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Using Bayesian networks with Max-Min Hill-Climbing algorithm to detect factors related to multimorbidity

OBJECTIVES: Multimorbidity (MMD) is a medical condition that is linked with high prevalence and closely related to many adverse health outcomes and expensive medical costs. The present study aimed to construct Bayesian networks (BNs) with Max-Min Hill-Climbing algorithm (MMHC) algorithm to explore t...

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Autores principales: Song, Wenzhu, Gong, Hao, Wang, Qili, Zhang, Lijuan, Qiu, Lixia, Hu, Xueli, Han, Huimin, Li, Yaheng, Li, Rongshan, Li, Yafeng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9468216/
https://www.ncbi.nlm.nih.gov/pubmed/36110415
http://dx.doi.org/10.3389/fcvm.2022.984883
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author Song, Wenzhu
Gong, Hao
Wang, Qili
Zhang, Lijuan
Qiu, Lixia
Hu, Xueli
Han, Huimin
Li, Yaheng
Li, Rongshan
Li, Yafeng
author_facet Song, Wenzhu
Gong, Hao
Wang, Qili
Zhang, Lijuan
Qiu, Lixia
Hu, Xueli
Han, Huimin
Li, Yaheng
Li, Rongshan
Li, Yafeng
author_sort Song, Wenzhu
collection PubMed
description OBJECTIVES: Multimorbidity (MMD) is a medical condition that is linked with high prevalence and closely related to many adverse health outcomes and expensive medical costs. The present study aimed to construct Bayesian networks (BNs) with Max-Min Hill-Climbing algorithm (MMHC) algorithm to explore the network relationship between MMD and its related factors. We also aimed to compare the performance of BNs with traditional multivariate logistic regression model. METHODS: The data was downloaded from the Online Open Database of CHARLS 2018, a population-based longitudinal survey. In this study, we included 10 variables from data on demographic background, health status and functioning, and lifestyle. Missing value imputation was first performed using Random Forest. Afterward, the variables were included into logistic regression model construction and BNs model construction. The structural learning of BNs was achieved using MMHC algorithm and the parameter learning was conducted using maximum likelihood estimation. RESULTS: Among 19,752 individuals (9,313 men and 10,439 women) aged 64.73 ± 10.32 years, there are 9,129 ones without MMD (46.2%) and 10,623 ones with MMD (53.8%). Logistic regression model suggests that physical activity, sex, age, sleep duration, nap, smoking, and alcohol consumption are associated with MMD (P < 0.05). BNs, by establishing a complicated network relationship, reveals that age, sleep duration, and physical activity have a direct connection with MMD. It also shows that education levels are indirectly connected to MMD through sleep duration and residence is indirectly linked to MMD through sleep duration. CONCLUSION: BNs could graphically reveal the complex network relationship between MMD and its related factors, outperforming traditional logistic regression model. Besides, BNs allows for risk reasoning for MMD through Bayesian reasoning, which is more consistent with clinical practice and thus holds some application prospects.
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spelling pubmed-94682162022-09-14 Using Bayesian networks with Max-Min Hill-Climbing algorithm to detect factors related to multimorbidity Song, Wenzhu Gong, Hao Wang, Qili Zhang, Lijuan Qiu, Lixia Hu, Xueli Han, Huimin Li, Yaheng Li, Rongshan Li, Yafeng Front Cardiovasc Med Cardiovascular Medicine OBJECTIVES: Multimorbidity (MMD) is a medical condition that is linked with high prevalence and closely related to many adverse health outcomes and expensive medical costs. The present study aimed to construct Bayesian networks (BNs) with Max-Min Hill-Climbing algorithm (MMHC) algorithm to explore the network relationship between MMD and its related factors. We also aimed to compare the performance of BNs with traditional multivariate logistic regression model. METHODS: The data was downloaded from the Online Open Database of CHARLS 2018, a population-based longitudinal survey. In this study, we included 10 variables from data on demographic background, health status and functioning, and lifestyle. Missing value imputation was first performed using Random Forest. Afterward, the variables were included into logistic regression model construction and BNs model construction. The structural learning of BNs was achieved using MMHC algorithm and the parameter learning was conducted using maximum likelihood estimation. RESULTS: Among 19,752 individuals (9,313 men and 10,439 women) aged 64.73 ± 10.32 years, there are 9,129 ones without MMD (46.2%) and 10,623 ones with MMD (53.8%). Logistic regression model suggests that physical activity, sex, age, sleep duration, nap, smoking, and alcohol consumption are associated with MMD (P < 0.05). BNs, by establishing a complicated network relationship, reveals that age, sleep duration, and physical activity have a direct connection with MMD. It also shows that education levels are indirectly connected to MMD through sleep duration and residence is indirectly linked to MMD through sleep duration. CONCLUSION: BNs could graphically reveal the complex network relationship between MMD and its related factors, outperforming traditional logistic regression model. Besides, BNs allows for risk reasoning for MMD through Bayesian reasoning, which is more consistent with clinical practice and thus holds some application prospects. Frontiers Media S.A. 2022-08-30 /pmc/articles/PMC9468216/ /pubmed/36110415 http://dx.doi.org/10.3389/fcvm.2022.984883 Text en Copyright © 2022 Song, Gong, Wang, Zhang, Qiu, Hu, Han, Li, Li and Li. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Cardiovascular Medicine
Song, Wenzhu
Gong, Hao
Wang, Qili
Zhang, Lijuan
Qiu, Lixia
Hu, Xueli
Han, Huimin
Li, Yaheng
Li, Rongshan
Li, Yafeng
Using Bayesian networks with Max-Min Hill-Climbing algorithm to detect factors related to multimorbidity
title Using Bayesian networks with Max-Min Hill-Climbing algorithm to detect factors related to multimorbidity
title_full Using Bayesian networks with Max-Min Hill-Climbing algorithm to detect factors related to multimorbidity
title_fullStr Using Bayesian networks with Max-Min Hill-Climbing algorithm to detect factors related to multimorbidity
title_full_unstemmed Using Bayesian networks with Max-Min Hill-Climbing algorithm to detect factors related to multimorbidity
title_short Using Bayesian networks with Max-Min Hill-Climbing algorithm to detect factors related to multimorbidity
title_sort using bayesian networks with max-min hill-climbing algorithm to detect factors related to multimorbidity
topic Cardiovascular Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9468216/
https://www.ncbi.nlm.nih.gov/pubmed/36110415
http://dx.doi.org/10.3389/fcvm.2022.984883
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