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(Neural Computation. 2005;17:1447-1455.)
© 2005 The MIT Press


Note

Categorization of Neural Excitability Using Threshold Models

A. Tonnelier

arnaud.tonnelier{at}loria.fr, Cortex Project, INRIA Lorraine, Campus Scientifique, Vandoeuvre-lès-Nancy, France

A classification of spiking neurons according to the transition from quiescence to periodic firing of action potentials is commonly used. Nonbursting neurons are classified into two types, type I and type II excitability. We use simple phenomenological spiking neuron models to derive a criterion for the determination of the neural excitability based on the afterpotential following a spike. The crucial characteristic is the existence for type II model of a positive overshoot, that is, a delayed afterdepolarization, during the recovery process of the membrane potential. Our prediction is numerically tested using well-known type I and type II models including the Connor, Walter, & McKown (1977) model and the Hodgkin-Huxley (1952) model.







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