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通过双重稳态机制对放电率均值和方差进行稳定控制。

Stable Control of Firing Rate Mean and Variance by Dual Homeostatic Mechanisms.

作者信息

Cannon Jonathan, Miller Paul

机构信息

Brandeis University Department of Biology, Volen National Center for Complex Systems, 415 South St, Waltham, MA, 02453, USA.

出版信息

J Math Neurosci. 2017 Dec;7(1):1. doi: 10.1186/s13408-017-0043-7. Epub 2017 Jan 17.

Abstract

Homeostatic processes that provide negative feedback to regulate neuronal firing rates are essential for normal brain function. Indeed, multiple parameters of individual neurons, including the scale of afferent synapse strengths and the densities of specific ion channels, have been observed to change on homeostatic time scales to oppose the effects of chronic changes in synaptic input. This raises the question of whether these processes are controlled by a single slow feedback variable or multiple slow variables. A single homeostatic process providing negative feedback to a neuron's firing rate naturally maintains a stable homeostatic equilibrium with a characteristic mean firing rate; but the conditions under which multiple slow feedbacks produce a stable homeostatic equilibrium have not yet been explored. Here we study a highly general model of homeostatic firing rate control in which two slow variables provide negative feedback to drive a firing rate toward two different target rates. Using dynamical systems techniques, we show that such a control system can be used to stably maintain a neuron's characteristic firing rate mean and variance in the face of perturbations, and we derive conditions under which this happens. We also derive expressions that clarify the relationship between the homeostatic firing rate targets and the resulting stable firing rate mean and variance. We provide specific examples of neuronal systems that can be effectively regulated by dual homeostasis. One of these examples is a recurrent excitatory network, which a dual feedback system can robustly tune to serve as an integrator.

摘要

提供负反馈以调节神经元放电率的稳态过程对正常脑功能至关重要。实际上,已观察到单个神经元的多个参数,包括传入突触强度的规模和特定离子通道的密度,会在稳态时间尺度上发生变化,以对抗突触输入慢性变化的影响。这就提出了一个问题,即这些过程是由单个缓慢反馈变量还是多个缓慢变量控制。一个向神经元放电率提供负反馈的单一稳态过程自然会维持一个具有特征平均放电率的稳定稳态平衡;但多个缓慢反馈产生稳定稳态平衡的条件尚未得到探索。在这里,我们研究了一个高度通用的稳态放电率控制模型,其中两个缓慢变量提供负反馈,以将放电率驱动到两个不同的目标率。使用动态系统技术,我们表明这样的控制系统可用于在面对扰动时稳定地维持神经元的特征放电率均值和方差,并推导出发生这种情况的条件。我们还推导出一些表达式,阐明了稳态放电率目标与由此产生的稳定放电率均值和方差之间的关系。我们提供了可以通过双重稳态有效调节的神经元系统的具体示例。其中一个例子是一个循环兴奋性网络,一个双重反馈系统可以对其进行稳健调节以充当积分器。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2892/5264207/39ab0e0f405d/13408_2017_43_Fig1_HTML.jpg

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