Skip to main content
BMC Neuroscience logoLink to BMC Neuroscience
. 2007 Jul 6;8(Suppl 2):S12. doi: 10.1186/1471-2202-8-S2-S12

Non-renewal Markov models for spike-frequency adapting neural ensembles

Eilif Muller 1,, Johannes Schemmel 1, Karlheinz Meier 1
PMCID: PMC4437710

We present a continuous Markov process model for spike-frequency adapting neural ensembles which synthesizes existing mean-adaptation approaches and inhomogeneous renewal theory. Unlike renewal theory, the Markov process can account for interspike interval correlations, and an expression for the first-order interspike interval correlation is derived. The Markov process in two dimensions is shown to accurately capture the firing-rate dynamics and interspike interval correlations of a spike-frequency adapting and relative refractory conductance-based integrate-and-fire neuron driven by Poisson spike trains. Using the Master equation for the proposed process, the assumptions of the standard mean-adaptation approach are clarified, and a mean+variance adaptation theory is derived which corrects the mean-adaptation firing-rate predictions for the biologically parameterized integrate-and-fire neuron model considered. An exact recipe for generating inhomogeneous realizations of the proposed Markov process is given.


Articles from BMC Neuroscience are provided here courtesy of BMC

RESOURCES