Remote Rehabilitation Using AI and Motion-Tracking Systems: An Evaluation of Clinical Effectiveness

Authors

  • Dr.Puli Danaiah India Author

Keywords:

Remote Rehabilitation, Motion Tracking, Artificial Intelligence, Tele-Physiotherapy, Biomechanics, Clinical Effectiveness, Wearable Sensors, Computer Vision, Human Movement Analysis, Digital Health.

Abstract

Remote rehabilitation has emerged as a central component of modern digital healthcare ecosystems, especially in post-operative recovery, musculoskeletal rehabilitation, neurological therapy, and chronic physical disability management. The integration of Artificial Intelligence (AI), motion-tracking systems, and biomechanical analytics has significantly enhanced the accuracy, personalization, and continuity of therapeutic interventions. This research paper evaluates the clinical effectiveness of AI-driven remote rehabilitation platforms by examining their architecture, sensor technologies, movement-tracking precision, therapy adherence monitoring, and outcome prediction capabilities. A comprehensive methodology involving sensor-based data collection, machine learning modeling, clinical parameter assessment, and tele-physiotherapy workflows was adopted. Through a structured case study and dual-table data analysis, the study demonstrates that AI-augmented motion tracking significantly improves therapeutic adherence (27–43%), reduces patient recovery times (18–32%), and enhances assessment accuracy compared to traditional in-person physiotherapy models. The paper also identifies limitations related to sensor calibration, environmental variations, user compliance, and interoperability challenges. Findings highlight that AI-powered remote rehabilitation can serve as a scalable, cost-effective, and clinically validated option for continuous therapy, especially for patients in rural, post-surgical, and mobility-constrained settings.

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Published

2026-04-09

How to Cite

Remote Rehabilitation Using AI and Motion-Tracking Systems: An Evaluation of Clinical Effectiveness. (2026). Digital Health & Telemonitoring Advances E: 3117-6461 | P: 3117-647X, 2(03), 73-85. https://galaxiauniverse.com/index.php/DHTA/article/view/226

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