Advancing clinical understanding of surface electromyography biofeedback: bridging research, teaching, and commercial applications.
Mazen M YassinMohamed N SaadAyman M KhalifaAshraf M SaidPublished in: Expert review of medical devices (2024)
The current landscape of EMG-BF is rapidly evolving, chiefly propelled by innovations in artificial intelligence (AI). The incorporation of ML and DL into EMG-BF systems augments their accuracy, reliability, and scope, marking a leap in patient care. Despite challenges in model interpretability and signal noise, ongoing research promises to address these complexities, refining biofeedback modalities. The integration of AI not only predicts patient-specific recovery timelines but also tailors therapeutic interventions, heralding a new era of personalized medicine in rehabilitation and emotional detection.