论文标题
层次网络组织和功能连接模型中新兴拓扑的持久性
Persistence of hierarchical network organization and emergent topologies in models of functional connectivity
论文作者
论文摘要
功能网络提供了大脑活动模式的拓扑描述,因为它们源于突触连接的基本解剖或结构网络上神经活动的传播。后者众所周知,以分层和模块化方式组织。虽然假定结构网络会塑造其功能性对应物,但还假设大脑动力学的变化伴随着功能连通性的转换。在这项计算研究中,我们介绍了一种新的方法,以监测功能网络中层次顺序的持久性和分解,该方法是由合成和真实结构连接组上活动的计算模型产生的。我们表明,如果将动态设置为与最佳处理能力和正常大脑功能相关的准临界状态,而在其他(超临界)动力学方案中,则层次连接以持久的方式出现在功能网络中。我们的结果为研究最佳神经计算结构和过程提供了重要的线索,这些结构和过程能够控制活动和信息流的模式。我们得出的结论是,功能连接模式通过继承基础结构架构的层次结构组织之间的本地专业处理(即隔离)和全球集成之间实现最佳平衡。
Functional networks provide a topological description of activity patterns in the brain, as they stem from the propagation of neural activity on the underlying anatomical or structural network of synaptic connections. This latter is well known to be organized in hierarchical and modular way. While it is assumed that structural networks shape their functional counterparts, it is also hypothesized that alterations of brain dynamics come with transformations of functional connectivity. In this computational study, we introduce a novel methodology to monitor the persistence and breakdown of hierarchical order in functional networks, generated from computational models of activity spreading on both synthetic and real structural connectomes. We show that hierarchical connectivity appears in functional networks in a persistent way if the dynamics is set to be in the quasi-critical regime associated with optimal processing capabilities and normal brain function, while it breaks down in other (supercritical) dynamical regimes, often associated with pathological conditions. Our results offer important clues for the study of optimal neurocomputing architectures and processes, which are capable of controlling patterns of activity and information flow. We conclude that functional connectivity patterns achieve optimal balance between local specialized processing (i.e. segregation) and global integration by inheriting the hierarchical organization of the underlying structural architecture.