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Mapping the Voxel-Wise Effective Connectome in Resting State fMRI

机译:在静止状态fMRI中绘制Voxel-Wise有效连接套图

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摘要

A network approach to brain and dynamics opens new perspectives towards understanding of its function. The functional connectivity from functional MRI recordings in humans is widely explored at large scale, and recently also at the voxel level. The networks of dynamical directed connections are far less investigated, in particular at the voxel level. To reconstruct full brain effective connectivity network and study its topological organization, we present a novel approach to multivariate Granger causality which integrates information theory and the architecture of the dynamical network to efficiently select a limited number of variables. The proposed method aggregates conditional information sets according to community organization, allowing to perform Granger causality analysis avoiding redundancy and overfitting even for high-dimensional and short datasets, such as time series from individual voxels in fMRI. We for the first time depicted the voxel-wise hubs of incoming and outgoing information, called Granger causality density (GCD), as a complement to previous repertoire of functional and anatomical connectomes. Analogies with these networks have been presented in most part of default mode network; while differences suggested differences in the specific measure of centrality. Our findings could open the way to a new description of global organization and information influence of brain function. With this approach is thus feasible to study the architecture of directed networks at the voxel level and individuating hubs by investigation of degree, betweenness and clustering coefficient.
机译:大脑和动力学的网络方法为了解其功能开辟了新的视角。广泛地研究了人类的功能性MRI记录的功能连接性,最近也在体素级别上进行了探索。对于动态定向连接的网络,尤其是在体素级别,研究很少。为了重建全脑有效的连通性网络并研究其拓扑结构,我们提出了一种新的多元Granger因果关系方法,该方法将信息理论和动态网络的架构相集成,以有效地选择有限数量的变量。所提出的方法根据社区组织聚集条件信息集,从而允许执行Granger因果分析,从而避免冗余和过度拟合,即使对于高维和短数据集(例如来自fMRI中单个体素的时间序列)。我们第一次描述了传入和传出信息的体素方向枢纽,称为格兰杰因果密度(GCD),作为对先前功能和解剖学连接组的补充。在默认模式网络的大部分内容中都提供了与这些网络的类比。而差异则表明在中心度的具体衡量标准上存在差异。我们的发现可能为全球组织和大脑功能信息影响的新描述开辟道路。因此,通过研究程度,中间性和聚类系数,使用这种方法在体素级别研究有向网络的体系结构并区分集线器是可行的。

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