Literature DB >> 16394079

Matrix factorization algorithms for the identification of muscle synergies: evaluation on simulated and experimental data sets.

Matthew C Tresch1, Vincent C K Cheung, Andrea d'Avella.   

Abstract

Several recent studies have used matrix factorization algorithms to assess the hypothesis that behaviors might be produced through the combination of a small number of muscle synergies. Although generally agreeing in their basic conclusions, these studies have used a range of different algorithms, making their interpretation and integration difficult. We therefore compared the performance of these different algorithms on both simulated and experimental data sets. We focused on the ability of these algorithms to identify the set of synergies underlying a data set. All data sets consisted of nonnegative values, reflecting the nonnegative data of muscle activation patterns. We found that the performance of principal component analysis (PCA) was generally lower than that of the other algorithms in identifying muscle synergies. Factor analysis (FA) with varimax rotation was better than PCA, and was generally at the same levels as independent component analysis (ICA) and nonnegative matrix factorization (NMF). ICA performed very well on data sets corrupted by constant variance Gaussian noise, but was impaired on data sets with signal-dependent noise and when synergy activation coefficients were correlated. Nonnegative matrix factorization (NMF) performed similarly to ICA and FA on data sets with signal-dependent noise and was generally robust across data sets. The best algorithms were ICA applied to the subspace defined by PCA (ICAPCA) and a version of probabilistic ICA with nonnegativity constraints (pICA). We also evaluated some commonly used criteria to identify the number of synergies underlying a data set, finding that only likelihood ratios based on factor analysis identified the correct number of synergies for data sets with signal-dependent noise in some cases. We then proposed an ad hoc procedure, finding that it was able to identify the correct number in a larger number of cases. Finally, we applied these methods to an experimentally obtained data set. The best performing algorithms (FA, ICA, NMF, ICAPCA, pICA) identified synergies very similar to one another. Based on these results, we discuss guidelines for using factorization algorithms to analyze muscle activation patterns. More generally, the ability of several algorithms to identify the correct muscle synergies and activation coefficients in simulated data, combined with their consistency when applied to physiological data sets, suggests that the muscle synergies found by a particular algorithm are not an artifact of that algorithm, but reflect basic aspects of the organization of muscle activation patterns underlying behaviors.

Mesh:

Year:  2006        PMID: 16394079     DOI: 10.1152/jn.00222.2005

Source DB:  PubMed          Journal:  J Neurophysiol        ISSN: 0022-3077            Impact factor:   2.714


  203 in total

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4.  On nonnegative matrix factorization algorithms for signal-dependent noise with application to electromyography data.

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5.  Robustness of muscle synergies underlying three-dimensional force generation at the hand in healthy humans.

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Journal:  J Neurophysiol       Date:  2012-01-25       Impact factor: 2.714

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8.  The use of flexible arm muscle synergies to perform an isometric stabilization task.

Authors:  Vijaya Krishnamoorthy; John P Scholz; Mark L Latash
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9.  Children With and Without Dystonia Share Common Muscle Synergies While Performing Writing Tasks.

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Review 10.  Motor primitives and synergies in the spinal cord and after injury--the current state of play.

Authors:  Simon F Giszter; Corey B Hart
Journal:  Ann N Y Acad Sci       Date:  2013-03       Impact factor: 5.691

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