Bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyography

<p>Abstract</p> <p>Background</p> <p>Methods for the calculation and application of quantitative electromyographic (EMG) statistics for the characterization of EMG data detected from forearm muscles of individuals with and without pain associated with repetitive strain...

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Main Authors: McLean Linda, Hamilton-Wright Andrew, Stashuk Daniel W, Calder Kristina M
Format: Article
Language:English
Published: BMC 2010-02-01
Series:Journal of NeuroEngineering and Rehabilitation
Online Access:http://www.jneuroengrehab.com/content/7/1/8
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spelling doaj-b8149f8ab0894c8ab4684346db290bdd2020-11-24T20:53:45ZengBMCJournal of NeuroEngineering and Rehabilitation1743-00032010-02-0171810.1186/1743-0003-7-8Bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyographyMcLean LindaHamilton-Wright AndrewStashuk Daniel WCalder Kristina M<p>Abstract</p> <p>Background</p> <p>Methods for the calculation and application of quantitative electromyographic (EMG) statistics for the characterization of EMG data detected from forearm muscles of individuals with and without pain associated with repetitive strain injury are presented.</p> <p>Methods</p> <p>A classification procedure using a multi-stage application of Bayesian inference is presented that characterizes a set of motor unit potentials acquired using needle electromyography. The utility of this technique in characterizing EMG data obtained from both normal individuals and those presenting with symptoms of "non-specific arm pain" is explored and validated. The efficacy of the Bayesian technique is compared with simple voting methods.</p> <p>Results</p> <p>The aggregate Bayesian classifier presented is found to perform with accuracy equivalent to that of majority voting on the test data, with an overall accuracy greater than 0.85. Theoretical foundations of the technique are discussed, and are related to the observations found.</p> <p>Conclusions</p> <p>Aggregation of motor unit potential conditional probability distributions estimated using quantitative electromyographic analysis, may be successfully used to perform electrodiagnostic characterization of "non-specific arm pain." It is expected that these techniques will also be able to be applied to other types of electrodiagnostic data.</p> http://www.jneuroengrehab.com/content/7/1/8
collection DOAJ
language English
format Article
sources DOAJ
author McLean Linda
Hamilton-Wright Andrew
Stashuk Daniel W
Calder Kristina M
spellingShingle McLean Linda
Hamilton-Wright Andrew
Stashuk Daniel W
Calder Kristina M
Bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyography
Journal of NeuroEngineering and Rehabilitation
author_facet McLean Linda
Hamilton-Wright Andrew
Stashuk Daniel W
Calder Kristina M
author_sort McLean Linda
title Bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyography
title_short Bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyography
title_full Bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyography
title_fullStr Bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyography
title_full_unstemmed Bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyography
title_sort bayesian aggregation versus majority vote in the characterization of non-specific arm pain based on quantitative needle electromyography
publisher BMC
series Journal of NeuroEngineering and Rehabilitation
issn 1743-0003
publishDate 2010-02-01
description <p>Abstract</p> <p>Background</p> <p>Methods for the calculation and application of quantitative electromyographic (EMG) statistics for the characterization of EMG data detected from forearm muscles of individuals with and without pain associated with repetitive strain injury are presented.</p> <p>Methods</p> <p>A classification procedure using a multi-stage application of Bayesian inference is presented that characterizes a set of motor unit potentials acquired using needle electromyography. The utility of this technique in characterizing EMG data obtained from both normal individuals and those presenting with symptoms of "non-specific arm pain" is explored and validated. The efficacy of the Bayesian technique is compared with simple voting methods.</p> <p>Results</p> <p>The aggregate Bayesian classifier presented is found to perform with accuracy equivalent to that of majority voting on the test data, with an overall accuracy greater than 0.85. Theoretical foundations of the technique are discussed, and are related to the observations found.</p> <p>Conclusions</p> <p>Aggregation of motor unit potential conditional probability distributions estimated using quantitative electromyographic analysis, may be successfully used to perform electrodiagnostic characterization of "non-specific arm pain." It is expected that these techniques will also be able to be applied to other types of electrodiagnostic data.</p>
url http://www.jneuroengrehab.com/content/7/1/8
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