Department of Mathematics and Statistics, Elon University, 50 Campus Drive, Elon, NC 27244, USA.
Department of Applied Mathematics and Centre for Theoretical Neuroscience, University of Waterloo, Waterloo, Ontario, N2L 3G1, Canada.
Math Biosci Eng. 2020 Nov 10;17(6):7931-7957. doi: 10.3934/mbe.2020403.
We study a model for a network of synaptically coupled, excitable neurons to identify the role of coupling delays in generating different network behaviors. The network consists of two distinct populations, each of which contains one excitatory-inhibitory neuron pair. The two pairs are coupled via delayed synaptic coupling between the excitatory neurons, while each inhibitory neuron is connected only to the corresponding excitatory neuron in the same population. We show that multiple equilibria can exist depending on the strength of the excitatory coupling between the populations. We conduct linear stability analysis of the equilibria and derive necessary conditions for delay-induced Hopf bifurcation. We show that these can induce two qualitatively different phase-locked behaviors, with the type of behavior determined by the sizes of the coupling delays. Numerical bifurcation analysis and simulations supplement and confirm our analytical results. Our work shows that the resting equilibrium point is unaffected by the coupling, thus the network exhibits bistability between a rest state and an oscillatory state. This may help understand how rhythms spontaneously arise in neuronal networks.
我们研究了一个由突触耦合的兴奋性神经元组成的网络模型,以确定耦合延迟在产生不同网络行为中的作用。该网络由两个不同的群体组成,每个群体包含一对兴奋性-抑制性神经元。两个神经元对通过兴奋性神经元之间的延迟突触耦合进行耦合,而每个抑制性神经元仅与同一群体中的相应兴奋性神经元相连。我们表明,取决于群体之间的兴奋性耦合强度,可能存在多个平衡点。我们对平衡点进行线性稳定性分析,并推导出延迟诱导的Hopf 分岔的必要条件。我们表明,这些条件可以诱导两种定性不同的锁相行为,行为类型由耦合延迟的大小决定。数值分岔分析和模拟补充并证实了我们的分析结果。我们的工作表明,休息平衡点不受耦合的影响,因此网络在休息状态和振荡状态之间表现出双稳性。这可能有助于理解节律如何在神经元网络中自发出现。