DocumentCode :
3003513
Title :
Classification of motor unit activity following targeted muscle reinnervation
Author :
Kapelner, Tamas ; Ning Jiang ; Vujaklija, Ivan ; Aszmann, Oskar C. ; Holobar, Ales ; Farina, Dario
Author_Institution :
Dept. of Neurorehabilitation Eng., Univ. Med. Center Gottingen, Gottingen, Germany
fYear :
2015
fDate :
22-24 April 2015
Firstpage :
652
Lastpage :
654
Abstract :
For the past six decades, signal processing methods for myoelectric control of prostheses consisted mainly of calculating time- and frequency domain features of the EMG signal. This type of feature extraction considers the surface EMG as colored noise, neglecting its generation as a sum of motor unit activities. In this study we propose the use of motor unit behavior for classifying motor tasks with the aim of myoelectric control. We recorded high-density surface EMG of three patients who underwent targeted muscle reinnervation, and decomposed these signals into motor unit spike trains using an automatic offline EMG decomposition method. From the motor unit spike trains we used the number of discharges in each analysis interval as a feature for a support vector machine classifier. The same classifier was used for discriminating classic time-domain EMG features, for comparison. Classification accuracy was greater for motor unit information than for the classic features (97.06%±1.74 vs 85.01%±13.66), especially when the number of classes was high (95.11% ± 1.74 vs 69.25% ± 4.04 for 11 classes). These results suggest that the identification of motor unit activity from surface EMG can be a powerful way for pattern recognition in targeted muscle reinnervation patients.
Keywords :
electromyography; feature extraction; medical control systems; medical signal processing; prosthetics; signal classification; support vector machines; time-frequency analysis; EMG signal; automatic offline EMG decomposition method; colored noise; feature extraction; frequency domain features; motor unit activity classification; motor unit spike trains; myoelectric control; pattern recognition; prostheses; signal processing methods; support vector machine classifier; surface EMG; targeted muscle reinnervation; time-domain features; Accuracy; Electric potential; Electrodes; Electromyography; Muscles; Support vector machines; Tunneling magnetoresistance;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Engineering (NER), 2015 7th International IEEE/EMBS Conference on
Conference_Location :
Montpellier
Type :
conf
DOI :
10.1109/NER.2015.7146707
Filename :
7146707
Link To Document :
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