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A Graph Signal Processing Approach to Study High Density EEG Signals in Patients with Disorders of Consciousness

机译:图信号处理方法研究意识障碍患者的高密度脑电信号

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Graph signal processing (GSP) is a novel approach to analyse multi-dimensional neuroimaging data, constraining functional measures by structural characteristics in a single framework (i.e. graph signals). In this approach, functional time series are assigned to the vertices of the underlying weighted graph and GSP analysis is performed in each time point of the signal. Here we used GSP to study local brain connectivity changes in patients with disorders of consciousness based on resting state high density electroencephalography (hdEEG) recordings. Total variation of the graph signals is a measure of signal smoothness over the underlying graph. In this study, we constructed the underlying graph based on the geometrical distances between each electrode pairs in such a way that local smoothness of the signal can be studied. Total variation analysis in α-band showed that in the pathological states of altered consciousness, local short range communication of brain regions in this frequency band is stronger than in healthy states which shows that information is segregated in local regions in patients with disorders of consciousness.
机译:图形信号处理(GSP)是一种分析多维神经影像数据的新颖方法,它通过单个框架中的结构特征(即图形信号)来限制功能性度量。在这种方法中,将功能时间序列分配给基础加权图的顶点,并在信号的每个时间点执行GSP分析。在这里,我们基于静止状态高密度脑电图(hdEEG)记录,使用GSP研究意识障碍患者的局部大脑连通性变化。图形信号的总变化是对基础图形上信号平滑度的度量。在这项研究中,我们基于每个电极对之间的几何距离构造了基础图,从而可以研究信号的局部平滑度。 α波段的总变异分析表明,在意识改变的病理状态下,该频带中脑区域的局部短距离通讯比健康状态下的强,这表明意识障碍患者的信息在局部区域隔离。

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