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arxiv: q-bio/0409032 · v1 · pith:IZ6MCFWYnew · submitted 2004-09-28 · 🧬 q-bio.NC · cond-mat.dis-nn· cond-mat.stat-mech· nlin.CG· nlin.PS· physics.bio-ph· q-bio.TO

Intensity Coding in Two-Dimensional Excitable Neural Networks

classification 🧬 q-bio.NC cond-mat.dis-nncond-mat.stat-mechnlin.CGnlin.PSphysics.bio-phq-bio.TO
keywords dynamicalrangesensoryexcitableexperimentalfunctionintensitymodel
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In the light of recent experimental findings that gap junctions are essential for low level intensity detection in the sensory periphery, the Greenberg-Hastings cellular automaton is employed to model the response of a two-dimensional sensory network to external stimuli. We show that excitable elements (sensory neurons) that have a small dynamical range are shown to give rise to a collective large dynamical range. Therefore the network transfer (gain) function (which is Hill or Stevens law-like) is an emergent property generated from a pool of small dynamical range cells, providing a basis for a "neural psychophysics". The growth of the dynamical range with the system size is approximately logarithmic, suggesting a functional role for electrical coupling. For a fixed number of neurons, the dynamical range displays a maximum as a function of the refractory period, which suggests experimental tests for the model. A biological application to ephaptic interactions in olfactory nerve fascicles is proposed.

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