Self-sustained asynchronous irregular states and Up/Down states in thalamic, cortical and thalamocortical networks of nonlinear integrate-and-fire neurons
Alain Destexhe

TL;DR
This study demonstrates that nonlinear integrate-and-fire neuron networks can exhibit asynchronous irregular activity and Up/Down states, influenced by intrinsic neuronal properties like low-threshold spikes and spike-frequency adaptation.
Contribution
It shows that complex intrinsic properties in nonlinear IF neurons enable AI and Up/Down states in small thalamic, cortical, and thalamocortical networks, extending understanding beyond simple models.
Findings
AI states occur in small networks with LTS neurons.
Strong SFA leads to transient AI, reduced SFA sustains AI.
Up/Down states emerge in thalamocortical networks with intrinsic properties.
Abstract
Randomly-connected networks of integrate-and-fire (IF) neurons are known to display asynchronous irregular (AI) activity states, which resemble the discharge activity recorded in the cerebral cortex of awake animals. However, it is not clear whether such activity states are specific to simple IF models, or if they also exist in networks where neurons are endowed with complex intrinsic properties similar to electrophysiological measurements. Here, we investigate the occurrence of AI states in networks of nonlinear IF neurons, such as the adaptive exponential IF (Brette-Gerstner-Izhikevich) model. This model can display intrinsic properties such as low-threshold spike (LTS), regular spiking (RS) or fast-spiking (FS). We successively investigate the oscillatory and AI dynamics of thalamic, cortical and thalamocortical networks using such models. AI states can be found in each case,…
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