Kilner J M, Baker S N, Lemon R N
Sobell Department of Neurophysiology, Institute of Neurology, Queen Square, London WC1N 3BG, UK.
J Physiol. 2002 Feb 1;538(Pt 3):919-30. doi: 10.1113/jphysiol.2001.012950.
Pairs of discharges of single motor units recorded in the same or different muscles often show synchronisation above chance levels. If large numbers of units are synchronous within and between muscles then the synchrony will be measurable in population recordings such as surface EMG. Measuring synchrony between surface EMG recordings has a number of practical and scientific advantages compared with single motor units recorded from intramuscular electrodes. However, the measurement of such synchrony in the time domain between surface EMGs is complicated because the recordings are contaminated by electrical cross-talk. In this study we recorded surface EMG simultaneously from five hand and forearm muscles during a precision grip task. Using a novel 'blind signal separation' algorithm, we were able to remove electrical cross-talk. The cross-talk-corrected EMGs could then be used to assess task-dependent modulation in both oscillatory (15-30 Hz) and non-oscillatory synchrony (all other frequencies). In agreement with previous studies, the oscillatory component was maximal during steady holding but abolished during movement. By contrast, the non-oscillatory component of the EMG synchrony appeared remarkably constant throughout all phases of the task. We conclude that surface EMG recordings can be of considerable use in the assessment of population synchrony changes, providing that electrical cross-talk between nearby channels is removed using a statistical signal processing technique. Our results show a striking difference in the task-dependent modulation of oscillatory and non-oscillatory synchrony between muscles during a dynamic precision grip task.
在同一肌肉或不同肌肉中记录到的单个运动单位的放电对,常常表现出高于随机水平的同步性。如果大量运动单位在肌肉内部及之间同步,那么这种同步性在诸如表面肌电图等群体记录中就可以测量出来。与从肌内电极记录单个运动单位相比,测量表面肌电图记录之间的同步性具有许多实际和科学上的优势。然而,由于记录受到电串扰的污染,在时域中测量表面肌电图之间的这种同步性变得复杂。在本研究中,我们在进行精确抓握任务期间,同时从手部和前臂的五块肌肉记录表面肌电图。使用一种新颖的“盲信号分离”算法,我们能够去除电串扰。然后,经过串扰校正的肌电图可用于评估振荡性(15 - 30赫兹)和非振荡性同步性(所有其他频率)中与任务相关的调制。与先前的研究一致,振荡成分在稳定握持期间最大,但在运动期间消失。相比之下,肌电图同步性的非振荡成分在任务的所有阶段都表现得非常恒定。我们得出结论,只要使用统计信号处理技术去除附近通道之间的电串扰,表面肌电图记录在评估群体同步性变化方面会有很大用处。我们的结果显示,在动态精确抓握任务期间,肌肉之间振荡性和非振荡性同步性的任务相关调制存在显著差异。