College of Education Science, Hengyang Normal University, Hengyang 421002, China.
Mental Health Center, Yancheng Institute of Technology, Yancheng 224051, China.
Neural Plast. 2020 Sep 8;2020:8837615. doi: 10.1155/2020/8837615. eCollection 2020.
Task demands evoke an intrinsic functional network and flexibly engage multiple distributed networks. However, it is unclear how functional topologies dynamically reconfigure during task performance. Here, we selected the resting- and task-state (emotion and working-memory) functional connectivity data of 81 health subjects from the high-quality HCP data. We used the network-based statistic (NBS) toolbox and the Brain Connectivity Toolbox (BCT) to compute the topological features of functional networks for the resting and task states. Graph-theoretic analysis indicated that under high threshold, a small number of long-distance connections dominated functional networks of emotion and working memory that exhibit distinct long connectivity patterns. Correspondently, task-relevant functional nodes shifted their roles from within-module to between-module: the number of connector hubs (mainly in emotional networks) and kinless hubs (mainly in working-memory networks) increased while provincial hubs disappeared. Moreover, the global properties of assortativity, global efficiency, and transitivity decreased, suggesting that task demands break the intrinsic balance between local and global couplings among brain regions and cause functional networks which tend to be more separated than the resting state. These results characterize dynamic reconfiguration of large-scale distributed networks from resting state to task state and provide evidence for the understanding of the organization principle behind the functional architecture of task-state networks.
任务需求会激发内在的功能网络,并灵活地参与多个分布式网络。然而,目前尚不清楚在任务执行过程中功能拓扑结构是如何动态重新配置的。在这里,我们从高质量 HCP 数据中选择了 81 名健康受试者的静息态和任务态(情绪和工作记忆)功能连接数据。我们使用基于网络的统计(NBS)工具箱和脑连接工具箱(BCT)来计算静息态和任务态功能网络的拓扑特征。图论分析表明,在高阈值下,少量远距离连接主导着情绪和工作记忆的功能网络,表现出明显的长连接模式。相应地,与任务相关的功能节点从模块内转移到模块间:连接器枢纽(主要在情绪网络中)和无亲缘枢纽(主要在工作记忆网络中)的数量增加,而区域枢纽消失。此外,聚类系数、全局效率和传递性等全局属性降低,表明任务需求打破了大脑区域之间局部和全局耦合的内在平衡,导致功能网络比静息态更加分散。这些结果描述了从静息态到任务态的大规模分布式网络的动态重新配置,为理解任务态网络功能结构背后的组织原则提供了证据。