Sparse gamma rhythms arising through clustering in adapting neuronal networks.
Sparse gamma rhythms arising through clustering in
adapting neuronal networks.
Zachary P Kilpatrick and Bard Ermentrout
PLoS Comput. Biol. 7 (2011), e1002281.
Abstract: Gamma rhythms (30-100 Hz) are an extensively studied synchronous brain state responsible for a number
of sensory, memory, and motor processes. Experimental evidence
suggests that fast-spiking interneurons are responsible for carrying
the high frequency components of the rhythm, while regular-spiking
pyramidal neurons fire sparsely. We propose that a combination of spike frequency adaptation and global inhibition
may be responsible for this behavior. Excitatory neurons form several clusters that fire every few cycles
of the fast oscillation. This is first shown in a detailed biophysical network model and then analyzed
thoroughly in an idealized model. We exploit the fact that the timescale of adaptation is much slower
than that of the other variables. Singular perturbation theory is used to derive an approximate periodic
solution for a single spiking unit. This is then used to predict the relationship between the number of
clusters arising spontaneously in the network as it relates to the adaptation time constant. We compare
this to a complementary analysis that employs a weak coupling assumption to predict the first Fourier
mode to destabilize from the incoherent state of an associated phase model as the external noise is
reduced. Both approaches predict the same power law scaling of cluster
number to adaptation time constant, which is corroborated in numerical
simulations of the full system. Thus, we develop several testable
predictions regarding the formation and characteristics of gamma
rhythms with sparsely firing excitatory neurons.
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