Metzen Michael G, Ávila-Åkerberg Oscar, Chacron Maurice J
Department of Physiology, McGill University, 3655 Sir William Osler, Montréal, Québec H3G 1Y6, Canada.
Department of Physics, McGill University, 3655 Sir William Osler, Montréal, Québec H3G 1Y6, Canada.
Phys Rev E Stat Nonlin Soft Matter Phys. 2015 Apr;91(4):042717. doi: 10.1103/PhysRevE.91.042717. Epub 2015 Apr 28.
While correlated activity is observed ubiquitously in the brain, its role in neural coding has remained controversial. Recent experimental results have demonstrated that correlated but not single-neuron activity can encode the detailed time course of the instantaneous amplitude (i.e., envelope) of a stimulus. These have furthermore demonstrated that such coding required and was optimal for a nonzero level of neural variability. However, a theoretical understanding of these results is still lacking. Here we provide a comprehensive theoretical framework explaining these experimental findings. Specifically, we use linear response theory to derive an expression relating the correlation coefficient to the instantaneous stimulus amplitude, which takes into account key single-neuron properties such as firing rate and variability as quantified by the coefficient of variation. The theoretical prediction was in excellent agreement with numerical simulations of various integrate-and-fire type neuron models for various parameter values. Further, we demonstrate a form of stochastic resonance as optimal coding of stimulus variance by correlated activity occurs for a nonzero value of noise intensity. Thus, our results provide a theoretical explanation of the phenomenon by which correlated but not single-neuron activity can code for stimulus amplitude and how key single-neuron properties such as firing rate and variability influence such coding. Correlation coding by correlated but not single-neuron activity is thus predicted to be a ubiquitous feature of sensory processing for neurons responding to weak input.
虽然大脑中普遍观察到相关活动,但其在神经编码中的作用仍存在争议。最近的实验结果表明,相关活动而非单个神经元活动能够编码刺激的瞬时幅度(即包络)的详细时间进程。这些结果还进一步表明,这种编码需要一定水平的神经变异性且在非零水平时最为理想。然而,目前仍缺乏对这些结果的理论理解。在此,我们提供了一个全面的理论框架来解释这些实验发现。具体而言,我们运用线性响应理论推导出一个将相关系数与瞬时刺激幅度联系起来的表达式,该表达式考虑了关键的单个神经元特性,如放电率和由变异系数量化的变异性。理论预测与各种参数值下的各种积分发放型神经元模型的数值模拟结果高度吻合。此外,我们证明了一种随机共振形式,即对于非零噪声强度值,相关活动对刺激方差进行最优编码。因此,我们的结果为相关活动而非单个神经元活动能够编码刺激幅度这一现象以及诸如放电率和变异性等关键单个神经元特性如何影响这种编码提供了理论解释。由此预测,由相关活动而非单个神经元活动进行的相关编码是对弱输入做出反应的神经元感觉处理的普遍特征。