufacturers of body composition assessment devices, including Size Stream LLC; Naked Labs Inc.; Prism Labs Inc.; RJL Systems; MuscleSound; and Biospace, Inc. The other authors and their close relatives and their professional associates have no financial interests in the study outcome, nor do they serve as an officer, director, member, owner, trustee, or employee of an organization with a financial interest in the outcome or as an expert witness, advisor, consultant, or public advocate on behalf of an organization with a financial interest in the study outcome.
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Marazzato, F., McCarthy, C., Field, R.H. et al. Advances in digital anthropometric body composition assessment: neural network algorithm prediction of appendicular lean mass. Eur J Clin Nutr 78, 452–454 (2024). https://doi.org/10.1038/s41430-023-01396-3
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DOI: https://doi.org/10.1038/s41430-023-01396-3