Beyond the current state of just-in-time adaptive interventions in mental health: a qualitative systematic review.

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES Frontiers in digital health Pub Date : 2025-01-28 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1460167
Claire R van Genugten, Melissa S Y Thong, Wouter van Ballegooijen, Annet M Kleiboer, Donna Spruijt-Metz, Arnout C Smit, Mirjam A G Sprangers, Yannik Terhorst, Heleen Riper
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Abstract

Background: Just-In-Time Adaptive Interventions (JITAIs) are interventions designed to deliver timely tailored support by adjusting to changes in users' internal states and external contexts. To accomplish this, JITAIs often apply complex analytic techniques, such as machine learning or Bayesian algorithms to real- or near-time data acquired from smartphones and other sensors. Given the idiosyncratic, dynamic, and context dependent nature of mental health symptoms, JITAIs hold promise for mental health. However, the development of JITAIs is still in the early stages and is complex due to the multifactorial nature of JITAIs. Considering this complexity, Nahum-Shani et al. developed a conceptual framework for developing and testing JITAIs for health-related problems. This review evaluates the current state of JITAIs in the field of mental health including their alignment with Nahum-Shani et al.'s framework.

Methods: Nine databases were systematically searched in August 2023. Protocol or empirical studies self-identifying their intervention as a "JITAI" targeting mental health were included in the qualitative synthesis if they were published in peer-reviewed journals and written in English.

Results: Of the 1,419 records initially screened, 9 papers reporting on 5 JITAIs were included (sample size range: 5 to an expected 264). Two JITAIs were for bulimia nervosa, one for depression, one for insomnia, and one for maternal prenatal stress. Although most core components of Nahum-Shani's et al.'s framework were incorporated in the JITAIs, essential elements (e.g., adaptivity and receptivity) within the core components were missing and the core components were only partly substantiated by empirical evidence (e.g., interventions were supported, but the decision rules and points were not). Complex analytical techniques such as data from passive monitoring of individuals' states and contexts were hardly used. Regarding the current state of studies, initial findings on usability, feasibility, and effectiveness appear positive.

Conclusions: JITAIs for mental health are still in their early stages of development, with opportunities for improvement in both development and testing. For future development, it is recommended that developers utilize complex analytical techniques that can handle real-or near-time data such as machine learning, passive monitoring, and conduct further research into empirical-based decision rules and points for optimization in terms of enhanced effectiveness and user-engagement.

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超越心理健康即时适应性干预的现状:一项定性系统回顾。
背景:即时自适应干预(JITAIs)是通过调整用户内部状态和外部环境的变化来提供及时定制支持的干预措施。为了实现这一目标,jitai通常会应用复杂的分析技术,例如机器学习或贝叶斯算法来处理从智能手机和其他传感器获取的实时或近时数据。鉴于心理健康症状的特质、动态性和情境依赖性,JITAIs有望用于心理健康。然而,JITAIs的发展仍处于早期阶段,由于JITAIs的多因素性质,其发展较为复杂。考虑到这种复杂性,Nahum-Shani等人开发了一个概念框架,用于开发和测试jitai用于健康相关问题。本综述评估了JITAIs在精神卫生领域的现状,包括它们与nahum - shai等人的框架的一致性。方法:于2023年8月系统检索9个数据库。如果协议或实证研究在同行评议的期刊上发表并以英文撰写,则将其自我认定为针对心理健康的“JITAI”干预措施纳入定性综合。结果:在最初筛选的1419条记录中,包括9篇报告5种JITAIs的论文(样本量范围:5到预期的264)。两个jitai用于神经性贪食症,一个用于抑郁症,一个用于失眠,一个用于产妇产前压力。虽然Nahum-Shani等人的框架的大部分核心组件都被纳入了JITAIs,但核心组件中的基本要素(如适应性和可接受性)缺失,核心组件仅部分得到经验证据的证实(例如,支持干预措施,但不支持决策规则和点)。复杂的分析技术,如被动监测个人状态和背景的数据,几乎没有被使用。关于目前的研究状态,在可用性、可行性和有效性方面的初步发现是积极的。结论:用于心理健康的JITAIs仍处于早期开发阶段,在开发和测试方面都有改进的机会。对于未来的开发,建议开发人员利用能够处理实时或近时间数据的复杂分析技术,如机器学习、被动监控,并对基于经验的决策规则和优化点进行进一步研究,以增强有效性和用户参与度。
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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审稿时长
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