Laboratory of Molecular Psychiatry, Centro de Pesquisa Experimental (CPE) e Centro de Pesquisa Clínica (CPC), Hospital de Clínicas de Porto Alegre (HCPA), Porto Alegre, RS, Brazil.
Department of Psychiatry, Faculty of Medicine, Graduate Program in Psychiatry and Behavioral Sciences, Universidade Federal do Rio Grande do Sul, Porto Alegre, Brazil.
Psychol Med. 2022 Oct;52(14):2985-2996. doi: 10.1017/S0033291720004997. Epub 2021 Jan 14.
There is still little knowledge of objective suicide risk stratification.
This study aims to develop models using machine-learning approaches to predict suicide attempt (1) among survey participants in a nationally representative sample and (2) among participants with lifetime major depressive episodes. We used a cohort called the National Epidemiologic Survey on Alcohol and Related Conditions (NESARC) that was conducted in two waves and included a nationally representative sample of the adult population in the United States. Wave 1 involved 43 093 respondents and wave 2 involved 34 653 completed face-to-face reinterviews with wave 1 participants. Predictor variables included clinical, stressful life events, and sociodemographic variables from wave 1; outcome included suicide attempt between wave 1 and wave 2.
The model built with elastic net regularization distinguished individuals who had attempted suicide from those who had not with an area under the ROC curve (AUC) of 0.89, balanced accuracy 81.86%, specificity 89.22%, and sensitivity 74.51% for the general population. For participants with lifetime major depressive episodes, AUC was 0.89, balanced accuracy 81.64%, specificity 85.86%, and sensitivity 77.42%. The most important predictor variables were a diagnosis of borderline personality disorder, post-traumatic stress disorder, and being of Asian descent for the model in all participants; and previous suicide attempt, borderline personality disorder, and overnight stay in hospital because of depressive symptoms for the model in participants with lifetime major depressive episodes. Random forest and artificial neural networks had similar performance.
Risk for suicide attempt can be estimated with high accuracy.
目前对于自杀风险的客观分层知之甚少。
本研究旨在使用机器学习方法开发模型,以预测(1)全国代表性样本中的调查参与者和(2)有终身重性抑郁发作的参与者中的自杀企图。我们使用了一个名为国家酒精和相关条件流行病学调查(NESARC)的队列,该队列分为两波,包括美国成年人口的全国代表性样本。第一波涉及 43093 名受访者,第二波涉及 34653 名完成了对第一波参与者的面对面重访。预测变量包括第一波的临床、压力生活事件和社会人口统计学变量;结果包括第一波和第二波之间的自杀企图。
具有弹性网正则化的模型以 0.89 的 ROC 曲线下面积(AUC)、81.86%的平衡准确性、89.22%的特异性和 74.51%的敏感性区分了有自杀企图的个体和没有自杀企图的个体。对于有终身重性抑郁发作的参与者,AUC 为 0.89,平衡准确性为 81.64%,特异性为 85.86%,敏感性为 77.42%。对于所有参与者,最重要的预测变量是边缘型人格障碍、创伤后应激障碍和亚裔血统的诊断;对于有终身重性抑郁发作的参与者,预测变量是之前的自杀企图、边缘型人格障碍和因抑郁症状而住院过夜。随机森林和人工神经网络具有相似的性能。
自杀企图的风险可以被准确地估计。