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cudaBayesreg (version 0.2-1)

CUDA Parallel Implementation of a Bayesian Multilevel Model for fMRI Data Analysis

Description

Compute Unified Device Architecture (CUDA) is a software platform for massively parallel high-performance computing on NVIDIA GPUs. This package provides a CUDA implementation of a Bayesian multilevel model for the analysis of brain fMRI data. A fMRI data set consists of time series of volume data in 4D space. Typically, volumes are collected as slices of 64 x 64 "voxels". Analysis of fMRI data often relies on fitting linear regression models at each voxel of the brain. The volume of the data to be processed, and the type of statistical analysis to perform in fMRI analysis, call for high-performance computing strategies. In this package, the CUDA programming model uses a separate thread for fitting a linear regression model at each voxel in parallel. The global statistical model implements a Gibbs Sampler for hierarchical linear models with a normal prior. This model has been proposed by Rossi, Allenby and McCulloch in "Bayesian Statistics and Marketing", Chapter 3, and is referred to as "rhierLinearModel" in the R-package "bayesm". A notebook equipped with a NVIDIA "GeForce 8400M GS" card having Compute Capability 1.1 has been used in the tests.

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Version

Install

install.packages('cudaBayesreg')

Monthly Downloads

36

Version

0.2-1

License

GPL (>= 2)

Maintainer

Adelino da Silva

Last Published

December 21st, 2009

Functions in cudaBayesreg (0.2-1)

post.tseries

Show fitted time series of active voxel
mask

Example of mask file used in processing the real audio-visual dataset "fmri.nii.gz"
read.fmrisample

Read fMRI data
design

Example of real audio-visual dataset
fmri

Example of real audio-visual dataset
post.ppm

Posterior Probability Map (PPM) Image
premask

Mask out voxels with constant time-series
filtered_func_data

Example pre-processed real audio-visual dataset
plot.hcoef.post

Plot Method for Hierarchical Model Coefficients
post.simul.betadraw

Postprocessing of MCMC simulation
post.simul.hist

Histogram of the posterior distribution of a regression coefficient
pmeans.hcoef

Posterior mean for each regression variable
cudaMultireg.slice

CUDA Parallel Implementation of a Bayesian Multilevel Model for fMRI Data Analysis
regpostsim

Estimation of voxel activations