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Disrupted Brain Functional Organization in Epilepsy Revealed by Graph Theory Analysis

机译:图论分析揭示了癫痫患者大脑功能的破坏

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摘要

The human brain is a complex and dynamic system that can be modeled as a large-scale brain network to better understand the reorganizational changes secondary to epilepsy. In this study, we developed a brain functional network model using graph theory methods applied to resting-state fMRI data acquired from a group of epilepsy patients and age- and gender-matched healthy controls. A brain functional network model was constructed based on resting-state functional connectivity. A minimum spanning tree combined with proportional thresholding approach was used to obtain sparse connectivity matrices for each subject, which formed the basis of brain networks. We examined the brain reorganizational changes in epilepsy thoroughly at the level of the whole brain, the functional network, and individual brain regions. At the whole-brain level, local efficiency was significantly decreased in epilepsy patients compared with the healthy controls. However, global efficiency was significantly increased in epilepsy due to increased number of functional connections between networks (although weakly connected). At the functional network level, there were significant proportions of newly formed connections between the default mode network and other networks and between the subcortical network and other networks. There was a significant proportion of decreasing connections between the cingulo-opercular task control network and other networks. Individual brain regions from different functional networks, however, showed a distinct pattern of reorganizational changes in epilepsy. These findings suggest that epilepsy alters brain efficiency in a consistent pattern at the whole-brain level, yet alters brain functional networks and individual brain regions differently.
机译:人脑是一个复杂而动态的系统,可以将其建模为大规模的大脑网络,以更好地了解癫痫病继发的重组变化。在这项研究中,我们使用图论方法开发了一种大脑功能网络模型,该模型应用于从一组癫痫患者以及年龄和性别匹配的健康对照中获得的静息状态fMRI数据。基于休息状态功能连接性构建了大脑功能网络模型。最小生成树结合比例阈值方法被用于获得每个对象的稀疏连接矩阵,这构成了大脑网络的基础。我们在全脑,功能网络和单个脑区域的水平上彻底检查了癫痫的大脑重组变化。在全脑水平上,与健康对照组相比,癫痫患者的局部效率显着降低。但是,由于网络之间功能连接数量的增加(尽管连接较弱),癫痫的整体效率显着提高。在功能网络级别,默认模式网络和其他网络之间以及皮层下网络和其他网络之间有相当一部分新建立的连接。耳鞘-任务控制网络与其他网络之间的连接减少的比例很大。但是,来自不同功能网络的单个大脑区域显示出癫痫的重组变化的独特模式。这些发现表明,癫痫症在全脑水平上以一致的方式改变了大脑的效率,但改变了大脑的功能网络和单个大脑区域的方式却不同。

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