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Progressive FastICA Peel-Off and Convolution Kernel Compensation Demonstrate High Agreement for High Density Surface EMG Decomposition

机译:渐进式FastICA剥离和卷积核补偿证明了高密度表面EMG分解的高度一致性

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摘要

Decomposition of electromyograms (EMG) is a key approach to investigating motor unit plasticity. Various signal processing techniques have been developed for high density surface EMG decomposition, among which the convolution kernel compensation (CKC) has achieved high decomposition yield with extensive validation. Very recently, a progressive FastICA peel-off (PFP) framework has also been developed for high density surface EMG decomposition. In this study, the CKC and PFP methods were independently applied to decompose the same sets of high density surface EMG signals. Across 91 trials of 64-channel surface EMG signals recorded from the first dorsal interosseous (FDI) muscle of 9 neurologically intact subjects, there were a total of 1477 motor units identified from the two methods, including 969 common motor units. On average, 10.6 ± 4.3 common motor units were identified from each trial, which showed a very high matching rate of 97.85 ± 1.85% in their discharge instants. The high degree of agreement of common motor units from the CKC and the PFP processing provides supportive evidence of the decomposition accuracy for both methods. The different motor units obtained from each method also suggest that combination of the two methods may have the potential to further increase the decomposition yield.
机译:肌电图(EMG)的分解是研究运动单元可塑性的关键方法。已经开发出用于高密度表面EMG分解的各种信号处理技术,其中卷积核补偿(CKC)已经获得了广泛的验证的高分解产率。最近,还开发了用于高密度表面EMG分解的渐进式FastICA剥离(PFP)框架。在这项研究中,CKC和PFP方法被独立地应用于分解同一组高密度表面EMG信号。在91位从9位神经学完好无损的受试者的第一背骨间(FDI)肌肉记录的64通道表面肌电信号的试验中,从这两种方法中总共识别出1477个运动单位,包括969个常见运动单位。每次试验平均确定出10.6±4.3的通用电机,在放电瞬间的匹配率高达97.85±1.85%。 CKC和PFP处理过程中常见电机单元的高度一致性为这两种方法的分解精度提供了支持证据。从每种方法获得的不同电机单元还表明,两种方法的组合可能具有进一步提高分解产率的潜力。

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