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大脑吸引子网络中的噪声由渐变的发放率表示产生。

Noise in attractor networks in the brain produced by graded firing rate representations.

机构信息

Department of Computer Science and Complexity Science Centre, University of Warwick, Coventry, United Kingdom.

出版信息

PLoS One. 2011;6(9):e23630. doi: 10.1371/journal.pone.0023630. Epub 2011 Sep 8.

DOI:10.1371/journal.pone.0023630
PMID:21931607
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3169549/
Abstract

Representations in the cortex are often distributed with graded firing rates in the neuronal populations. The firing rate probability distribution of each neuron to a set of stimuli is often exponential or gamma. In processes in the brain, such as decision-making, that are influenced by the noise produced by the close to random spike timings of each neuron for a given mean rate, the noise with this graded type of representation may be larger than with the binary firing rate distribution that is usually investigated. In integrate-and-fire simulations of an attractor decision-making network, we show that the noise is indeed greater for a given sparseness of the representation for graded, exponential, than for binary firing rate distributions. The greater noise was measured by faster escaping times from the spontaneous firing rate state when the decision cues are applied, and this corresponds to faster decision or reaction times. The greater noise was also evident as less stability of the spontaneous firing state before the decision cues are applied. The implication is that spiking-related noise will continue to be a factor that influences processes such as decision-making, signal detection, short-term memory, and memory recall even with the quite large networks found in the cerebral cortex. In these networks there are several thousand recurrent collateral synapses onto each neuron. The greater noise with graded firing rate distributions has the advantage that it can increase the speed of operation of cortical circuitry.

摘要

皮层中的表示通常在神经元群体中具有渐变的发放率。每个神经元对一组刺激的发放率概率分布通常是指数或伽马分布。在大脑的过程中,例如决策,受到每个神经元的接近随机的尖峰时间产生的噪声的影响,对于给定的平均速率,这种渐变类型的表示的噪声可能比通常研究的二进制发放率分布大。在吸引子决策网络的积分和放电模拟中,我们表明,对于给定的表示稀疏度,渐变的、指数的噪声确实比二进制发放率分布大。噪声更大的衡量标准是,当决策线索施加时,自发发放率状态更快地逃离,这对应于更快的决策或反应时间。在施加决策线索之前,自发发放状态的稳定性降低,这也表明噪声更大。这意味着,与在大脑皮层中发现的相当大的网络相比,与尖峰相关的噪声将继续成为影响决策、信号检测、短期记忆和记忆召回等过程的一个因素。在这些网络中,每个神经元有几千个递归侧枝突触。具有渐变发放率分布的更大噪声具有增加皮层电路操作速度的优势。

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