Literature DB >> 17761440

A mesostate-space model for EEG and MEG.

Jean Daunizeau1, Karl J Friston.   

Abstract

We present a multi-scale generative model for EEG, that entails a minimum number of assumptions about evoked brain responses, namely: (1) bioelectric activity is generated by a set of distributed sources, (2) the dynamics of these sources can be modelled as random fluctuations about a small number of mesostates, (3) mesostates evolve in a temporal structured way and are functionally connected (i.e. influence each other), and (4) the number of mesostates engaged by a cognitive task is small (e.g. between one and a few). A Variational Bayesian learning scheme is described that furnishes the posterior density on the models parameters and its evidence. Since the number of meso-sources specifies the model, the model evidence can be used to compare models and find the optimum number of meso-sources. In addition to estimating the dynamics at each cortical dipole, the mesostate-space model and its inversion provide a description of brain activity at the level of the mesostates (i.e. in terms of the dynamics of meso-sources that are distributed over dipoles). The inclusion of a mesostate level allows one to compute posterior probability maps of each dipole being active (i.e. belonging to an active mesostate). Critically, this model accommodates constraints on the number of meso-sources, while retaining the flexibility of distributed source models in explaining data. In short, it bridges the gap between standard distributed and equivalent current dipole models. Furthermore, because it is explicitly spatiotemporal, the model can embed any stochastic dynamical causal model (e.g. a neural mass model) as a Markov process prior on the mesostate dynamics. The approach is evaluated and compared to standard inverse EEG techniques, using synthetic data and real data. The results demonstrate the added-value of the mesostate-space model and its variational inversion.

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Year:  2007        PMID: 17761440     DOI: 10.1016/j.neuroimage.2007.06.034

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  13 in total

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6.  Space-time event sparse penalization for magneto-/electroencephalography.

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7.  Dynamic causal modelling for EEG and MEG.

Authors:  Stefan J Kiebel; Marta I Garrido; Rosalyn J Moran; Karl J Friston
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8.  Dynamic causal modelling of distributed electromagnetic responses.

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Journal:  Neuroimage       Date:  2009-05-03       Impact factor: 6.556

9.  Whole brain functional connectivity using phase locking measures of resting state magnetoencephalography.

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10.  Functional connectivity analysis in EEG source space: The choice of method.

Authors:  Elham Barzegaran; Maria G Knyazeva
Journal:  PLoS One       Date:  2017-07-20       Impact factor: 3.240

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