372813名接受体检者自杀情况的预测

Prediction of suicide among 372,813 individuals under medical check-up.

作者信息

Cho Seo-Eun, Geem Zong Woo, Na Kyoung-Sae

机构信息

Department of Psychiatry, Gil Medical Center, Gachon University College of Medicine, Incheon, Republic of Korea.

Department of Energy and Information Technology, Gachon University, Seongnam-si, Republic of Korea.

出版信息

J Psychiatr Res. 2020 Dec;131:9-14. doi: 10.1016/j.jpsychires.2020.08.035. Epub 2020 Aug 29.

Abstract

BACKGROUND

Suicide is a serious social and public health problem. Social stigma and prejudice reduce the accessibility of mental health care services for high-risk groups, resulting in them not receiving interventions and committing suicide. A suicide prediction model is necessary to identify high-risk groups in the general population.

METHODS

We used national medical check-up data from 2009 to 2015 in Korea. The latest medical check-up data for each subject was set as an index point. Analysis was undertaken for an overall follow-up period (index point to the final tracking period) as well as for a one-year follow-up period. The training set was cross-validated fivefold. The predictive model was trained using a random forest algorithm, and its performance was measured using a separate test set not included in the training.

RESULTS

The analysis covered 372,813 individuals, with an average (SD) overall follow-up duration of 1.52 (1.52) years. When we predicted suicide during the overall follow-up period, the area under the receiver operating characteristic curve (AUC) was 0.849, sensitivity was 0.817, and specificity was 0.754. The performance of the predicted suicide risk model for one year from the index point was AUC 0.818, sensitivity 0.788, and specificity 0.657.

CONCLUSIONS

This is probably the first suicide predictive model using machine learning based on medical check-up data from the general population. It could be used to screen high-risk suicidal groups from the population through routine medical check-ups. Future studies may test preventive interventions such as exercise and alcohol in these high-risk groups.

摘要

背景

自杀是一个严重的社会和公共卫生问题。社会污名和偏见降低了高危群体获得心理健康护理服务的机会,导致他们无法接受干预并最终自杀。有必要建立一个自杀预测模型来识别普通人群中的高危群体。

方法

我们使用了韩国2009年至2015年的全国体检数据。将每个受试者的最新体检数据设定为索引点。对整个随访期(索引点至最终追踪期)以及一年随访期进行分析。训练集进行了五重交叉验证。使用随机森林算法训练预测模型,并使用训练集中未包含的单独测试集来衡量其性能。

结果

分析涵盖372,813人,总体随访时间平均(标准差)为1.52(1.52)年。当我们预测整个随访期内的自杀情况时,受试者工作特征曲线下面积(AUC)为0.849,灵敏度为0.817,特异度为0.754。从索引点起一年的自杀风险预测模型性能为AUC 0.818,灵敏度0.788,特异度0.657。

结论

这可能是首个基于普通人群体检数据使用机器学习的自杀预测模型。它可用于通过常规体检从人群中筛查高危自杀群体。未来的研究可以在这些高危群体中测试诸如运动和饮酒等预防干预措施。

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