Title: Bayesian fMRI analysis with Spatial Basis Function Priors
1Bayesian fMRI analysis with Spatial Basis
Function Priors
Variational Bayes scheme for voxel-specific GLM
using wavelet-based spatial priors for the
regression coefficients
- Guillaume Flandin Will Penny
SPM Homecoming, Nov. 11 2004
2Spatial prior using a kernel
- Spatial prior over regression and AR coefficients
- Data-driven estimation of the amount of smoothing
(different for each regressor) - Does not handle spatial variations in
smoothness? spatial basis set prior
Penny et al, NeuroImage, 2004
3Orthonormal Discrete Wavelet Basis Set
- Decomposition of time series/spatial processes on
an orthonormal basis set with - Multiresolution time-frequency/scale-space
properties - Natural adaptivity to local or nonstationary
features
- Good properties
- Decorrelation / Whitening,
- Sparseness / Compaction,
- Fast implementation with a pyramidal algorithm
in O(N) complexity
Increased levelsFewer wavelet coefficients
4Orthonormal Discrete Wavelet Transform (DWT)
Wavelet coefficients Nx1
Data Nx1
Set of wavelet basis functions NxN
- Inverse transform
- Multidimensional transform
- No need to build V in practice, thanks to
Mallats pyramidal algorithm.
Daubechies Wavelet Filter Coefficients
5Wavelet shrinkage or nonparametric regression
- Signal denoising technique based on the idea of
thresholding wavelet coefficients.
DWT
IDWT
Thresh.
Nonlinear operator ?
DWT
gt Threshold ?
63D denoising of a regression coefficient map
Histogram of the wavelet coefficients
7Bayesian Wavelet Shrinkage
- Wavelet coefficients are a priori independent,
- The prior density of each coefficient is given by
a mixture of two zero-mean Gaussian.
- Consider each level separately
- Applied only to detail levels
Negligible coeffs.
Significant coeffs.
- Estimation of the parameters via an Empirical
Bayes algorithm
8Generative model
9Variational Bayes
Approximate posteriors
- Iteratively updating Summary Statistics to
maximise a lower bound on evidence
10Summary / Future
- Variational Bayes scheme for voxel-specific GLM
using wavelet-based spatial priors for the
regression coefficients - Replace the mono scale Gaussian filtering (gt
anisotropic smoothing amount of smoothness
estimated from data) - Lower the quantity of data to deal with in the
iterative algorithm
- Implementation gt spm_vb_(2D vs. 3D,
level-dependent parameters, Gibbs-like
oscillations, ) - General framework which allows lots of
adaptations and improvements
11Wavelet denoising
- Signal denoising technique based on the idea of
thresholding wavelet coefficients