可视化和探索动态多通道脑电相干网络

Chengtao Ji, J. V. D. Gronde, N. Maurits, J. Roerdink
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引用次数: 3

摘要

脑电图(EEG)相干网络是通过计算电极信号对之间的相干性作为频率的函数来构建的。相干网络的可视化可以提供对认知处理的意外模式的洞察,并帮助神经科学家了解大脑机制。然而,动态脑电相干网络的可视化对脑连通性的分析是一个挑战,特别是当需要考虑网络的空间结构时。在本文中,我们提出了这种动态网络的可视化框架的设计和实现。首先,从神经科学研究者那里收集了动态功能连接网络分析背景下支持典型任务的需求。在我们的设计中,我们考虑了网络节点群及其相应的空间位置,以可视化动态相干网络的演变。我们引入了一个增强的基于时间轴的表示,以提供功能单元(FUs)及其空间位置随时间演变的概述。这种表示可以帮助查看者识别功能连接和大脑区域之间的关系,以及在整个时间窗口中识别持久或短暂的功能连接模式。此外,我们修改了FU映射的表示,以便于在连续的FU映射之间比较节点的行为。我们的实现还支持交互式探索。我们的可视化设计的有用性是通过非正式的用户研究来评估的。我们收到的反馈表明,我们的设计很好地支持探索性分析任务。该方法可作为动态脑电相干网络完整分析前的预处理步骤。•应用计算→生命和医学科学;•以人为本→信息可视化;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualizing and Exploring Dynamic Multichannel EEG Coherence Networks
An electroencephalography (EEG) coherence network represents functional brain connectivity, and is constructed by calculating the coherence between pairs of electrode signals as a function of frequency. Visualization of coherence networks can provide insight into unexpected patterns of cognitive processing and help neuroscientists to understand brain mechanisms. However, visualizing dynamic EEG coherence networks is a challenge for the analysis of brain connectivity, especially when the spatial structure of the network needs to be taken into account. In this paper, we present a design and implementation of a visualization framework for such dynamic networks. First, requirements for supporting typical tasks in the context of dynamic functional connectivity network analysis were collected from neuroscience researchers. In our design, we consider groups of network nodes and their corresponding spatial location for visualizing the evolution of the dynamic coherence network. We introduce an augmented timeline-based representation to provide an overview of the evolution of functional units (FUs) and their spatial location over time. This representation can help the viewer to identify relations between functional connectivity and brain regions, as well as to identify persistent or transient functional connectivity patterns across the whole timewindow. In addition, we modified the FU map representation to facilitate comparison of the behavior of nodes between consecutive FU maps. Our implementation also supports interactive exploration. The usefulness of our visualization design was evaluated by an informal user study. The feedback we received shows that our design supports exploratory analysis tasks well. The method can serve as an preprocessing step before a complete analysis of dynamic EEG coherence networks. CCS Concepts •Applied computing → Life and medical sciences; •Human-centered computing → Information visualization;
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