4.3 Article Proceedings Paper

Incorporating anatomically realistic cellular-level connectivity in neural network models of the rat hippocampus

期刊

BIOSYSTEMS
卷 79, 期 1-3, 页码 173-181

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ELSEVIER SCI LTD
DOI: 10.1016/j.biosystems.2004.09.024

关键词

feedforward inhibition; hippocampus; neural networks; neuroanatomy; synaptology

资金

  1. PHS HHS [R01-39600] Funding Source: Medline

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The specific connectivity patterns among neuronal classes can play an important role in the regulation of firing dynamics in many brain regions. Yet most neural network models are built based on vastly simplified connectivity schemes that do not accurately reflect the biological complexity. Taking the rat hippocampus as an example, we show here that enough quantitative information is available in the neuroanatomical literature to construct neural networks derived from accurate models of cellular connectivity. Computational simulations based on this approach lend themselves to a direct investigation of the potential relationship between cellular connectivity and network activity. We define a set of fundamental parameters to characterize cellular connectivity, and are collecting the related values for the rat hippocampus from published reports. Preliminary simulations based on these data uncovered a novel putative role for feedforward inhibitory neurons. In particular, mopp cells in the dentate gyrus are suitable to help maintain the firing rate of granule cells within physiological levels in response to a plausibly noisy input from the entorhinal cortex. The stabilizing effect of feedforward inhibition is further shown to depend on the particular ratio between the relative threshold values of the principal cells and the interneurons. We are freely distributing the connectivity data on which this study is based through a publicly accessible web archive (http://www.krasnow.gmu.edu/L-Neuron). (C) 2004 Elsevier Ireland Ltd. All rights reserved.

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