Journal article

Dynamic causal modelling for EEG and MEG

SJ Kiebel, MI Garrido, RJ Moran, KJ Friston

Cognitive Neurodynamics | SPRINGER | Published : 2008

Open access

Abstract

Dynamic Causal Modelling (DCM) is an approach first introduced for the analysis of functional magnetic resonance imaging (fMRI) to quantify effective connectivity between brain areas. Recently, this framework has been extended and established in the magneto/encephalography (M/EEG) domain. DCM for M/EEG entails the inversion a full spatiotemporal model of evoked responses, over multiple conditions. This model rests on a biophysical and neurobiological generative model for electrophysiological data. A generative model is a prescription of how data are generated. The inversion of a DCM provides conditional densities on the model parameters and, indeed on the model itself. These densities enable..

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University of Melbourne Researchers