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dLGN/PGN 中继的多元总体密度模型。

A multivariate population density model of the dLGN/PGN relay.

作者信息

Huertas Marco A, Smith Gregory D

机构信息

Department of Applied Science, College of William and Mary, Williamsburg, VA 23187, USA.

出版信息

J Comput Neurosci. 2006 Oct;21(2):171-89. doi: 10.1007/s10827-006-7753-2. Epub 2006 Jun 12.

Abstract

Using a population density approach we study the dynamics of two interacting collections of integrate-and-fire-or-burst (IFB) neurons representing thalamocortical (TC) cells from the dorsal lateral geniculate nucleus (dLGN) and thalamic reticular (RE) cells from the perigeniculate nucleus (PGN). Each population of neurons is described by a multivariate probability density function that satisfies a conservation equation with appropriately defined probability fluxes and boundary conditions. The state variables of each neuron are the membrane potential and the inactivation gating variable of the low-threshold Ca2+ current I(T). The synaptic coupling of the populations and external excitatory drive are modeled by instantaneous jumps in the membrane potential of postsynaptic neurons. The population density model is validated by comparing its response to time-varying retinal input to Monte Carlo simulations of the corresponding IFB network composed of 100 to 1,000 cells per population. In the absence of retinal input, the population density model exhibits rhythmic bursting similar to the 7 to 14 Hz oscillations associated with slow wave sleep that require feedback inhibition from RE to TC cells. When the TC and RE cell potassium leakage conductances are adjusted to represent cholingergic neuromodulation and arousal of the network, rhythmic bursting of the probability density model may either persists or be eliminated depending on the number of excitatory (TC to RE) or inhibitory (RE to TC) connections made by each presynaptic cell. When the probability density model is stimulated with constant retinal input (10-100 spikes/sec), a wide range of responses are observed depending on cellular parameters and network connectivity. These include asynchronous burst and tonic spikes, sleep spindle-like rhythmic bursting, and oscillations in population firing rate that are distinguishable from sleep spindles due to their amplitude, frequency, or the presence of tonic spikes. In this context of dLGN/PGN network modeling, we find the population density approach using 2,500 mesh points and resolving membrane voltage to 0.7 mV is over 30 times more efficient than 1,000-cell Monte Carlo simulations.

摘要

我们使用种群密度方法研究了两个相互作用的积分发放或爆发式(IFB)神经元集合的动力学,这两个集合分别代表来自背侧外侧膝状体核(dLGN)的丘脑皮质(TC)细胞和来自膝周核(PGN)的丘脑网状(RE)细胞。每个神经元群体由一个多变量概率密度函数描述,该函数满足一个带有适当定义的概率通量和边界条件的守恒方程。每个神经元的状态变量是膜电位和低阈值Ca2+电流I(T)的失活门控变量。群体之间的突触耦合和外部兴奋性驱动通过突触后神经元膜电位的瞬时跳跃来建模。通过将其对时变视网膜输入的响应与每个群体由100至1000个细胞组成的相应IFB网络的蒙特卡罗模拟进行比较,验证了种群密度模型。在没有视网膜输入的情况下,种群密度模型表现出有节奏的爆发,类似于与慢波睡眠相关的7至14赫兹振荡,这需要从RE到TC细胞的反馈抑制。当调整TC和RE细胞的钾离子泄漏电导以表示网络的胆碱能神经调节和唤醒时,概率密度模型的有节奏爆发可能会持续或被消除,这取决于每个突触前细胞建立的兴奋性(从TC到RE)或抑制性(从RE到TC)连接的数量。当用恒定的视网膜输入(10 - 100个脉冲/秒)刺激概率密度模型时,根据细胞参数和网络连接性会观察到广泛的响应。这些响应包括异步爆发和紧张性脉冲、睡眠纺锤样有节奏爆发以及群体放电率的振荡,由于其幅度、频率或紧张性脉冲的存在,这些振荡与睡眠纺锤不同。在dLGN/PGN网络建模的背景下,我们发现使用2500个网格点并将膜电压分辨率提高到0.7 mV的种群密度方法比1000细胞的蒙特卡罗模拟效率高出30倍以上。

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