Predicting South Korean adolescents vulnerable to obesity after the COVID-19 pandemic using categorical boosting and shapley additive explanation values: A population-based cross-sectional survey

Author:

Byeon Haewon

Abstract

ObjectiveThis study identified factors related to adolescent obesity during the COVID-19 pandemic by using machine learning techniques and developed a model for predicting high-risk obesity groups among South Korean adolescents based on the result.Materials and methodsThis study analyzed 50,858 subjects (male: 26,535 subjects, and female: 24,323 subjects) between 12 and 18 years old. Outcome variables were classified into two classes (normal or obesity) based on body mass index (BMI). The explanatory variables included demographic factors, mental health factors, life habit factors, exercise factors, and academic factors. This study developed a model for predicting adolescent obesity by using multiple logistic regressions that corrected all confounding factors to understand the relationship between predictors for South Korean adolescent obesity by inputting the seven variables with the highest Shapley values found in categorical boosting (CatBoost).ResultsIn this study, the top seven variables with a high impact on model output (based on SHAP values in CatBoost) were gender, mean sitting hours per day, the number of days of conducting strength training in the past seven days, academic performance, the number of days of drinking soda in the past seven days, the number of days of conducting the moderate-intensity physical activity for 60 min or more per day in the past seven days, and subjective stress perception level.ConclusionTo prevent obesity in adolescents, it is required to detect adolescents vulnerable to obesity early and conduct monitoring continuously to manage their physical health.

Funder

National Research Foundation of Korea

Publisher

Frontiers Media SA

Subject

Pediatrics, Perinatology and Child Health

Reference34 articles.

1. Treatment of adolescent obesity.;Steinbeck;Nat Rev Endocrinol.,2018

2. Secular trends in pediatric overweight and obesity in Korea.;Kim;J Obes Metab Syndr.,2020

3. Child and adolescent obesity: part of a bigger picture.;Lobstein;Lancet.,2015

4. Obesity as a prospective predictor of depression in adolescent females.;Boutelle;Health Psychol.,2010

5. The COVID-19 pandemic.;Ciotti;Crit Rev Clin Lab Sci.,2020

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