Department of Cognitive Neuroscience, Radboud University Nijmegen Medical Centre The Netherlands.
Front Neuroinform. 2007 Nov 30;1:2. doi: 10.3389/neuro.11.002.2007. eCollection 2007.
Recent applications of network theory to brain networks as well as the expanding empirical databases of brain architecture spawn an interest in novel techniques for analyzing connectivity patterns in the brain. Treating individual brain structures as nodes in a directed graph model permits the application of graph theoretical concepts to the analysis of these structures within their large-scale connectivity networks. In this paper, we explore the application of concepts from graph and game theory toward this end. Specifically, we utilize the Shapley value principle, which assigns a rank to players in a coalition based upon their individual contributions to the collective profit of that coalition, to assess the contributions of individual brain structures to the graph derived from the global connectivity network. We report Shapley values for variations of a prefrontal network, as well as for a visual cortical network, which had both been extensively investigated previously. This analysis highlights particular nodes as strong or weak contributors to global connectivity. To understand the nature of their contribution, we compare the Shapley values obtained from these networks and appropriate controls to other previously described nodal measures of structural connectivity. We find a strong correlation between Shapley values and both betweenness centrality and connection density. Moreover, a stepwise multiple linear regression analysis indicates that approximately 79% of the variance in Shapley values obtained from random networks can be explained by betweenness centrality alone. Finally, we investigate the effects of local lesions on the Shapley ratings, showing that the present networks have an immense structural resistance to degradation. We discuss our results highlighting the use of such measures for characterizing the organization and functional role of brain networks.
网络理论在脑网络中的最新应用以及大脑结构的扩展经验数据库激发了人们对分析大脑连接模式的新方法的兴趣。将单个脑结构视为有向图模型中的节点,允许将图论概念应用于这些结构在其大规模连接网络中的分析。在本文中,我们探索了将图论和博弈论的概念应用于这一目的。具体来说,我们利用 Shapley 值原理,根据他们对联盟集体利润的个人贡献,为联盟中的玩家分配一个排名,来评估单个脑结构对从全局连接网络中得出的图的贡献。我们报告了前额叶网络和视觉皮层网络的 Shapley 值变化,这两个网络以前都有过广泛的研究。这种分析突出了特定节点作为全局连接的强或弱贡献者。为了了解它们贡献的性质,我们将从这些网络和适当的对照中获得的 Shapley 值与其他以前描述的结构连接的节点度量进行比较。我们发现 Shapley 值与介数中心度和连接密度之间存在很强的相关性。此外,逐步多元线性回归分析表明,随机网络中获得的 Shapley 值的方差约有 79%可以仅由介数中心度来解释。最后,我们研究了局部损伤对 Shapley 评分的影响,表明目前的网络具有巨大的结构抗降解能力。我们讨论了我们的结果,强调了使用这些措施来描述大脑网络的组织和功能作用。