Minimal Models of Adapted Neuronal Response to In Vivo–Like Input Currents
- 1 October 2004
- journal article
- research article
- Published by MIT Press in Neural Computation
- Vol. 16 (10) , 2101-2124
- https://doi.org/10.1162/0899766041732468
Abstract
Rate models are often used to study the behavior of large networks of spiking neurons. Here we propose a procedure to derive rate models that take into account the fluctuations of the input current and firing-rate adaptation, two ubiquitous features in the central nervous system that have been previously overlooked in constructing rate models. The procedure is general and applies to any model of firing unit. As examples, we apply it to the leaky integrate-and-fire (IF) neuron, the leaky IF neuron with reversal potentials, and to the quadratic IF neuron. Two mechanisms of adaptation are considered, one due to an afterhyperpolarization current and the other to an adapting threshold for spike emission. The parameters of these simple models can be tuned to match experimental data obtained from neocortical pyramidal neurons. Finally, we show how the stationary model can be used to predict the time-varying activity of a large population of adapting neurons.Keywords
This publication has 46 references indexed in Scilit:
- Firing Rate of the Noisy Quadratic Integrate-and-Fire NeuronNeural Computation, 2003
- Balanced neurons: analysis of leaky integrate-and-fire neurons with reversal potentialsBiological Cybernetics, 2001
- Effects of Neuromodulation in a Cortical Network Model of Object Working Memory Dominated by Recurrent InhibitionJournal of Computational Neuroscience, 2001
- Persistent activity and the single-cell frequency–current curve in a cortical network modelNetwork: Computation in Neural Systems, 2000
- Fast Global Oscillations in Networks of Integrate-and-Fire Neurons with Low Firing RatesNeural Computation, 1999
- Firing Frequency of Leaky Intergrate-and-fire Neurons with Synaptic Current DynamicsJournal of Theoretical Biology, 1998
- Model of global spontaneous activity and local structured activity during delay periods in the cerebral cortexCerebral Cortex, 1997
- Asynchronous states in networks of pulse-coupled oscillatorsPhysical Review E, 1993
- Effective neurons and attractor neural networks in cortical environmentNetwork: Computation in Neural Systems, 1992
- Quantitative study of attractor neural network retrieving at low spike rates: I. substrate—spikes, rates and neuronal gainNetwork: Computation in Neural Systems, 1991