Authors
Sejuti Rahman, Sujan Sarker, AKM Nadimul Haque, Monisha Mushtary Uttsha, Md Fokhrul Islam, Swakshar Deb
Publication date
2022/11/3
Source
IEEE Transactions on Neural Systems and Rehabilitation Engineering
Volume
31
Pages
192-207
Publisher
IEEE
Description
Post-stroke therapy restores lost skills. Traditionally, patients are supported by skilled therapists who monitor their progress and evaluate the program’s effectiveness. Due to a shortage of qualified therapists, rehabilitation facilities are both expensive and inadequate. Furthermore, evaluations may be subjective and prone to errors. These limitations motivate the researchers to devise automated systems with minimal human intervention, therapist-like assessment, and broader outreach. This article reviews seminal works from 2013 onwards, qualitatively and quantitatively adapting the PRISMA approach to examine the potential of robot-assisted, virtual reality-based rehabilitation and automated assessments through data-driven learning. Extensive experimentation on KIMORE and UI-PRMD datasets reveal high agreement between automated methods and therapists. Our investigation shows that deep learning with …
Total citations
Scholar articles
S Rahman, S Sarker, AKMN Haque, MM Uttsha… - IEEE Transactions on Neural Systems and …, 2022