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Decomposition of surface EMG signals from cyclic dynamic contractions

机译:循环动态收缩分解表面肌电信号

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Over the past 3 decades, various algorithms used to decompose the electromyographic (EMG) signal into its constituent motor unit action potentials (MUAPs) have been reported. All are limited to decomposing EMG signals from isometric contraction. In this report, we describe a successful approach to decomposing the surface EMG (sEMG) signal collected from cyclic (repeated concentric and eccentric) dynamic contractions during flexion/extension of the elbow and during gait. The increased signal complexity introduced by the changing shapes of the MUAPs due to relative movement of the electrodes and the lengthening/shortening of muscle fibers was managed by an incremental approach to enhancing our established algorithm for decomposing sEMG signals obtained from isometric contractions. We used machine-learning algorithms and time-varying MUAP shape discrimination to decompose the sEMG signal from an increasingly challenging sequence of pseudostatic and dynamic contractions. The accuracy of the decomposition results was assessed by two verification methods that have been independently evaluated. The firing instances of the motor units had an accuracy of similar to 90% with a MUAP train yield as high as 25. Preliminary observations from the performance of motor units during cyclic contractions indicate that during repetitive dynamic contractions, the control of motor units is governed by the same rules as those evidenced during isometric contractions. Modifications in the control properties of motoneuron firings reported by previous studies were not confirmed. Instead, our data demonstrate that the common drive and hierarchical recruitment of motor units are preserved during concentric and eccentric contractions.
机译:在过去的30年中,已经报道了各种用于将肌电图(EMG)信号分解为其组成的运动单位动作电位(MUAP)的算法。所有这些仅限于从等距收缩分解EMG信号。在此报告中,我们描述了一种成功的方法,可以分解从肘部屈曲/伸展和步态期间的循环(重复的同心和偏心)动态收缩中收集的表面EMG(sEMG)信号。由于电极的相对运动以及肌肉纤维的延长/缩短而导致的MUAP形状变化所引起的信号复杂性增加,是通过一种增量方法来解决的,该方法可增强我们已建立的算法来分解从等距收缩获得的sEMG信号。我们使用了机器学习算法和随时间变化的MUAP形状判别法,以从不断挑战的伪静态和动态收缩序列中分解sEMG信号。通过两种独立评估的验证方法评估了分解结果的准确性。电动机单元的点火实例的准确度接近90%,MUAP列车的成品率高达25。对电动机单元在周期性收缩期间的性能进行的初步观察表明,在重复动态收缩期间,对电动机单元的控制受到控制由与等距收缩过程中所证明的规则相同。先前研究报道的运动神经元放电控制特性的改变尚未得到证实。取而代之的是,我们的数据表明,在同心和偏心收缩过程中,保留了运动单元的常见驱动力和分层募集。

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