2012
DOI: 10.1016/j.neuroimage.2011.08.020
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Dynamic causal modeling with neural fields

Abstract: The aim of this paper is twofold: first, to introduce a neural field model motivated by a well-known neural mass model; second, to show how one can estimate model parameters pertaining to spatial (anatomical) properties of neuronal sources based on EEG or LFP spectra using Bayesian inference. Specifically, we consider neural field models of cortical activity as generative models in the context of dynamic causal modeling (DCM). This paper considers the simplest case of a single cortical source modeled by the sp… Show more

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Cited by 102 publications
(110 citation statements)
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“…Our findings are also in accord with recent computational work modeling the emergence of gamma power peaks in the visual cortex based on an inhibition‐stabilized network [Jadi and Sejnowski, 2014a; Tsodyks et al, 1997], that exhibits an Andronov–Hopf bifurcation: see [Pinotsis et al, 2012] for more details. In this article, we used neural fields to model the dispersion of axonal connections and describe the effect of surround suppression on gamma responses, see also [Pinotsis et al, 2013, 2014].…”
Section: Discussionsupporting
confidence: 91%
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“…Our findings are also in accord with recent computational work modeling the emergence of gamma power peaks in the visual cortex based on an inhibition‐stabilized network [Jadi and Sejnowski, 2014a; Tsodyks et al, 1997], that exhibits an Andronov–Hopf bifurcation: see [Pinotsis et al, 2012] for more details. In this article, we used neural fields to model the dispersion of axonal connections and describe the effect of surround suppression on gamma responses, see also [Pinotsis et al, 2013, 2014].…”
Section: Discussionsupporting
confidence: 91%
“…Our hierarchical model treated intrinsic connectivity as a random (between‐subject) effect, which was modeled by adding random Gaussian effects to subject‐specific parameters as is standard in DCM models for Cross Spectral Densities [Moran et al, 2009; Pinotsis et al, 2012]. The intrinsic connectivity and other fixed effects (i.e., the remaining DCM parameters) then generate observed spectral density responses for each subject as described above.…”
Section: Resultsmentioning
confidence: 99%
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“…A large body of work exists for Dynamic Causal Modeling (DCM) applied successfully to brain imaging which is a novel basis for establishing the brains "intelligence signals" and their primary subcomponents (Friston, Harrison and Penny, 2003;Stephan et al, 2007;Moran et al, 2009;Pinotsis, Moran, and Friston, 2012). For review see (Daunizeau, David, and Stephan, 2011).…”
Section: Defining the Oscillations In Terms Of Emerging From The Braimentioning
confidence: 99%
“…This approach was extended to coupled neural masses through a Bayesian estimation scheme called dynamic causal modeling (DCM) (David and Friston, 2003). Following this work, data-driven modeling was extended to continuum field equations that explained the richer dynamics of spatiotemporal neural fields (Galka et al, 2008;Schiff and Sauer, 2008;Daunizeau et al, 2009;Pinotsis et al, 2012). Most recently, a framework was developed where a finite-element model of the neural field (via a dynamic Galerkin projection) was formed, using a basis function decomposition, to transform the PDE neural field equations into a finite-dimensional system to facilitate efficient state and parameter estimation (Freestone et al, 2011).…”
Section: Introductionmentioning
confidence: 99%