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A Multivariate Granger Causality Concept towards Full Brain Functional Connectivity

机译:面向全脑功能连通性的多元Granger因果关系概念

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摘要

Detecting changes of spatially high-resolution functional connectivity patterns in the brain is crucial for improving the fundamental understanding of brain function in both health and disease, yet still poses one of the biggest challenges in computational neuroscience. Currently, classical multivariate Granger Causality analyses of directed interactions between single process components in coupled systems are commonly restricted to spatially low- dimensional data, which requires a pre-selection or aggregation of time series as a preprocessing step. In this paper we propose a new fully multivariate Granger Causality approach with embedded dimension reduction that makes it possible to obtain a representation of functional connectivity for spatially high-dimensional data. The resulting functional connectivity networks may consist of several thousand vertices and thus contain more detailed information compared to connectivity networks obtained from approaches based on particular regions of interest. Our large scale Granger Causality approach is applied to synthetic and resting state fMRI data with a focus on how well network community structure, which represents a functional segmentation of the network, is preserved. It is demonstrated that a number of different community detection algorithms, which utilize a variety of algorithmic strategies and exploit topological features differently, reveal meaningful information on the underlying network module structure.
机译:检测大脑中空间高分辨率功能连接模式的变化对于增进对健康和疾病中脑功能的基本了解至关重要,但仍构成计算神经科学的最大挑战之一。当前,对耦合系统中单个过程组件之间的定向交互作用的经典多元Granger因果关系分析通常限于空间低维数据,这需要对时间序列进行预选择或汇总作为预处理步骤。在本文中,我们提出了一种新的完全多维Granger因果关系方法,该方法具有减少的嵌入维数,从而有可能获得空间高维数据的功能连通性表示。与从基于特定兴趣区域的方法获得的连接网络相比,所得的功能连接网络可能包含数千个顶点,因此包含更详细的信息。我们的大规模Granger因果关系方法应用于合成和静态fMRI数据,重点关注如何保留代表网络功能性划分的网络社区结构。结果表明,许多不同的社区检测算法利用各种算法策略并以不同的方式利用拓扑特征,它们揭示了有关底层网络模块结构的有意义的信息。

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