• DocumentCode
    1762079
  • Title

    A Multi-Classifier Approach to MUAP Classification for Diagnosis of Neuromuscular Disorders

  • Author

    Kamali, Tschackad ; Boostani, Reza ; Parsaei, H.

  • Author_Institution
    Comput. Sci. & Eng. Dept., Shiraz Univ., Shiraz, Iran
  • Volume
    22
  • Issue
    1
  • fYear
    2014
  • fDate
    Jan. 2014
  • Firstpage
    191
  • Lastpage
    200
  • Abstract
    The shapes and sounds of isolated motor unit action potentials (MUAPs) in an electromyographic (EMG) signal provide a significant source of information for diagnosis, treatment and management of neuromuscular disorders. These parameters can be analyzed qualitatively by an expert or quantitatively by using pattern recognition techniques. Due to the advantages of quantitative EMG method, developing robust automated MUAP classifiers have been explored and several systems have been developed for this purpose by now, but the accuracy of the existing methods is not high enough to be used in clinical environments. In this paper, a novel classification strategy based on ensemble of support vector machines (SVMs) classifiers in hybrid serial/parallel architecture is proposed to determine the class label (myopathic, neuropathic, or normal) for a given MUAP. The developed system employs both time domain and time-frequency domain features of the MUAPs extracted from an EMG signal using an EMG signal decomposition system. Different classification strategies including single classifier and multiple classifiers with several subsets of features were investigated. Experimental results using a set of real EMG signals showed robust performance of multi-classifier methods proposed here. Of the methods studied, the multi-classifier that uses multiple features sets and a combination of both trainable and nontrainable fusion techniques to aggregate base classifiers showed the best performance with average accuracy of 97% which is significantly higher than the average accuracy of single SVM-based classifier system (i.e., 88%).
  • Keywords
    electromyography; feature extraction; medical disorders; medical signal processing; neurophysiology; signal classification; support vector machines; time-frequency analysis; EMG signal decomposition system; MUAP classification; SVM; aggregate base classifiers; electromyographic signal; feature extraction; hybrid serial-parallel architecture; isolated motor unit action potentials; multiclassifier approach; myopathic class label; neuromuscular disorder diagnosis; neuromuscular disorder management; neuromuscular disorder treatment; neuropathic class label; normal class label; pattern recognition; quantitative EMG method; support vector machines classifiers; time domain features; time-frequency domain features; Accuracy; Electromyography; Feature extraction; Neuromuscular; Support vector machines; Time-domain analysis; Time-frequency analysis; Classifier fusion; electromyography; genetic algorithm; hybrid classifier design; motor unit action potential (MUAP) classification; time based features; wavelet;
  • fLanguage
    English
  • Journal_Title
    Neural Systems and Rehabilitation Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1534-4320
  • Type

    jour

  • DOI
    10.1109/TNSRE.2013.2291322
  • Filename
    6668929