Title of article :
Experimental and modelling investigation of surface EMG spike analysis
Author/Authors :
Gabriel ، نويسنده , , David A. and Christie، نويسنده , , Anita and Inglis، نويسنده , , J. Greig and Kamen، نويسنده , , Gary، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
11
From page :
427
To page :
437
Abstract :
A pattern classification method based on five measures extracted from the surface electromyographic (sEMG) signal is used to provide a unique characterization of the interference pattern for different motor unit behaviours. This study investigated the sensitivity of the five sEMG measures during the force gradation process. Tissue and electrode filtering effects were further evaluated using a sEMG model. Subjects (N = 8) performed isometric elbow flexion contractions from 0 to 100% MVC. The sEMG signals from the biceps brachii were recorded simultaneously with force. The basic building block of the sEMG model was the detection of single fibre action potentials (SFAPs) through a homogeneous, equivalent isotropic, infinite volume conduction medium. The SFAPs were summed to generate single motor unit action potentials. The physiologic properties from a well-known muscle model and motor unit recruitment and firing rate schemes were combined to generate synthetic sEMG signals. The following pattern classification measures were calculated: mean spike amplitude, mean spike frequency, mean spike slope, mean spike duration, and the mean number of peaks per spike. Root-mean-square amplitude and mean power frequency were also calculated. Taken together, the experimental data and modelling analysis showed that below 50% MVC, the pattern classification measures were more sensitive to changes in force than traditional time and frequency measures. However, there are additional limitations associated with electrode distance from the source that must be explored further. Future experimental work should ensure that the inter-electrode distance is no greater than 1 cm to mitigate the effects of tissue filtering.
Keywords :
Biceps brachii , Electromyography , Signal Processing , Surface EMG modelling , Motor unit behaviour
Journal title :
Medical Engineering and Physics
Serial Year :
2011
Journal title :
Medical Engineering and Physics
Record number :
1731258
Link To Document :
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