论文标题
依赖路径的连通性,而不是模块化,始终预测结构大脑网络的可控性
Path-dependent connectivity, not modularity, consistently predicts controllability of structural brain networks
论文作者
论文摘要
人脑展示了丰富的沟通动态,被认为在其明显的社区结构中尤其深思熟虑。然而,结构性大脑网络中的社区结构与可以从中出现的交流动态之间的确切关系并不理解。除了洞悉网络系统的结构 - 功能关系外,这种理解是迈向以目标方式操纵大脑大规模动力学活动能力的关键一步。我们研究了社区结构在结构大脑网络的可控性中的作用。在区域层面上,我们发现某些社区结构的网络度量有时在统计上与线性可控性的度量相关。但是,我们然后证明这种关系取决于网络边缘权重的分布。我们通过使用具有不同中尺度体系结构和边缘权重分布的规范图模型进行数值模拟来强调社区结构与可控性之间关系的复杂性。最后,我们证明了加权子图中心性(一种扎根于图形频谱的度量,并捕获高阶图形结构)是可控性的更强,更一致的预测指标。我们的研究有助于理解大脑多样化的中尺度结构如何支持瞬时交流动态。
The human brain displays rich communication dynamics that are thought to be particularly well-reflected in its marked community structure. Yet, the precise relationship between community structure in structural brain networks and the communication dynamics that can emerge therefrom is not well-understood. In addition to offering insight into the structure-function relationship of networked systems, such an understanding is a critical step towards the ability to manipulate the brain's large-scale dynamical activity in a targeted manner. We investigate the role of community structure in the controllability of structural brain networks. At the region level, we find that certain network measures of community structure are sometimes statistically correlated with measures of linear controllability. However, we then demonstrate that this relationship depends on the distribution of network edge weights. We highlight the complexity of the relationship between community structure and controllability by performing numerical simulations using canonical graph models with varying mesoscale architectures and edge weight distributions. Finally, we demonstrate that weighted subgraph centrality, a measure rooted in the graph spectrum, and which captures higher-order graph architecture, is a stronger and more consistent predictor of controllability. Our study contributes to an understanding of how the brain's diverse mesoscale structure supports transient communication dynamics.