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在存在突触噪声的情况下,自适应指数积分和放电神经元的发放率的分析逼近。

Analytical approximations of the firing rate of an adaptive exponential integrate-and-fire neuron in the presence of synaptic noise.

机构信息

Department Theoretical Neuroscience, Bernstein-Center for Computational Neuroscience, Central Institute of Mental Health, Medical Faculty Mannheim/Heidelberg University Mannheim, Germany.

Department Theoretical Neuroscience, Bernstein-Center for Computational Neuroscience, Central Institute of Mental Health, Medical Faculty Mannheim/Heidelberg University Mannheim, Germany ; Faculty of Science and Environment, School of Computing and Mathematics, Plymouth University Plymouth, UK.

出版信息

Front Comput Neurosci. 2014 Sep 18;8:116. doi: 10.3389/fncom.2014.00116. eCollection 2014.

Abstract

Computational models offer a unique tool for understanding the network-dynamical mechanisms which mediate between physiological and biophysical properties, and behavioral function. A traditional challenge in computational neuroscience is, however, that simple neuronal models which can be studied analytically fail to reproduce the diversity of electrophysiological behaviors seen in real neurons, while detailed neuronal models which do reproduce such diversity are intractable analytically and computationally expensive. A number of intermediate models have been proposed whose aim is to capture the diversity of firing behaviors and spike times of real neurons while entailing the simplest possible mathematical description. One such model is the exponential integrate-and-fire neuron with spike rate adaptation (aEIF) which consists of two differential equations for the membrane potential (V) and an adaptation current (w). Despite its simplicity, it can reproduce a wide variety of physiologically observed spiking patterns, can be fit to physiological recordings quantitatively, and, once done so, is able to predict spike times on traces not used for model fitting. Here we compute the steady-state firing rate of aEIF in the presence of Gaussian synaptic noise, using two approaches. The first approach is based on the 2-dimensional Fokker-Planck equation that describes the (V,w)-probability distribution, which is solved using an expansion in the ratio between the time constants of the two variables. The second is based on the firing rate of the EIF model, which is averaged over the distribution of the w variable. These analytically derived closed-form expressions were tested on simulations from a large variety of model cells quantitatively fitted to in vitro electrophysiological recordings from pyramidal cells and interneurons. Theoretical predictions closely agreed with the firing rate of the simulated cells fed with in-vivo-like synaptic noise.

摘要

计算模型为理解介导生理和生物物理特性与行为功能之间的网络动力学机制提供了独特的工具。然而,计算神经科学中的一个传统挑战是,虽然可以进行分析研究的简单神经元模型未能重现真实神经元中观察到的多种多样的电生理行为,但是可以重现这种多样性的详细神经元模型在分析和计算上都很复杂且成本高昂。已经提出了许多中间模型,其目的是在包含最简单的数学描述的同时,捕获真实神经元的放电行为和尖峰时间的多样性。这样的模型之一是具有尖峰率适应(aEIF)的指数积分和放电神经元,它由用于膜电位(V)和适应电流(w)的两个微分方程组成。尽管它很简单,但它可以再现广泛的生理观察到的尖峰模式,可以对生理记录进行定量拟合,并且一旦完成拟合,就能够预测未用于模型拟合的迹线上的尖峰时间。在这里,我们使用两种方法计算存在高斯突触噪声时的 aEIF 的稳态发放率。第一种方法基于描述(V,w)-概率分布的二维福克-普朗克方程,该方程通过在两个变量的时间常数之间的比率展开来求解。第二种方法基于 EIF 模型的发放率,该发放率在 w 变量的分布上进行平均。这些从理论上推导出的封闭形式表达式通过模拟来自各种模型细胞的大量模拟进行了定量测试,这些细胞都经过了与体外从锥体神经元和中间神经元记录的电生理记录进行定量拟合。理论预测与用类似于体内的突触噪声激发的模拟细胞的发放率非常吻合。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7650/4167001/4f0cb81d4806/fncom-08-00116-g0001.jpg

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