Department of Psychiatry, University of Michigan, Ann Arbor.
Department of Psychology, University of Michigan, Ann Arbor.
JAMA Netw Open. 2023 Aug 1;6(8):e2328005. doi: 10.1001/jamanetworkopen.2023.28005.
Advancements in technology, including mobile-based ecological momentary assessments (EMAs) and passive sensing, have immense potential to identify short-term suicide risk. However, the extent to which EMA and passive data, particularly in combination, have utility in detecting short-term risk in everyday life remains poorly understood.
To examine whether and what combinations of self-reported EMA and sensor-based assessments identify next-day suicidal ideation.
DESIGN, SETTING, AND PARTICIPANTS: In this intensive longitudinal prognostic study, participants completed EMAs 4 times daily and wore a sensor wristband (Fitbit Charge 3) for 8 weeks. Multilevel machine learning methods, including penalized generalized estimating equations and classification and regression trees (CARTs) with repeated 5-fold cross-validation, were used to optimize prediction of next-day suicidal ideation based on time-varying features from EMAs (affective, cognitive, behavioral risk factors) and sensor data (sleep, activity, heart rate). Young adult patients who visited an emergency department with recent suicidal ideation and/or suicide attempt were recruited. Identified via electronic health record screening, eligible individuals were contacted remotely to complete enrollment procedures. Participants (aged 18 to 25 years) completed 14 708 EMA observations (64.4% adherence) and wore a sensor wristband approximately half the time (55.6% adherence). Data were collected between June 2020 and July 2021. Statistical analysis was performed from January to March 2023.
The outcome was presence of next-day suicidal ideation.
Among 102 enrolled participants, 83 (81.4%) were female; 6 (5.9%) were Asian, 5 (4.9%) were Black or African American, 9 (8.8%) were more than 1 race, and 76 (74.5%) were White; mean (SD) age was 20.9 (2.1) years. The best-performing model incorporated features from EMAs and showed good predictive accuracy (mean [SE] cross-validated area under the receiver operating characteristic curve [AUC], 0.84 [0.02]), whereas the model that incorporated features from sensor data alone showed poor prediction (mean [SE] cross-validated AUC, 0.56 [0.02]). Sensor-based features did not improve prediction when combined with EMAs. Suicidal ideation-related features were the strongest predictors of next-day ideation. When suicidal ideation features were excluded, an alternative EMA model had acceptable predictive accuracy (mean [SE] cross-validated AUC, 0.76 [0.02]). Both EMA models included features at different timescales reflecting within-day, end-of-day, and time-varying cumulative effects.
In this prognostic study, self-reported risk factors showed utility in identifying near-term suicidal thoughts. Best-performing models required self-reported information, derived from EMAs, whereas sensor-based data had negligible predictive accuracy. These results may have implications for developing decision algorithms identifying near-term suicidal thoughts to guide risk monitoring and intervention delivery in everyday life.
技术的进步,包括基于移动的即时评估(EMA)和被动感应,具有巨大的潜力来识别短期自杀风险。然而,EMA 和被动数据(尤其是结合使用时)在日常生活中检测短期风险的效用程度仍知之甚少。
研究自我报告的 EMA 和基于传感器的评估是否以及以何种组合可以识别次日的自杀意念。
设计、设置和参与者:在这项密集的纵向预后研究中,参与者每天完成 4 次 EMA 并佩戴 8 周的传感器腕带(Fitbit Charge 3)。使用多层次机器学习方法,包括惩罚广义估计方程和分类回归树(CART)与重复 5 倍交叉验证,优化基于 EMA(情感、认知、行为风险因素)和传感器数据(睡眠、活动、心率)的时间变化特征预测次日的自杀意念。从最近有自杀意念和/或自杀企图的急诊科招募了年轻成年患者。通过电子健康记录筛查确定符合条件的个体,然后通过远程联系他们完成入组程序。参与者(年龄 18 至 25 岁)完成了 14708 次 EMA 观察(64.4%的依从性),并佩戴传感器腕带约一半时间(55.6%的依从性)。数据收集于 2020 年 6 月至 2021 年 7 月。统计分析于 2023 年 1 月至 3 月进行。
结果是次日出现自杀意念。
在 102 名入组的参与者中,83 名(81.4%)为女性;6 名(5.9%)为亚洲人,5 名(4.9%)为黑人或非裔美国人,9 名(8.8%)为多种族裔,76 名(74.5%)为白人;平均(SD)年龄为 20.9(2.1)岁。表现最佳的模型结合了 EMA 的特征,具有良好的预测准确性(平均[SE]验证曲线下的接收器操作特征面积[AUROC],0.84[0.02]),而仅结合传感器数据的模型预测效果不佳(平均[SE]验证 AUROC,0.56[0.02])。当结合 EMA 时,基于传感器的数据并不能提高预测效果。与自杀意念相关的特征是预测次日意念的最强预测因子。当排除自杀意念特征时,替代的 EMA 模型具有可接受的预测准确性(平均[SE]验证 AUROC,0.76[0.02])。这两个 EMA 模型都包含了反映日内、每日结束和时间变化累积效应的不同时间尺度的特征。
在这项预后研究中,自我报告的风险因素在识别近期自杀想法方面具有一定的作用。表现最佳的模型需要自我报告的信息,这些信息源自 EMA,而基于传感器的数据的预测准确性则微不足道。这些结果可能对开发用于识别近期自杀想法的决策算法具有重要意义,以指导日常生活中的风险监测和干预措施的实施。