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Enabling precision rehabilitation interventions using wearable sensors and machine learning to track motor recovery

Medicine and Health

Enabling precision rehabilitation interventions using wearable sensors and machine learning to track motor recovery

C. Adans-dester, N. Hankov, et al.

This innovative research by Catherine Adans-Dester and colleagues presents a machine learning approach utilizing wearable sensors to assess upper-limb motor impairment and movement quality in stroke and TBI survivors. With impressive correlations between sensor data and clinician assessments, this method offers promising potential for personalized rehabilitation strategies.

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~3 min • Beginner • English
Abstract
The need to develop patient-specific interventions is apparent when one considers that clinical studies often report satisfactory motor gains only in a portion of participants. This observation provides the foundation for precision rehabilitation. Tracking and predicting outcomes defining the recovery trajectory is key in this context. Data collected using wearable sensors provide clinicians with the opportunity to do so with little burden on clinicians and patients. The approach proposed in this paper relies on machine learning-based algorithms to derive clinical score estimates from wearable sensor data collected during functional motor tasks. Sensor-based score estimates showed strong agreement with those generated by clinicians. Score estimates of upper-limb impairment severity and movement quality were marked by a coefficient of determination of 0.86 and 0.79, respectively. The application of the proposed approach to monitoring patients’ responsiveness to rehabilitation is expected to contribute to the development of patient-specific interventions, aiming to maximize motor gains.
Publisher
npj Digital Medicine
Published On
Sep 21, 2020
Authors
Catherine Adans-Dester, Nicolas Hankov, Anne O’Brien, Gloria Vergara-Diaz, Randie Black-Schaffer, Ross Zafonte, Jennifer Dyer, Sunghoon L. Lee, Paolo Bonato
Tags
machine learning
wearable sensors
upper-limb motor impairment
movement quality
stroke
traumatic brain injury
rehabilitation
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