Abstract

The input currents to neurons in the cortex are under many circumstances highly variable with a mean intensity considerably below the firing threshold. As a consequence, the spiking activity of cortical neurons is strongly fluctuating such that the coefficient of variation of the inter-spike interval distribution of individual neurons is approximately equal to 1, implying almost Poisson-like spiking. In addition to this characteristic activity, the connectivity of excitatory and inhibitory neurons in cortex is sparse and irregular. It has been shown in models that super-threshold excitatory and strong inhibitory input currents, which nearly cancel for individual neurons, can lead to this irregular spiking activity [1]. However, balanced networks of excitatory and inhibitory neurons are characterized by a strictly linear relation between stimulus strength and network firing rate, making it hard to perform more complex computational tasks like the generation of receptive fields, multiple stable activity states or normalization, which for example has been measured in visual cortex (eg. [2,3]). Synapses displaying activity dependent short-term plasticity (STP) have been previously reported to give rise to a non-linear network response with potentially multiple stable states for a given stimulus [4]. In this study, we analyze analytically and numerically the computational properties of two interconnected balanced networks, receiving independent stationary stimuli. This situation can be viewed as a simple instantiation of two interconnected cortical columns. For an illustration of the network topology, see Figure ​Figure1A.1A. We demonstrate that these stimuli are normalized by the system and that increasing the stimulus to one network, suppresses the activity of the neighboring network (see Figure ​Figure1B).1B). Thereby, normalization and suppression are linear in stimulus strength when STP is disabled and becomes non-linear with activity dependent synapses. Figure 1 A. Schematic illustration of the network topology. E1 and I1 represent excitatory and inhibitory neuronal populations of network 1, receiving input from an external population X1. Same for network 2. Coupling of neuronal populations is indicated by the ... References van Vreeswijk C, Sompolinsky H. Chaotic Balanced State in a Model of Cortical Circuits. Neural Comput. 1998;10(6):1321–1371. [PubMed] Carandini M, Heeger DJ, Movshon JA. Linearity and normalization in simple cells of the macaque primary visual cortex. J Neurosci. 1997;17(21):8621–8644. [PubMed] Levitt JB, Kiper DC, Movshon JA. Receptive fields and functional architecture of macaque V2. J Neurophysiol. 1994;71(6):2517–2542. [PubMed] Mongillo G, Hansel D, van Vreeswijk C. Bistability and spatiotemporal irregularity in neuronal networks with nonlinear synaptic transmission. Phys Rev Lett. 2012;108(15):158101. [PubMed] Articles from BMC Neuroscience are provided here courtesy of BioMed Central Formats: Article | PubReader | ePub (beta) | PDF (246K) | Citation Share Facebook Twitter Google+ You are here: NCBI > Literature > PubMed Central (PMC) Write to the Help Desk External link. Please review our privacy policy. NLM NIH DHHS USA.gov Copyright | Disclaimer | Privacy | Browsers | Accessibility | Contact National Center for Biotechnology Information, U.S. National Library of Medicine 8600 Rockville Pike, Bethesda MD, 20894 USA

Highlights

  • The input currents to neurons in the cortex are under many circumstances highly variable with a mean intensity considerably below the firing threshold

  • It has been shown in models that super-threshold excitatory and strong inhibitory input currents, which nearly cancel for individual neurons, can lead to this irregular spiking activity [1]

  • * Correspondence: Sara.Konrad@brain.mpg.de Theory of Neural Dynamics, Max-Planck Institute for Brain Research, Frankfurt, 60438, Germany linear relation between stimulus strength and network firing rate, making it hard to perform more complex computational tasks like the generation of receptive fields, multiple stable activity states or normalization, which for example has been measured in visual cortex

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Summary

Introduction

The input currents to neurons in the cortex are under many circumstances highly variable with a mean intensity considerably below the firing threshold. In addition to this characteristic activity, the connectivity of excitatory and inhibitory neurons in cortex is sparse and irregular.

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