TL;DR
This study demonstrates that machine learning algorithms, especially CRNN, can accurately classify shoulder physiotherapy exercises using smartwatch inertial data, enabling objective at-home adherence monitoring.
Contribution
It introduces a novel approach using commercial smartwatches and machine learning to objectively monitor shoulder exercises in a home setting.
Findings
CRNN achieved 99.4% accuracy in cross-validation.
High classification accuracy suggests feasibility for home monitoring.
Subject-specific validation yielded 88.9% accuracy.
Abstract
Objective: Participation in a physical therapy program is considered one of the greatest predictors of successful conservative management of common shoulder disorders. However, adherence to these protocols is often poor and typically worse for unsupervised home exercise programs. Currently, there are limited tools available for objective measurement of adherence in the home setting. The goal of this study was to develop and evaluate the potential for performing home shoulder physiotherapy monitoring using a commercial smartwatch. Approach: Twenty healthy adult subjects with no prior shoulder disorders performed seven exercises from an evidence-based rotator cuff physiotherapy protocol, while 6-axis inertial sensor data was collected from the active extremity. Within an activity recognition chain (ARC) framework, four supervised learning algorithms were trained and optimized to…
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