Towards Device Agnostic Detection of Stress and Craving in Patients with Substance Use Disorder.

Sloke Shrestha, Joshua Stapp, Melissa Taylor, Rebecca Leach, Stephanie Carreiro, Premananda Indic
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Abstract

Novel technologies have great potential to improve the treatment of individuals with substance use disorder (SUD) and to reduce the current high rate of relapse (i.e. return to drug use). Wearable sensor-based systems that continuously measure physiology can provide information about behavior and opportunities for real-time interventions. We have previously developed an mHealth system which includes a wearable sensor, a mobile phone app, and a cloud-based server with embedded machine learning algorithms which detect stress and craving. The system functions as a just-in-time intervention tool to help patients de-escalate and as a tool for clinicians to tailor treatment based on stress and craving patterns observed. However, in our pilot work we found that to deploy the system to diverse socioeconomic populations and to increase usability, the system must be able to work efficiently with cost-effective and popular commercial wearable devices. To make the system device agnostic, methods to transform the data from a commercially available wearable for use in algorithms developed from research grade wearable sensor are proposed. The accuracy of these transformations in detecting stress and craving in individuals with SUD is further explored.

物质使用障碍患者压力和渴望的装置不可知检测。
新技术在改善物质使用障碍(SUD)患者的治疗和降低目前高复发率(即重新使用药物)方面具有巨大的潜力。基于可穿戴传感器的系统可以持续测量生理机能,为实时干预提供行为信息和机会。我们之前开发了一个移动健康系统,其中包括一个可穿戴传感器、一个手机应用程序和一个基于云的服务器,该服务器带有嵌入式机器学习算法,可以检测压力和渴望。该系统的功能是作为一种及时干预工具,帮助患者缓解紧张情绪,并作为临床医生根据观察到的压力和渴望模式量身定制治疗的工具。然而,在我们的试点工作中,我们发现要将系统部署到不同的社会经济人群中并提高可用性,系统必须能够有效地与经济高效且流行的商业可穿戴设备一起工作。为了使系统设备不可知,提出了将来自商用可穿戴设备的数据转换为用于从研究级可穿戴传感器开发的算法的方法。这些转换在检测压力和渴望的准确性与SUD个体进一步探讨。
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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