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Voxel Based Morphometry

Voxel Based Morphometry. Methods for Dummies 2012 Merina Su and Elin van Duin. Rebel with a cause.

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Voxel Based Morphometry

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  1. Voxel Based Morphometry Methods for Dummies 2012 Merina Su and Elin van Duin

  2. Rebel with a cause “… a linear relationship between grey matter volume (GM) in a region of lateral orbitofrontal cortex (lOFCGM) and the tendency to shift reported desire for objects toward values expressed by other people.” Daniel K. Campbell-Meiklejohn, Ryota Kanai, Bahador Bahrami, Dominik R. Bach, Raymond J. Dolan, Andreas Roepstorff, Chris D. Frith. Structure of orbitofrontal cortex predicts social influence. Current Biology, 2012; 22 (4): R123 DOI: 10.1016/j.cub.2012.01.012

  3. VBM • General Idea • Preprocessing • Analysis

  4. VBM overview • Based on comparing regional volumes of tissue among populations of subjects Whole brain instead of comparing volumes of particular structures such as the hippocampus • Produce a map of statistically significant differences among populations of subjects • compare a patient group with a control group • identify correlations with age, test-score etc.

  5. Computational neuranatomy Deformation-based morphometryLooks at macroscopic differences in brain shape. Uses the deformation fields needed to warp an individual brain to a standard reference. Tensor-based morphometryDifferences in the local shape of brain structures Voxel based morphometryDifferences in regional volumes of tissue

  6. Procedure overview

  7. Spatial normalisation • Transforming all the subject’s data to the same stereotactic space • Corrects for global brain shape differences • Choice of the template image shouldn’t bias final result

  8. Segmentation • Images are partitioned into:- Grey matter- White matter- CSFExtra tissue maps can be generated • SPM uses a generative model, which involves:- Mixture of Gaussians- Bias Correction Component- Warping Component

  9. Segmentation 2 sources of information: • Spatial prior probability maps:• Intensity at each voxel = probability of being GM/WM/CSF• Comparison: original image to priors• Obtained: probability of each voxel in the image being a certain tissue type 2) Intensity information in the image itself• Intensities in the image fall into roughly 3 classes• SPM assigns a voxel to a tissue class based on its intensity relative to the others in the image• Each voxel has a value between 0 and 1, representing the probability of it being in that particular tissue class

  10. Segmentation frequency image intensity

  11. Smoothing

  12. Non-modulated:– Relative concentration/ density: the proportion of GM (or WM) relative to other tissue types within a region– Hard to interpret Modulated: - Absolute volumes Modulation Modulation: multiplying the spatially normalised gray matter (or other tissue class) by its relative volume before and after spatial transformation

  13. Preprocessing in SPM: Diffeomorphic Anatomical Registration using Exponentiated Lie algebra (DARTEL) registration • Use New Segment for characterising intensity distributions of tissue classes, and writing out “imported” images that DARTEL can use • Run DARTEL to estimate all the deformations • DARTEL warping to generate smoothed, “modulated”, warped grey matter.

  14. Limitations of the current model Assumes that the brain consists of only the tissues modelled by the TPMs No spatial knowledge of lesions (stroke, tumours, etc) Prior probability model is based on relatively young and healthy brains Less accurate for subjects outside this population Needs reasonable quality images to work with No severe artefacts Good separation of intensities Reasonable initial alignment with TPMs.

  15. Assumptions • You must be measuring the right thing, i.e. your segmentation must correctly identify gray and white matter • Avoid confounding effects: use the same scanner and same MR sequences for all subjects • For using parametric tests the data needs to be normally distributed

  16. SPM for group fMRI Group-wisestatistics fMRI time-series Preprocessing Spatially Normalised “Contrast” Image spm TImage fMRI time-series Preprocessing Spatially Normalised “Contrast” Image fMRI time-series Preprocessing Spatially Normalised “Contrast” Image

  17. SPM for Anatomical MRI Group-wisestatistics Anatomical MRI Preprocessing Spatially Normalised Grey Matter Image spm TImage Anatomical MRI Preprocessing Spatially Normalised Grey Matter Image Anatomical MRI Preprocessing Spatially Normalised Grey Matter Image

  18. Statistical analysis VBM Types of analysis What does SPM show? Multiple corrections problem Things to consider… Interpreting results

  19. Types of analysis Group comparison Correlation a known score or value • Where in the brain are there associations between brain volume and test score? • Where in the brain do the Simpsons and the Griffins have differences in brain volume?

  20. General Linear Model e.g, compare the GM/ WM differences between 2 groups Y=Xβ + ε H0: there is no difference between these groups β: other covariates, not just the mean

  21. VBM: group comparison Intensity for each voxel (V) is a function that models the different things that account for differences between scans: V = β1(Simpsons) + β2(Griffin) + β3(covariates) + β4(global volume) + μ + ε GLM: Y=Xβ + ε • V = β1(Simpsons) + β2(Griffin) + β3(age) + β4(gender) + β5(global volume) + μ + ε • In practice, the contrast of interest is usually t-test between β1 and β2 “Is there significantly more GM (higher v) in the controls than in the AD scans and does this explains the value in v much better than any other covariate?”

  22. Statistical Parametric Mapping… group 1 group 2 – parameter estimate standard error statistic image orSPM = voxel by voxelmodelling

  23. VBM: correlation Correlate images and test scores (eg Simpson’s family with IQ) SPM shows regions of GM or WM where there are significant associations between intensity (volume) and test score V = β1(test score) + β2(age) + β3(gender) + β4(global volume) + μ + ε • Contrast of interest is whether β1(slope of association between intensity & test score) is significantly different to zero

  24. What does SPM show? • Voxel-wise (mass-univariate: independent statistical tests for every single voxel) • Group comparison: • Regions of difference between groups • Correlation: • Region of association with test score

  25. Multiple Comparison Problem Introducing false positives when you deal with more than one statistical comparison detecting a difference/ an effect when in fact it does not exist Read: Brett, Penny & Kiebel (2003): An Introduction to Random Field Theory http://imaging.mrc-cbu.cam.ac.uk/imaging/PrinciplesRandomFields

  26. Multiple Comparisons: an example One t-test with p < .05 a 5% chance of (at least) one false positive 3 t-tests, all at p < .05 All have 5% chance of a false positive So actually you have 3*5% chance of a false positive =15% chance of introducing a false positive p value = probability of the null-hypothesis being true

  27. Here’s a happy thought In VBM, depending on your resolution 1000000 voxels 1000000 statistical tests do the maths at p < .05! 50000 false positives So what to do? Bonferroni Correction Random Field Theory/ Family-wise error (used in SPM)

  28. Bonferroni Bonferroni-Correction (controls false positives at individual voxel level): divide desired p value by number of comparisons .05/1000000 = p < 0.00000005 at every single voxel Not a brilliant solution (false negatives)! Added problem of spatial correlation data from one voxel will tend to be similar to data from nearby voxels

  29. SPM uses Gaussian Random Field theory (GRF)1 Using FWE, p<0.05: 5% of ALL our SPMs will contain a false positive voxel This effectively controls the number of false positive regions rather than voxels Can be thought of as a Bonferroni-type correction, allowing for multiple non-independent tests Good: a “safe” way to correct Bad: but we are probably missing a lot of true positives Family-wise Error 1 http://www.mrc-cbu.cam.ac.uk/Imaging/Common/randomfields.shtml

  30. Validity of statistical tests in SPM Errors (residuals) need to be normally distributed throughout brain for stats to be valid After smoothing this is usually true BUT Invalidates experiments that compare one subject with a group Correction for multiple comparisons Valid for corrections based on peak heights (voxel-wise) Not valid for corrections based on cluster extents This requires smoothness of residuals to be uniformly distributed but it’s not in VBM because of the non-stationary nature of underlying neuroanatomy Bigger blobs expected in smoother regions, purely by chance

  31. Things to consider brain A brain B differences without accounting for TIV (TIV = total intracranial volume) brain A brain B differences after TIV has been “covaried out” (differences caused by bigger size are uniformally distributed with hardly any impact at local level) Uniformly bigger brains may have uniformly more GM/ WM

  32. Global or local change? Brains of similar size with GM differences globally and locally Including total GM or WM volume as a covariate adjusts for global atrophy and looks for regionally-specific changes Without TIV: greater volume in B relative to A except in the thin area on the right-hand side With TIV: greater volume in A relative to B only in the thin area on the right-hand side

  33. Interpreting results Mis-register Mis-classify Folding Thinning Mis-register Thickening Mis-classify

  34. More things to think about What do results mean? VBM generally Limitations of spatial normalisation for aligning small-volume structures (e.g. hippo, caudate) VBM in degenerative brain diseases: Spatial normalisation of atrophied scans Optimal segmentation of atrophied scans Optimal smoothing width for expected volume loss

  35. Extras/alternatives • Multivariate techniques • An alternative to mass-univariate testing (SPMs) • Shape is multivariate • Generate a description of how to separate groups of subjects • Use training data to develop a classifier • Use the classifier to diagnose test data • Longitudinal analysis • Baseline and follow-up image are registered together non-linearly (fluid registration), NOT using spm software • Voxels at follow-up are warped to voxels at baseline • Represented visually as a voxel compression map showing regions of contraction and expansion

  36. Fluid Registered Image contracting expanding FTD (semantic dementia) Voxel compression map 1 year

  37. In summary Pro Fully automated: quick and not susceptible to human error and inconsistencies Unbiased and objective Not based on regions of interests; more exploratory Picks up on differences/ changes at a global and local scale Has highlighted structural differences and changes between groups of people as well as over time AD, schizophrenia, taxi drivers, quicker learners etc Con Data collection constraints (exactly the same way) Statistical challenges: Results may be flawed by preprocessing steps (poor registration, smoothing) or by motion artefacts Underlying cause of difference unknown Question about GM density/ interpretation of data- what are these changes when they are not volumetric?

  38. Key Papers Ashburner & Friston (2000). Voxel-based morphometry- the methods. NeuroImage, 11: 805-821 Mechelli, Price, Friston & Ashburner (2005). Voxel-based morphometry of the human brain: methods and applications. Current Medical Imaging Reviews, 1: 105-113 Very accessible paper Ashburner (2009). Computational anatomy with the SPM software. Magnetic Resonance Imaging, 27: 1163 – 1174 SPM without the maths or jargon

  39. References and Reading Literature Ashburner & Friston, 2000 Mechelli, Price, Friston & Ashburner, 2005 Sejem, Gunter, Shiung, Petersen & Jack Jr [2005] Ashburner & Friston, 2005 Seghier, Ramlackhansingh, Crinion, Leff & Price, 2008 Brett et al (2003) or at http://imaging.mrc-cbu.cam.ac.uk/imaging/PrinciplesRandomFields Crinion, Ashburner, Leff, Brett, Price & Friston (2007) Freeborough & Fox (1998): Modeling Brain Deformations in Alzheimer Disease by Fluid Registration of Serial 3D MR Images. Thomas E. Nichols: http://www.sph.umich.edu/~nichols/FDR/ stats papers related to statitiscal power in VLSM studies: Kimberg et al, 2007; Rorden et al, 2007; Rorden et al, 2009 PPTs/ Slides Hobbs & Novak, MfD (2008) Ged Ridgway: www.socialbehavior.uzh.ch/symposiaandworkshops/spm2009/VBM_Ridgway.ppt John Ashburner: www.fil.ion.ucl.ac.uk/~john/misc/AINR.ppt Bogdan Draganski: What (and how) can we achieve with Voxel-Based Morphometry; courtesey of Ferath Kherif Thomas Doke and Chi-Hua Chen, MfD 2009: What else can you do with MRI? VBM Will Penny: Random Field Theory; somewhere on the FIL website Jody Culham: fMRI Analysiswith emphasis on the general linear model; http://www.fmri4newbies.com

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