Multimodal Time-Series Activity Forecasting for Adaptive Lifestyle Intervention Design

Abdullah Mamun, Krista S. Leonard, M. Buman, Hassan Ghasemzadeh
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Abstract

Physical activity is a cornerstone of chronic conditions and one of the most critical factors in reducing the risks of cardiovascular diseases, the leading cause of death in the United States. App-based lifestyle interventions have been utilized to promote physical activity in people with or at risk for chronic conditions. However, these mHealth tools have remained largely static and do not adapt to the changing behavior of the user. In a step toward designing adaptive interventions, we propose BeWell24Plus, a framework for monitoring activity and user engagement and developing computational models for outcome prediction and intervention design. In particular, we focus on devising algorithms that combine data about physical activity and engagement with the app to predict future physical activity performance. Knowing in advance how active a person is going to be in the next day can help with designing adaptive interventions that help individuals achieve their physical activity goals. Our technique combines the recent history of a person’s physical activity with app engagement metrics such as when, how often, and for how long the app was used to forecast the near future’s activity. We formulate the problem of multimodal activity forecasting and propose an LSTM-based realization of our proposed model architecture, which estimates physical activity outcomes in advance by examining the history of app usage and physical activity of the user. We demonstrate the effectiveness of our forecasting approach using data collected with 58 prediabetic people in a 9-month user study. We show that our multimodal forecasting approach outperforms single-modality forecasting by 2.2% to 11.1% in mean-absolute-error.
适应性生活方式干预设计的多模态时间序列活动预测
体育活动是慢性疾病的基石,也是降低心血管疾病风险的最关键因素之一,心血管疾病是美国的主要死亡原因。基于应用程序的生活方式干预已被用于促进患有或有慢性疾病风险的人的身体活动。然而,这些移动健康工具在很大程度上仍然是静态的,不能适应不断变化的用户行为。在设计适应性干预措施的步骤中,我们提出了BeWell24Plus,这是一个监测活动和用户参与度的框架,并为结果预测和干预设计开发计算模型。特别是,我们专注于设计算法,将有关体育活动和参与的数据与应用程序结合起来,以预测未来的体育活动表现。提前知道一个人第二天的活跃程度可以帮助设计适应性干预措施,帮助个人实现他们的身体活动目标。我们的技术将用户最近的体育活动历史与应用粘性指标(游戏邦注:如使用时间、频率和时间)结合起来,以预测用户近期的活动。我们提出了多模态活动预测问题,并提出了基于lstm的模型架构实现,该模型架构通过检查应用程序使用历史和用户的身体活动来提前估计身体活动结果。我们在一项为期9个月的用户研究中收集了58名糖尿病前期患者的数据,证明了我们预测方法的有效性。我们表明,我们的多模态预测方法在平均绝对误差方面优于单模态预测2.2%至11.1%。
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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