When modelling FMRI and other MRI time-series data, a Bayesian approach based on adaptive spatial smoothness priors is a compelling alternative to using a standard generalized linear model (GLM) on presmoothed data. Another benefit of the Bayesian approach is that biophysical prior information can be incorporated in a principled manner; however, this requirement for a fixed non-spatial prior on a parameter would normally preclude using spatial regularization on that same parameter. We have developed a Gaussian-process-based prior to apply adaptive spatial regularization while still ensuring that the fixed biophysical prior is correctly applied on each voxel. A parameterized covariance matrix provides separate control over the variance (the ...
Human brain mapping, i.e. the detection of functional regions and their connections, has experienced...
In this research work, I propose Bayesian nonparametric approaches to model functional magnetic reso...
In recent years, Bayesian statistics methods in neuroscience have been showing important advances. I...
We describe a Bayesian estimation and inference procedure for fMRI time series based on the use of G...
Existing Bayesian spatial priors for functional magnetic resonance imaging (fMRI) data correspond to...
In previous work we have described a spatially regularised General Linear Model (GLM) for the analys...
Bayesian whole-brain functional magnetic resonance imaging (fMRI) analysis with three-dimensional sp...
We propose a Bayesian smoothness prior in the spectral fitting of MRS images which can be used in ad...
In this paper we propose a procedure to undertake Bayesian variable selection and model averaging fo...
AbstractWe describe a Bayesian scheme to analyze images, which uses spatial priors encoded by a diff...
University of Minnesota Ph.D. dissertation. January 2015. Major: Statistics. Advisors: Galin Jones a...
Spatial models of functional magnetic resonance imaging (fMRI) data allow one to estimate the spatia...
In this paper, we analyze Markov Random Field (MRF) as a spatial regularizer in fMRI detection. The ...
AbstractWe recently outlined a Bayesian scheme for analyzing fMRI data using diffusion-based spatial...
Purpose. To develop a method that can reduce and estimate uncertainty in quantitative MR parameter m...
Human brain mapping, i.e. the detection of functional regions and their connections, has experienced...
In this research work, I propose Bayesian nonparametric approaches to model functional magnetic reso...
In recent years, Bayesian statistics methods in neuroscience have been showing important advances. I...
We describe a Bayesian estimation and inference procedure for fMRI time series based on the use of G...
Existing Bayesian spatial priors for functional magnetic resonance imaging (fMRI) data correspond to...
In previous work we have described a spatially regularised General Linear Model (GLM) for the analys...
Bayesian whole-brain functional magnetic resonance imaging (fMRI) analysis with three-dimensional sp...
We propose a Bayesian smoothness prior in the spectral fitting of MRS images which can be used in ad...
In this paper we propose a procedure to undertake Bayesian variable selection and model averaging fo...
AbstractWe describe a Bayesian scheme to analyze images, which uses spatial priors encoded by a diff...
University of Minnesota Ph.D. dissertation. January 2015. Major: Statistics. Advisors: Galin Jones a...
Spatial models of functional magnetic resonance imaging (fMRI) data allow one to estimate the spatia...
In this paper, we analyze Markov Random Field (MRF) as a spatial regularizer in fMRI detection. The ...
AbstractWe recently outlined a Bayesian scheme for analyzing fMRI data using diffusion-based spatial...
Purpose. To develop a method that can reduce and estimate uncertainty in quantitative MR parameter m...
Human brain mapping, i.e. the detection of functional regions and their connections, has experienced...
In this research work, I propose Bayesian nonparametric approaches to model functional magnetic reso...
In recent years, Bayesian statistics methods in neuroscience have been showing important advances. I...