Center for Consciousness Science and Department of Anesthesiology, University of Michigan Medical School, USA.
Department of Physics, Pohang University of Science and Technology, Pohang, Republic of Korea.
Sci Rep. 2017 Apr 20;7:46606. doi: 10.1038/srep46606.
Identifying how spatially distributed information becomes integrated in the brain is essential to understanding higher cognitive functions. Previous computational and empirical studies suggest a significant influence of brain network structure on brain network function. However, there have been few analytical approaches to explain the role of network structure in shaping regional activities and directionality patterns. In this study, analytical methods are applied to a coupled oscillator model implemented in inhomogeneous networks. We first derive a mathematical principle that explains the emergence of directionality from the underlying brain network structure. We then apply the analytical methods to the anatomical brain networks of human, macaque, and mouse, successfully predicting simulation and empirical electroencephalographic data. The results demonstrate that the global directionality patterns in resting state brain networks can be predicted solely by their unique network structures. This study forms a foundation for a more comprehensive understanding of how neural information is directed and integrated in complex brain networks.
确定空间分布的信息如何在大脑中整合对于理解更高层次的认知功能至关重要。先前的计算和实证研究表明,大脑网络结构对大脑网络功能有重大影响。然而,很少有分析方法可以解释网络结构在塑造区域活动和方向性模式方面的作用。在这项研究中,分析方法被应用于在非均匀网络中实现的耦合振荡器模型。我们首先推导出一个数学原理,该原理解释了方向性如何从基础大脑网络结构中出现。然后,我们将分析方法应用于人类、猕猴和小鼠的解剖大脑网络,成功地预测了模拟和实证脑电图数据。结果表明,静息状态大脑网络的全局方向性模式可以仅通过其独特的网络结构来预测。这项研究为更全面地理解神经信息如何在复杂大脑网络中定向和整合奠定了基础。