In this work an Empirical Markov Chain Monte Carlo Bayesian approach to analyse fMRI data is proposed. The Bayesian framework is appealing since complex models can be adopted in the analysis both for the image and noise model. Here, the noise autocorrelation is taken into account by adopting an AutoRegressive model of order one and a versatile non-linear model is assumed for the task-related activation. Model parameters include the noise variance and autocorrelation, activation amplitudes and the hemodynamic response function parameters. These are estimated at each voxel from samples of the Posterior Distribution. Prior information is included by means of a 4D spatio-temporal model for the interaction between neighbouring voxels in space an...
A Bayesian spatial model for detecting brain activation in functional neuroimaging (here focusing on...
Detecting which voxels or brain regions are activated by an external stimulus is a common objective ...
University of Minnesota Ph.D. dissertation. January 2015. Major: Statistics. Advisors: Galin Jones a...
In this work an Empirical Markov Chain Monte Carlo Bayesian approach to analyse fMRI data is propose...
In this research work, I propose Bayesian nonparametric approaches to model functional magnetic reso...
We propose a voxel-wise general linear model with autoregressive noise and heteroscedastic noise inn...
We present a fully Bayesian approach to modeling in functional magnetic resonance imaging (FMRI), in...
Functional magnetic resonance imaging (fMRI) has led to enormous progress in human brain mapping. Ad...
We describe a Bayesian estimation and inference procedure for fMRI time series based on the use of G...
A Bayesian approach is proposed for statistical analysis of fMRI data sets in a two state (on-off) a...
We present a Bayesian nonparametric regression model for the analysis of multiple-subject functional...
A fundamental question in functional MRI (fMRI) data analysis is to declare pixels either activated ...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, i.e., the ...
Functional magnetic resonance imaging (fMRI), a noninvasive neuroimaging method that provides an ind...
Functional magnetic resonance imaging (fMRI) is the most popular technique in human brain mapping, w...
A Bayesian spatial model for detecting brain activation in functional neuroimaging (here focusing on...
Detecting which voxels or brain regions are activated by an external stimulus is a common objective ...
University of Minnesota Ph.D. dissertation. January 2015. Major: Statistics. Advisors: Galin Jones a...
In this work an Empirical Markov Chain Monte Carlo Bayesian approach to analyse fMRI data is propose...
In this research work, I propose Bayesian nonparametric approaches to model functional magnetic reso...
We propose a voxel-wise general linear model with autoregressive noise and heteroscedastic noise inn...
We present a fully Bayesian approach to modeling in functional magnetic resonance imaging (FMRI), in...
Functional magnetic resonance imaging (fMRI) has led to enormous progress in human brain mapping. Ad...
We describe a Bayesian estimation and inference procedure for fMRI time series based on the use of G...
A Bayesian approach is proposed for statistical analysis of fMRI data sets in a two state (on-off) a...
We present a Bayesian nonparametric regression model for the analysis of multiple-subject functional...
A fundamental question in functional MRI (fMRI) data analysis is to declare pixels either activated ...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, i.e., the ...
Functional magnetic resonance imaging (fMRI), a noninvasive neuroimaging method that provides an ind...
Functional magnetic resonance imaging (fMRI) is the most popular technique in human brain mapping, w...
A Bayesian spatial model for detecting brain activation in functional neuroimaging (here focusing on...
Detecting which voxels or brain regions are activated by an external stimulus is a common objective ...
University of Minnesota Ph.D. dissertation. January 2015. Major: Statistics. Advisors: Galin Jones a...