Abstract

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.

Highlights

  • Correlated neural activity is observed ubiquitously in the brain [1,2] but its role in information coding remains controversial

  • We found that the values of ρ computed from numerical simulation are in excellent agreement with those predicted from Eq (22)

  • We found that such coding was optimal when no noise correlations were present (i.e., c = 0) and for a nonzero value of noise intensity D

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Summary

Introduction

Correlated neural activity is observed ubiquitously in the brain [1,2] but its role in information coding remains controversial. More recent studies have challenged this notion and have instead argued that correlated neural activity could carry information independently of other single-neuron variables such as firing rate [5]. While psychophysical studies have shown that both stimulus and variance are critical for perception [16,17,19,20,21,22], how these attributes are coded for in the brain remain largely unknown in general

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