With the advent of Digital Therapeutics (DTx), the development of software as a medical device (SaMD) for mobile and wearable devices has gained significant attention in recent years. Existing DTx evaluations, such as randomized clinical trials, mostly focus on verifying the effectiveness of DTx products. To acquire a deeper understanding of DTx engagement and behavioral adherence, beyond efficacy, a large amount of contextual and interaction data from mobile and wearable devices during field deployment would be required for analysis. In this work, the overall flow of the data-driven DTx analytics is reviewed to help researchers and practitioners to explore DTx datasets, to investigate contextual patterns associated with DTx usage, and to establish the (causal) relationship of DTx engagement and behavioral adherence. This review of the key components of data-driven analytics provides novel research directions in the analysis of mobile sensor and interaction datasets, which helps to iteratively improve the receptivity of existing DTx.
翻译:随着数字治疗技术(DTx)的到来,发展软件作为移动和可磨损设备的医疗装置(SAMD)的工作近年来受到极大关注。现有的DTx评价,例如随机临床试验,主要侧重于核查DTx产品的功效。为了更深入地了解DTx的接触和行为坚持,除了功效外,还需要在实地部署期间从移动和可磨损设备获得大量背景和互动数据进行分析。在这项工作中,对数据驱动DTx分析的整体流程进行了审查,以帮助研究人员和从业人员探索DTx数据集,调查与DTx使用有关的背景模式,并确定DTx参与和行为坚持的关系。这种对数据驱动分析关键组成部分的审查为分析移动传感器和互动数据集提供了新的研究方向,有助于迭接地改进现有的DTx的接受性。