Using explainable machine learning and fitbit data to investigate predictors of adolescent obesity.

Journal: Scientific reports
PMID:

Abstract

Sociodemographic and lifestyle factors (sleep, physical activity, and sedentary behavior) may predict obesity risk in early adolescence; a critical period during the life course. Analyzing data from 2971 participants (M = 11.94, SD = 0.64 years) wearing Fitbit Charge HR 2 devices in the Adolescent Brain Cognitive Development (ABCD) Study, glass box machine learning models identified obesity predictors from Fitbit-derived measures of sleep, cardiovascular fitness, and sociodemographic status. Key predictors of obesity include identifying as Non-White race, low household income, later bedtime, short sleep duration, variable sleep timing, low daily step counts, and high heart rates (AUC = 0.726). Findings highlight the importance of inadequate sleep, physical inactivity, and socioeconomic disparities, for obesity risk. Results also show the clinical applicability of wearables for continuous monitoring of sleep and cardiovascular fitness in adolescents. Identifying the tipping points in the predictors of obesity risk can inform interventions and treatment strategies to reduce obesity rates in adolescents.

Authors

  • Orsolya Kiss
    Center for Health Sciences, SRI International, 333 Ravenswood Ave, Menlo Park, CA, 94025, USA. orsolya.kiss@sri.com.
  • Fiona C Baker
    Center for Health Sciences, SRI International, Menlo Park, CA 94025, USA.
  • Robert Palovics
    Department of Neurology and Neurological Sciences, Stanford University School of Medicine, Stanford, CA, USA.
  • Erin E Dooley
    Department of Epidemiology, The University of Alabama at Birmingham, Birmingham, Alabama, USA.
  • Kelley Pettee Gabriel
    Department of Epidemiology, University of Alabama at Birmingham, 1665 University Boulevard, Birmingham, AL, 35233, USA.
  • Jason M Nagata
    Department of Pediatrics, University of California, San Francisco, San Francisco, CA, USA.