利用机器学习识别中国高职生自杀意念:一项横断面调查。

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY
Kun Jin, Tao Zeng, Menghui Gao, Chuwei Chen, Songyan Zhang, Furu Liu, Jinghui Bao, Jindong Chen, Renrong Wu, Jingping Zhao, Jing Huang
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引用次数: 0

摘要

自杀已成为一个重大的社会问题。研究表明,中国高职学生的自杀意念水平高于普通人群。本研究旨在探索使用机器学习(ML)识别SI并确定最合适的模型的可行性。这项横断面研究是在一所以男生为主的工程大学进行的。首先,我们比较了有和没有SI的参与者的人口学和临床特征。然后,我们应用10 ML模型来识别SI的存在。其中男生1408人(89.51%),女生165人(10.49%)。SI患病率为20.34%(320/1573)。患有自伤的个体更可能是女性,花更多的时间玩电脑游戏,学习成绩差,与老师和同学的关系差,经历更严重的精神痛苦,有更严重的童年创伤,有非自杀性自伤(NSSI)相关行为或想法的历史(所有P
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying suicidal ideation in Chinese higher vocational students using machine learning: a cross-sectional survey.

Suicide has emerged as a major societal issue. Studies indicate that Chinese higher vocational students experience higher levels of suicidal ideation (SI) compared with the general population. This study aims to explore the feasibility of using machine learning (ML) to identify SI and to determine the most suitable model. This cross-sectional study was conducted at an engineering university, predominantly attended by male students. First, we compared demographic and clinical characteristics between participants with and without SI. We then applied 10 ML models to identify the presence of SI. The study included 1,408 (89.51%) male and 165 (10.49%) female students. The prevalence of SI was 20.34% (320/1573). Individuals with SI were more likely to be female, spend more time playing computer games, have poor academic scores, have poor relationships with teachers and schoolmates, experience more severe mental distress, have more serious childhood trauma, and have histories of non-suicidal self-injury (NSSI)-related acts or thoughts (all P < .001). Most ML models showed excellent performance, particularly the random forest model, which achieved an ROC AUC of 0.97, a specificity of 96.00%, and a sensitivity of 90.63%. Consistent attention should be given to Chinese higher vocational students with NSSI ideas, bipolar disorder symptoms, and depression symptoms. ML can be used effectively in clinical practice to recognise higher vocational students who exhibit SI.

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来源期刊
CiteScore
8.80
自引率
4.30%
发文量
154
审稿时长
6-12 weeks
期刊介绍: The original papers published in the European Archives of Psychiatry and Clinical Neuroscience deal with all aspects of psychiatry and related clinical neuroscience. Clinical psychiatry, psychopathology, epidemiology as well as brain imaging, neuropathological, neurophysiological, neurochemical and moleculargenetic studies of psychiatric disorders are among the topics covered. Thus both the clinician and the neuroscientist are provided with a handy source of information on important scientific developments.
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