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Bayesian Inference in SPM2

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1 Bayesian Inference in SPM2
Will Penny K. Friston, J. Ashburner, J.-B. Poline, R. Henson, S. Kiebel, D. Glaser Wellcome Department of Imaging Neuroscience, University College London, UK

2 SPM99 fMRI time-series Kernel Design matrix
Inference with Gaussian field theory Statistical parametric map (SPM) Realignment Smoothing General linear model Normalisation Adjusted regional data spatial modes and effective connectivity Template Parameter estimates

3 What’s new in SPM2 ? Spatial transformation of images Batch Mode
Modelling and Inference Expectation-Maximisation (EM) Restricted Maximum Likelihood (ReML) Parametric Empirical Bayes (PEB)

4 Hierarchical models Parametric Hierarchical Empirical model
Bayes (PEB) Hierarchical model Restricted Maximimum Likelihood (ReML) Single-level model

5 Bayes Rule

6 Example 2:Univariate model
Likelihood and Prior Posterior Relative Precision Weighting

7 Example 2:Multivariate two-level model
Likelihood and Prior Data-determined parameters Assume diagonal precisions Posterior Precisions Assume Shrinkage Prior

8 General Case: Arbitrary Error Covariances
EM algorithm E-Step ( ) y C X T 1 - = e q h M-Step r for i and j { } { Q tr J g i j ij k å + l Friston, K. et al. (2002), Neuroimage

9 Pooling assumption Decompose error covariance at each voxel, i, into
a voxel specific term, r(i), and voxel-wide terms.

10 What’s new in SPM2 ? Corrections for Non-Sphericity
Posterior Probability Maps (PPMs) Haemodynamic modelling Dynamic Causal Modelling (DCM)

11 Non-sphericity Relax assumption that errors are Independent and Identically Distributed (IID) Non-independent errors eg. repeated measures within subject Non-identical errors eg. unequal condition/subject error variances Correlation in fMRI time series Allows multiple parameters at 2nd level ie. RFX

12 Single-subject contrasts from Group FFX
PET Verbal Fluency SPMs,p<0.001 uncorrected Single-subject contrasts from Group FFX Non-identical error variances Sphericity Non-sphericity

13 Correlation in fMRI time series
Model errors for each subject as AR(1) + white noise.

14 The Interface PEB OLS Parameters Parameters, and REML Hyperparameters
No Priors Shrinkage priors

15 Bayesian estimation: Two-level model
1st level = within-voxel Likelihood Shrinkage Prior In the absence of evidence to the contrary parameters will shrink to zero 2nd level = between-voxels

16 Bayesian Inference: Posterior Probability Maps
PPMs Posterior Likelihood Prior SPMs

17 SPMs and PPMs PPMs: Show activations of a given size
SPMs: show voxels with non-zero activations

18 PPMs Advantages Disadvantages Use of Shrinkage One can infer a cause
priors over voxels is computationally demanding Utility of Bayesian approach is yet to be established One can infer a cause DID NOT elicit a response SPMs conflate effect-size and effect-variability No multiple comparisons problem (hence no smoothing) P-values don’t change with search volume

19 The Interface Hemodynamic Modelling

20 The hemodynamic model

21 Hemodynamics

22 Inference with MISO models
FUNCTIONAL SEGREGATION: This voxel IS NOT responsive to attention

23 The Interface Dynamic Causal Modelling

24 Extension to a MIMO system
The bilinear model neuronal changes intrinsic connectivity induced response Input u(t) activity x1(t) x3(t) x2(t) hemodynamics response y(t)=(X) Hemodynamic model

25 Dynamical Causal Models
Functional integration and the modulation of specific pathways V1 V4 BA37 STG BA39 Cognitive set - u2(t) {e.g. semantic processing} Stimuli - u1(t) {e.g. visual words}


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