Detection of Medication Taking Using a Wrist-Worn Commercially Available Wearable Device

Author:

Laughlin Amy I.12ORCID,Cao Quy3ORCID,Bryson Richard4,Haughey Virginia4,Abdul-Salaam Rashad4ORCID,Gonzenbach Virgilio3ORCID,Rudraraju Mridini5,Eydman Igor4,Tweed Christopher M.1,Fala Glenn J.4,Patel Kash6,Fox Kevin R.7,Hanson C. William8,Bekelman Justin E.7,Shou Haochang3

Affiliation:

1. Division of Hematology and Oncology, Abramson Cancer Center, University of Pennsylvania, Philadelphia, PA

2. Orlando Health Cancer Institute, Orlando Health, Orlando, FL

3. Department of Biostatistics, Epidemiology, and Informatics, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA

4. Information Services, Penn Medicine, Philadelphia, PA

5. Drexel University, Philadelphia, PA

6. Hackensack Meridian Health, Princeton, NJ

7. Perelman School of Medicine, Abramson Cancer Center, University of Pennsylvania, Philadelphia, PA

8. Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA

Abstract

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.

Publisher

American Society of Clinical Oncology (ASCO)

Subject

General Medicine

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