System Software Laboratory, Institute of Computer Science, Faculty of Electrical Engineering and Computer Science, University of Maribor, Maribor 2000, Slovenia.
Physiol Meas. 2014 Jul;35(7):R143-65. doi: 10.1088/0967-3334/35/7/R143. Epub 2014 Jun 19.
The spinal circuitries combine the information flow from the supraspinal centers with the afferent input to generate the neural codes that drive the human skeletal muscles. The muscles transform the neural drive they receive from alpha motor neurons into motor unit action potentials (electrical activity) and force. Thus, the output of the spinal cord circuitries can be examined noninvasively by measuring the electrical activity of skeletal muscles at the surface of the skin i.e. the surface electromyogram (EMG). The recorded multi-muscle EMG activity pattern is generated by mixing processes of neural sources that need to be identified from the recorded signals themselves, with minimal or no a priori information available. Recently, multichannel source separation techniques that rely minimally on a priori knowledge of the mixing process have been developed and successfully applied to surface EMG. They act at different scales of information extraction to identify: (a) the activation signals shared by synergistic skeletal muscles, (b) the specific neural activation of individual muscles, separating it from that of nearby muscles i.e. from crosstalk, and (c) the spike trains of the active motor neurons. This review discusses the assumptions made by these methods, the challenges and limitations, as well as examples of their current applications.
脊髓回路将来自脊髓上中枢的信息流与传入输入相结合,生成驱动人体骨骼肌的神经代码。肌肉将它们从α运动神经元接收到的神经驱动转化为运动单位动作电位(电活动)和力。因此,可以通过测量皮肤表面骨骼肌的电活动(即表面肌电图(EMG))来非侵入性地检查脊髓回路的输出。记录的多肌肉 EMG 活动模式是由需要从记录信号本身中识别的神经源混合过程产生的,可用的先验信息最小或没有。最近,已经开发出了依赖于混合过程的先验知识最小的多通道源分离技术,并已成功应用于表面 EMG。它们在不同的信息提取尺度上作用,以识别:(a)协同骨骼肌共享的激活信号,(b)单个肌肉的特定神经激活,将其与附近肌肉(即串扰)分离,以及(c)活跃运动神经元的尖峰列车。这篇综述讨论了这些方法的假设、挑战和局限性,以及它们当前应用的示例。