2019
DOI: 10.1007/s13246-019-00767-0
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Comparison of muscle synergies extracted from both legs during cycling at different mechanical conditions

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Cited by 12 publications
(9 citation statements)
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“…e lack of TRI can be observed in both mild-to-moderate and severe groups, which may indicate that stroke patients cannot keep their upper arm straight well. Furthermore, researchers found that different subjects at different mechanical conditions use the same motor control strategies in cycling and stance [46,47]. In our study, we found similar result that the muscle synergy within the control was relatively similar to each other, as the template shown in Figure 4.…”
Section: Muscle Synergy Analysissupporting
confidence: 81%
“…e lack of TRI can be observed in both mild-to-moderate and severe groups, which may indicate that stroke patients cannot keep their upper arm straight well. Furthermore, researchers found that different subjects at different mechanical conditions use the same motor control strategies in cycling and stance [46,47]. In our study, we found similar result that the muscle synergy within the control was relatively similar to each other, as the template shown in Figure 4.…”
Section: Muscle Synergy Analysissupporting
confidence: 81%
“…First, we used the fourth-order Butterworth high-pass filter (cutoff frequency of 40 Hz) to filter the signal and then removed the means and rectification ( Myers et al, 2003 ). Then, we used the fourth-order Butterworth low-pass filter (cutoff frequency of 4 Hz) to extract the signal envelope and introduced the maximum normalization method ( Esmaeili and Maleki, 2019 ; Korak et al, 2020 ) to normalize each channel EMG data for every trial according to the maximum amplitude value in each channel. We preprocessed all signals for each movement according to the above methods and built a data matrix of L × K ( L was the number of muscles, K was the number of data points), which was set as the muscle activation matrix M .…”
Section: Methodsmentioning
confidence: 99%
“…The present studies mainly depended on the theories of dimension reduction and blind source separation, such as independent component analysis (ICA), principle component analysis (PCA), second-order blind identification (SOBI), and non-negative matrix factorization (NMF). Here, with respect to both ICA and PCA, two types of blind source separation can reveal several patterns of muscle synergy but have limitations in the specific assumptions in the extracted muscle synergy (orthogonality for PCA and statistical independence for ICA) and the quite highly mean communality of the data ( Ivanenko et al, 2004 ; Weiss and Flanders, 2004 ; Esmaeili and Maleki, 2019 ). Later, some studies tried to use the SOBI method for muscle synergy estimation, but it is the best algorithm with four channels (no dimension reduction) and is not suitable for this study ( Belouchrani et al, 1997 ; Ebied et al, 2018 ).…”
Section: Introductionmentioning
confidence: 99%
“…This type of learning is transmitted to muscles by CNS with defined patterns to complete a motor skill (Shumway-Cook et al, 2007). These patterns, which a group of muscles uses, are recognized as muscle synergies (Abd et al, 2021;Esmaeili et al, 2019). Using involved muscle synergies is one of the current methods to investigate the relationship between the nerve system and the performance of athletes (Nowshiravan Rahatabad et al, 2021).…”
Section: The Proposed Approach To Compare the Performance Of Athletesmentioning
confidence: 99%