Estimation of Obesity Levels with a Trained Neural Network Approach optimized by the Bayesian Technique

Author:

Yagin Fatma Hilal1ORCID,Gülü Mehmet2ORCID,Gormez Yasin3ORCID,Castañeda-Babarro Arkaitz4ORCID,Colak Cemil1ORCID,Greco Gianpiero5ORCID,Fischetti Francesco5ORCID,Cataldi Stefania5ORCID

Affiliation:

1. Department of Biostatistics and Medical Informatics, Faculty of Medicine, Inonu University, Malatya 44280, Turkey

2. Department of Sports Management, Faculty of Sport Sciences, Kirikkale University, Kirikkale 71450, Turkey

3. Department of Management Information Systems, Faculty of Economics and Administrative Sciences, Sivas Cumhuriyet University, Sivas 58140, Turkey

4. Department of Physical Activity and Sport Science, Faculty of Education and Sport, University of Deusto, 48007 Bilbao, Spain

5. Department of Translational Biomedicine and Neuroscience (DiBraiN), University of Study of Bari, 70124 Bari, Italy

Abstract

Background: Obesity, which causes physical and mental problems, is a global health problem with serious consequences. The prevalence of obesity is increasing steadily, and therefore, new research is needed that examines the influencing factors of obesity and how to predict the occurrence of the condition according to these factors. This study aimed to predict the level of obesity based on physical activity and eating habits using the trained neural network model. Methods: The chi-square, F-Classify, and mutual information classification algorithms were used to identify the most critical factors associated with obesity. The models’ performances were compared using a trained neural network with different feature sets. The hyperparameters of the models were optimized using Bayesian optimization techniques, which are faster and more effective than traditional techniques. Results: The results predicted the level of obesity with average accuracies of 93.06%, 89.04%, 90.32%, and 86.52% for all features using the neural network and for the features selected by the chi-square, F-Classify, and mutual information classification algorithms. The results showed that physical activity, alcohol consumption, use of technological devices, frequent consumption of high-calorie meals, and frequency of vegetable consumption were the most important factors affecting obesity. Conclusions: The F-Classify score algorithm identified the most essential features for obesity level estimation. Furthermore, physical activity and eating habits were the most critical factors for obesity prediction.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference61 articles.

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2. Hernández Álvarez, G.M. (2023, January 17). Prevalencia de Sobrepeso y Obesidad, y Factores de Riesgo, en Niños de 7-12 Años, en una Escuela Pública de Cartagena Septiembre-Octubre de 2010. Available online: https://repositorio.unal.edu.co/handle/unal/7739.

3. (2023, January 01). Obesity and Overweight. Available online: https://www.who.int/news-room/fact-sheets/detail/obesity-and-overweight.

4. Cecchini, M., and Vuik, S. (2019). The Heavy Burden of Obesity, OCED.

5. Economic costs of obesity and inactivity;Colditz;Med. Sci. Sport. Exerc.,1999

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