Temporal integration by stochastic recurrent network (Okamoto et al. 2007)


"Temporal integration of externally or internally driven information is required for a variety of cognitive processes. This computation is generally linked with graded rate changes in cortical neurons, which typically appear during a delay period of cognitive task in the prefrontal and other cortical areas. Here, we present a neural network model to produce graded (climbing or descending) neuronal activity. Model neurons are interconnected randomly by AMPA-receptor–mediated fast excitatory synapses and are subject to noisy background excitatory and inhibitory synaptic inputs. In each neuron, a prolonged afterdepolarizing potential follows every spike generation. Then, driven by an external input, the individual neurons display bimodal rate changes between a baseline state and an elevated firing state, with the latter being sustained by regenerated afterdepolarizing potentials. ..."

Model Type: Realistic Network

Region(s) or Organism(s): Neocortex

Currents: I Calcium

Receptors: GabaA; AMPA

Model Concept(s): Activity Patterns

Simulation Environment: C or C++ program

References:

Okamoto H, Isomura Y, Takada M, Fukai T. (2007). Temporal integration by stochastic recurrent network dynamics with bimodal neurons. Journal of neurophysiology. 97 [PubMed]


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