A Maturation-Aware Machine Learning Framework for Screening the Nutritional Status of Adolescents
Hatem Ghouili, Zouhaier Farhani, Narimen Yousfi, Halil İbrahim Ceylan, Amel Dridi, Andrea de Giorgio, Nicola Luigi Bragazzi, Noomen Guelmami, Ismail Dergaa, Anissa Bouassida

TL;DR
This study develops a machine learning model to accurately screen adolescents' nutritional status, accounting for their biological maturation and class imbalance.
Contribution
A novel cost-sensitive Random Forest model combined with ROSE is proposed to improve underweight detection in adolescents.
Findings
The cost-sensitive Random Forest model achieved high accuracy (0.830) and macro-AUC (0.921) in classifying nutritional status.
The model showed stable performance across different maturation phases, with optimal discrimination in pre-PHV and post-PHV periods.
Body mass was the most important predictor, followed by waist circumference and age, especially for underweight classification.
Abstract
Background: Malnutrition in adolescents remains a significant public health issue worldwide, with undernutrition and overweight often coexisting. Accurate nutritional screening during adolescence is complicated by variability in biological maturation and class imbalance, particularly among underweight adolescents. Objective: This study aims to develop and validate machine learning models for classifying the nutritional status of adolescents, accounting for class imbalance and biological maturation, and to evaluate model stability and variable importance at different stages of peak height velocity (PHV). Methods: In this cross-sectional study, 4232 adolescents aged 11 to 18 years were recruited from nine educational institutions in Tunisia. Their nutritional status was classified according to the International Obesity Task Force (IOTF) BMI thresholds into three categories: underweight…
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Taxonomy
TopicsChild Nutrition and Water Access · Obesity, Physical Activity, Diet · Body Composition Measurement Techniques
