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Wellcome Dept. of Imaging Neuroscience University College London

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Presentation on theme: "Wellcome Dept. of Imaging Neuroscience University College London"— Presentation transcript:

1 Wellcome Dept. of Imaging Neuroscience University College London
Group analyses Will Penny Wellcome Dept. of Imaging Neuroscience University College London

2 Data Time fMRI, single subject EEG/MEG, single subject
fMRI, multi-subject ERP/ERF, multi-subject Hierarchical model for all imaging data!

3 Reminder: voxel by voxel
model specification parameter estimation Time hypothesis statistic Time Intensity single voxel time series SPM

4 General Linear Model = +
Error Covariance Model is specified by Design matrix X Assumptions about e N: number of scans p: number of regressors

5 2. Weighted Least Squares
Estimation 1. ReML-algorithm L l g 2. Weighted Least Squares Friston et al. 2002, Neuroimage

6 Hierarchical model Multiple variance components at each level
At each level, distribution of parameters is given by level above. What we don’t know: distribution of parameters and variance parameters.

7 Example: Two level model
= + = + Second level First level

8 Estimation Hierarchical model Single-level model

9 Group analysis in practice
Many 2-level models are just too big to compute. And even if, it takes a long time! Is there a fast approximation?

10 Summary Statistics approach
First level Second level Data Design Matrix Contrast Images SPM(t) One-sample 2nd level

11 Validity of approach The summary stats approach is exact if for each session/subject: Within-session covariance the same First-level design the same All other cases: Summary stats approach seems to be robust against typical violations.

12 Auditory Data Summary statistics Hierarchical Model
Friston et al. (2004) Mixed effects and fMRI studies, Neuroimage

13 Multiple contrasts per subject
Stimuli: Auditory Presentation (SOA = 4 secs) of words Motion Sound Visual Action “jump” “click” “pink” “turn” Subjects: (i) 12 control subjects fMRI, 250 scans per subject, block design Scanning: What regions are affected by the semantic content of the words? Question: U. Noppeney et al.

14 ANOVA = = = ? ? ? 1st level: 2nd level: 1.Motion 2.Sound 3.Visual
4.Action ? = ? = ? = 2nd level:

15 ANOVA 1st level: Motion Sound Visual Action ? = ? = ? = 2nd level:

16 Summary Linear hierarchical models are general enough for typical multi-subject imaging data (PET, fMRI, EEG/MEG). Summary statistics are robust approximation for group analysis. Also accomodates multiple contrasts per subject.


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