可穿戴计算机
计算机科学
召回
物理医学与康复
可穿戴技术
药方
药物依从性
手腕
药丸
人口
医学
智能手表
人工智能
人机交互
物理疗法
心理学
嵌入式系统
护理部
认知心理学
环境卫生
内科学
放射科
作者
Amy Iarrobino Laughlin,Quy Cao,Richard Bryson,Virginia Haughey,Rashad Abdul-Salaam,Virgilio Gonzenbach,Mridini Rudraraju,Igor Eydman,Christopher M. Tweed,Jeffrey Glenn,Kash Patel,Kevin R. Fox,C. William Hanson,Justin E. Bekelman,Haochang Shou
摘要
PURPOSE Medication nonadherence is a persistent and costly problem across health care. Measures of medication adherence are ineffective. Methods such as self-report, prescription claims data, or smart pill bottles have been used to monitor medication adherence, but these are subject to recall bias, lack real-time feedback, and are often expensive. METHODS We proposed a method for monitoring medication adherence using a commercially available wearable device. Passively collected motion data were analyzed on the basis of the Movelet algorithm, a dictionary learning framework that builds person-specific chapters of movements from short frames of elemental activities within the movements. We adapted and extended the Movelet method to construct a within-patient prediction model that identifies medication-taking behaviors. RESULTS Using 15 activity features recorded from wrist-worn wearable devices of 10 patients with breast cancer on endocrine therapy, we demonstrated that medication-taking behavior can be predicted in a controlled clinical environment with a median accuracy of 85%. CONCLUSION These results in a patient-specific population are exemplar of the potential to measure real-time medication adherence using a wrist-worn commercially available wearable device.
科研通智能强力驱动
Strongly Powered by AbleSci AI