DocumentCode
1760721
Title
Automatic Identification and Classification of Muscle Spasms in Long-Term EMG Recordings
Author
Winslow, Jeffrey ; Martinez, Adriana ; Thomas, Christine K.
Author_Institution
Miami Project to Cure Paralysis, Univ. of Miami, Miami, FL, USA
Volume
19
Issue
2
fYear
2015
fDate
42064
Firstpage
464
Lastpage
470
Abstract
Spinal cord injured (SCI) individuals may be afflicted by spasticity, a condition in which involuntary muscle spasms are common. EMG recordings can be analyzed to quantify this symptom of spasticity but manual identification and classification of spasms are time consuming. Here, an algorithm was created to find and classify spasm events automatically within 24-h recordings of EMG. The algorithm used expert rules and time-frequency techniques to classify spasm events as tonic, unit, or clonus spasms. A companion graphical user interface (GUI) program was also built to verify and correct the results of the automatic algorithm or manually defined events. Eight channel EMG recordings were made from seven different SCI subjects. The algorithm was able to correctly identify an average (±SD) of 94.5 ± 3.6% spasm events and correctly classify 91.6 ± 1.9% of spasm events, with an accuracy of 61.7 ± 16.2%. The accuracy improved to 85.5 ± 5.9% and the false positive rate decreased to 7.1 ± 7.3%, respectively, if noise events between spasms were removed. On average, the algorithm was more than 11 times faster than manual analysis. Use of both the algorithm and the GUI program provide a powerful tool for characterizing muscle spasms in 24-h EMG recordings, information which is important for clinical management of spasticity.
Keywords
electromyography; graphical user interfaces; injuries; medical signal processing; neurophysiology; signal classification; time-frequency analysis; GUI; SCI; automatic algorithm; automatic identification; clinical management; clonus spasm; expert rules; false positive rate; graphical user interface program; involuntary muscle spasms; long-term EMG recordings; manual analysis; muscle spasm classification; noise events; spasticity symptom; spinal cord injured individuals; time 24 h; time-frequency techniques; tonic spasm; unit spasm; Accuracy; Classification algorithms; Electromyography; Graphical user interfaces; Manuals; Muscles; Noise; Automatic classification; clonus; motor units; spasticity; spinal cord injury (SCI);
fLanguage
English
Journal_Title
Biomedical and Health Informatics, IEEE Journal of
Publisher
ieee
ISSN
2168-2194
Type
jour
DOI
10.1109/JBHI.2014.2320633
Filename
6807658
Link To Document