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源自自适应积分发放神经元网络的低维脉冲率模型:比较与实现

Low-dimensional spike rate models derived from networks of adaptive integrate-and-fire neurons: Comparison and implementation.

作者信息

Augustin Moritz, Ladenbauer Josef, Baumann Fabian, Obermayer Klaus

机构信息

Department of Software Engineering and Theoretical Computer Science, Technische Universität Berlin, Berlin, Germany.

Bernstein Center for Computational Neuroscience Berlin, Berlin, Germany.

出版信息

PLoS Comput Biol. 2017 Jun 23;13(6):e1005545. doi: 10.1371/journal.pcbi.1005545. eCollection 2017 Jun.

Abstract

The spiking activity of single neurons can be well described by a nonlinear integrate-and-fire model that includes somatic adaptation. When exposed to fluctuating inputs sparsely coupled populations of these model neurons exhibit stochastic collective dynamics that can be effectively characterized using the Fokker-Planck equation. This approach, however, leads to a model with an infinite-dimensional state space and non-standard boundary conditions. Here we derive from that description four simple models for the spike rate dynamics in terms of low-dimensional ordinary differential equations using two different reduction techniques: one uses the spectral decomposition of the Fokker-Planck operator, the other is based on a cascade of two linear filters and a nonlinearity, which are determined from the Fokker-Planck equation and semi-analytically approximated. We evaluate the reduced models for a wide range of biologically plausible input statistics and find that both approximation approaches lead to spike rate models that accurately reproduce the spiking behavior of the underlying adaptive integrate-and-fire population. Particularly the cascade-based models are overall most accurate and robust, especially in the sensitive region of rapidly changing input. For the mean-driven regime, when input fluctuations are not too strong and fast, however, the best performing model is based on the spectral decomposition. The low-dimensional models also well reproduce stable oscillatory spike rate dynamics that are generated either by recurrent synaptic excitation and neuronal adaptation or through delayed inhibitory synaptic feedback. The computational demands of the reduced models are very low but the implementation complexity differs between the different model variants. Therefore we have made available implementations that allow to numerically integrate the low-dimensional spike rate models as well as the Fokker-Planck partial differential equation in efficient ways for arbitrary model parametrizations as open source software. The derived spike rate descriptions retain a direct link to the properties of single neurons, allow for convenient mathematical analyses of network states, and are well suited for application in neural mass/mean-field based brain network models.

摘要

单个神经元的脉冲活动可以用一个包含体细胞适应的非线性积分发放模型来很好地描述。当暴露于稀疏耦合的波动输入时,这些模型神经元的群体表现出随机集体动力学,这可以通过福克 - 普朗克方程有效地进行表征。然而,这种方法会导致一个具有无限维状态空间和非标准边界条件的模型。在这里,我们使用两种不同的约简技术,从该描述中推导出四个关于脉冲发放率动力学的简单低维常微分方程模型:一种使用福克 - 普朗克算子的谱分解,另一种基于两个线性滤波器和一个非线性的级联,它们由福克 - 普朗克方程确定并进行半解析近似。我们针对广泛的生物学上合理的输入统计数据评估这些约简模型,发现两种近似方法都能得到准确再现基础自适应积分发放群体脉冲发放行为的脉冲发放率模型。特别是基于级联的模型总体上最准确且稳健,尤其是在输入快速变化的敏感区域。然而,对于平均驱动状态,当输入波动不太强烈且不太快速时,表现最佳的模型基于谱分解。这些低维模型也能很好地再现由递归突触兴奋和神经元适应或通过延迟抑制性突触反馈产生的稳定振荡脉冲发放率动力学。约简模型的计算需求非常低,但不同模型变体的实现复杂度有所不同。因此,我们已将允许以高效方式对任意模型参数化进行低维脉冲发放率模型以及福克 - 普朗克偏微分方程进行数值积分的实现作为开源软件提供。所推导的脉冲发放率描述保留了与单个神经元特性的直接联系,便于对网络状态进行数学分析,并且非常适合应用于基于神经群体/平均场的脑网络模型。

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