Literature DB >> 21267548

Nonrenewal spike train statistics: causes and functional consequences on neural coding.

Oscar Avila-Akerberg1, Maurice J Chacron.   

Abstract

Many neurons display significant patterning in their spike trains (e.g. oscillations, bursting), and there is accumulating evidence that information is contained in these patterns. In many cases, this patterning is caused by intrinsic mechanisms rather than external signals. In this review, we focus on spiking activity that displays nonrenewal statistics (i.e. memory that persists from one firing to the next). Such statistics are seen in both peripheral and central neurons and appear to be ubiquitous in the CNS. We review the principal mechanisms that can give rise to nonrenewal spike train statistics. These are separated into intrinsic mechanisms such as relative refractoriness and network mechanisms such as coupling with delayed inhibitory feedback. Next, we focus on the functional roles for nonrenewal spike train statistics. These can either increase or decrease information transmission. We also focus on how such statistics can give rise to an optimal integration timescale at which spike train variability is minimal and how this might be exploited by sensory systems to maximize the detection of weak signals. We finish by pointing out some interesting future directions for research in this area. In particular, we explore the interesting possibility that synaptic dynamics might be matched with the nonrenewal spiking statistics of presynaptic spike trains in order to further improve information transmission.

Mesh:

Year:  2011        PMID: 21267548      PMCID: PMC4529317          DOI: 10.1007/s00221-011-2553-y

Source DB:  PubMed          Journal:  Exp Brain Res        ISSN: 0014-4819            Impact factor:   1.972


  117 in total

Review 1.  Information theory and neural coding.

Authors:  A Borst; F E Theunissen
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2.  Spike-frequency adaptation of a generalized leaky integrate-and-fire model neuron.

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9.  A model for repetitive firing in neurons.

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  22 in total

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Review 5.  SK channel subtypes enable parallel optimized coding of behaviorally relevant stimulus attributes: A review.

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10.  Identifying temporal codes in spontaneously active sensory neurons.

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