Anthropometric, Nutritional, and Lifestyle Factors Involved in Predicting Food Addiction: An Agnostic Machine Learning Approach
Fecha
2025-07-24Disciplina/s
Ciencias de la AlimentaciónEnfermería
Medicina
Psicología
Materia/s
food addiction; dietary intake; lifestyle; machine learning; SHAP; anthropometryFood addiction
Dietary intake
Lifestyle
Machine learning
SHAP
Anthropometry
Resumen
Food addiction (FA) is an emerging psychiatric condition that presents behavioral and
neurobiological similarities with other addictions, and its early identification is essential
to prevent the development of more severe disorders. The aim of the present study was
to determine the ability of anthropometric measures, eating habits, symptoms related to
eating disorders (ED), and lifestyle features to predict the symptoms of food addiction.
Methodology: A cross-sectional study was conducted in a sample of 702 university students
(77.3% women; age: 22 ± 6 years). The Food Frequency Questionnaire (FFQ), the Yale
Food Addiction Scale 2.0 (YFAS 2.0), the Eating Attitudes Test (EAT-26), anthropometric
measurements, and a set of self-report questions on substance use, physical activity level,
and other questions were administered. A total of 6.4% of participants presented symptoms
compatible with food addiction, and 8.1% were at risk for ED. Additionally, 26.5% reported
daily smokin...





