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Data-driven visualization of multichannel EEG coherence networks based on community structure analysis

机译:基于社区结构分析的多通道脑电相干网络的数据驱动可视化

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摘要

An electroencephalography (EEG) coherence network is a representation of functional brain connectivity, and is constructed by calculating the coherence between pairs of electrode signals as a function of frequency. Typical visualizations of coherence networks use a matrix representation with rows and columns representing electrodes and cells representing coherences between electrode signals, or a 2D node-link diagram with vertices representing electrodes and edges representing coherences. However, such representations do not allow an easy embedding of spatial information or they suffer from visual clutter, especially for multichannel EEG coherence networks. In this paper, a new method for data-driven visualization of multichannel EEG coherence networks is proposed to avoid the drawbacks of conventional methods. This method partitions electrodes into dense groups of spatially connected regions. It not only preserves spatial relationships between regions, but also allows an analysis of the functional connectivity within and between brain regions, which could be used to explore the relationship between functional connectivity and underlying brain structures. As an example application, the method is applied to the analysis of multichannel EEG coherence networks obtained from older and younger adults who perform a cognitive task. The proposed method can serve as a preprocessing step before a more detailed analysis of EEG coherence networks.
机译:脑电图(EEG)相干网络是功能性大脑连接性的一种表示,通过计算成对的电极信号之间的相干性作为频率的函数而构建。相干网络的典型可视化使用矩阵表示,其中行和列表示电极,而单元表示电极信号之间的相干性,或者二维节点链接图,其中顶点表示电极,而边缘表示相干性。然而,这样的表示不允许容易地嵌入空间信息,或者它们遭受视觉混乱,尤其是对于多通道EEG相干网络而言。为了避免传统方法的弊端,提出了一种新的基于数据的多通道脑电图相关网络可视化方法。该方法将电极分成空间连接区域的密集组。它不仅保留了区域之间的空间关系,而且还可以分析大脑区域内部和之间的功能连接性,这可用于探索功能连接性与基础大脑结构之间的关系。作为示例应用,该方法应用于从执行认知任务的成年人中获得的多通道EEG相干网络的分析。所提出的方法可以作为对EEG相干网络进行更详细分析之前的预处理步骤。

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