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Electroencephalogram–Electromyography Coupling Analysis in Stroke Based on Symbolic Transfer Entropy

机译:基于符号转移熵的脑卒中脑电图耦合分析

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摘要

The coupling strength between electroencephalogram (EEG) and electromyography (EMG) signals during motion control reflects the interaction between the cerebral motor cortex and muscles. Therefore, neuromuscular coupling characterization is instructive in assessing motor function. In this study, to overcome the limitation of losing the characteristics of signals in conventional time series symbolization methods, a variable scale symbolic transfer entropy (VS-STE) analysis approach was proposed for corticomuscular coupling evaluation. Post-stroke patients (n = 5) and healthy volunteers (n = 7) were recruited and participated in various tasks (left and right hand gripping, elbow bending). The proposed VS-STE was employed to evaluate the corticomuscular coupling strength between the EEG signal measured from the motor cortex and EMG signal measured from the upper limb in both the time-domain and frequency-domain. Results showed a greater strength of the bi-directional (EEG-to-EMG and EMG-to-EEG) VS-STE in post-stroke patients compared to healthy controls. In addition, the strongest EEG–EMG coupling strength was observed in the beta frequency band (15–35 Hz) during the upper limb movement. The predefined coupling strength of EMG-to-EEG in the affected side of the patient was larger than that of EEG-to-EMG. In conclusion, the results suggested that the corticomuscular coupling is bi-directional, and the proposed VS-STE can be used to quantitatively characterize the non-linear synchronization characteristics and information interaction between the primary motor cortex and muscles.
机译:运动控制期间脑电图(EEG)和肌电图(EMG)信号之间的耦合强度反映了大脑运动皮层和肌肉之间的相互作用。因此,神经肌肉耦合特性对评估运动功能具有指导意义。在这项研究中,为克服传统时间序列符号化方法失去信号特性的局限性,提出了一种可变尺度的符号转移熵(VS-STE)分析方法,用于皮层电磁耦合评估。招募了卒中后患者(n = 5)和健康志愿者(n = 7)并参加了各种任务(左右手抓握,肘部弯曲)。提出的VS-STE用于在时域和频域中评估从运动皮层测量的EEG信号和从上肢测量的EMG信号之间的皮层耦合强度。结果显示,与健康对照组相比,卒中后患者的双向(EEG-EMG和EMG-EEG)VS-STE强度更高。此外,在上肢运动期间,在β频段(15–35 Hz)观察到最强的EEG–EMG耦合强度。在患者的患侧,EMG与EEG的预定耦合强度大于EEG与EMG的耦合强度。总之,结果表明皮层-皮层耦合是双向的,所提出的VS-STE可用于定量表征初级运动皮层和肌肉之间的非线性同步特性和信息交互。

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