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Automatic decomposition of multichannel intramuscular EMG signals

机译:自动分解多通道肌内肌电信号

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摘要

We describe an automatic algorithm for decomposing multichannel EMG signals into their component motor unit action potential (MUAP) trains, including signals from widely separated recording sites in which MUAPs exhibit appreciable interchannel offset and jitter. The algorithm has two phases. In the Clustering phase, the distinct, recurring MUAPs in each channel are identified, the ones that correspond to the same motor units are determined by their temporal relationships, and Multichannel templates are completed. In the identification stage, the MUAP discharges in the signal are identified using matched filtering and superimposition resolution techniques. The algorithm looks for the MUAPs with the largest single channel components first, using matches in one channel to guide the search in other channels, and using information from the other channels to confirm or refute each identification. For validation, the algorithm was used to decompose 10 real 6-to-8-channel EMG signals containing activity from Lip to 25 motor units. Comparison with expert manual decomposition showed that the algorithm identified more than 75%, of the total 176 MUAP trains with an accuracy greater than 95%. The algorithm is fast, robust, and shows promise to be accurate enough to be a useful tool for decomposing multichannel signals. It is freely available at http://emglab.stanford.edu. (C)2007 Elsevier Ltd, All rights reserved.
机译:我们描述了一种自动算法,用于将多通道EMG信号分解成其组成的电机单元动作电位(MUAP)火车,包括来自广泛分离的记录站点的信号,其中MUAP表现出明显的通道间偏移和抖动。该算法分为两个阶段。在聚类阶段,确定每个通道中不同的重复MUAP,通过它们的时间关系确定与相同电机单元相对应的MUAP,并完成多通道模板。在识别阶段,使用匹配的滤波和叠加分辨率技术识别信号中的MUAP放电。该算法首先查找单通道分量最大的MUAP,使用一个通道中的匹配项来指导其他通道中的搜索,并使用其他通道中的信息来确认或驳斥每个标识。为了进行验证,该算法用于分解10个真实的6至8通道EMG信号,这些信号包含从Lip到25个运动单位的活动。与专家手动分解的比较表明,该算法在176台MUAP火车中识别出了75%以上的准确性,其准确性超过95%。该算法快速,健壮,并且显示出足够准确的前景,有望成为分解多通道信号的有用工具。可从http://emglab.stanford.edu免费获得。 (C)2007 Elsevier Ltd,保留所有权利。

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