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Multimodal Brain Imaging Will D. Penny FIL, London Guillaume Flandin, CEA, Paris Nelson Trujillo-Barreto, CNC, Havana
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Experimental Manipulation Neuronal Activity MEG,EEG Optical Imaging PET fMRI Single/multi-unit recordings Spatial convolution via Maxwell’s equations Temporal convolution via Hemodynamic/Balloon models FORWARD MODELS Sensorimotor Memory Language Emotion Social cognition
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Experimental Manipulation Neuronal Activity MEG,EEG fMRI Spatial deconvolution via beamformers Temporal deconvolution via model fitting/inversion INVERSION 1. Spatio-temporal deconvolution 2. Probabilistic treatment
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Overview Spatio-temporal deconvolution for M/EEG Spatio-temporal deconvolution for fMRI Towards models for multimodal imaging
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Spatio-temporal deconvolution for M/EEG Add temporal constraints in the form of a General Linear Model to describe the temporal evolution of the signal. Puts M/EEG analysis into same framework as PET/fMRI analysis. Work with Nelson. Described in chapter of new SPM book.
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Generative Model: Hyperpriors:
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Variational Bayes: Mean-Field Approximation Repeat Update source estimates, q(j) Update regression coefficients, q(w) Update spatial precisions, q( ) Update temporal precisions, q( ) Update sensor precisions, q( ) Until change in F is small L F KL
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Mean-Field Approximation: Approximated posteriors:
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Corr(R3,R4)=0.47
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o + 500ms Low Symmetry Low Asymmetry High Symmetry High Asymmetry Phase 1 Time 600ms + 700ms + o 2456ms + FaFa + SbSb UbUb + SaSa Henson R. et al., Cerebral Cortex, 2005
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B8 A1 Faces minus Scrambled Faces 170ms post-stimulus
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B8A1 Faces Scrambled Faces
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Daubechies Cubic Splines Wavelets
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28 Basis Functions 30 Basis Functions Daubechies-4
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ERP Faces ERP Scrambled
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t = 170 ms
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Faces – Scrambled faces: Difference of absolute values
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Spatio-temporal deconvolution for fMRI Temporal evolution is described by GLM in the usual way. Add spatial constraints on regression coefficients in the form of a spatial basis set eg. spatial wavelets. Automatically select the appropriate basis subset using a mixture prior which switches off irrelevant bases. Embed this in a probabilistic model. Work with Guillaume. To appear in Neuroimage very soon.
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Spatial Model eg. Wavelets
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Mixture prior on wavelet coefficients (1)Wavelet switches: d=1 if coefficient is ON. Occurs with probability (2)If switch is on, draw z from the fat Gaussian.
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Probabilistic Generative Model fMRI data General Linear Model Wavelet coefficients Temporal Model Spatial Model Wavelet switches Switch priors
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Compare to (i) GMRF prior used in M/EEG and (ii) no prior
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Inversion using wavelet priors is faster than using standard EEG priors
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Results on face fMRI data
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Towards multimodal imaging Use simultaneous EEG- fMRI to identify relationship Between EEG and BOLD (MMN and Flicker paradigms) EEG is compromised -> artifact removal Testing the `heuristic’ Start work on specifying generative models Ongoing work with Felix Blankenburg and James Kilner
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fMRI results
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We have “synchronized sEEG-fMRI” – MR clock triggers both fMRI and EEG acquisition; after each trigger we get 1 slice of fMRI and 65ms worth of EEG. Synchronisation makes removal of GA artefact easier MRI Gradient artefact removal from EEG
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Ballistocardiogram removal Could identify QRS complex from ECG to set up a ‘BCG window’ for subsequent processing
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Ballistocardiogram removal
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The EEG-BOLD heuristic (Kilner, Mattout, Henson & Friston) contends that increases in average EEG frequency predict BOLD activation. g(w) = spectral density Testing the heuristic
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RMSF for Marta’s data at Cz
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Log of Bayes factor for Heuristic versus Null
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Log of Bayes factor for Heuristic versus Alpha
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Tentative probabilistic generative model
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THANK-YOU FOR YOUR ATTENTION !
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