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      Model driven EEG/fMRI fusion of brain oscillations

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          Abstract

          This article reviews progress and challenges in model driven EEG/fMRI fusion with a focus on brain oscillations. Fusion is the combination of both imaging modalities based on a cascade of forward models from ensemble of post‐synaptic potentials (ePSP) to net primary current densities (nPCD) to EEG; and from ePSP to vasomotor feed forward signal (VFFSS) to BOLD. In absence of a model, data driven fusion creates maps of correlations between EEG and BOLD or between estimates of nPCD and VFFS. A consistent finding has been that of positive correlations between EEG alpha power and BOLD in both frontal cortices and thalamus and of negative ones for the occipital region. For model driven fusion we formulate a neural mass EEG/fMRI model coupled to a metabolic hemodynamic model. For exploratory simulations we show that the Local Linearization (LL) method for integrating stochastic differential equations is appropriate for highly nonlinear dynamics. It has been successfully applied to small and medium sized networks, reproducing the described EEG/BOLD correlations. A new LL‐algebraic method allows simulations with hundreds of thousands of neural populations, with connectivities and conduction delays estimated from diffusion weighted MRI. For parameter and state estimation, Kalman filtering combined with the LL method estimates the innovations or prediction errors. From these the likelihood of models given data are obtained. The LL‐innovation estimation method has been already applied to small and medium scale models. With improved Bayesian computations the practical estimation of very large scale EEG/fMRI models shall soon be possible. Hum Brain Mapp, 2009. © 2008 Wiley‐Liss, Inc.

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          Author and article information

          Contributors
          peter@cneuro.edu.cu
          Journal
          Hum Brain Mapp
          Hum Brain Mapp
          10.1002/(ISSN)1097-0193
          HBM
          Human Brain Mapping
          Wiley Subscription Services, Inc., A Wiley Company (Hoboken )
          1065-9471
          1097-0193
          23 December 2008
          15 September 2009
          : 30
          : 9 ( doiID: 10.1002/hbm.v30:9 )
          : 2701-2721
          Affiliations
          [ 1 ]Cuban Neuroscience Center, Havana, Cuba
          [ 2 ]Institute for Cybernetics, Mathematics and Physics, Havana, Cuba
          [ 3 ]Tohoku University, Sendai, Japan
          Author notes
          [*] [* ]Ave 25 #15202 esquina 158, Cubanacan, Playa, Area Code 11600, Ciudad Habana, Cuba, P.O.B 6412/6414
          Article
          PMC6870602 PMC6870602 6870602 HBM20704
          10.1002/hbm.20704
          6870602
          19107753
          e1968d41-94e5-43f4-abe0-91906c38ef94
          Copyright © 2008 Wiley‐Liss, Inc.
          History
          : 18 February 2008
          : 18 August 2008
          : 25 October 2008
          Page count
          Figures: 5, Tables: 3, References: 114, Pages: 21, Words: 17190
          Categories
          Review Article
          Review Articles
          Custom metadata
          2.0
          15 September 2009
          Converter:WILEY_ML3GV2_TO_JATSPMC version:5.7.2 mode:remove_FC converted:15.11.2019

          hemodynamic response,oscillation,fMRI,EEG,alpha rhythm,neural mass models

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