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Bayesian Spatiotemporal Inference in Functional Magnetic Resonance Imaging
by
Gössl, C.
, Auer, D. P.
, Fahrmeir, L.
in
Bayes Theorem
/ Bayesian theory
/ Biometrics
/ biometry
/ Biometry - methods
/ brain
/ Brain - physiology
/ Brain Mapping - methods
/ cognition
/ Dynamic modeling
/ Functional magnetic resonance imaging
/ Human brain mapping
/ Humans
/ Inference
/ Magnetic resonance imaging
/ Magnetic Resonance Imaging - methods
/ MCMC
/ Models, Neurological
/ Parametric models
/ Pixels
/ Semiparametric modeling
/ Semiparametric models
/ Spatial models
/ Spatiotemporal models
/ Statistical discrepancies
/ Time series
/ time series analysis
2001
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Bayesian Spatiotemporal Inference in Functional Magnetic Resonance Imaging
by
Gössl, C.
, Auer, D. P.
, Fahrmeir, L.
in
Bayes Theorem
/ Bayesian theory
/ Biometrics
/ biometry
/ Biometry - methods
/ brain
/ Brain - physiology
/ Brain Mapping - methods
/ cognition
/ Dynamic modeling
/ Functional magnetic resonance imaging
/ Human brain mapping
/ Humans
/ Inference
/ Magnetic resonance imaging
/ Magnetic Resonance Imaging - methods
/ MCMC
/ Models, Neurological
/ Parametric models
/ Pixels
/ Semiparametric modeling
/ Semiparametric models
/ Spatial models
/ Spatiotemporal models
/ Statistical discrepancies
/ Time series
/ time series analysis
2001
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Do you wish to request the book?
Bayesian Spatiotemporal Inference in Functional Magnetic Resonance Imaging
by
Gössl, C.
, Auer, D. P.
, Fahrmeir, L.
in
Bayes Theorem
/ Bayesian theory
/ Biometrics
/ biometry
/ Biometry - methods
/ brain
/ Brain - physiology
/ Brain Mapping - methods
/ cognition
/ Dynamic modeling
/ Functional magnetic resonance imaging
/ Human brain mapping
/ Humans
/ Inference
/ Magnetic resonance imaging
/ Magnetic Resonance Imaging - methods
/ MCMC
/ Models, Neurological
/ Parametric models
/ Pixels
/ Semiparametric modeling
/ Semiparametric models
/ Spatial models
/ Spatiotemporal models
/ Statistical discrepancies
/ Time series
/ time series analysis
2001
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Bayesian Spatiotemporal Inference in Functional Magnetic Resonance Imaging
Journal Article
Bayesian Spatiotemporal Inference in Functional Magnetic Resonance Imaging
2001
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Overview
Mapping of the human brain by means of functional magnetic resonance imaging (fMRI) is an emerging field in cognitive and clinical neuroscience. Current techniques to detect activated areas of the brain mostly proceed in two steps. First, conventional methods of correlation, regression, and time series analysis are used to assess activation by a separate, pixelwise comparison of the fMRI signal time courses to the reference function of a presented stimulus. Spatial aspects caused by correlations between neighboring pixels are considered in a separate second step, if at all. The aim of this article is to present hierarchical Bayesian approaches that allow one to simultaneously incorporate temporal and spatial dependencies between pixels directly in the model formulation. For reasons of computational feasibility, models have to be comparatively parsimonious, without oversimplifying. We introduce parametric and semiparametric spatial and spatiotemporal models that proved appropriate and illustrate their performance applied to visual fMRI data.
Publisher
Blackwell Publishing Ltd,International Biometric Society
Subject
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