Kitano Katsunori, Fukai Tomoki
Department of Human and Computer Intelligence, Ritsumeikan University, 1-1-1 Nojihigashi, Kusatsu, Shiga 525-8577, Japan.
J Comput Neurosci. 2007 Oct;23(2):237-50. doi: 10.1007/s10827-007-0030-1. Epub 2007 Apr 6.
Dynamical behavior of a biological neuronal network depends significantly on the spatial pattern of synaptic connections among neurons. While neuronal network dynamics has extensively been studied with simple wiring patterns, such as all-to-all or random synaptic connections, not much is known about the activity of networks with more complicated wiring topologies. Here, we examined how different wiring topologies may influence the response properties of neuronal networks, paying attention to irregular spike firing, which is known as a characteristic of in vivo cortical neurons, and spike synchronicity. We constructed a recurrent network model of realistic neurons and systematically rewired the recurrent synapses to change the network topology, from a localized regular and a "small-world" network topology to a distributed random network topology. Regular and small-world wiring patterns greatly increased the irregularity or the coefficient of variation (Cv) of output spike trains, whereas such an increase was small in random connectivity patterns. For given strength of recurrent synapses, the firing irregularity exhibited monotonous decreases from the regular to the random network topology. By contrast, the spike coherence between an arbitrary neuron pair exhibited a non-monotonous dependence on the topological wiring pattern. More precisely, the wiring pattern to maximize the spike coherence varied with the strength of recurrent synapses. In a certain range of the synaptic strength, the spike coherence was maximal in the small-world network topology, and the long-range connections introduced in this wiring changed the dependence of spike synchrony on the synaptic strength moderately. However, the effects of this network topology were not really special in other properties of network activity.
生物神经元网络的动力学行为在很大程度上取决于神经元之间突触连接的空间模式。虽然已经广泛地研究了具有简单布线模式(如全对全或随机突触连接)的神经元网络动力学,但对于具有更复杂布线拓扑结构的网络活动了解甚少。在这里,我们研究了不同的布线拓扑结构如何影响神经元网络的反应特性,特别关注不规则的脉冲发放(这是体内皮层神经元的一个特征)和脉冲同步性。我们构建了一个真实神经元的循环网络模型,并系统地重新连接循环突触以改变网络拓扑结构,从局部规则和“小世界”网络拓扑结构到分布式随机网络拓扑结构。规则和小世界布线模式极大地增加了输出脉冲序列的不规则性或变异系数(Cv),而在随机连接模式中这种增加较小。对于给定的循环突触强度,脉冲发放的不规则性从规则网络拓扑到随机网络拓扑呈现单调下降。相比之下,任意神经元对之间的脉冲相干性对拓扑布线模式表现出非单调依赖性。更确切地说,使脉冲相干性最大化的布线模式随循环突触的强度而变化。在突触强度的一定范围内,小世界网络拓扑中的脉冲相干性最大,并且这种布线中引入的长程连接适度地改变了脉冲同步性对突触强度的依赖性。然而,这种网络拓扑结构在网络活动的其他特性方面并没有特别之处。