Literature DB >> 2286173

The behaviour of the mean power frequency of the surface electromyogram in biceps brachii with increasing force and during fatigue. With special regard to the electrode distance.

B Gerdle1, N E Eriksson, L Brundin.   

Abstract

The present study aims to investigate: a) the relationship between force and mean power frequency of the EMG, and b) how the distance between surface electrodes influences the mean power frequency. The study consisted of three parts: 1) a gradually increasing contraction upto 100% MVC, 2) contractions performed at 5 different levels from 20% upto 100% MVC with rest in between, and 3) an endurance test at 30% MVC. Nine healthy women participated. The elbow was flexed 90 degrees and EMG signals were obtained from the biceps brachii. The surface electrodes were placed so that electrode distances of 10 mm, 20 mm and 30 mm were obtained. The mean power frequency increased upto 60% MVC. Above 60% MVC no change in mean power frequency occurred. No differences in the mean power frequency with respect to the electrode distances existed at each force level. No significant differences were found at each contraction level between the gradually increasing contraction and the stepwise increasing contractions. The mean power frequency decreased linearly during the endurance test without any differences with respect to the electrode distances. It is concluded that the different electrode distances do not affect the mean power frequency-force relationship or the decrease in mean power frequency during fatigue. It is proposed that the increase in mean power frequency, on group level, can be used as an indicator of motor unit recruitment. However, this proposal was found to be complicated when individual analyses were made.

Entities:  

Mesh:

Year:  1990        PMID: 2286173

Source DB:  PubMed          Journal:  Electromyogr Clin Neurophysiol        ISSN: 0301-150X


  10 in total

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4.  Activation characteristics of shoulder muscles during maximal and submaximal efforts.

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6.  Surface EMG muscular conduction velocity measurement system implemented on a standard personal computer without A/D convertor.

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8.  Spectral properties of physiological mirror activity: an investigation of frequency features and common input between homologous muscles.

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Review 9.  The influence of confounding factors on the relationship between muscle contraction level and MF and MPF values of EMG signal: a review.

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  10 in total

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