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Motor unit action potential conduction velocity estimated from surface electromyographic signals using image processing techniques

机译:使用图像处理技术从表面肌电信号估计的电机单元动作电位传导速度

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摘要

In surface electromyography (surface EMG, or S-EMG), conduction velocity (CV) refers to the velocity at which the motor unit action potentials (MUAPs) propagate along the muscle fibers, during contractions. The CV is related to the type and diameter of the muscle fibers, ion concentration, pH, and firing rate of the motor units (MUs). The CV can be used in the evaluation of contractile properties of MUs, and of muscle fatigue. The most popular methods for CV estimation are those based on maximum likelihood estimation (MLE). This work proposes an algorithm for estimating CV from S-EMG signals, using digital image processing techniques. The proposed approach is demonstrated and evaluated, using both simulated and experimentally-acquired multichannel S-EMG signals. We show that the proposed algorithm is as precise and accurate as the MLE method in typical conditions of noise and CV. The proposed method is not susceptible to errors associated with MUAP propagation direction or inadequate initialization parameters, which are common with the MLE algorithm. Image processing -based approaches may be useful in S-EMG analysis to extract different physiological parameters from multichannel S-EMG signals. Other new methods based on image processing could also be developed to help solving other tasks in EMG analysis, such as estimation of the CV for individual MUs, localization and tracking of innervation zones, and study of MU recruitment strategies.
机译:在表面肌电图(表面EMG或S-EMG)中,传导速度(CV)是指在收缩过程中运动单位动作电位(MUAP)沿着肌肉纤维传播的速度。 CV与肌肉纤维的类型和直径,离子浓度,pH值以及运动单元(MU)的放电速率有关。 CV可用于评估MU的收缩特性和肌肉疲劳。 CV估计最流行的方法是基于最大似然估计(MLE)的方法。这项工作提出了一种使用数字图像处理技术从S-EMG信号估计CV的算法。使用模拟和实验获得的多通道S-EMG信号对所提出的方法进行了演示和评估。我们表明,在典型的噪声和CV条件下,该算法与MLE方法一样精确,准确。所提出的方法不易受与MUAP传播方向相关的错误或初始化参数不足(MLE算法常见)的影响。基于图像处理的方法在S-EMG分析中可能有用,可以从多通道S-EMG信号中提取不同的生理参数。还可以开发其他基于图像处理的新方法来帮助解决EMG分析中的其他任务,例如单个MU的CV估算,神经支配区域的定位和跟踪以及MU招聘策略的研究。

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