Population spiking and bursting in next generation neural masses with spike-frequency adaptation
Alberto Ferrara, David Angulo-Garcia, Alessandro Torcini, Simona, Olmi

TL;DR
This study develops advanced neural mass models incorporating spike-frequency adaptation to analyze macroscopic brain dynamics, revealing how adaptation influences population bursting, symmetry-breaking, and cross-frequency coupling, with implications for understanding hippocampal and cortical rhythms.
Contribution
It introduces next generation neural mass models with SFA, providing a detailed bifurcation analysis and uncovering new collective regimes and CFC phenomena.
Findings
SFA promotes bursting in excitatory networks
SFA suppresses tonic spiking in inhibitory networks
Reduction of SFA increases theta frequency and decreases gamma frequency
Abstract
Spike-frequency adaptation (SFA) is a fundamental neuronal mechanism taking into account the fatigue due to spike emissions and the consequent reduction of the firing activity. We have studied the effect of this adaptation mechanism on the macroscopic dynamics of excitatory and inhibitory networks of quadratic integrate-and-fire (QIF) neurons coupled via exponentially decaying post-synaptic potentials. In particular, we have studied the population activities by employing an exact mean field reduction, which gives rise to next generation neural mass models. This low-dimensional reduction allows for the derivation of bifurcation diagrams and the identification of the possible macroscopic regimes emerging both in a single and in two identically coupled neural masses. In single populations SFA favours the emergence of population bursts in excitatory networks, while it hinders tonic…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · stochastic dynamics and bifurcation
