Literature DB >> 23033332

EMG signal decomposition using motor unit potential train validity.

Hossein Parsaei1, Daniel W Stashuk.   

Abstract

A system to resolve an intramuscular electromyographic (EMG) signal into its component motor unit potential trains (MUPTs) is presented. The system is intended mainly for clinical applications where several physiological parameters of motor units (MUs), such as their motor unit potential (MUP) templates and mean firing rates, are of interest. The system filters an EMG signal, detects MUPs, and clusters and classifies the detected MUPs into MUPTs. Clustering is partially based on the K-means algorithm, and the supervised classification is implemented using a certainty-based algorithm. Both clustering and supervised classification algorithms use MUP shape and MU firing pattern information along with signal dependent assignment criteria to obtain robust performance across a variety of EMG signals. During classification, the validity of extracted MUPTs are determined using several supervised classifiers; invalid trains are corrected and the assignment threshold for each train is adjusted based on the estimated validity (i.e., adaptive classification). Performance of the developed system in terms of accuracy (A(c)), assignment rate (A(r)), correct classification rate (CC(r)) , and the error in estimating the number of MUPTs represented in the set of detected MUPs (E(NMUPTs)) was evaluated using 32 simulated and 30 real EMG signals comprised of 3-11 and 3-15 MUPTs, respectively. The developed system, with average CC(r) of 86.4% for simulated and 96.4% for real data, outperformed a previously developed EMG decomposition system, with average CC(r) of 71.6% and 89.7% for simulated and real data, by 14.7% and 6.7%, respectively. In terms of E(NMUPTs), the new system, with average E(NMUPTs) of 0.3 and 0.2 for simulated and real data respectively, was better able to estimate the number of MUPTs represented in a set of detected MUPs than the previous system, with average E(NMUPTs) of 2.2 and 0.8 for simulated and real data respectively. For both the simulated and real data used, variations in A(c), A(r), and E(NMUPTs) for the newly developed system were lower than for the previous system, which demonstrates that the new system can successfully adjust the assignment criteria based on the characteristics of a given signal to achieve robust performance across a wide variety of EMG signals, which is of paramount importance for successfully promoting the clinical application of EMG signal decomposition techniques.

Mesh:

Year:  2012        PMID: 23033332     DOI: 10.1109/TNSRE.2012.2218287

Source DB:  PubMed          Journal:  IEEE Trans Neural Syst Rehabil Eng        ISSN: 1534-4320            Impact factor:   3.802


  10 in total

1.  Decomposition of surface EMG signals from cyclic dynamic contractions.

Authors:  Carlo J De Luca; Shey-Sheen Chang; Serge H Roy; Joshua C Kline; S Hamid Nawab
Journal:  J Neurophysiol       Date:  2014-12-24       Impact factor: 2.714

2.  A Novel Framework Based on FastICA for High Density Surface EMG Decomposition.

Authors:  Maoqi Chen; Ping Zhou
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2015-03-11       Impact factor: 3.802

3.  Error reduction in EMG signal decomposition.

Authors:  Joshua C Kline; Carlo J De Luca
Journal:  J Neurophysiol       Date:  2014-09-10       Impact factor: 2.714

4.  A hybrid classifier for characterizing motor unit action potentials in diagnosing neuromuscular disorders.

Authors:  T Kamali; R Boostani; H Parsaei
Journal:  J Biomed Phys Eng       Date:  2013-12-02

5.  Comparative Analysis of Wavelet-based Feature Extraction for Intramuscular EMG Signal Decomposition.

Authors:  M Ghofrani Jahromi; H Parsaei; A Zamani; M Dehbozorgi
Journal:  J Biomed Phys Eng       Date:  2017-12-01

6.  Failure to expand the motor unit size to compensate for declining motor unit numbers distinguishes sarcopenic from non-sarcopenic older men.

Authors:  M Piasecki; A Ireland; J Piasecki; D W Stashuk; A Swiecicka; M K Rutter; D A Jones; J S McPhee
Journal:  J Physiol       Date:  2018-03-23       Impact factor: 5.182

7.  An Android Application for Estimating Muscle Onset Latency using Surface EMG Signal.

Authors:  M Karimpour; H Parsaei; Z Rojhani-Shirazi; R Sharifian; F Yazdani
Journal:  J Biomed Phys Eng       Date:  2019-04-01

8.  Neurophysiological Characterization of a Non-Human Primate Model of Traumatic Spinal Cord Injury Utilizing Fine-Wire EMG Electrodes.

Authors:  Farah Masood; Hussein A Abdullah; Nitin Seth; Heather Simmons; Kevin Brunner; Ervin Sejdic; Dane R Schalk; William A Graham; Amber F Hoggatt; Douglas L Rosene; John B Sledge; Shanker Nesathurai
Journal:  Sensors (Basel)       Date:  2019-07-27       Impact factor: 3.576

9.  A Multiday Evaluation of Real-Time Intramuscular EMG Usability with ANN.

Authors:  Asim Waris; Muhammad Zia Ur Rehman; Imran Khan Niazi; Mads Jochumsen; Kevin Englehart; Winnie Jensen; Heidi Haavik; Ernest Nlandu Kamavuako
Journal:  Sensors (Basel)       Date:  2020-06-15       Impact factor: 3.576

10.  Exact inter-discharge interval distribution of motor unit firing patterns with gamma model.

Authors:  Javier Navallas; Sonia Porta; Armando Malanda
Journal:  Med Biol Eng Comput       Date:  2019-01-26       Impact factor: 2.602

  10 in total

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