The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal Characteristics

This study investigated the diagnostic accuracy of using an artificial neural network (ANN) for the prediction of metabolic syndrome (MetS) based on socioeconomic status and lifestyle factors. The data of 27,415 subjects who went through examinations and answered questionnaires during three stages f...

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Main Authors: Feng-Hsu Wang, Chih-Ming Lin
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:International Journal of Environmental Research and Public Health
Subjects:
Online Access:https://www.mdpi.com/1660-4601/17/24/9288
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spelling doaj-1269d4f063e6426b939e1c43cd07ba902020-12-12T00:04:42ZengMDPI AGInternational Journal of Environmental Research and Public Health1661-78271660-46012020-12-01179288928810.3390/ijerph17249288The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal CharacteristicsFeng-Hsu Wang0Chih-Ming Lin1Department of Computer Science and Information Engineering, Ming Chuan University, Taoyuan 333, TaiwanDepartment of Healthcare Information and Management, Ming Chuan University, Taoyuan 333, TaiwanThis study investigated the diagnostic accuracy of using an artificial neural network (ANN) for the prediction of metabolic syndrome (MetS) based on socioeconomic status and lifestyle factors. The data of 27,415 subjects who went through examinations and answered questionnaires during three stages from 2006 to 2014 at a health institute in Taiwan were collected and analyzed. The repeated measurements over time were set as predictive factors and used to train and test an ANN for MetS prediction. Among the subjects, 18.3%, 24.6%, and 30.1% were diagnosed with MetS during the respective three stages. ANN analysis applied with an over-sampling technique performed with an area under the curve (AUC) of up to 0.93 based on different models. The over-sampling technique helped improve prediction performance in terms of sensitivity and F<sub>2</sub> measures. The results indicated that waist circumference, socioeconomic status (SES), and lifestyle factors can be utilized in a non-invasive screening tool to assist health workers in making primary care decisions when MetS is suspected. By predicting the occurrence of MetS, individuals or healthcare professionals can then develop preventive strategies in time, thus enhancing the effectiveness of health promotion.https://www.mdpi.com/1660-4601/17/24/9288metabolic syndromeartificial neural networklifestyle factorssocioeconomic status
collection DOAJ
language English
format Article
sources DOAJ
author Feng-Hsu Wang
Chih-Ming Lin
spellingShingle Feng-Hsu Wang
Chih-Ming Lin
The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal Characteristics
International Journal of Environmental Research and Public Health
metabolic syndrome
artificial neural network
lifestyle factors
socioeconomic status
author_facet Feng-Hsu Wang
Chih-Ming Lin
author_sort Feng-Hsu Wang
title The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal Characteristics
title_short The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal Characteristics
title_full The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal Characteristics
title_fullStr The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal Characteristics
title_full_unstemmed The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal Characteristics
title_sort utility of artificial neural networks for the non-invasive prediction of metabolic syndrome based on personal characteristics
publisher MDPI AG
series International Journal of Environmental Research and Public Health
issn 1661-7827
1660-4601
publishDate 2020-12-01
description This study investigated the diagnostic accuracy of using an artificial neural network (ANN) for the prediction of metabolic syndrome (MetS) based on socioeconomic status and lifestyle factors. The data of 27,415 subjects who went through examinations and answered questionnaires during three stages from 2006 to 2014 at a health institute in Taiwan were collected and analyzed. The repeated measurements over time were set as predictive factors and used to train and test an ANN for MetS prediction. Among the subjects, 18.3%, 24.6%, and 30.1% were diagnosed with MetS during the respective three stages. ANN analysis applied with an over-sampling technique performed with an area under the curve (AUC) of up to 0.93 based on different models. The over-sampling technique helped improve prediction performance in terms of sensitivity and F<sub>2</sub> measures. The results indicated that waist circumference, socioeconomic status (SES), and lifestyle factors can be utilized in a non-invasive screening tool to assist health workers in making primary care decisions when MetS is suspected. By predicting the occurrence of MetS, individuals or healthcare professionals can then develop preventive strategies in time, thus enhancing the effectiveness of health promotion.
topic metabolic syndrome
artificial neural network
lifestyle factors
socioeconomic status
url https://www.mdpi.com/1660-4601/17/24/9288
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