Classification of motor unit activity following targeted muscle reinnervation

Tamas Kapelner, N. Jiang, I. Vujaklija, O. Aszmann, A. Holobar, D. Farina
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引用次数: 11

Abstract

For the past six decades, signal processing methods for myoelectric control of prostheses consisted mainly of calculating time- and frequency domain features of the EMG signal. This type of feature extraction considers the surface EMG as colored noise, neglecting its generation as a sum of motor unit activities. In this study we propose the use of motor unit behavior for classifying motor tasks with the aim of myoelectric control. We recorded high-density surface EMG of three patients who underwent targeted muscle reinnervation, and decomposed these signals into motor unit spike trains using an automatic offline EMG decomposition method. From the motor unit spike trains we used the number of discharges in each analysis interval as a feature for a support vector machine classifier. The same classifier was used for discriminating classic time-domain EMG features, for comparison. Classification accuracy was greater for motor unit information than for the classic features (97.06%±1.74 vs 85.01%±13.66), especially when the number of classes was high (95.11% ± 1.74 vs 69.25% ± 4.04 for 11 classes). These results suggest that the identification of motor unit activity from surface EMG can be a powerful way for pattern recognition in targeted muscle reinnervation patients.
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定向肌肉神经再支配后运动单元活动的分类
过去六十年来,假肢肌电控制的信号处理方法主要包括计算肌电信号的时域和频域特征。这种特征提取方法将表面肌电信号视为彩色噪声,忽略了其作为运动单元活动总和的产生。在本研究中,我们提出利用运动单元行为对运动任务进行分类,以达到肌电控制的目的。我们记录了三名接受靶向肌肉神经支配的患者的高密度表面肌电图,并使用自动离线肌电图分解方法将这些信号分解为运动单元尖峰列车。从运动单元尖峰列车中,我们使用每个分析区间的放电次数作为支持向量机分类器的特征。为了进行比较,我们使用了相同的分类器来区分经典的时域肌电图特征。与经典特征相比,运动单位信息的分类准确率更高(97.06%±1.74 vs 85.01%±13.66),尤其是当类别数量较多时(11 个类别的分类准确率为 95.11%±1.74 vs 69.25%±4.04 )。这些结果表明,从表面肌电图中识别运动单位活动是对目标肌肉神经再支配患者进行模式识别的有效方法。
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