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A deep learning system to monitor and assess rehabilitation exercises in home-based remote and unsupervised conditions

Ciro Mennella, Umberto Maniscalco, Giuseppe De Pietro, Massimo Esposito

2023Computers in Biology and Medicine47 citationsDOIOpen Access PDF

Abstract

In the domain of physical rehabilitation, the progress in machine learning and the availability of cost-effective motion capture technologies have paved the way for innovative systems capable of capturing human movements, automatically analyzing recorded data, and evaluating movement quality. This study introduces a novel, economically viable system designed for monitoring and assessing rehabilitation exercises. The system enables real-time evaluation of exercises, providing precise insights into deviations from correct execution. The evaluation comprises two significant components: range of motion (ROM) classification and compensatory pattern recognition. To develop and validate the effectiveness of the system, a unique dataset of 6 resistance training exercises was acquired. The proposed system demonstrated impressive capabilities in motion monitoring and evaluation. Notably, we achieved promising results, with mean accuracies of 89% for evaluating ROM-class and 98% for classifying compensatory patterns. By complementing conventional rehabilitation assessments conducted by skilled clinicians, this cutting-edge system has the potential to significantly improve rehabilitation practices. Additionally, its integration in home-based rehabilitation programs can greatly enhance patient outcomes and increase access to high-quality care.

Topics & Concepts

Computer scienceRehabilitationMachine learningArtificial intelligenceMotion (physics)Motion captureQuality (philosophy)Human–computer interactionMedicinePhysical therapyEpistemologyPhilosophyStroke Rehabilitation and RecoveryContext-Aware Activity Recognition SystemsBalance, Gait, and Falls Prevention