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Graph Embeddings of Dynamic Functional Connectivity Reveal Discriminative Patterns of Task Engagement in HCP Data

机译:动态功能连接的图形嵌入揭示了HCP数据中任务参与的判别模式

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There is increasing evidence to suggest functional connectivity networks are non-stationary. This has lead to the development of novel methodologies with which to accurately estimate time-varying functional connectivity networks. Many of these methods provide unprecedented temporal granularity by estimating a functional connectivity network at each point in time, resulting in high-dimensional output which can be studied in a variety of ways. One possible method is to employ graph embedding algorithms. Such algorithms effectively map estimated networks from high-dimensional spaces down to a low dimensional vector space, thus facilitating visualization, interpretation and classification. In this work, the dynamic properties of functional connectivity are studied using working memory task data from the Human connect me Project. A recently proposed method is employed to estimate dynamic functional connectivity networks. The results are subsequently analyzed using two graph embedding methods based on linear projections. These methods are shown to provide informative embeddings that can be directly interpreted as functional connectivity networks.
机译:越来越多的证据表明功能连接网络不是固定的。这导致了新颖的方法学的发展,通过这些方法可以准确地估计时变的功能连接网络。通过估计每个时间点的功能连接网络,这些方法中的许多方法提供了空前的时间粒度,从而产生了可以以多种方式研究的高维输出。一种可能的方法是采用图形嵌入算法。这样的算法有效地将估计的网络从高维空间映射到低维向量空间,从而有助于可视化,解释和分类。在这项工作中,使用“人类连接我”项目中的工作记忆任务数据来研究功能连接的动态特性。采用最近提出的方法来估计动态功能连接网络。随后使用基于线性投影的两种图形嵌入方法对结果进行分析。这些方法显示提供了可直接解释为功能连接网络的信息嵌入。

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