2007
DOI: 10.1198/016214506000001031
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Spatial Bayesian Variable Selection With Application to Functional Magnetic Resonance Imaging

Abstract: We propose a procedure to undertake Bayesian variable selection and model averaging for a series of regressions located on a lattice. For those regressors that are in common in the regressions, we consider using an Ising prior to smooth spatially the indicator variables representing whether or not the variable is zero or nonzero in each regression. This smooths spatially the probabilities that each independent variable is nonzero in each regression and indirectly smooths spatially the regression coefficients. … Show more

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Cited by 120 publications
(161 citation statements)
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“…For example, hidden Markov models assume a linear graph, and are very useful for segmentation of onedimensional data. Two-dimensional to three-dimensional lattices have been used for the smoothing of fMRI data (Smith and Fahrmeir 2007). Informative priors for related covariates (e.g., interactions, grouped covariates), which can be viewed as overlaying on undirected acyclic graphs, were also discussed before by Chipman (1996).…”
Section: Introductionmentioning
confidence: 99%
“…For example, hidden Markov models assume a linear graph, and are very useful for segmentation of onedimensional data. Two-dimensional to three-dimensional lattices have been used for the smoothing of fMRI data (Smith and Fahrmeir 2007). Informative priors for related covariates (e.g., interactions, grouped covariates), which can be viewed as overlaying on undirected acyclic graphs, were also discussed before by Chipman (1996).…”
Section: Introductionmentioning
confidence: 99%
“…Using a Bayesian hierarchical approach we further explored the variable selection principle, used previously to detect evoked brain activity [6], as a tool to perform relevant condition selection. Experiments on synthetic and real data suggested the ability of our model to accurately select and exploit the most relevant stimulus types.…”
Section: Discussionmentioning
confidence: 99%
“…In a regression context, the idea of adding such indicator variables is usually referred to as variable selection (see e.g. [5]) and has been used in [6,2] to capture evoked brain activity in a sparse manner. In the JDE framework, this activity detection task is already handled within the model in a more general way.…”
Section: Introductionmentioning
confidence: 99%
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“…Following recent advances in convex optimization theory, these methods can be made more sophisticated by adding sparse priors on the underlying signal and solve maximum a posteriori estimation rather than naive maximum likelihood estimation. They have been exploited as an extension to standard GLM analysis by defining spatial priors on spatial activation maps (Flandin and Penny, 2007;Harrison et al, 2008;Smith and Fahrmeir, 2007;Vincent et al, 2010). Within a temporal fMRI deconvolution framework, while the linear system assumption on the hemodynamic model is retained, regularization terms use ' 1 -norm to favor sparse solutions in time; i.e., a limited number of spike-like activations.…”
Section: Introductionmentioning
confidence: 99%