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Decoding Voluntary Movement of Single Hand Based on Analysis of Brain Connectivity by Using EEG Signals

机译:基于脑电信号脑连通性分析的单手自愿运动解码

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摘要

Research about decoding neurophysiological signals mainly aims to elucidate the details of human motion control from the perspective of neural activity. We performed brain connectivity analysis with EEG to propose a brain functional network (BFN) and used a feature extraction algorithm for decoding the voluntary hand movement of a subject. By analyzing the characteristic parameters obtained from the BFN, we extracted the most important electrode nodes and frequencies for identifying the direction of movement of a hand. The results demonstrated that the most sensitive EEG components were for frequencies delta, theta, and gamma1 from electrodes F4, F8, C3, Cz, C4, CP4, T3, and T4. Finally, we proposed a model for decoding voluntary movement of the right hand by using a hierarchical linear model (HLM). Through a voluntary hand movement experiment in a spiral trajectory, the Poisson coefficient between the measurement trajectory and the decoding trajectory was used as a test standard to compare the HLM with the traditional multiple linear regression model. It was found that the decoding model based on the HLM obtained superior results. This paper contributes a feature extraction method based on brain connectivity analysis that can mine more comprehensive feature information related to a specific mental state of a subject. The decoding model based on the HLM possesses a strong structure for data manipulation that facilitates precise decoding.
机译:关于神经生理信号解码的研究主要旨在从神经活动的角度阐明人类运动控制的细节。我们使用EEG进行了大脑连通性分析,提出了大脑功能网络(BFN),并使用特征提取算法对受试者的自愿手部运动进行了解码。通过分析从BFN获得的特征参数,我们提取了最重要的电极节点和频率,以识别手的运动方向。结果表明,最敏感的EEG分量是来自电极F4,F8,C3,Cz,C4,CP4,T3和T4的频率δ,θ和γ1。最后,我们提出了一种使用分层线性模型(HLM)解码右手自愿运动的模型。通过在螺旋轨迹上的自愿手部运动实验,将测量轨迹与解码轨迹之间的泊松系数用作测试标准,以将HLM与传统的多元线性回归模型进行比较。发现基于HLM的解码模型获得了优异的结果。本文提出了一种基于大脑连通性分析的特征提取方法,该方法可以挖掘与受试者特定心理状态有关的更全面的特征信息。基于HLM的解码模型拥有强大的数据处理结构,可促进精确解码。

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