Department of Psychology, Rutgers, The State University of New Jersey, Piscataway, NJ, USA.
Department of Psychiatry, Massachusetts General Hospital and Harvard Medical School, Boston, MA, USA.
Transl Psychiatry. 2021 Dec 2;11(1):611. doi: 10.1038/s41398-021-01730-y.
There has been growing interest in using wearable physiological monitors to passively detect the signals of distress (i.e., increases in autonomic arousal measured through increased electrodermal activity [EDA]) that may be imminently associated with suicidal thoughts. Before using these monitors in advanced applications such as creating suicide risk detection algorithms or just-in-time interventions, several preliminary questions must be answered. Specifically, we lack information about whether: (1) EDA concurrently and prospectively predicts suicidal thinking and (2) data on EDA adds to the ability to predict the presence and severity of suicidal thinking over and above self-reports of emotional distress. Participants were suicidal psychiatric inpatients (n = 25, 56% female, M age = 33.48 years) who completed six daily assessments of negative affect and suicidal thinking duration of their psychiatric inpatient stay and 28 days post-discharge, and wore on their wrist a physiological monitor (Empatica Embrace) that passively detects autonomic activity. We found that physiological data alone both concurrently and prospectively predicted periods of suicidal thinking, but models with physiological data alone had the poorest fit. Adding physiological data to self-report models improved fit when the outcome variable was severity of suicidal thinking, but worsened model fit when the outcome was presence of suicidal thinking. When predicting severity of suicidal thinking, physiological data improved model fit more for models with non-overlapping self-report data (i.e., low arousal negative affect) than for overlapping self-report data (i.e., high arousal negative affect). These findings suggest that physiological data, under certain contexts (e.g., when combined with self-report data), may be useful in better predicting-and ultimately, preventing-acute increases in suicide risk. However, some cautious optimism is warranted since physiological data do not always improve our ability to predict suicidal thinking.
人们越来越感兴趣地使用可穿戴生理监测器来被动地检测危险信号(即通过增加皮肤电活动[EDA]来衡量自主唤醒的增加),这些信号可能与自杀念头密切相关。在将这些监测器应用于高级应用中,例如创建自杀风险检测算法或及时干预之前,必须回答几个初步问题。具体来说,我们缺乏有关以下方面的信息:(1)EDA 是否同时和前瞻性地预测自杀性思维,以及(2)EDA 数据是否可以在超过情绪困扰自我报告的情况下增加预测自杀性思维的存在和严重程度。参与者为有自杀倾向的精神病住院患者(n=25,女性占 56%,M 年龄=33.48 岁),他们在住院期间和出院后 28 天内完成了六次对负性情绪和自杀思维持续时间的日常评估,并在手腕上佩戴了一个生理监测器(Empatica Embrace),该监测器可以被动地检测自主活动。我们发现,生理数据本身既可以同时又可以前瞻性地预测自杀性思维发作,但仅使用生理数据的模型拟合度最差。将生理数据添加到自我报告模型中可以提高严重程度的拟合度,但会降低存在自杀性思维的模型拟合度。当预测自杀性思维的严重程度时,生理数据在自我报告数据不重叠的情况下(即低唤醒负性情绪)比自我报告数据重叠的情况下(即高唤醒负性情绪)更能改善模型拟合度。这些发现表明,在某些情况下(例如,与自我报告数据结合使用时),生理数据可能有助于更好地预测-并最终预防-急性自杀风险的增加。但是,需要保持一些谨慎的乐观态度,因为生理数据并不总是能提高我们预测自杀性思维的能力。