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采用频谱多偶极子方法估计肌纤维传导速度。

Estimation of muscle fiber conduction velocity with a spectral multidip approach.

作者信息

Farina Dario, Negro Francesco

机构信息

Center for Sensory-Motor Interaction, Department of Health Science and Technology, Aalborg University, Fredrik Bajers Vej 7D-3, Aalborg DK-9220, Denmark.

出版信息

IEEE Trans Biomed Eng. 2007 Sep;54(9):1583-9. doi: 10.1109/TBME.2007.892928.

Abstract

We propose a novel method for estimation of muscle fiber conduction velocity from surface electromyographic (EMG) signals. The method is based on the regression analysis between spatial and temporal frequencies of multiple dips introduced in the EMG power spectrum through the application of a set of spatial filters. This approach leads to a closed analytical expression of conduction velocity as a function of the auto- and cross-spectra of monopolar signals detected along the direction of muscle fibers. The performance of the algorithm was compared with respect to that of the classic single dip approach on simulated and experimental EMG signals. The standard deviation of conduction velocity estimates from simulated single motor unit action potentials was reduced from 1.51 m/s [10 dB signal-to-noise ratio (SNR)] and 1.06 m/s (20 dB SNR) with the single dip approach to 0.51 m/s (10 dB) and 0.23 m/s (20 dB) with the proposed method using 65 dips. When 200 active motor units were simulated in an interference EMG signal, standard deviation of conduction velocity decreased from 0.95 m/s (10 dB SNR) and 0.60 m/s (20 dB SNR) with a single dip to 0.21 m/s (10 dB) and 0.11 m/s (20 dB) with 65 dips. In experimental signals detected from the abductor pollicis brevis muscle, standard deviation of estimation decreased from (mean +/- SD over 5 subjects) 1.25 +/- 0.62 m/s with one dip to 0.10 +/- 0.03 m/s with 100 dips. The proposed method does not imply limitation in resolution of the estimated conduction velocity and does not require any iterative procedure for the estimate since it is based on a closed analytical formulation.

摘要

我们提出了一种从表面肌电图(EMG)信号估计肌肉纤维传导速度的新方法。该方法基于通过应用一组空间滤波器在EMG功率谱中引入的多个波谷的空间和时间频率之间的回归分析。这种方法得出了传导速度的封闭解析表达式,该表达式是沿肌肉纤维方向检测到的单极信号的自谱和互谱的函数。将该算法的性能与经典的单波谷方法在模拟和实验EMG信号上的性能进行了比较。从模拟的单个运动单位动作电位估计的传导速度的标准差,使用单波谷方法时,在10 dB信噪比(SNR)下为1.51 m/s,在20 dB SNR下为1.06 m/s;而使用65个波谷的所提出方法时,在10 dB下为0.51 m/s,在20 dB下为0.23 m/s。当在干扰EMG信号中模拟200个活动运动单位时,传导速度的标准差从单波谷时的10 dB SNR下的0.95 m/s和20 dB SNR下的0.60 m/s,降至65个波谷时的10 dB下的0.21 m/s和20 dB下的0.11 m/s。在从拇短展肌检测到的实验信号中,估计的标准差从(5名受试者的平均值±标准差)单波谷时的1.25±0.62 m/s降至100个波谷时的0.10±0.03 m/s。所提出的方法在估计传导速度的分辨率上没有限制,并且由于基于封闭的解析公式,因此估计不需要任何迭代过程。

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