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Abstract Dynamic causal modelling (2003)

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  • [www.fmri.org]
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  • [www.fil.ion.ucl.ac.uk]
  • [psych.stanford.edu]
  • [spin.ecn.purdue.edu]

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by K. J. Friston , L. Harrison , W. Penny
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BibTeX

@MISC{Friston03abstractdynamic,
    author = {K. J. Friston and L. Harrison and W. Penny},
    title = {Abstract Dynamic causal modelling},
    year = {2003}
}

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Abstract

In this paper we present an approach to the identification of nonlinear input–state–output systems. By using a bilinear approximation to the dynamics of interactions among states, the parameters of the implicit causal model reduce to three sets. These comprise (1) parameters that mediate the influence of extrinsic inputs on the states, (2) parameters that mediate intrinsic coupling among the states, and (3) [bilinear] parameters that allow the inputs to modulate that coupling. Identification proceeds in a Bayesian framework given known, deterministic inputs and the observed responses of the system. We developed this approach for the analysis of effective connectivity using experimentally designed inputs and fMRI responses. In this context, the coupling parameters correspond to effective connectivity and the bilinear parameters reflect the changes in connectivity induced by inputs. The ensuing framework allows one to characterise fMRI experiments, conceptually, as an experimental manipulation of integration among brain regions (by contextual or trial-free inputs, like time or attentional set) that is revealed using evoked responses (to perturbations or trial-bound inputs, like stimuli). As with previous analyses of effective connectivity, the focus is on experimentally induced changes in coupling (cf., psychophysiologic interactions). However, unlike previous approaches in neuroimaging, the causal model ascribes responses to designed deterministic inputs, as opposed to treating inputs as unknown and stochastic.

Keyphrases

effective connectivity    abstract dynamic causal    bilinear parameter    deterministic input    causal model ascribes response    previous analysis    observed response    trial-bound input    identification proceeds    evoked response    attentional set    psychophysiologic interaction    brain region    fmri experiment    trial-free input    intrinsic coupling    extrinsic input    nonlinear input state output system    experimental manipulation    bilinear approximation    fmri response    implicit causal model    previous approach    bayesian framework   

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