DocumentCode
1010191
Title
Upper-Extremity Stroke Therapy Task Discrimination Using Motion Sensors and Electromyography
Author
Giuffrida, Joseph P. ; Lerner, Alan ; Steiner, Richard ; Daly, Janis
Author_Institution
Cleveland Med. Devices Inc., Cleveland
Volume
16
Issue
1
fYear
2008
Firstpage
82
Lastpage
90
Abstract
Brain injury resulting from stroke often causes upper-extremity motor deficits that limit activities of daily living. Several therapies being developed for motor rehabilitation after stroke focus on increasing time spent using the extremity to promote motor relearning. Providing a novel system for user-worn therapy may increase the amount and rate of functional motor recovery. A user-worn system comprising accelerometers, gyroscopes, and electromyography amplifiers was used to wirelessly transmit motion and muscle activity from normal and stroke subjects to a computer as they completed five upper-extremity rehabilitation tasks. An algorithm was developed to automatically detect the therapy task a subject performed based on the gyroscope and electromyography data. The system classified which task a subject was attempting to perform with greater than 80% accuracy despite the fact that those with severe impairment produced movements that did not resemble the goal tasks and were visually indistinguishable from different tasks. This developed system could potentially be used for home-therapy compliance monitoring, real-time patient feedback and to control therapy interventions.
Keywords
brain; diseases; electromyography; gyroscopes; motion measurement; neurophysiology; patient rehabilitation; brain injury; electromyography; gyroscope; motion sensors; motor rehabilitation; patient feedback; upper-extremity stroke therapy; Accelerometers; accelerometers; electromyography; gyroscopes; rehabilitation; stroke; Algorithms; Arm; Data Interpretation, Statistical; Discrimination (Psychology); Electromyography; Feedback; Fingers; Forearm; Humans; Movement; Stroke; Upper Extremity; Wrist;
fLanguage
English
Journal_Title
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1534-4320
Type
jour
DOI
10.1109/TNSRE.2007.914454
Filename
4403889
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