Vanke School of Public Health, Tsinghua University, Beijing, China.
Institute for Healthy China, Tsinghua University, Beijing, China.
JAMA Netw Open. 2023 Sep 5;6(9):e2333164. doi: 10.1001/jamanetworkopen.2023.33164.
Suicidality poses a serious global health concern, particularly in the sexual and gender minority population. While various studies have focused on investigating chronic stressors, the precise prediction effect of daily experiences on suicide ideation remains uncertain.
To test the extent to which mood fluctuations and contextual stressful events experienced by sexual and gender minority individuals may predict later short- and long-term suicide ideation.
DESIGN, SETTING, AND PARTICIPANTS: This diagnostic study collected twice-daily data on mood states and stressful events from sexual and gender minority individuals over 25 days throughout 3 waves of the Chinese Lunar New Year (before, during, and after), and follow-up surveys assessing suicidal ideation were conducted 1, 3, and 8 months later. Online recruitment advertisements were used to recruit young adults throughout China. Eligible participants were self-identified as sexual and gender minority individuals aged 18 to 29 years. Those who were diagnosed with psychotic disorders (eg, schizophrenia spectrum or schizotypal disorder) or prevented from objective factors (ie, not having a phone or having an irregular sleep rhythm) were excluded. Data were collected from January to October 2022.
To predict short-term (1 month) and longer-term (3 and 8 months) suicidal ideation, the study tested several approaches by using machine learning including chronic stress baseline data (baseline approach), dynamic patterns of mood states and stressful events (ecological momentary assessment [EMA] approach), and a combination of baseline data and dynamic patterns (EMA plus baseline approach).
A total of 103 sexual and gender minority individuals participated in the study (mean [SD] age, 24.2 [2.5] years; 72 [70%] female). Of these, 19 (18.4%; 95% CI, 10.9%-25.9%), 25 (24.8%; 95% CI, 16.4%-33.2%), 30 (29.4%; 95% CI, 20.6%-38.2%), and 32 (31.1%; 95% CI, 22.2%-40.0%) reported suicidal ideation at baseline, 1, 3, and 8 months follow-up, respectively. The EMA approach showed better performance than the baseline and baseline plus EMA approaches at 1-month follow-up (area under the receiver operating characteristic curve [AUC], 0.80; 95% CI, 0.78-0.81) and slightly better performance on the prediction of suicidal ideation at 3 and 8 months' follow-up. In addition, the best approach predicting suicidal ideation was obtained during Lunar New Year period at 1-month follow-up, which had a mean AUC of 0.77 (95% CI, 0.74-0.79) and better performance at 3 and 8 months' follow-up (AUC, 0.74; 95% CI, 0.72-0.76 and AUC, 0.72; 95% CI, 0.69-0.74, respectively).
The findings in this study emphasize the importance of contextual risk factors experienced by sexual and gender minority individuals at different stages. The use of machine learning may facilitate the identification of individuals who are at risk and aid in the development of personalized process-based early prevention programs to mitigate future suicide risk.
自杀行为是一个严重的全球健康问题,尤其是在性少数群体和性别少数群体中。虽然有各种研究集中在调查慢性压力源上,但日常经历对自杀意念的确切预测效果仍不确定。
测试性少数群体个体的情绪波动和情境性应激事件在多大程度上可以预测短期和长期的自杀意念。
设计、设置和参与者:这项诊断研究在 3 个中国农历新年(前、中、后)的 25 天内,每天两次收集性少数群体个体的情绪状态和应激事件数据,并在 1、3 和 8 个月后进行后续调查以评估自杀意念。通过在线招聘广告招募全国各地的年轻成年人。合格的参与者自我认定为 18 至 29 岁的性少数群体个体。那些被诊断为精神障碍(例如,精神分裂症谱系或精神分裂样障碍)或因客观因素而无法参加的个体(例如,没有手机或睡眠节律不规则)被排除在外。数据收集于 2022 年 1 月至 10 月。
为了预测短期(1 个月)和长期(3 个月和 8 个月)自杀意念,该研究通过使用机器学习测试了几种方法,包括慢性应激基线数据(基线方法)、情绪状态和应激事件的动态模式(生态瞬时评估 [EMA] 方法)以及基线数据和动态模式的组合(EMA 加基线方法)。
共有 103 名性少数群体个体参加了研究(平均[标准差]年龄为 24.2[2.5]岁;72[70%]为女性)。其中,19 人(18.4%;95%CI,10.9%-25.9%)、25 人(24.8%;95%CI,16.4%-33.2%)、30 人(29.4%;95%CI,20.6%-38.2%)和 32 人(31.1%;95%CI,22.2%-40.0%)分别在基线、1 个月、3 个月和 8 个月随访时报告了自杀意念。在 1 个月的随访中,EMA 方法在预测自杀意念方面的表现优于基线和基线加 EMA 方法(接受者操作特征曲线下面积[AUC],0.80;95%CI,0.78-0.81),并且在预测自杀意念方面的表现稍好3 个月和 8 个月随访。此外,在 1 个月的随访中,预测自杀意念的最佳方法是在农历新年期间,AUC 为 0.77(95%CI,0.74-0.79),并且在 3 个月和 8 个月的随访中表现更好(AUC,0.74;95%CI,0.72-0.76 和 AUC,0.72;95%CI,0.69-0.74)。
这项研究的结果强调了不同阶段性少数群体个体所经历的情境性风险因素的重要性。使用机器学习可能有助于识别处于危险中的个体,并有助于制定个性化的基于过程的早期预防计划,以降低未来的自杀风险。