Ullah Md Azim, Chatterjee Soujanya, Fagundes Christopher P, Lam Cho, Nahum-Shani Inbal, Rehg James M, Wetter David W, Kumar Santosh
University of Memphis, USA.
Rice University, USA.
Proc ACM Interact Mob Wearable Ubiquitous Technol. 2022 Sep;6(3). doi: 10.1145/3550308. Epub 2022 Sep 7.
Passive detection of risk factors (that may influence unhealthy or adverse behaviors) via wearable and mobile sensors has created new opportunities to improve the effectiveness of behavioral interventions. A key goal is to find opportune moments for intervention by passively detecting rising risk of an imminent adverse behavior. But, it has been difficult due to substantial noise in the data collected by sensors in the natural environment and a lack of reliable label assignment of low- and high-risk states to the continuous stream of sensor data. In this paper, we propose an event-based encoding of sensor data to reduce the effect of noises and then present an approach to efficiently model the historical influence of recent and past sensor-derived contexts on the likelihood of an adverse behavior. Next, to circumvent the lack of any confirmed negative labels (i.e., time periods with no high-risk moment), and only a few positive labels (i.e., detected adverse behavior), we propose a new loss function. We use 1,012 days of sensor and self-report data collected from 92 participants in a smoking cessation field study to train deep learning models to produce a continuous risk estimate for the likelihood of an impending smoking lapse. The risk dynamics produced by the model show that risk peaks an average of 44 minutes before a lapse. Simulations on field study data show that using our model can create intervention opportunities for 85% of lapses with 5.5 interventions per day.
通过可穿戴和移动传感器被动检测(可能影响不健康或不良行为的)风险因素,为提高行为干预的有效性创造了新机会。一个关键目标是通过被动检测即将发生的不良行为风险上升来找到合适的干预时机。但是,由于自然环境中传感器收集的数据存在大量噪声,且缺乏对连续传感器数据流的低风险和高风险状态的可靠标签分配,这一目标难以实现。在本文中,我们提出了一种基于事件的传感器数据编码方法,以减少噪声的影响,然后提出一种方法来有效建模近期和过去传感器衍生情境对不良行为可能性的历史影响。接下来,为了规避缺乏任何已确认的负标签(即没有高风险时刻的时间段)且只有少数正标签(即检测到的不良行为)的问题,我们提出了一种新的损失函数。我们使用从92名参与者在戒烟现场研究中收集的1012天的传感器和自我报告数据来训练深度学习模型,以对即将复吸的可能性产生连续风险估计。该模型产生的风险动态表明,复吸前平均44分钟风险达到峰值。对现场研究数据的模拟表明,使用我们的模型每天进行5.5次干预,可以为85%的复吸创造干预机会。