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Prediction of Suicidal Ideation among Korean Adults Using Machine Learning: A Cross-Sectional Study

OBJECTIVE: Suicidal ideation (SI) precedes actual suicidal event. Thus, it is important for the prevention of suicide to screen the individuals with SI. This study aimed to identify the factors associated with SI and to build prediction models in Korean adults using machine learning methods. METHODS...

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Autores principales: Oh, Bumjo, Yun, Je-Yeon, Yeo, Eun Chong, Kim, Dong-Hoi, Kim, Jin, Cho, Bum-Joo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Korean Neuropsychiatric Association 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7176567/
https://www.ncbi.nlm.nih.gov/pubmed/32213803
http://dx.doi.org/10.30773/pi.2019.0270
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author Oh, Bumjo
Yun, Je-Yeon
Yeo, Eun Chong
Kim, Dong-Hoi
Kim, Jin
Cho, Bum-Joo
author_facet Oh, Bumjo
Yun, Je-Yeon
Yeo, Eun Chong
Kim, Dong-Hoi
Kim, Jin
Cho, Bum-Joo
author_sort Oh, Bumjo
collection PubMed
description OBJECTIVE: Suicidal ideation (SI) precedes actual suicidal event. Thus, it is important for the prevention of suicide to screen the individuals with SI. This study aimed to identify the factors associated with SI and to build prediction models in Korean adults using machine learning methods. METHODS: The 2010–2013 dataset of the Korea National Health and Nutritional Examination Survey was used as the training dataset (n=16,437), and the subset collected in 2015 was used as the testing dataset (n=3,788). Various machine learning algorithms were applied and compared to the conventional logistic regression (LR)-based model. RESULTS: Common risk factors for SI included stress awareness, experience of continuous depressive mood, EQ-5D score, depressive disorder, household income, educational status, alcohol abuse, and unmet medical service needs. The prediction performances of the machine learning models, as measured by the area under receiver-operating curve, ranged from 0.794 to 0.877, some of which were better than that of the conventional LR model (0.867). The Bayesian network, LogitBoost with LR, and ANN models outperformed the conventional LR model. CONCLUSION: A machine learning-based approach could provide better SI prediction performance compared to a conventional LR-based model. These may help primary care physicians to identify patients at risk of SI and will facilitate the early prevention of suicide.
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spelling pubmed-71765672020-04-27 Prediction of Suicidal Ideation among Korean Adults Using Machine Learning: A Cross-Sectional Study Oh, Bumjo Yun, Je-Yeon Yeo, Eun Chong Kim, Dong-Hoi Kim, Jin Cho, Bum-Joo Psychiatry Investig Original Article OBJECTIVE: Suicidal ideation (SI) precedes actual suicidal event. Thus, it is important for the prevention of suicide to screen the individuals with SI. This study aimed to identify the factors associated with SI and to build prediction models in Korean adults using machine learning methods. METHODS: The 2010–2013 dataset of the Korea National Health and Nutritional Examination Survey was used as the training dataset (n=16,437), and the subset collected in 2015 was used as the testing dataset (n=3,788). Various machine learning algorithms were applied and compared to the conventional logistic regression (LR)-based model. RESULTS: Common risk factors for SI included stress awareness, experience of continuous depressive mood, EQ-5D score, depressive disorder, household income, educational status, alcohol abuse, and unmet medical service needs. The prediction performances of the machine learning models, as measured by the area under receiver-operating curve, ranged from 0.794 to 0.877, some of which were better than that of the conventional LR model (0.867). The Bayesian network, LogitBoost with LR, and ANN models outperformed the conventional LR model. CONCLUSION: A machine learning-based approach could provide better SI prediction performance compared to a conventional LR-based model. These may help primary care physicians to identify patients at risk of SI and will facilitate the early prevention of suicide. Korean Neuropsychiatric Association 2020-04 2020-03-27 /pmc/articles/PMC7176567/ /pubmed/32213803 http://dx.doi.org/10.30773/pi.2019.0270 Text en Copyright © 2020 Korean Neuropsychiatric Association This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Oh, Bumjo
Yun, Je-Yeon
Yeo, Eun Chong
Kim, Dong-Hoi
Kim, Jin
Cho, Bum-Joo
Prediction of Suicidal Ideation among Korean Adults Using Machine Learning: A Cross-Sectional Study
title Prediction of Suicidal Ideation among Korean Adults Using Machine Learning: A Cross-Sectional Study
title_full Prediction of Suicidal Ideation among Korean Adults Using Machine Learning: A Cross-Sectional Study
title_fullStr Prediction of Suicidal Ideation among Korean Adults Using Machine Learning: A Cross-Sectional Study
title_full_unstemmed Prediction of Suicidal Ideation among Korean Adults Using Machine Learning: A Cross-Sectional Study
title_short Prediction of Suicidal Ideation among Korean Adults Using Machine Learning: A Cross-Sectional Study
title_sort prediction of suicidal ideation among korean adults using machine learning: a cross-sectional study
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7176567/
https://www.ncbi.nlm.nih.gov/pubmed/32213803
http://dx.doi.org/10.30773/pi.2019.0270
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