Adaptive Exponential Integrate-and-Fire Model as an Effective Description of Neuronal Activity
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- 1 November 2005
- journal article
- Published by American Physiological Society in Journal of Neurophysiology
- Vol. 94 (5) , 3637-3642
- https://doi.org/10.1152/jn.00686.2005
Abstract
We introduce a two-dimensional integrate-and-fire model that combines an exponential spike mechanism with an adaptation equation, based on recent theoretical findings. We describe a systematic method to estimate its parameters with simple electrophysiological protocols (current-clamp injection of pulses and ramps) and apply it to a detailed conductance-based model of a regular spiking neuron. Our simple model predicts correctly the timing of 96% of the spikes (±2 ms) of the detailed model in response to injection of noisy synaptic conductances. The model is especially reliable in high-conductance states, typical of cortical activity in vivo, in which intrinsic conductances were found to have a reduced role in shaping spike trains. These results are promising because this simple model has enough expressive power to reproduce qualitatively several electrophysiological classes described in vitro.Keywords
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