GeriActive: Wearable App for Monitoring and Encouraging Physical Activity among Older Adults
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George Boateng, John A. Batsis, Patrick Proctor, Ryan Halter, and David Kotz.
GeriActive: Wearable App for Monitoring and Encouraging Physical Activity among Older Adults.
Proceedings of the IEEE International Conference on Wearable and Implantable Body Sensor Networks (BSN), pages 46–49.
IEEE, March 2018.
doi:10.1109/BSN.2018.8329655.
©Copyright IEEE.
Abstract:
The ability to monitor a person’s level of daily activity can inform self-management of physical activity and assist in augmenting behavioral interventions. For older adults, the importance of regular physical activity is critical to reduce the risk of long-term disability. In this work, we present GeriActive, an application on the Amulet wrist-worn device that monitors in real time older adults’ daily activity levels (low, moderate and vigorous), which we categorized using metabolic equivalents (METs). The app implements an activity-level detection model we developed using a linear Support Vector Machine (SVM). We trained our model using data from volunteer subjects (n=29) who performed common physical activities (sit, stand, lay down, walk and run) and obtained an accuracy of 94.3% with leave-one-subject-out (LOSO) cross-validation. We ran a week-long field study to evaluate the usability and battery life of the GeriActive system where 5 older adults wore the Amulet as it monitored their activity level. Their feedback showed that our system has the potential to be usable and useful. Our evaluation further revealed a battery life of at least 1 week. The results are promising, indicating that the app may be used for activity-level monitoring by individuals or researchers for health delivery interventions that could improve the health of older adults.
Citable with [BibTeX]: \cite{boateng:geriactive} Projects: [amulet] Keywords: [mhealth] [sensors] [wearable] Available from the publisher: [DOI] Available from the author:
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