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EIGENMAPS OF DYNAMIC FUNCTIONAL CONNECTIVITY: VOXEL-LEVEL DOMINANT PATTERNS THROUGH EIGENVECTOR CENTRALITY

机译:动态功能连通性的eIgenmaps:Voxel级主导模式通过特征传染媒介中心

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Dynamic functional connectivity (dFC) based on resting-state functional magnetic resonance imaging (fMRI) explores the ongoing temporal configuration of brain networks. To reduce the large dimensionality of the data, conventional dFC analysis usually foresees an atlasing step, in which the brain is parcellated into specific regions of interest, and voxels' time-courses are spatially averaged within these regions before assessing connectivity. In this study, we addressed for the first time the exploration of dFC at the voxel level; i.e., without the use of any brain parcellation prior to the connectivity analysis. We used a sliding-window approach and extracted window-specific dominant patterns. To overcome the limitations due to the huge size of voxelwise connectivity matrices, we adopted the fast eigenvector centrality method with some adaptations to make it suitable for the dFC framework. After concatenation of the dominant patterns of all subjects, principal component analysis (PCA) was used to extract the eigenmaps; i.e., the most recurring voxelwise brain patterns characterizing resting-state. The obtained eigenmaps appeared consistent with previously observed resting-state eigenconnectivities, but with the substantial advantage of characterizing brain networks at the voxel level without the need of an atlas. The effect of the connection-wise temporal demeaning, usually performed in dFC analysis to remove the influence of static connectivity, was explored and does not seem to have an influence when voxelwise brain patterns are targeted.
机译:基于静态功能磁共振成像(FMRI)的动态功能连接(DFC)探讨了大脑网络的持续时间配置。为了减少数据的大维度,常规的DFC分析通常预见到设定步骤,其中大脑被锁定为特定的感兴趣区域,并且在评估连接之前,体素的时间课程在这些区域内平均平均值。在本研究中,我们首次解决了DFC在体素水平的探索;即,在连通性分析之前,不使用任何脑部局部。我们使用了滑动窗口方法并提取了特定于窗口的主导模式。为了克服由于Voxelwise连接矩阵的巨大尺寸导致的限制,我们采用了快速的特征向量中心方法,具有一些适应性,使其适用于DFC框架。在串联所有受试者的主要模式后,主要成分分析(PCA)用于提取特征组件;即,最重复的voxelWise脑模式表征休息状态。所获得的eIgenmaps似乎与先前观察到的静息状态Eigenc Connectivitive一致,但是在没有地图集的情况下表征体素水平的脑网络的实质性优势。探讨了连接明智的时间贬低,通常在DFC分析中进行以消除静态连接的影响,似乎在靶向血管脑模式时似乎没有影响。

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