Chauvet E, Fokapu O, Hogrel J Y, Gamet D, Duchêne J
LBIM, UMR CNRS 6600, Université de Technologie de Compiègne, Compiègne, France.
Med Biol Eng Comput. 2003 Nov;41(6):646-53. doi: 10.1007/BF02349972.
A technique is proposed that allows automatic decomposition of electromyographic (EMG) signals into their constituent motor unit action potential trains (MUAPTs). A specific iterative algorithm with a classification method using fuzzy-logic techniques was developed. The proposed classification method takes into account imprecise information, such as waveform instability and irregular firing patterns, that is often encountered in EMG signals. Classification features were determined by the combining of time position and waveform information. Statistical analysis of inter-pulse intervals and spike amplitude provided an accurate estimation of features used in the classification step. Algorithm performance was evaluated using simulated EMG signals composed of up to six different discharging motor units corrupted with white noise. The algorithm was then applied to real signals recorded by a high spatial resolution surface EMG device based on a Laplacian spatial filter. On six groups of 20 simulated signals, the decomposition algorithm performed with a maximum and an average mean error rate of 2.13% and 1.37%, respectively. On real surface EMG signals recorded at different force levels (from 10% to 40% of the maximum voluntary contraction), the algorithm correctly identified 21 MUAPTs, compared with the 29 MUAPTs identified by an experienced neurophysiologist. The efficiency of the decomposition on surface EMG signals makes this method very attractive for non-invasive investigation of physiological muscle properties. However, it can also be used to decompose intramuscularly recorded EMG signals.
本文提出了一种技术,可将肌电图(EMG)信号自动分解为其组成的运动单位动作电位序列(MUAPTs)。开发了一种采用模糊逻辑技术分类方法的特定迭代算法。所提出的分类方法考虑了肌电图信号中经常遇到的不精确信息,如波形不稳定性和不规则放电模式。通过结合时间位置和波形信息来确定分类特征。对脉冲间期和尖峰幅度的统计分析为分类步骤中使用的特征提供了准确估计。使用由多达六个不同放电运动单位组成并被白噪声干扰的模拟肌电图信号评估算法性能。然后将该算法应用于基于拉普拉斯空间滤波器的高空间分辨率表面肌电图设备记录的真实信号。在六组每组20个模拟信号上,分解算法的最大平均错误率和平均错误率分别为2.13%和1.37%。在不同力水平(最大自主收缩的10%至40%)记录的真实表面肌电图信号上,与经验丰富的神经生理学家识别的29个MUAPTs相比,该算法正确识别了21个MUAPTs。表面肌电图信号分解的效率使得该方法对于生理肌肉特性的非侵入性研究非常有吸引力。然而,它也可用于分解肌肉内记录的肌电图信号。