Department of Psychology, University of Oregon, Eugene, Oregon, United States; Center for Digital Mental Health, University of Oregon, Eugene, Oregon, United States.
Department of Psychology, University of Oregon, Eugene, Oregon, United States; Center for Digital Mental Health, University of Oregon, Eugene, Oregon, United States.
J Affect Disord. 2019 May 1;250:163-169. doi: 10.1016/j.jad.2019.03.044. Epub 2019 Mar 6.
Suicide is one of the leading causes of death among adolescents, and developing effective methods to improve short-term prediction of suicidal thoughts and behaviors (STBs) is critical. Currently, the most robust predictors of STBs are demographic or clinical indicators that have relatively weak predictive value. However, there is an emerging literature on short-term prediction of suicide risk that has identified a number of promising candidates, including (but not limited to) rapid escalation of: (a) emotional distress, (b) social dysfunction (e.g., bullying, rejection), and (c) sleep disturbance. However, these prior studies are limited in two critical ways. First, they rely almost entirely on self-report. Second, most studies have not focused on assessment of these risk factors using intensive longitudinal assessment techniques that are able to capture the dynamics of changes in risk states at the individual level.
In this paper we explore how to capitalize on recent developments in real-time monitoring methods and computational analysis in order to address these fundamental problems.
We now have the capacity to use: (a) smartphone, wearable computing, and smart home technology to conduct intensive longitudinal assessments monitoring of putative risk factors with minimal participant burden and (b) modern computational techniques to develop predictive algorithms for STBs. Current research and theory on short-term risk processes for STBs, combined with the emergent capabilities of new technologies, suggest that this is an important research agenda for the future.
Although these approaches have enormous potential to create new knowledge, the current empirical literature is limited. Moreover, passive monitoring of risk for STBs raises complex ethical issues that will need to be resolved before large scale clinical applications are feasible.
Smartphone, wearable, and smart home technology may provide one point of access that might facilitate both early identification and intervention implementation, and thus, represents a key area for future STB research.
自杀是青少年死亡的主要原因之一,因此开发有效的方法来提高对自杀意念和行为(STBs)的短期预测至关重要。目前,STBs 最有力的预测指标是人口统计学或临床指标,但其预测价值相对较弱。然而,关于自杀风险的短期预测已经有一些有前途的候选者的文献,包括(但不限于)以下方面的快速升级:(a)情绪困扰,(b)社会功能障碍(例如,欺凌,拒绝),和(c)睡眠障碍。然而,这些先前的研究在两个关键方面存在局限性。首先,它们几乎完全依赖于自我报告。其次,大多数研究并未专注于使用能够在个体水平上捕捉风险状态变化动态的密集纵向评估技术来评估这些风险因素。
在本文中,我们探讨了如何利用实时监测方法和计算分析的最新进展来解决这些基本问题。
我们现在有能力使用:(a)智能手机,可穿戴计算和智能家居技术,以最小的参与者负担对潜在风险因素进行密集的纵向评估监测,以及(b)现代计算技术来开发 STBs 的预测算法。当前关于 STBs 的短期风险过程的研究和理论,以及新兴技术的出现能力,表明这是未来一个重要的研究议程。
尽管这些方法具有创造新知识的巨大潜力,但当前的实证文献有限。此外,对 STBs 风险的被动监测引发了复杂的伦理问题,在大规模临床应用可行之前需要解决这些问题。
智能手机,可穿戴设备和智能家居技术可能提供一个切入点,有助于早期识别和干预的实施,因此,这是未来 STB 研究的关键领域。