A machine learning approach for medication adherence monitoring using body-worn sensors

Niloofar Hezarjaribi, Ramin Fallahzadeh, Hassan Ghasemzadeh
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引用次数: 22

Abstract

One of the most important challenges in chronic disease self-management is medication non-adherence, which has irrevocable outcomes. Although many technologies have been developed for medication adherence monitoring, the reliability and cost-effectiveness of these approaches are not well understood to date. This paper presents a medication adherence monitoring system by user-activity tracking based on wrist-band wearable sensors. We develop machine learning algorithms that track wrist motions in real-time and identify medication intake activities. We propose a novel data analysis pipeline to reliably detect medication adherence by examining single-wrist motions. Our system achieves an accuracy of 78.3% in adherence detection without need for medication pillboxes and with only one sensor worn on either of the wrists. The accuracy of our algorithm is only 7.9% lower than a system with two sensors that track motions of both wrists.
使用穿戴式传感器进行药物依从性监测的机器学习方法
慢性疾病自我管理中最重要的挑战之一是药物不依从性,这具有不可逆转的结果。尽管已经开发了许多用于药物依从性监测的技术,但迄今为止,这些方法的可靠性和成本效益尚未得到很好的了解。提出了一种基于可穿戴式腕带传感器的用户活动跟踪药物依从性监测系统。我们开发了机器学习算法,实时跟踪手腕运动,识别药物摄入活动。我们提出了一种新的数据分析管道,通过检查单手腕运动来可靠地检测药物依从性。我们的系统在附着检测方面达到了78.3%的准确率,不需要药物药盒,只需要在手腕上佩戴一个传感器。我们的算法的准确性只比一个有两个传感器的系统低7.9%,这个系统可以跟踪两个手腕的运动。
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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