Lagzi Fereshteh, Rotter Stefan
Bernstein Center Freiburg and Faculty of Biology, Freiburg, Germany.
PLoS One. 2015 Sep 25;10(9):e0138947. doi: 10.1371/journal.pone.0138947. eCollection 2015.
We explore and analyze the nonlinear switching dynamics of neuronal networks with non-homogeneous connectivity. The general significance of such transient dynamics for brain function is unclear; however, for instance decision-making processes in perception and cognition have been implicated with it. The network under study here is comprised of three subnetworks of either excitatory or inhibitory leaky integrate-and-fire neurons, of which two are of the same type. The synaptic weights are arranged to establish and maintain a balance between excitation and inhibition in case of a constant external drive. Each subnetwork is randomly connected, where all neurons belonging to a particular population have the same in-degree and the same out-degree. Neurons in different subnetworks are also randomly connected with the same probability; however, depending on the type of the pre-synaptic neuron, the synaptic weight is scaled by a factor. We observed that for a certain range of the "within" versus "between" connection weights (bifurcation parameter), the network activation spontaneously switches between the two sub-networks of the same type. This kind of dynamics has been termed "winnerless competition", which also has a random component here. In our model, this phenomenon is well described by a set of coupled stochastic differential equations of Lotka-Volterra type that imply a competition between the subnetworks. The associated mean-field model shows the same dynamical behavior as observed in simulations of large networks comprising thousands of spiking neurons. The deterministic phase portrait is characterized by two attractors and a saddle node, its stochastic component is essentially given by the multiplicative inherent noise of the system. We find that the dwell time distribution of the active states is exponential, indicating that the noise drives the system randomly from one attractor to the other. A similar model for a larger number of populations might suggest a general approach to study the dynamics of interacting populations of spiking networks.
我们探索并分析了具有非均匀连接性的神经网络的非线性切换动力学。这种瞬态动力学对脑功能的普遍意义尚不清楚;然而,例如感知和认知中的决策过程就与之有关。这里所研究的网络由兴奋性或抑制性泄漏积分发放神经元的三个子网组成,其中两个属于同一类型。突触权重的安排是为了在恒定外部驱动的情况下建立并维持兴奋与抑制之间的平衡。每个子网都是随机连接的,属于特定群体的所有神经元具有相同的入度和相同的出度。不同子网中的神经元也以相同概率随机连接;然而,根据突触前神经元的类型,突触权重会按一个因子进行缩放。我们观察到,对于“内部”与“之间”连接权重(分岔参数)的一定范围,网络激活会在同一类型的两个子网之间自发切换。这种动力学被称为“无胜者竞争”,这里它也有一个随机成分。在我们的模型中,这种现象可以用一组Lotka - Volterra型的耦合随机微分方程很好地描述,这意味着子网之间存在竞争。相关的平均场模型显示出与包含数千个发放神经元的大型网络模拟中观察到的相同动力学行为。确定性相图的特征是有两个吸引子和一个鞍结,其随机成分本质上由系统的乘性固有噪声给出。我们发现活跃状态的驻留时间分布是指数型的,这表明噪声将系统随机地从一个吸引子驱动到另一个吸引子。一个针对更多群体的类似模型可能会提出一种研究发放网络相互作用群体动力学的通用方法。