Department of Biostatistics, Columbia University, New York, New York.
Division of Epidemiology, Services and Prevention Research, National Institute on Drug Abuse, Bethesda, Maryland.
JAMA Psychiatry. 2021 Apr 1;78(4):398-406. doi: 10.1001/jamapsychiatry.2020.4165.
Because more than one-third of people making nonfatal suicide attempts do not receive mental health treatment, it is essential to extend suicide attempt risk factors beyond high-risk clinical populations to the general adult population.
To identify future suicide attempt risk factors in the general population using a data-driven machine learning approach including more than 2500 questions from a large, nationally representative survey of US adults.
DESIGN, SETTING, AND PARTICIPANTS: Data came from wave 1 (2001 to 2002) and wave 2 (2004 to 2005) of the National Epidemiologic Survey on Alcohol and Related Conditions (NESARC). NESARC is a face-to-face longitudinal survey conducted with a national representative sample of noninstitutionalized civilian population 18 years and older in the US. The cumulative response rate across both waves was 70.2% resulting in 34 653 wave 2 interviews. A balanced random forest was trained using cross-validation to develop a suicide attempt risk model. Out-of-fold model prediction was used to assess model performance, including the area under the receiver operator curve, sensitivity, and specificity. Survey design and nonresponse weights allowed estimates to be representative of the US civilian population based on the 2000 census. Analyses were performed between May 15, 2019, and June 10, 2020.
Attempted suicide in the 3 years between wave 1 and wave 2 interviews.
Of 34 653 participants, 20 089 were female (weighted proportion, 52.1%). The weighted mean (SD) age was 45.1 (17.3) years at wave 1 and 48.2 (17.3) years at wave 2. Attempted suicide during the 3 years between wave 1 and wave 2 interviews was self-reported by 222 of 34 653 participants (0.6%). Using survey questions measured at wave 1, the suicide attempt risk model yielded a cross-validated area under the receiver operator characteristic curve of 0.857 with a sensitivity of 85.3% (95% CI, 79.8-89.7) and a specificity of 73.3% (95% CI, 72.8-73.8) at an optimized threshold. The model identified 1.8% of the US population to be at a 10% or greater risk of suicide attempt. The most important risk factors were 3 questions about previous suicidal ideation or behavior; 3 items from the 12-Item Short Form Health Survey, namely feeling downhearted, doing activities less carefully, or accomplishing less because of emotional problems; younger age; lower educational achievement; and recent financial crisis.
In this study, after searching through more than 2500 survey questions, several well-known risk factors of suicide attempt were confirmed, such as previous suicidal behaviors and ideation, and new risks were identified, including functional impairment resulting from mental disorders and socioeconomic disadvantage. These results may help guide future clinical assessment and the development of new suicide risk scales.
由于超过三分之一的非致命性自杀未遂者未接受心理健康治疗,因此将自杀未遂风险因素扩展到临床高危人群之外的一般成年人群体至关重要。
使用数据驱动的机器学习方法,从美国成年人的一项大型全国代表性调查中包含的 2500 多个问题中,确定一般人群中的未来自杀未遂风险因素。
设计、地点和参与者:数据来自全国酒精相关状况流行病学调查(NESARC)的第 1 波(2001 年至 2002 年)和第 2 波(2004 年至 2005 年)。NESARC 是一项与全国代表性样本进行面对面的纵向调查,对象为美国 18 岁及以上的非机构化平民人口。两波的累计回复率为 70.2%,产生了 34653 次第 2 波访谈。使用交叉验证训练了一个平衡随机森林,以开发自杀未遂风险模型。使用外部分层模型预测来评估模型性能,包括接收者操作特征曲线下的面积、敏感性和特异性。调查设计和非响应权重允许根据 2000 年的人口普查数据对美国平民人口进行估计。分析于 2019 年 5 月 15 日至 2020 年 6 月 10 日进行。
第 1 波和第 2 波访谈之间的 3 年内自杀未遂。
在 34653 名参与者中,20089 名女性(加权比例为 52.1%)。第 1 波的加权平均(SD)年龄为 45.1(17.3)岁,第 2 波为 48.2(17.3)岁。在第 1 波和第 2 波访谈之间的 3 年内,有 222 名参与者(0.6%)自我报告了自杀未遂。使用第 1 波测量的调查问题,自杀未遂风险模型的交叉验证后获得了 0.857 的接收者操作特征曲线下面积,敏感性为 85.3%(95%CI,79.8-89.7),特异性为 73.3%(95%CI,72.8-73.8)在优化阈值。该模型确定美国有 1.8%的人口自杀未遂的风险为 10%或更高。最重要的风险因素是 3 个关于之前自杀意念或行为的问题;来自 12 项简短健康调查问卷的 3 个项目,即情绪低落、做事不那么细心或因情绪问题而完成的事情减少;年龄较小;教育程度较低;和最近的金融危机。
在这项研究中,在搜索了超过 2500 个调查问题后,确认了几个众所周知的自杀未遂风险因素,例如之前的自杀行为和意念,同时还发现了新的风险因素,包括精神障碍和社会经济劣势导致的功能障碍。这些结果可能有助于指导未来的临床评估和新的自杀风险量表的开发。