Cargando…

Identifying the predictors of severe psychological distress by auto-machine learning methods

Social stress in daily life and the COVID-19 pandemic have greatly impacted the mental health of the population. Early detection of a predisposition to severe psychological distress is essential for timely interventions. This paper analyzed 4036 samples participating in the 2019–2020 National Health...

Descripción completa

Detalles Bibliográficos
Autores principales: Zhang, Xiaomei, Ren, Haoying, Gao, Lei, Shia, Ben-Chang, Chen, Ming-Chih, Ye, Linglong, Wang, Ruojia, Qin, Lei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Authors. Published by Elsevier Ltd. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10141788/
https://www.ncbi.nlm.nih.gov/pubmed/37152204
http://dx.doi.org/10.1016/j.imu.2023.101258
_version_ 1785033459044974592
author Zhang, Xiaomei
Ren, Haoying
Gao, Lei
Shia, Ben-Chang
Chen, Ming-Chih
Ye, Linglong
Wang, Ruojia
Qin, Lei
author_facet Zhang, Xiaomei
Ren, Haoying
Gao, Lei
Shia, Ben-Chang
Chen, Ming-Chih
Ye, Linglong
Wang, Ruojia
Qin, Lei
author_sort Zhang, Xiaomei
collection PubMed
description Social stress in daily life and the COVID-19 pandemic have greatly impacted the mental health of the population. Early detection of a predisposition to severe psychological distress is essential for timely interventions. This paper analyzed 4036 samples participating in the 2019–2020 National Health Information Trends Survey (HINTS) and identified 57 candidate predictors of severe psychological distress based on univariate chi-square and t-test analyses. Five machine learning methods, namely logistic regression (LR), automatic generalized linear models (Auto-GLM), automatic random forests (Auto-Random Forests), automatic deep neural networks (Auto-Deep learning) and automatic gradient boosting machines (Auto-GBM), were employed to model synthetic minority oversampling technique-based (SMOTE) resampled data and identify predictors of severe psychological distress. Predictors were evaluated by odds ratios in logistic models and variable importance in the other models. Forty-seven variables were identified as significant predictors of severe psychological distress, including 13 sociodemographic variables and 34 variables related to individual lifestyle and behavioral habits. Among them, new potentially relevant variables related to an individual's level of concern and trust in cancer information, exposure to health care providers, and cancer screening and awareness are included. The performance of each model was evaluated using five-fold cross-validation. The optimal model performance-wise was Auto-GBM with an accuracy of 89.75%, a precision of 89.68%, a recall of 89.31%, an F1-score of 89.48% and an AUC of 95.57%. Significant predictors of severe psychological distress were identified in this study and the value of machine learning methods in predicting severe psychological distress is demonstrated, thereby enhancing pre-prediction and clinical decision-making of severe psychological distress problems.
format Online
Article
Text
id pubmed-10141788
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher The Authors. Published by Elsevier Ltd.
record_format MEDLINE/PubMed
spelling pubmed-101417882023-05-01 Identifying the predictors of severe psychological distress by auto-machine learning methods Zhang, Xiaomei Ren, Haoying Gao, Lei Shia, Ben-Chang Chen, Ming-Chih Ye, Linglong Wang, Ruojia Qin, Lei Inform Med Unlocked Article Social stress in daily life and the COVID-19 pandemic have greatly impacted the mental health of the population. Early detection of a predisposition to severe psychological distress is essential for timely interventions. This paper analyzed 4036 samples participating in the 2019–2020 National Health Information Trends Survey (HINTS) and identified 57 candidate predictors of severe psychological distress based on univariate chi-square and t-test analyses. Five machine learning methods, namely logistic regression (LR), automatic generalized linear models (Auto-GLM), automatic random forests (Auto-Random Forests), automatic deep neural networks (Auto-Deep learning) and automatic gradient boosting machines (Auto-GBM), were employed to model synthetic minority oversampling technique-based (SMOTE) resampled data and identify predictors of severe psychological distress. Predictors were evaluated by odds ratios in logistic models and variable importance in the other models. Forty-seven variables were identified as significant predictors of severe psychological distress, including 13 sociodemographic variables and 34 variables related to individual lifestyle and behavioral habits. Among them, new potentially relevant variables related to an individual's level of concern and trust in cancer information, exposure to health care providers, and cancer screening and awareness are included. The performance of each model was evaluated using five-fold cross-validation. The optimal model performance-wise was Auto-GBM with an accuracy of 89.75%, a precision of 89.68%, a recall of 89.31%, an F1-score of 89.48% and an AUC of 95.57%. Significant predictors of severe psychological distress were identified in this study and the value of machine learning methods in predicting severe psychological distress is demonstrated, thereby enhancing pre-prediction and clinical decision-making of severe psychological distress problems. The Authors. Published by Elsevier Ltd. 2023 2023-04-28 /pmc/articles/PMC10141788/ /pubmed/37152204 http://dx.doi.org/10.1016/j.imu.2023.101258 Text en © 2023 The Authors Since January 2020 Elsevier has created a COVID-19 resource centre with free information in English and Mandarin on the novel coronavirus COVID-19. The COVID-19 resource centre is hosted on Elsevier Connect, the company's public news and information website. Elsevier hereby grants permission to make all its COVID-19-related research that is available on the COVID-19 resource centre - including this research content - immediately available in PubMed Central and other publicly funded repositories, such as the WHO COVID database with rights for unrestricted research re-use and analyses in any form or by any means with acknowledgement of the original source. These permissions are granted for free by Elsevier for as long as the COVID-19 resource centre remains active.
spellingShingle Article
Zhang, Xiaomei
Ren, Haoying
Gao, Lei
Shia, Ben-Chang
Chen, Ming-Chih
Ye, Linglong
Wang, Ruojia
Qin, Lei
Identifying the predictors of severe psychological distress by auto-machine learning methods
title Identifying the predictors of severe psychological distress by auto-machine learning methods
title_full Identifying the predictors of severe psychological distress by auto-machine learning methods
title_fullStr Identifying the predictors of severe psychological distress by auto-machine learning methods
title_full_unstemmed Identifying the predictors of severe psychological distress by auto-machine learning methods
title_short Identifying the predictors of severe psychological distress by auto-machine learning methods
title_sort identifying the predictors of severe psychological distress by auto-machine learning methods
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10141788/
https://www.ncbi.nlm.nih.gov/pubmed/37152204
http://dx.doi.org/10.1016/j.imu.2023.101258
work_keys_str_mv AT zhangxiaomei identifyingthepredictorsofseverepsychologicaldistressbyautomachinelearningmethods
AT renhaoying identifyingthepredictorsofseverepsychologicaldistressbyautomachinelearningmethods
AT gaolei identifyingthepredictorsofseverepsychologicaldistressbyautomachinelearningmethods
AT shiabenchang identifyingthepredictorsofseverepsychologicaldistressbyautomachinelearningmethods
AT chenmingchih identifyingthepredictorsofseverepsychologicaldistressbyautomachinelearningmethods
AT yelinglong identifyingthepredictorsofseverepsychologicaldistressbyautomachinelearningmethods
AT wangruojia identifyingthepredictorsofseverepsychologicaldistressbyautomachinelearningmethods
AT qinlei identifyingthepredictorsofseverepsychologicaldistressbyautomachinelearningmethods