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Brain network eigenmodes provide a robust and compact representation of the structural connectome in health and disease

机译:脑网络本征模提供健康和疾病中结构连接体的强大而紧凑的表示

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摘要

Recent research has demonstrated the use of the structural connectome as a powerful tool to characterize the network architecture of the brain and potentially generate biomarkers for neurologic and psychiatric disorders. In particular, the anatomic embedding of the edges of the cerebral graph have been postulated to elucidate the relative importance of white matter tracts to the overall network connectivity, explaining the varying effects of localized white matter pathology on cognition and behavior. Here, we demonstrate the use of a linear diffusion model to quantify the impact of these perturbations on brain connectivity. We show that the eigenmodes governing the dynamics of this model are strongly conserved between healthy subjects regardless of cortical and sub-cortical parcellations, but show significant, interpretable deviations in improperly developed brains. More specifically, we investigated the effect of agenesis of the corpus callosum (AgCC), one of the most common brain malformations to identify differences in the effect of virtual corpus callosotomies and the neurodevelopmental disorder itself. These findings, including the strong correspondence between regions of highest importance from graph eigenmodes of network diffusion and nexus regions of white matter from edge density imaging, show converging evidence toward understanding the relationship between white matter anatomy and the structural connectome.
机译:最近的研究表明,使用结构连接体作为强有力的工具来表征大脑的网络结构,并有可能产生神经和精神疾病的生物标志物。尤其是,假设大脑图边缘的解剖嵌入是为了阐明白质束对整个网络连通性的相对重要性,从而解释了局部白质病理对认知和行为的不同影响。在这里,我们演示了使用线性扩散模型来量化这些扰动对大脑连接性的影响。我们显示,不管皮质和皮层下的细胞分裂如何,控制该模型动力学的本征模式在健康受试者之间都非常保守,但是在发育不正常的大脑中显示出明显的,可解释的偏差。更具体地说,我们调查了call体发育不全(AgCC)的影响,后者是最常见的大脑畸形之一,用于识别虚拟体切开术和神经发育障碍本身的效果差异。这些发现,包括网络扩散图本征模式中最重要的区域与边缘密度成像中白质的联系区域之间的强烈对应关系,显示出越来越多的证据证明了理解白质解剖结构与结构连接体之间的关系。

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