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Contribution Details

Type Journal Article
Scope Discipline-based scholarship
Title Dynamic causal modelling of evoked potentials: a reproducibility study
Organization Unit
Authors
  • M I Garrido
  • J M Kilner
  • S J Kiebel
  • Klaas Enno Stephan
  • K J Friston
Item Subtype Original Work
Refereed Yes
Status Published in final form
Language
  • English
Journal Title NeuroImage
Publisher Elsevier
Geographical Reach international
ISSN 1053-8119
Volume 36
Number 3
Page Range 571 - 580
Date 2007
Abstract Text Dynamic causal modelling (DCM) has been applied recently to event-related responses (ERPs) measured with EEG/MEG. DCM attempts to explain ERPs using a network of interacting cortical sources and waveform differences in terms of coupling changes among sources. The aim of this work was to establish the validity of DCM by assessing its reproducibility across subjects. We used an oddball paradigm to elicit mismatch responses. Sources of cortical activity were modelled as equivalent current dipoles, using a biophysical informed spatiotemporal forward model that included connections among neuronal subpopulations in each source. Bayesian inversion provided estimates of changes in coupling among sources and the marginal likelihood of each model. By specifying different connectivity models we were able to evaluate three different hypotheses: differences in the ERPs to rare and frequent events are mediated by changes in forward connections (F-model), backward connections (B-model) or both (FB-model). The results were remarkably consistent over subjects. In all but one subject, the forward model was better than the backward model. This is an important result because these models have the same number of parameters (i.e., the complexity). Furthermore, the FB-model was significantly better than both, in 7 out of 11 subjects. This is another important result because it shows that a more complex model (that can fit the data more accurately) is not necessarily the most likely model. At the group level the FB-model supervened. We discuss these findings in terms of the validity and usefulness of DCM in characterising EEG/MEG data and its ability to model ERPs in a mechanistic fashion.
Free access at PubMed ID
Digital Object Identifier 10.1016/j.neuroimage.2007.03.014
PubMed ID 17478106
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