Kumar Devender, Haag David, Blechert Jens, Niebauer Josef, Smeddinck Jan David
Ludwig Boltzmann Institute for Digital Health and Prevention, Salzburg, Austria.
Department of Psychology, Paris Lodron University of Salzburg, Salzburg, Austria.
JMIR Mhealth Uhealth. 2025 Jan 24;13:e57255. doi: 10.2196/57255.
There has been a surge in the development of apps that aim to improve health, physical activity (PA), and well-being through behavior change. These apps often focus on creating a long-term and sustainable impact on the user. Just-in-time adaptive interventions (JITAIs) that are based on passive sensing of the user's current context (eg, via smartphones and wearables) have been devised to enhance the effectiveness of these apps and foster PA. JITAIs aim to provide personalized support and interventions such as encouraging messages in a context-aware manner. However, the limited range of passive sensing capabilities often make it challenging to determine the timing and context for delivering well-accepted and effective interventions. Ecological momentary assessment (EMA) can provide personal context by directly capturing user assessments (eg, moods and emotions). Thus, EMA might be a useful complement to passive sensing in determining when JITAIs are triggered. However, extensive EMA schedules need to be scrutinized, as they can increase user burden.
The aim of the study was to use machine learning to balance the feature set size of EMA questions with the prediction accuracy regarding of enacting PA.
A total of 43 healthy participants (aged 19-67 years) completed 4 EMA surveys daily over 3 weeks. These surveys prospectively assessed various states, including both motivational and volitional variables related to PA preparation (eg, intrinsic motivation, self-efficacy, and perceived barriers) alongside stress and mood or emotions. PA enactment was assessed retrospectively via EMA and served as the outcome variable.
The best-performing machine learning models predicted PA engagement with a mean area under the curve score of 0.87 (SD 0.02) in 5-fold cross-validation and 0.87 on the test set. Particularly strong predictors included self-efficacy, stress, planning, and perceived barriers, indicating that a small set of EMA predictors can yield accurate PA prediction for these participants.
A small set of EMA-based features like self-efficacy, stress, planning, and perceived barriers can be enough to predict PA reasonably well and can thus be used to meaningfully tailor JITAIs such as sending well-timed and context-aware support messages.
旨在通过行为改变来改善健康、身体活动(PA)和幸福感的应用程序大量涌现。这些应用程序通常致力于对用户产生长期且可持续的影响。基于对用户当前情境(例如,通过智能手机和可穿戴设备)的被动感知而设计的即时自适应干预(JITAIs),已被用于提高这些应用程序的有效性并促进身体活动。JITAIs旨在以情境感知的方式提供个性化支持和干预措施,例如鼓励信息。然而,被动感知能力的范围有限,这使得确定提供广受认可且有效的干预措施的时机和情境颇具挑战性。生态瞬时评估(EMA)可以通过直接捕捉用户评估(例如,情绪和情感)来提供个人情境。因此,在确定何时触发JITAIs时,EMA可能是对被动感知的有用补充。然而,需要仔细审查广泛的EMA时间表,因为它们可能会增加用户负担。
本研究的目的是使用机器学习来平衡EMA问题的特征集大小与关于进行身体活动的预测准确性。
共有43名健康参与者(年龄在19 - 67岁之间)在3周内每天完成4次EMA调查。这些调查前瞻性地评估了各种状态,包括与身体活动准备相关的动机和意志变量(例如,内在动机、自我效能感和感知到的障碍)以及压力、情绪或情感。通过EMA回顾性评估身体活动的实施情况,并将其作为结果变量。
在五折交叉验证中,表现最佳的机器学习模型预测身体活动参与度的曲线下面积得分均值为0.87(标准差0.02),在测试集上为0.87。特别强的预测因素包括自我效能感、压力、计划和感知到的障碍,这表明一小部分EMA预测因素可以为这些参与者产生准确的身体活动预测。
一小部分基于EMA的特征,如自我效能感、压力、计划和感知到的障碍,就足以较好地预测身体活动,因此可用于有意义地定制JITAIs,例如发送适时且情境感知的支持信息。