Cargando…
A Deep Learning Neural Network to Classify Obesity Risk in Portuguese Adolescents Based on Physical Fitness Levels and Body Mass Index Percentiles: Insights for National Health Policies
The increasing prevalence of overweight and obesity among adults is a risk factor for many chronic diseases and death. In addition, obesity among children and adolescents has reached unprecedented levels and studies show that obese children and adolescents are more likely to become obese adults. The...
Autores principales: | , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
MDPI
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10376847/ https://www.ncbi.nlm.nih.gov/pubmed/37503969 http://dx.doi.org/10.3390/bs13070522 |
_version_ | 1785079374210400256 |
---|---|
author | Forte, Pedro Encarnação, Samuel Monteiro, António Miguel Teixeira, José Eduardo Hattabi, Soukaina Sortwell, Andrew Branquinho, Luís Amaro, Bruna Sampaio, Tatiana Flores, Pedro Silva-Santos, Sandra Ribeiro, Joana Batista, Amanda Ferraz, Ricardo Rodrigues, Filipe |
author_facet | Forte, Pedro Encarnação, Samuel Monteiro, António Miguel Teixeira, José Eduardo Hattabi, Soukaina Sortwell, Andrew Branquinho, Luís Amaro, Bruna Sampaio, Tatiana Flores, Pedro Silva-Santos, Sandra Ribeiro, Joana Batista, Amanda Ferraz, Ricardo Rodrigues, Filipe |
author_sort | Forte, Pedro |
collection | PubMed |
description | The increasing prevalence of overweight and obesity among adults is a risk factor for many chronic diseases and death. In addition, obesity among children and adolescents has reached unprecedented levels and studies show that obese children and adolescents are more likely to become obese adults. Therefore, both the prevention and treatment of obesity in adolescents are critical. This study aimed to develop an artificial intelligence (AI) neural network (NNET) model that identifies the risk of obesity in Portuguese adolescents based on their body mass index (BMI) percentiles and levels of physical fitness. Using datasets from the FITescola(®) project, 654 adolescents aged between 10–19 years old, male: 334 (51%), female: n = 320 (49%), age 13.8 ± 2 years old, were selected to participate in a cross-sectional observational study. Physical fitness variables, age, and sex were used to identify the risk of obesity. The NNET had good accuracy (75%) and performance validation through the Receiver Operating Characteristic using the Area Under the Curve (ROC AUC = 64%) in identifying the risk of obesity in Portuguese adolescents based on the BMI percentiles. Correlations of moderate effect size were perceived for aerobic fitness (AF), upper limbs strength (ULS), and sprint time (ST), showing that some physical fitness variables contributed to the obesity risk of the adolescents. Our NNET presented a good accuracy (75%) and was validated with the K-Folds Cross-Validation (K-Folds CV) with good accuracy (71%) and ROC AUC (66%). According to the NNET, there was an increased risk of obesity linked to low physical fitness in Portuguese teenagers. |
format | Online Article Text |
id | pubmed-10376847 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | MDPI |
record_format | MEDLINE/PubMed |
spelling | pubmed-103768472023-07-29 A Deep Learning Neural Network to Classify Obesity Risk in Portuguese Adolescents Based on Physical Fitness Levels and Body Mass Index Percentiles: Insights for National Health Policies Forte, Pedro Encarnação, Samuel Monteiro, António Miguel Teixeira, José Eduardo Hattabi, Soukaina Sortwell, Andrew Branquinho, Luís Amaro, Bruna Sampaio, Tatiana Flores, Pedro Silva-Santos, Sandra Ribeiro, Joana Batista, Amanda Ferraz, Ricardo Rodrigues, Filipe Behav Sci (Basel) Article The increasing prevalence of overweight and obesity among adults is a risk factor for many chronic diseases and death. In addition, obesity among children and adolescents has reached unprecedented levels and studies show that obese children and adolescents are more likely to become obese adults. Therefore, both the prevention and treatment of obesity in adolescents are critical. This study aimed to develop an artificial intelligence (AI) neural network (NNET) model that identifies the risk of obesity in Portuguese adolescents based on their body mass index (BMI) percentiles and levels of physical fitness. Using datasets from the FITescola(®) project, 654 adolescents aged between 10–19 years old, male: 334 (51%), female: n = 320 (49%), age 13.8 ± 2 years old, were selected to participate in a cross-sectional observational study. Physical fitness variables, age, and sex were used to identify the risk of obesity. The NNET had good accuracy (75%) and performance validation through the Receiver Operating Characteristic using the Area Under the Curve (ROC AUC = 64%) in identifying the risk of obesity in Portuguese adolescents based on the BMI percentiles. Correlations of moderate effect size were perceived for aerobic fitness (AF), upper limbs strength (ULS), and sprint time (ST), showing that some physical fitness variables contributed to the obesity risk of the adolescents. Our NNET presented a good accuracy (75%) and was validated with the K-Folds Cross-Validation (K-Folds CV) with good accuracy (71%) and ROC AUC (66%). According to the NNET, there was an increased risk of obesity linked to low physical fitness in Portuguese teenagers. MDPI 2023-06-21 /pmc/articles/PMC10376847/ /pubmed/37503969 http://dx.doi.org/10.3390/bs13070522 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Article Forte, Pedro Encarnação, Samuel Monteiro, António Miguel Teixeira, José Eduardo Hattabi, Soukaina Sortwell, Andrew Branquinho, Luís Amaro, Bruna Sampaio, Tatiana Flores, Pedro Silva-Santos, Sandra Ribeiro, Joana Batista, Amanda Ferraz, Ricardo Rodrigues, Filipe A Deep Learning Neural Network to Classify Obesity Risk in Portuguese Adolescents Based on Physical Fitness Levels and Body Mass Index Percentiles: Insights for National Health Policies |
title | A Deep Learning Neural Network to Classify Obesity Risk in Portuguese Adolescents Based on Physical Fitness Levels and Body Mass Index Percentiles: Insights for National Health Policies |
title_full | A Deep Learning Neural Network to Classify Obesity Risk in Portuguese Adolescents Based on Physical Fitness Levels and Body Mass Index Percentiles: Insights for National Health Policies |
title_fullStr | A Deep Learning Neural Network to Classify Obesity Risk in Portuguese Adolescents Based on Physical Fitness Levels and Body Mass Index Percentiles: Insights for National Health Policies |
title_full_unstemmed | A Deep Learning Neural Network to Classify Obesity Risk in Portuguese Adolescents Based on Physical Fitness Levels and Body Mass Index Percentiles: Insights for National Health Policies |
title_short | A Deep Learning Neural Network to Classify Obesity Risk in Portuguese Adolescents Based on Physical Fitness Levels and Body Mass Index Percentiles: Insights for National Health Policies |
title_sort | deep learning neural network to classify obesity risk in portuguese adolescents based on physical fitness levels and body mass index percentiles: insights for national health policies |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10376847/ https://www.ncbi.nlm.nih.gov/pubmed/37503969 http://dx.doi.org/10.3390/bs13070522 |
work_keys_str_mv | AT fortepedro adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT encarnacaosamuel adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT monteiroantoniomiguel adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT teixeirajoseeduardo adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT hattabisoukaina adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT sortwellandrew adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT branquinholuis adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT amarobruna adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT sampaiotatiana adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT florespedro adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT silvasantossandra adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT ribeirojoana adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT batistaamanda adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT ferrazricardo adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT rodriguesfilipe adeeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT fortepedro deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT encarnacaosamuel deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT monteiroantoniomiguel deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT teixeirajoseeduardo deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT hattabisoukaina deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT sortwellandrew deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT branquinholuis deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT amarobruna deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT sampaiotatiana deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT florespedro deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT silvasantossandra deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT ribeirojoana deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT batistaamanda deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT ferrazricardo deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies AT rodriguesfilipe deeplearningneuralnetworktoclassifyobesityriskinportugueseadolescentsbasedonphysicalfitnesslevelsandbodymassindexpercentilesinsightsfornationalhealthpolicies |