A point system to predict the future risk of obesity in 10-year-old children

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Abstract

Background: A 4-year longitudinal study was conducted to develop a model and a point system for predicting childhood obesity. Methods: This study included 1,504 Japanese 10-year-old children who underwent health check-ups between 2011 and 2015. Multivariable logistic regression analysis was conducted using the explanatory variables overweight and lifestyle. Obesity was defined as percentage overweight (POW) > 20% calculated by the following equation: (actual weight-standard weight by height and sex)/ standard weight by height and sex © 100 (%). The model was validated using the Hosmer-Lemeshow test on 10-year-olds. Results: Our prediction model for development of childhood obesity was based on seven binary variables: sex, lack of sleep, >2-h use of television/ games/ smartphone, hypertension, dyslipidemia, hepatic dysfunction, and being overweight. The area under the curve of the receiver operating characteristic curve was 0.803 (95% confidence interval, 0.740 to 0.866). When validated in non-obese children (n = 415), there was no significant difference between actual and predicted numbers of children with obesity (Hosmer-Lemeshow chi-square = 7.90, p = 0.18). Conclusions: The validated prediction model and point score for obesity development were shown to be useful tools for predicting the future 4-year risk of developing obesity among 10 years-old children. The point system may be useful for reducing the occurrence of childhood obesity and promoting better health.

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Sonoda, R., Tokiya, M., Touri, K., Tanomura, Y., Yada, K., Funakoshi, Y., & Saito, I. (2023). A point system to predict the future risk of obesity in 10-year-old children. Environmental Health and Preventive Medicine, 28(1). https://doi.org/10.1265/ehpm.22-00270

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