Spike-based population coding and working memory. - Inserm - Institut national de la santé et de la recherche médicale Access content directly
Journal Articles PLoS Computational Biology Year : 2011

Spike-based population coding and working memory.

Abstract

Compelling behavioral evidence suggests that humans can make optimal decisions despite the uncertainty inherent in perceptual or motor tasks. A key question in neuroscience is how populations of spiking neurons can implement such probabilistic computations. In this article, we develop a comprehensive framework for optimal, spike-based sensory integration and working memory in a dynamic environment. We propose that probability distributions are inferred spike-per-spike in recurrently connected networks of integrate-and-fire neurons. As a result, these networks can combine sensory cues optimally, track the state of a time-varying stimulus and memorize accumulated evidence over periods much longer than the time constant of single neurons. Importantly, we propose that population responses and persistent working memory states represent entire probability distributions and not only single stimulus values. These memories are reflected by sustained, asynchronous patterns of activity which make relevant information available to downstream neurons within their short time window of integration. Model neurons act as predictive encoders, only firing spikes which account for new information that has not yet been signaled. Thus, spike times signal deterministically a prediction error, contrary to rate codes in which spike times are considered to be random samples of an underlying firing rate. As a consequence of this coding scheme, a multitude of spike patterns can reliably encode the same information. This results in weakly correlated, Poisson-like spike trains that are sensitive to initial conditions but robust to even high levels of external neural noise. This spike train variability reproduces the one observed in cortical sensory spike trains, but cannot be equated to noise. On the contrary, it is a consequence of optimal spike-based inference. In contrast, we show that rate-based models perform poorly when implemented with stochastically spiking neurons.
Fichier principal
Vignette du fichier
journal.pcbi.1001080.pdf (2.84 Mo) Télécharger le fichier
Origin : Publisher files allowed on an open archive
Loading...

Dates and versions

inserm-00704812 , version 1 (06-06-2012)

Identifiers

Cite

Martin Boerlin, Sophie Denève. Spike-based population coding and working memory.. PLoS Computational Biology, 2011, 7 (2), pp.e1001080. ⟨10.1371/journal.pcbi.1001080⟩. ⟨inserm-00704812⟩
120 View
206 Download

Altmetric

Share

Gmail Facebook Twitter LinkedIn More