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Mean-field models for heterogeneous networks of two-dimensional integrate and fire neurons

机译:二维积分和火神经元异构网络的均值模型

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摘要

We analytically derive mean-field models for all-to-all coupled networks of heterogeneous, adapting, two-dimensional integrate and fire neurons. The class of models we consider includes the Izhikevich, adaptive exponential and quartic integrate and fire models. The heterogeneity in the parameters leads to different moment closure assumptions that can be made in the derivation of the mean-field model from the population density equation for the large network. Three different moment closure assumptions lead to three different mean-field systems. These systems can be used for distinct purposes such as bifurcation analysis of the large networks, prediction of steady state firing rate distributions, parameter estimation for actual neurons and faster exploration of the parameter space. We use the mean-field systems to analyze adaptation induced bursting under realistic sources of heterogeneity in multiple parameters. Our analysis demonstrates that the presence of heterogeneity causes the Hopf bifurcation associated with the emergence of bursting to change from sub-critical to super-critical. This is confirmed with numerical simulations of the full network for biologically reasonable parameter values. This change decreases the plausibility of adaptation being the cause of bursting in hippocampal area CA3, an area with a sizable population of heavily coupled, strongly adapting neurons.
机译:我们分析性地得出异构,自适应,二维积分和激发神经元的所有耦合网络的平均场模型。我们考虑的模型类别包括Izhikevich,自适应指数和四次积分和射击模型。参数的异质性导致不同的矩闭合假设,可以在从大型网络的人口密度方程推导平均场模型时做出这些假设。三种不同的矩闭合假设导致了三种不同的平均场系统。这些系统可用于不同目的,例如大型网络的分叉分析,稳态发射速率分布的预测,实际神经元的参数估计以及对参数空间的更快探索。我们使用均值场系统来分析在多个参数的异质性的现实来源下的适应性诱发的爆发。我们的分析表明,异质性的存在会导致与Hopf分叉有关的突发性从次临界变为超临界。对于生物学上合理的参数值,可以通过整个网络的数值模拟得到证实。这种变化降低了适应的合理性,它是海马区CA3爆发的原因,CA3是海马区大量耦合,强烈适应的神经元。

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