Analytical Integrate-and-Fire Neuron Models with Conductance-Based Dynamics for Event-Driven Simulation Strategies
- 1 September 2006
- journal article
- research article
- Published by MIT Press in Neural Computation
- Vol. 18 (9) , 2146-2210
- https://doi.org/10.1162/neco.2006.18.9.2146
Abstract
Event-driven simulation strategies were proposed recently to simulate integrate-and-fire (IF) type neuronal models. These strategies can lead to computationally efficient algorithms for simulating large-scale networks of neurons; most important, such approaches are more precise than traditional clock-driven numerical integration approaches because the timing of spikes is treated exactly. The drawback of such event-driven methods is that in order to be efficient, the membrane equations must be solvable analytically, or at least provide simple analytic approximations for the state variables describing the system. This requirement prevents, in general, the use of conductance-based synaptic interactions within the framework of event-driven simulations and, thus, the investigation of network paradigms where synaptic conductances are important. We propose here a number of extensions of the classical leaky IF neuron model involving approximations of the membrane equation with conductancebased synaptic current, which lead to simple analytic expressions for the membrane state, and therefore can be used in the event-driven framework. These conductance-based IF (gIF) models are compared to commonly used models, such as the leaky IF model or biophysical models in which conductances are explicitly integrated. All models are compared with respect to various spiking response properties in the presence of synaptic activity, such as the spontaneous discharge statistics, the temporal precision in resolving synaptic inputs, and gain modulation under in vivo–like synaptic bombardment. Being based on the passive membrane equation with fixed-threshold spike generation, the proposed gIF models are situated in between leaky IF and biophysical models but are much closer to the latter with respect to their dynamic behavior and response characteristics, while still being nearly as computationally efficient as simple IF neuron models. gIF models should therefore provide a useful tool for efficient and precise simulation of large-scale neuronal networks with realistic, conductance-based synaptic interactions.Keywords
This publication has 75 references indexed in Scilit:
- Firing Rate of the Noisy Quadratic Integrate-and-Fire NeuronNeural Computation, 2003
- Gain Modulation from Background Synaptic InputNeuron, 2002
- Microstructure of the neocortex: Comparative aspectsJournal of Neurocytology, 2002
- Coefficient of variation vs. mean interspike interval curves: What do they tell us about the brain?Neurocomputing, 2001
- Effects of Synaptic Noise and Filtering on the Frequency Response of Spiking NeuronsPhysical Review Letters, 2001
- Dynamics of Sparsely Connected Networks of Excitatory and Inhibitory Spiking NeuronsJournal of Computational Neuroscience, 2000
- Visual input evokes transient and strong shunting inhibition in visual cortical neuronsNature, 1998
- Asynchronous states in networks of pulse-coupled oscillatorsPhysical Review E, 1993
- The pyramidal neuron of the cerebral cortex: Morphological and chemical characteristics of the synaptic inputsProgress in Neurobiology, 1992
- The spontaneous activity of neurones in the cat’s cerebral cortexProceedings of the Royal Society of London. B. Biological Sciences, 1976