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Partial covariance based functional connectivity computation using Ledoit-Wolf covariance regularization

机译:使用Ledoit-Wolf协方差正则化的基于部分协方差的功能连通性计算

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摘要

Functional connectivity refers to shared signals among brain regions and is typically assessed in a task free state. Functional connectivity commonly is quantified between signal pairs using Pearson correlation. However, resting-state fMRI is a multivariate process exhibiting a complicated covariance structure. Partial covariance assesses the unique variance shared between two brain regions excluding any widely shared variance, hence is appropriate for the analysis of multivariate fMRI datasets. However, calculation of partial covariance requires inversion of the covariance matrix, which, in most functional connectivity studies, is not invertible owing to rank deficiency. Here we apply Ledoit-Wolf shrinkage (L2 regularization) to invert the high dimensional BOLD covariance matrix. We investigate the network organization and brain-state dependence of partial covariance-based functional connectivity. Although RSNs are conventionally defined in terms of shared variance, removal of widely shared variance, surprisingly, improved the separation of RSNs in a spring embedded graphical model. This result suggests that pair-wise unique shared variance plays a heretofore unrecognized role in RSN covariance organization. In addition, application of partial correlation to fMRI data acquired in the eyes open vs. eyes closed states revealed focal changes in uniquely shared variance between the thalamus and visual cortices. This result suggests that partial correlation of resting state BOLD time series reflect functional processes in addition to structural connectivity.
机译:功能连通性是指大脑区域之间共享的信号,通常在无任务状态下进行评估。通常使用Pearson相关来量化信号对之间的功能连通性。然而,静止状态功能磁共振成像是一个多变量过程,表现出复杂的协方差结构。部分协方差评估两个大脑区域之间共享的唯一方差,不包括任何广泛共享的方差,因此适用于分析多元fMRI数据集。但是,部分协方差的计算需要协方差矩阵的求逆,在大多数功能连通性研究中,由于秩不足而无法求逆。在这里,我们应用Ledoit-Wolf收缩(L2正则化)来反转高维BOLD协方差矩阵。我们调查基于部分协方差的功能连接的网络组织和脑状态依赖性。尽管传统上是根据共享方差定义RSN的,但令人惊讶的是,消除广泛共享方差的方法改善了Spring嵌入式图形模型中RSN的分离。该结果表明,成对的唯一共享方差在RSN协方差组织中起着前所未有的作用。此外,将部分相关性应用于在睁眼与闭眼状态下获取的fMRI数据中,可以揭示丘脑和视皮层之间唯一共有的方差的局灶性变化。该结果表明,静息状态BOLD时间序列的部分相关性反映了除结构连通性以外的功能过程。

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