Development of Mechanistic Neural Mass (mNM) Models that Link Physiology to Mean-Field Dynamics.

Richa Tripathi, Bruce J Gluckman
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引用次数: 1

Abstract

Brain rhythms emerge from the mean-field activity of networks of neurons. There have been many efforts to build mathematical and computational embodiments in the form of discrete cell-group activities-termed neural masses-to understand in particular the origins of evoked potentials, intrinsic patterns of activities such as theta, regulation of sleep, Parkinson's disease related dynamics, and mimic seizure dynamics. As originally utilized, standard neural masses convert input through a sigmoidal function to a firing rate, and firing rate through a synaptic alpha function to other masses. Here we define a process to build mechanistic neural masses (mNMs) as mean-field models of microscopic membrane-type (Hodgkin Huxley type) models of different neuron types that duplicate the stability, firing rate, and associated bifurcations as function of relevant slow variables - such as extracellular potassium - and synaptic current; and whose output is both firing rate and impact on the slow variables - such as transmembrane potassium flux. Small networks composed of just excitatory and inhibitory mNMs demonstrate expected dynamical states including firing, runaway excitation and depolarization block, and these transitions change in biologically observed ways with changes in extracellular potassium and excitatory-inhibitory balance.

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将生理学与平均场动力学联系起来的机械性神经质量模型的发展。
大脑节律来自神经元网络的平均场活动。已经有许多努力以离散细胞群活动(称为神经团)的形式建立数学和计算实施例,以了解诱发电位的起源、活动的内在模式(如θ波)、睡眠调节、帕金森病相关动力学和模拟癫痫动态。正如最初使用的那样,标准神经团通过s型函数将输入转换为放电速率,并通过突触α函数将放电速率转换为其他团。在这里,我们定义了一个建立机制神经群(mNMs)的过程,作为不同神经元类型的微观膜型(霍奇金·赫胥黎型)模型的平均场模型,这些模型复制了稳定性、放电率和相关分叉作为相关慢变量(如细胞外钾)和突触电流的函数;其输出是放电速率和对慢变量的影响,如跨膜钾通量。仅由兴奋性和抑制性mNMs组成的小网络表现出预期的动态状态,包括放电、失控兴奋和去极化阻断,这些转变以生物学观察的方式随着细胞外钾和兴奋-抑制平衡的变化而变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.70
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