Novel body fat estimation using machine learning and 3-dimensional optical imaging.

Journal: European journal of clinical nutrition
Published Date:

Abstract

Estimates of body composition have been derived using 3-dimensional optical imaging (3DO), but no equations to date have been calibrated using a 4-component (4C) model criterion. This investigation reports the development of a novel body fat prediction formula using anthropometric data from 3DO imaging and a 4C model. Anthropometric characteristics and body composition of 179 participants were measured via 3DO (Size Stream SS20) and a 4C model. Machine learning was used to identify significant anthropometric predictors of body fat (BF%), and stepwise/lasso regression analyses were employed to develop new 3DO-derived BF% prediction equations. The combined equation was externally cross-validated using paired 3DO and DXA assessments (n = 158), producing a R value of 0.78 and a constant error of (X ± SD) 0.8 ± 4.5%. 3DO BF% estimates demonstrated equivalence with DXA based on equivalence testing with no proportional bias in the Bland-Altman analysis. Machine learning methods may hold potential for enhancing 3DO-derived BF% estimates.

Authors

  • Patrick S Harty
    Energy Balance & Body Composition Laboratory; Department of Kinesiology & Sport Management, Texas Tech University, Lubbock, TX, USA.
  • Breck Sieglinger
    Size Stream LLC, Cary, NC, USA.
  • Steven B Heymsfield
    Pennington Biomedical Research Center, Baton Rouge, Louisiana, United States of America.
  • John A Shepherd
    Department of Epidemiology and Population Science, University of Hawaii Cancer Center, Honolulu, HI, USA.
  • David Bruner
    Size Stream LLC, Cary, NC, USA.
  • Matthew T Stratton
    Energy Balance & Body Composition Laboratory; Department of Kinesiology & Sport Management, Texas Tech University, Lubbock, TX, USA.
  • Grant M Tinsley
    Energy Balance & Body Composition Laboratory; Department of Kinesiology & Sport Management, Texas Tech University, Lubbock, TX, USA. grant.tinsley@ttu.edu.