Combination of Machine Learning Techniques to Predict Overweight/Obesity in Adults

Author:

Gutiérrez-Gallego Alberto1ORCID,Zamorano-León José Javier2,Parra-Rodríguez Daniel1ORCID,Zekri-Nechar Khaoula3,Velasco José Manuel1ORCID,Garnica Óscar1ORCID,Jiménez-García Rodrigo2ORCID,López-de-Andrés Ana2ORCID,Cuadrado-Corrales Natividad2ORCID,Carabantes-Alarcón David2ORCID,Lahera Vicente4,Martínez-Martínez Carlos Hugo5,Hidalgo J. Ignacio1ORCID

Affiliation:

1. Department of Computer Architecture, School of Informatic, Universidad Complutense de Madrid, 28040 Madrid, Spain

2. Public Health and Maternal-Child Health Department, School of Medicine, Universidad Complutense de Madrid, 28040 Madrid, Spain

3. Health Research Institute of the Hospital Clínico San Carlos (IdISSC), 28040 Madrid, Spain

4. Physiology Department, School of Medicine, Universidad Complutense de Madrid, 28040 Madrid, Spain

5. Medicine Department, School of Medicine, Universidad Complutense de Madrid, 28040 Madrid, Spain

Abstract

(1) Background: Artificial intelligence using machine learning techniques may help us to predict and prevent obesity. The aim was to design an interpretable prediction algorithm for overweight/obesity risk based on a combination of different machine learning techniques. (2) Methods: 38 variables related to sociodemographic, lifestyle, and health aspects from 1179 residents in Madrid were collected and used to train predictive models. Accuracy, precision, and recall metrics were tested and compared between nine classical machine learning techniques and the predictive model based on a combination of those classical machine learning techniques. Statistical validation was performed. The shapely additive explanation technique was used to identify the variables with the greatest impact on weight gain. (3) Results: Cascade classifier model combining gradient boosting, random forest, and logistic regression models showed the best predictive results for overweight/obesity compared to all machine learning techniques tested, reaching an accuracy of 79%, precision of 84%, and recall of 89% for predictions for weight gain. Age, sex, academic level, profession, smoking habits, wine consumption, and Mediterranean diet adherence had the highest impact on predicting obesity. (4) Conclusions: A combination of machine learning techniques showed a significant improvement in accuracy to predict risk of overweight/obesity than machine learning techniques separately.

Funder

regional government of Madrid and co-financed by the EU Structural Funds through the Community of Madrid project

Publisher

MDPI AG

Reference77 articles.

1. Consumer Affairs (2021, January 15). Ministry of Health and Social Welfare. National Health Survey. Spain. (In Spanish).

2. Obesity: Risk factors, complications, and strategies for sustainable long-term weight management;Fruh;J. Am. Assoc. Nurse Pract.,2017

3. WHO (2024, July 15). Obesity and Overweight. Available online: https://www.who.int/news-room/fact-sheets/detail/obesity-and-overweight.

4. Risk factors of overweight/obesity-related lifestyles in university students: Results from the EHU12/24 study;Br. J. Nutr.,2022

5. A Community-Level Initiative to Prevent Obesity: Results from Kaiser Permanente’s Healthy Eating Active Living Zones Initiative in California;Cheadle;Am. J. Prev. Med.,2018

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