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Network diffusion accurately models the relationship between structural and functional brain connectivity networks

机译:网络扩散可准确模拟大脑结构与功能连接网络之间的关系

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摘要

The relationship between anatomic connectivity of large-scale brain networks and their functional connectivity is of immense importance and an area of active research. Previous attempts have required complex simulations which model the dynamics of each cortical region, and explore the coupling between regions as derived by anatomic connections. While much insight is gained from these non-linear simulations, they can be computationally taxing tools for predicting functional from anatomic connectivities. Little attention has been paid to linear models. Here we show that a properly designed linear model appears to be superior to previous non-linear approaches in capturing the brain’s long-range second order correlation structure that governs the relationship between anatomic and functional connectivities. We derive a linear network of brain dynamics based on graph diffusion, whereby the diffusing quantity undergoes a random walk on a graph. We test our model using subjects who underwent diffusion MRI and resting state fMRI. The network diffusion model applied to the structural networks largely predicts the correlation structures derived from their fMRI data, to a greater extent than other approaches. The utility of the proposed approach is that it can routinely be used to infer functional correlation from anatomic connectivity. And since it is linear, anatomic connectivity can also be inferred from functional data. The success of our model confirms the linearity of ensemble average signals in the brain, and implies that their long-range correlation structure may percolate within the brain via purely mechanistic processes enacted on its structural connectivity pathways.
机译:大规模大脑网络的解剖学连通性与其功能连通性之间的关系具有极其重要的意义,并且是一个活跃的研究领域。先前的尝试需要复杂的模拟,该模拟为每个皮质区域的动力学建模,并探索通过解剖学连接得出的区域之间的耦合。尽管从这些非线性仿真中获得了很多见识,但它们可以成为计算量大的工具,可以根据解剖学的连通性预测功能。很少关注线性模型。在这里,我们展示了一个设计合理的线性模型似乎在捕获大脑的远程二阶相关结构(该结构控制了解剖学和功能连接之间的关系)方面优于以前的非线性方法。我们基于图扩散得出脑动力学的线性网络,其中扩散量在图上经历随机游动。我们使用接受扩散MRI和静息状态fMRI的受试者测试我们的模型。与其他方法相比,应用于结构网络的网络扩散模型在很大程度上预测了从其功能磁共振成像数据得出的相关结构。所提出的方法的实用性在于它可以常规地用于从解剖学连通性推断功能相关性。而且由于它是线性的,因此还可以从功能数据中推断出解剖学连通性。我们模型的成功证实了大脑中整体平均信号的线性,并暗示了它们的远距离相关结构可能会通过作用于其结构连通性路径上的纯机械过程渗透到大脑中。

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