Dynamic learning of individual-level suicidal ideation trajectories to enhance mental health care

Mathew Varidel, Ian B. Hickie, Ante Prodan, Adam Skinner, Roman Marchant, Sally Cripps, Rafael Oliveria, Min K. Chong, Elizabeth Scott, Jan Scott, Frank Iorfino
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Abstract

There has recently been an increase in ongoing patient-report routine outcome monitoring for individuals within clinical care, which has corresponded to increased longitudinal information about an individual. However, many models that are aimed at clinical practice have difficulty fully incorporating this information. This is in part due to the difficulty in dealing with the irregularly time-spaced observations that are common in clinical data. Consequently, we built individual-level continuous-time trajectory models of suicidal ideation for a clinical population (N = 585) with data collected via a digital platform. We demonstrate how such models predict an individual’s level and variability of future suicide ideation, with implications for the frequency that individuals may need to be observed. These individual-level predictions provide a more personalised understanding than other predictive methods and have implications for enhanced measurement-based care.

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动态学习个人层面的自杀意念轨迹,加强心理健康护理
近来,在临床护理中对个人进行的持续性患者报告常规结果监测越来越多,这也增加了关于个人的纵向信息。然而,许多针对临床实践的模型都难以完全纳入这些信息。部分原因是难以处理临床数据中常见的时间间隔不规则的观察结果。因此,我们利用通过数字平台收集的数据,为临床人群(N = 585)建立了个体水平的连续时间自杀意念轨迹模型。我们展示了此类模型如何预测个体未来自杀意念的水平和变异性,以及对个体可能需要观察的频率的影响。与其他预测方法相比,这些个人层面的预测提供了更加个性化的理解,并对加强基于测量的护理产生了影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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