Bernstein Center Freiburg, Freiburg, Germany.
PLoS Comput Biol. 2011 May;7(5):e1002059. doi: 10.1371/journal.pcbi.1002059. Epub 2011 May 19.
Networks are becoming a ubiquitous metaphor for the understanding of complex biological systems, spanning the range between molecular signalling pathways, neural networks in the brain, and interacting species in a food web. In many models, we face an intricate interplay between the topology of the network and the dynamics of the system, which is generally very hard to disentangle. A dynamical feature that has been subject of intense research in various fields are correlations between the noisy activity of nodes in a network. We consider a class of systems, where discrete signals are sent along the links of the network. Such systems are of particular relevance in neuroscience, because they provide models for networks of neurons that use action potentials for communication. We study correlations in dynamic networks with arbitrary topology, assuming linear pulse coupling. With our novel approach, we are able to understand in detail how specific structural motifs affect pairwise correlations. Based on a power series decomposition of the covariance matrix, we describe the conditions under which very indirect interactions will have a pronounced effect on correlations and population dynamics. In random networks, we find that indirect interactions may lead to a broad distribution of activation levels with low average but highly variable correlations. This phenomenon is even more pronounced in networks with distance dependent connectivity. In contrast, networks with highly connected hubs or patchy connections often exhibit strong average correlations. Our results are particularly relevant in view of new experimental techniques that enable the parallel recording of spiking activity from a large number of neurons, an appropriate interpretation of which is hampered by the currently limited understanding of structure-dynamics relations in complex networks.
网络正在成为理解复杂生物系统的普遍隐喻,涵盖了从分子信号通路、大脑中的神经网络到食物网中相互作用的物种等多个层次。在许多模型中,我们面临着网络拓扑结构和系统动力学之间错综复杂的相互作用,这通常很难区分。在各个领域中,一个受到强烈研究的动态特征是网络中节点的噪声活动之间的相关性。我们考虑了一类系统,其中离散信号沿着网络的链路发送。由于这些系统为使用动作电位进行通信的神经元网络提供了模型,因此它们在神经科学中具有特别重要的意义。我们研究了具有任意拓扑结构的动态网络中的相关性,假设存在线性脉冲耦合。通过我们新颖的方法,我们能够详细了解特定结构模式如何影响成对相关性。基于协方差矩阵的幂级数分解,我们描述了非常间接的相互作用将如何对相关性和群体动力学产生显著影响的条件。在随机网络中,我们发现间接相互作用可能导致激活水平的广泛分布,平均水平低但相关性高度可变。在具有距离依赖连接的网络中,这种现象更为明显。相比之下,具有高度连接的集线器或斑块状连接的网络通常表现出强烈的平均相关性。我们的研究结果在考虑新的实验技术时特别相关,这些技术能够实现大量神经元的尖峰活动的并行记录,但由于目前对复杂网络中结构-动力学关系的理解有限,这些记录的解释受到了阻碍。