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Identifying Structural Brain Networks from Functional Connectivity: A Network Deconvolution Approach

机译:从功能连接性识别结构性脑网络:网络反卷积方法

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We address the problem of identifying structural brain networks from signals measured by resting-state functional magnetic resonance imaging (fMRI). To this end, we model functional brain activity as graph signals generated through a linear diffusion process on the unknown structural network. While this is admittedly an oversimplification of the complex mechanisms at work in the brain, recent studies have shown it is an accurate generative model for the second-order statistics of functional signals. We show the diffusion model implies that the signal covariance matrix (a.k.a. functional connectivity) is an unknown polynomial function of the structural network's adjacency matrix. Accordingly, we advocate a network deconvolution approach whereby we: (i) use the fMRI signals to estimate the eigenvectors of the structural network from those of the empirical covariance; and (ii) solve a convex, sparsity-regularized inverse problem to recover the eigenvalues that were obscured by diffusion. The inferred structural networks capture some key patterns that match known pathology in attention deficit/hyper activity disorder. We also offer preliminary evidence supporting their role as potential biomarkers for subject diagnosis and classification.
机译:我们解决了从静止状态功能磁共振成像(fMRI)测量的信号中识别结构性大脑网络的问题。为此,我们将功能性大脑活动建模为通过未知结构网络上的线性扩散过程生成的图形信号。尽管公认这是对大脑中起作用的复杂机制的过度简化,但最近的研究表明,它是用于功能信号的二阶统计的准确生成模型。我们显示出扩散模型意味着信号协方差矩阵(也称为功能连通性)是结构网络邻接矩阵的未知多项式函数。因此,我们提倡一种网络反卷积方法,其中:(i)使用fMRI信号从经验协方差的特征向量中估计结构网络的特征向量; (ii)解决凸性稀疏正则化的逆问题,以恢复被扩散掩盖的特征值。推断的结构网络捕获了与已知缺陷/注意力过度活跃症中的病理学相匹配的一些关键模式。我们还提供了初步的证据来支持它们作为受试者诊断和分类的潜在生物标志物的作用。

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