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Comparison of two integration methods for dynamic causal modeling of electrophysiological data

Dynamic causal modeling (DCM) is a methodological approach to study effective connectivity among brain regions. Based on a set of observations and a biophysical model of brain interactions, DCM uses a Bayesian framework to estimate the posterior distribution of the free parameters of the model (e.g....

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Autores principales: Lemaréchal, Jean-Didier, George, Nathalie, David, Olivier
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5929904/
https://www.ncbi.nlm.nih.gov/pubmed/29462723
http://dx.doi.org/10.1016/j.neuroimage.2018.02.031
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author Lemaréchal, Jean-Didier
George, Nathalie
David, Olivier
author_facet Lemaréchal, Jean-Didier
George, Nathalie
David, Olivier
author_sort Lemaréchal, Jean-Didier
collection PubMed
description Dynamic causal modeling (DCM) is a methodological approach to study effective connectivity among brain regions. Based on a set of observations and a biophysical model of brain interactions, DCM uses a Bayesian framework to estimate the posterior distribution of the free parameters of the model (e.g. modulation of connectivity) and infer architectural properties of the most plausible model (i.e. model selection). When modeling electrophysiological event-related responses, the estimation of the model relies on the integration of the system of delay differential equations (DDEs) that describe the dynamics of the system. In this technical note, we compared two numerical schemes for the integration of DDEs. The first, and standard, scheme approximates the DDEs (more precisely, the state of the system, with respect to conduction delays among brain regions) using ordinary differential equations (ODEs) and solves it with a fixed step size. The second scheme uses a dedicated DDEs solver with adaptive step sizes to control error, making it theoretically more accurate. To highlight the effects of the approximation used by the first integration scheme in regard to parameter estimation and Bayesian model selection, we performed simulations of local field potentials using first, a simple model comprising 2 regions and second, a more complex model comprising 6 regions. In these simulations, the second integration scheme served as the standard to which the first one was compared. Then, the performances of the two integration schemes were directly compared by fitting a public mismatch negativity EEG dataset with different models. The simulations revealed that the use of the standard DCM integration scheme was acceptable for Bayesian model selection but underestimated the connectivity parameters and did not allow an accurate estimation of conduction delays. Fitting to empirical data showed that the models systematically obtained an increased accuracy when using the second integration scheme. We conclude that inference on connectivity strength and delay based on DCM for EEG/MEG requires an accurate integration scheme.
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spelling pubmed-59299042018-06-01 Comparison of two integration methods for dynamic causal modeling of electrophysiological data Lemaréchal, Jean-Didier George, Nathalie David, Olivier Neuroimage Article Dynamic causal modeling (DCM) is a methodological approach to study effective connectivity among brain regions. Based on a set of observations and a biophysical model of brain interactions, DCM uses a Bayesian framework to estimate the posterior distribution of the free parameters of the model (e.g. modulation of connectivity) and infer architectural properties of the most plausible model (i.e. model selection). When modeling electrophysiological event-related responses, the estimation of the model relies on the integration of the system of delay differential equations (DDEs) that describe the dynamics of the system. In this technical note, we compared two numerical schemes for the integration of DDEs. The first, and standard, scheme approximates the DDEs (more precisely, the state of the system, with respect to conduction delays among brain regions) using ordinary differential equations (ODEs) and solves it with a fixed step size. The second scheme uses a dedicated DDEs solver with adaptive step sizes to control error, making it theoretically more accurate. To highlight the effects of the approximation used by the first integration scheme in regard to parameter estimation and Bayesian model selection, we performed simulations of local field potentials using first, a simple model comprising 2 regions and second, a more complex model comprising 6 regions. In these simulations, the second integration scheme served as the standard to which the first one was compared. Then, the performances of the two integration schemes were directly compared by fitting a public mismatch negativity EEG dataset with different models. The simulations revealed that the use of the standard DCM integration scheme was acceptable for Bayesian model selection but underestimated the connectivity parameters and did not allow an accurate estimation of conduction delays. Fitting to empirical data showed that the models systematically obtained an increased accuracy when using the second integration scheme. We conclude that inference on connectivity strength and delay based on DCM for EEG/MEG requires an accurate integration scheme. Academic Press 2018-06 /pmc/articles/PMC5929904/ /pubmed/29462723 http://dx.doi.org/10.1016/j.neuroimage.2018.02.031 Text en © 2018 The Authors http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lemaréchal, Jean-Didier
George, Nathalie
David, Olivier
Comparison of two integration methods for dynamic causal modeling of electrophysiological data
title Comparison of two integration methods for dynamic causal modeling of electrophysiological data
title_full Comparison of two integration methods for dynamic causal modeling of electrophysiological data
title_fullStr Comparison of two integration methods for dynamic causal modeling of electrophysiological data
title_full_unstemmed Comparison of two integration methods for dynamic causal modeling of electrophysiological data
title_short Comparison of two integration methods for dynamic causal modeling of electrophysiological data
title_sort comparison of two integration methods for dynamic causal modeling of electrophysiological data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5929904/
https://www.ncbi.nlm.nih.gov/pubmed/29462723
http://dx.doi.org/10.1016/j.neuroimage.2018.02.031
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