Division of Intelligent and Bio-mimetic Machinery, The State Key Laboratory of Tribology, Tsinghua University, Beijing, People's Republic of China.
School of Clinical Medicine, Tsinghua University, Beijing, People's Republic of China.
J Neural Eng. 2023 May 5;20(3). doi: 10.1088/1741-2552/accd9b.
. Corticomuscular coherence (CMC) is widely used to detect and quantify the coupling between motor cortex and effector muscles. It is promisingly used in human-machine interaction (HMI) supported rehabilitation training to promote the closed-loop motor control for stroke patients. However, suffering from weak coherence features and low accuracy in contingent neurofeedback, its application to HMI rehabilitation robots is currently limited. In this paper, we propose the concept of spatial-temporal CMC (STCMC), which is the coherence by refining CMC with delay compensation and spatial optimization.. The proposed STCMC method measures the coherence between electroencephalogram (EEG) and electromyogram (EMG) in the multivariate spaces. Specifically, we combined delay compensation and spatial optimization to maximize the absolute value of the coherence. Then, we tested the reliability and effectiveness of STCMC on neurophysiological data of force tracking tasks.. Compared with CMC, STCMC not only enhanced the coherence significantly between brain and muscle signals, but also produced higher classification accuracy. Further analysis showed that temporal and spatial parameters estimated by the STCMC reflected more detailed brain topographical patterns, which emphasized the different roles between the contralateral and ipsilateral hemisphere.. This study integrates delay compensation and spatial optimization to give a new perspective for corticomuscular coupling analysis. It is also feasible to design robotic neurorehabilitation paradigms by the proposed method.
皮质肌层相干性(CMC)被广泛用于检测和量化运动皮层与效应器肌肉之间的耦合。它在人机交互(HMI)支持的康复训练中具有广阔的应用前景,可以促进脑卒中患者的闭环运动控制。然而,由于其在神经反馈中的相干特征较弱且精度较低,其在 HMI 康复机器人中的应用目前受到限制。在本文中,我们提出了时空皮质肌层相干性(STCMC)的概念,这是通过延迟补偿和空间优化来细化 CMC 的相干性。所提出的 STCMC 方法在多变量空间中测量脑电图(EEG)和肌电图(EMG)之间的相干性。具体来说,我们结合了延迟补偿和空间优化,以最大化相干性的绝对值。然后,我们在力跟踪任务的神经生理数据上测试了 STCMC 的可靠性和有效性。与 CMC 相比,STCMC 不仅显著增强了大脑和肌肉信号之间的相干性,而且产生了更高的分类准确性。进一步的分析表明,由 STCMC 估计的时间和空间参数反映了更详细的大脑拓扑模式,强调了对侧和同侧半球之间的不同作用。本研究将延迟补偿和空间优化相结合,为皮质肌层耦合分析提供了新的视角。该方法也可用于设计机器人神经康复范式。