Analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography.

The timing of muscle activity is a commonly applied analytic method to understand how the nervous system controls movement. This study systematically evaluates six classes of standard and statistical algorithms to determine muscle onset in both experimental surface electromyography (EMG) and simulat...

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Main Authors: Matthew S Tenan, Andrew J Tweedell, Courtney A Haynes
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5425195?pdf=render
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author Matthew S Tenan
Andrew J Tweedell
Courtney A Haynes
author_facet Matthew S Tenan
Andrew J Tweedell
Courtney A Haynes
author_sort Matthew S Tenan
collection DOAJ
description The timing of muscle activity is a commonly applied analytic method to understand how the nervous system controls movement. This study systematically evaluates six classes of standard and statistical algorithms to determine muscle onset in both experimental surface electromyography (EMG) and simulated EMG with a known onset time. Eighteen participants had EMG collected from the biceps brachii and vastus lateralis while performing a biceps curl or knee extension, respectively. Three established methods and three statistical methods for EMG onset were evaluated. Linear envelope, Teager-Kaiser energy operator + linear envelope and sample entropy were the established methods evaluated while general time series mean/variance, sequential and batch processing of parametric and nonparametric tools, and Bayesian changepoint analysis were the statistical techniques used. Visual EMG onset (experimental data) and objective EMG onset (simulated data) were compared with algorithmic EMG onset via root mean square error and linear regression models for stepwise elimination of inferior algorithms. The top algorithms for both data types were analyzed for their mean agreement with the gold standard onset and evaluation of 95% confidence intervals. The top algorithms were all Bayesian changepoint analysis iterations where the parameter of the prior (p0) was zero. The best performing Bayesian algorithms were p0 = 0 and a posterior probability for onset determination at 60-90%. While existing algorithms performed reasonably, the Bayesian changepoint analysis methodology provides greater reliability and accuracy when determining the singular onset of EMG activity in a time series. Further research is needed to determine if this class of algorithms perform equally well when the time series has multiple bursts of muscle activity.
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spelling doaj.art-980f8fb126404261a9967613b141350a2022-12-21T19:04:56ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01125e017731210.1371/journal.pone.0177312Analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography.Matthew S TenanAndrew J TweedellCourtney A HaynesThe timing of muscle activity is a commonly applied analytic method to understand how the nervous system controls movement. This study systematically evaluates six classes of standard and statistical algorithms to determine muscle onset in both experimental surface electromyography (EMG) and simulated EMG with a known onset time. Eighteen participants had EMG collected from the biceps brachii and vastus lateralis while performing a biceps curl or knee extension, respectively. Three established methods and three statistical methods for EMG onset were evaluated. Linear envelope, Teager-Kaiser energy operator + linear envelope and sample entropy were the established methods evaluated while general time series mean/variance, sequential and batch processing of parametric and nonparametric tools, and Bayesian changepoint analysis were the statistical techniques used. Visual EMG onset (experimental data) and objective EMG onset (simulated data) were compared with algorithmic EMG onset via root mean square error and linear regression models for stepwise elimination of inferior algorithms. The top algorithms for both data types were analyzed for their mean agreement with the gold standard onset and evaluation of 95% confidence intervals. The top algorithms were all Bayesian changepoint analysis iterations where the parameter of the prior (p0) was zero. The best performing Bayesian algorithms were p0 = 0 and a posterior probability for onset determination at 60-90%. While existing algorithms performed reasonably, the Bayesian changepoint analysis methodology provides greater reliability and accuracy when determining the singular onset of EMG activity in a time series. Further research is needed to determine if this class of algorithms perform equally well when the time series has multiple bursts of muscle activity.http://europepmc.org/articles/PMC5425195?pdf=render
spellingShingle Matthew S Tenan
Andrew J Tweedell
Courtney A Haynes
Analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography.
PLoS ONE
title Analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography.
title_full Analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography.
title_fullStr Analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography.
title_full_unstemmed Analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography.
title_short Analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography.
title_sort analysis of statistical and standard algorithms for detecting muscle onset with surface electromyography
url http://europepmc.org/articles/PMC5425195?pdf=render
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