Research Institute of Intelligent Control and Systems, Harbin Institute of Technology, Harbin, China.
PLoS One. 2012;7(7):e41375. doi: 10.1371/journal.pone.0041375. Epub 2012 Jul 27.
Recent studies have detected hubs in neuronal networks using degree, betweenness centrality, motif and synchronization and revealed the importance of hubs in their structural and functional roles. In addition, the analysis of complex networks in different scales are widely used in physics community. This can provide detailed insights into the intrinsic properties of networks. In this study, we focus on the identification of controlling regions in cortical networks of cats' brain in microscopic, mesoscopic and macroscopic scales, based on single-objective evolutionary computation methods. The problem is investigated by considering two measures of controllability separately. The impact of the number of driver nodes on controllability is revealed and the properties of controlling nodes are shown in a statistical way. Our results show that the statistical properties of the controlling nodes display a concave or convex shape with an increase of the allowed number of controlling nodes, revealing a transition in choosing driver nodes from the areas with a large degree to the areas with a low degree. Interestingly, the community Auditory in cats' brain, which has sparse connections with other communities, plays an important role in controlling the neuronal networks.
最近的研究使用度、介数中心性、基元和同步性来检测神经元网络中的枢纽,并揭示了枢纽在其结构和功能作用中的重要性。此外,不同尺度的复杂网络分析在物理学界得到了广泛的应用。这可以为网络的内在特性提供详细的见解。在这项研究中,我们基于单目标进化计算方法,重点研究了基于微观、中观和宏观尺度的猫脑皮质网络中控制区域的识别。分别考虑了两种可控性度量来研究这个问题。揭示了驱动节点数量对可控性的影响,并以统计的方式展示了控制节点的特性。我们的结果表明,随着允许控制节点数量的增加,控制节点的统计特性呈现出凹形或凸形,这表明在选择驱动节点时,从具有大度数的区域向具有低度数的区域发生了转变。有趣的是,猫脑中的听觉区与其他区的连接稀疏,但在控制神经元网络方面起着重要作用。