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2004 All Hands Meeting Analysis of a Multi-Site fMRI Study Using Parametric Response Surface Models Seyoung Kim Padhraic Smyth Hal Stern (University of California, Irvine)
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Multi-Site fMRI Study Data collection - sensorimotor task Human Phantom Data for Five Subjects 10 sites 4 runs per visit, 2 visits in each site Preprocessing with SPM99 The correction of head motion, normalization to a common brain space, spatial smoothing β map : an activation map estimated from the fMRI time series using general linear model Regions of interest Left/right precentral gyrus (motor region) Left/right superior temporal gyrus (auditory region) Left/right occipital lobe (visual region)
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fMRI Activation Pattern Spatial correlation of activation across voxels bell shapes in local regions location of the activation centers size of peak activations area of the local activation cluster Beta Coefficients Whole brain 2D slice of β-map (Sensorimotor task)
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Activation Shape Variability in activation shape More consistency in the location of activation centers across runs within sites than between sites Extract shape features and analyze variability on the features Run 1-4, subject 3, visit 2 A 2-dimensional slice of right precentral gyrus at z=53
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Parametric Response Surface Model Superposition of M Gaussian surfaces with background For βvalue at pixel x = (x 1, x 2 ) (2-dimensional slice) M : number of Gaussian components µ : background activation level For each of the mth Gaussian component (m = 1, …, M) b m : location of activation center k m : size of peak activation σ m : volume under the surface
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Parameter Estimation with Stochastic Search Posterior simulation in Bayesian framework Markov chain Monte Carlo (MCMC) Useful when direct sampling is not possible in highly nonlinear model Summarize the posterior distribution with the mean of samples In our implementation Run MCMC for 20,000 iterations Estimate the parameters as the sample mean of the last 10,000 iterations
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Analysis For preliminary analysis, focus on Sensorimotor data Subject 1, 3 (from 10 sites, 2 visits, 4 runs) 2D cross sections Right precentral gyrus at z=53 Left superior temporal gyrus at z=33 Number of Gaussian components (M) were chosen from visual inspection
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Raw Data vs. Learned Surface Raw data Subject 3, visit 2, run 3 Estimated surface Right precentral gyrus at z=53 Left superior temporal gyrus at z=33
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Cross Site Variability (in Estimated Activation Centers b m, Right Precentral Gyrus z=53, Subject 3) Visit level variability Run level variability
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Cross Site Variability (in Estimated Activation Centers b m, Right Precentral Gyrus at z=53, Subject 3) Site level variability
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Variance Component Analysis Quantifying the contributions of different effects to the total variability in estimated shape parameters Variance component model y ijk : response, shape parameters u : overall mean effect s i : effect from site i v ij : effect from visit j of site i r ijk : effect from run k of site i, visit j
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Experiments Estimation with Gibbs sampler winBugs implementation 1,000,000 iterations Use the mean of the last 200,000 samples as variance component estimates Analyzed each subject, activation component separately Report the proportions of variance components
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Variance Components Estimates (Right Precentral Gyrus at z=53) Subject 1Subject 3 HeightLocationHeightLocation Bump1Bump2Bump1Bump2 Site0.510.860.500.580.670.90 Visit0.220.070.130.180.020.03 Runs0.270.070.370.240.310.07
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Variance Component Estimates (Left Superior Temporal Gyrus at z=33) Subject 1Subject 3 HeightLocationHeightLocation Bump1Bump2Bump1Bump2Bump1Bump2Bump1Bump2 Site0.250.520.050.060.490.590.400.45 Visit0.420.250.180.030.120.050.040.02 Run0.330.230.770.910.390.360.560.53
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Conclusions and Future Work The parametric response surface modeling is potentially useful in the analysis of multi-site fMRI data Need to develop methods to automatically determine M Analysis of the data in 3D space Build a hierarchical model for estimating the surface models across subjects and sites Analysis in the flattened cortical surface rather than in 3D volumes
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