Machine learning models for temporally precise lapse prediction in alcohol use disorder.

IF 3.1 Q2 PSYCHIATRY
Journal of psychopathology and clinical science Pub Date : 2024-10-01 Epub Date: 2024-08-22 DOI:10.1037/abn0000901
Kendra Wyant, Sarah J Sant'Ana, Gaylen E Fronk, John J Curtin
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引用次数: 0

Abstract

We developed three machine learning models that predict hour-by-hour probabilities of a future lapse back to alcohol use with increasing temporal precision (i.e., lapses in the next week, next day, and next hour). Model features were based on raw scores and longitudinal change in theoretically implicated risk factors collected through ecological momentary assessment. Participants (N = 151, 51% male, Mage = 41, 87% White, 97% non-Hispanic) in early recovery (1-8 weeks of abstinence) from alcohol use disorder provided 4 × daily ecological momentary assessment for up to 3 months. We used grouped, nested cross-validation to select the best models and evaluate the performance of those best models. Models yielded median areas under the receiver operating curves of 0.89, 0.90, and 0.93 in the 30 held-out test sets for week-, day-, and hour-level models, respectively. Some feature categories consistently emerged as being globally important to lapse prediction across our week-, day-, and hour-level models (i.e., past use, future self-efficacy). However, most of the more punctate, time-varying constructs (e.g., craving, past stressful events, arousal) appear to have a greater impact within the next-hour prediction model. This research represents an important step toward the development of a smart (machine learning guided) sensing system that can both identify periods of peak lapse risk and recommend specific supports to address factors contributing to this risk. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

用于对酒精使用障碍进行时间上精确失效预测的机器学习模型。
我们开发了三种机器学习模型,可以逐小时预测未来再次酗酒的概率,时间精确度越来越高(即未来一周、未来一天和未来一小时内再次酗酒的概率)。模型特征基于通过生态学瞬间评估收集到的原始分数和理论上隐含的风险因素的纵向变化。酗酒障碍早期康复者(N = 151,51% 为男性,Mage = 41,87% 为白人,97% 为非西班牙裔)(戒酒 1-8 周)在长达 3 个月的时间里每天提供 4 次生态瞬间评估。我们使用分组嵌套交叉验证来选择最佳模型,并评估这些最佳模型的性能。在 30 个保留的测试集中,周级、日级和小时级模型的接收器工作曲线下面积中值分别为 0.89、0.90 和 0.93。在我们的周级、日级和小时级模型中,一些特征类别(即过去的使用情况、未来的自我效能感)对失效预测具有全面的重要性。然而,大多数更具点状、时变性的结构(如渴求、过去的压力事件、唤醒)似乎对下一小时预测模型的影响更大。这项研究标志着向开发智能(机器学习引导的)传感系统迈出了重要一步,该系统既能识别失眠风险高峰期,又能针对导致这种风险的因素推荐具体的支持措施。(PsycInfo Database Record (c) 2024 APA, 版权所有)。
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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CiteScore
0.70
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