Diagnostic performance of an artificial neural network to predict excess body fat in children

Pediatr Obes. 2019 Feb;14(2):e12494. doi: 10.1111/ijpo.12494. Epub 2018 Dec 27.

Abstract

Background: Waist circumference (WC) and z scores of body mass index (BMI) are commonly used to predict childhood obesity, although BMI and WC have a limited sensitivity.

Objectives: To generate an artificial neural network (ANN), using the input parameters age, height, weight, and WC, to predict excess body fat in children.

Methods: As part of the National Health and Nutrition Examination Survey (NHANES) study, in the years 1999 to 2004, the body fat percentage of randomly selected Americans from 8 to 19 years were measured using whole-body dual energy X-ray absorptiometry (DXA) scans. Excess body fat was defined as a body fat percentage ≥ 85th centile.

Results: The data of 1999 children (856 female) were eligible. In females, the sensitivity of the BMI, WC, and ANN approaches to predict excess body fat were 0.751 (95% CI, 0.730-0.771), 0.523 (0.487-0.559), and 0.782 (0.754-0.810), respectively. In males, the sensitivity of the BMI, WC, and ANN approaches to predict excess body fat were 0.721 (95% CI, 0.699-0.743), 0.572 (0.549-0.594), and 0.795 (0.768-0.821).

Conclusions: Only in boys, the diagnostic performance in identifying excess body fat was better by using an ANN than by applying BMI and WC z scores. In girls, the ANN and BMI z scores performed comparable and significantly better than WC z scores.

Keywords: artificial neural network; body mass index; diagnostic performance; excess body fat.

MeSH terms

  • Absorptiometry, Photon / methods*
  • Adipose Tissue / diagnostic imaging*
  • Adolescent
  • Body Mass Index
  • Body Weight
  • Child
  • Female
  • Humans
  • Male
  • Neural Networks, Computer*
  • Nutrition Surveys
  • Pediatric Obesity / diagnosis*
  • Self Concept
  • Sensitivity and Specificity
  • Waist Circumference
  • Young Adult