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Self-Consistent Scheme for Spike-Train Power Spectra in Heterogeneous Sparse Networks

机译:异构稀疏网络中尖峰功率谱的自洽方案

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摘要

Recurrent networks of spiking neurons can be in an asynchronous state characterized by low or absent cross-correlations and spike statistics which resemble those of cortical neurons. Although spatial correlations are negligible in this state, neurons can show pronounced temporal correlations in their spike trains that can be quantified by the autocorrelation function or the spike-train power spectrum. Depending on cellular and network parameters, correlations display diverse patterns (ranging from simple refractory-period effects and stochastic oscillations to slow fluctuations) and it is generally not well-understood how these dependencies come about. Previous work has explored how the single-cell correlations in a homogeneous network (excitatory and inhibitory integrate-and-fire neurons with nearly balanced mean recurrent input) can be determined numerically from an iterative single-neuron simulation. Such a scheme is based on the fact that every neuron is driven by the network noise (i.e., the input currents from all its presynaptic partners) but also contributes to the network noise, leading to a self-consistency condition for the input and output spectra. Here we first extend this scheme to homogeneous networks with strong recurrent inhibition and a synaptic filter, in which instabilities of the previous scheme are avoided by an averaging procedure. We then extend the scheme to heterogeneous networks in which (i) different neural subpopulations (e.g., excitatory and inhibitory neurons) have different cellular or connectivity parameters; (ii) the number and strength of the input connections are random (Erdős-Rényi topology) and thus different among neurons. In all heterogeneous cases, neurons are lumped in different classes each of which is represented by a single neuron in the iterative scheme; in addition, we make a Gaussian approximation of the input current to the neuron. These approximations seem to be justified over a broad range of parameters as indicated by comparison with simulation results of large recurrent networks. Our method can help to elucidate how network heterogeneity shapes the asynchronous state in recurrent neural networks.
机译:尖峰神经元的递归网络可以处于异步状态,其特征是与皮质神经元的交叉相关性低或不存在互相关性和峰值统计。尽管在这种状态下空间相关性可以忽略不计,但神经元可以在其尖峰序列中显示明显的时间相关性,可以通过自相关函数或尖峰序列功率谱对其进行量化。依赖于蜂窝和网络参数,相关性显示出多种模式(从简单的不应期效应和随机振荡到缓慢的波动),并且通常不了解这些依赖性如何产生。先前的工作已经探索了如何从迭代单神经元模拟中以数值方式确定同构网络中的单细胞相关性(兴奋性和抑制性整合与发射神经元,平均递归输入几乎达到平衡)。这种方案基于以下事实:每个神经元都受到网络噪声(即,来自其所有突触前伙伴的输入电流)的驱动,但也会导致网络噪声,从而导致输入和输出频谱的自洽条件。在这里,我们首先将该方案扩展到具有强递归抑制能力和突触滤波器的同构网络,其中通过平均过程避免了先前方案的不稳定性。然后,我们将该方案扩展到异构网络,其中(i)不同的神经亚群(例如,兴奋性和抑制性神经元)具有不同的细胞或连通性参数; (ii)输入连接的数量和强度是随机的(Erdős-Rényi拓扑),因此在神经元之间是不同的。在所有异类情况下,神经元都集中在不同的类别中,每种类别都由迭代方案中的单个神经元表示。此外,我们对神经元的输入电流进行了高斯近似。与大型递归网络的仿真结果相比,这些近似值似乎在广泛的参数范围内是合理的。我们的方法可以帮助阐明网络异质性如何影响递归神经网络中的异步状态。

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