1 / 11

Detecting multivariate effective connectivity

Detecting multivariate effective connectivity. Keith Worsley , Department of Mathematics and Statistics, McGill University, Montreal Jason Lerch , Montreal Neurological Institute Jonathan Taylor , Department of Statistics, Stanford Francesco Tomaiuolo , IRCCS Fondazione ‘Santa Lucia’, Rome.

Télécharger la présentation

Detecting multivariate effective connectivity

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Detecting multivariate effective connectivity Keith Worsley, Department of Mathematics and Statistics, McGill University, Montreal Jason Lerch, Montreal Neurological Institute Jonathan Taylor, Department of Statistics, Stanford Francesco Tomaiuolo, IRCCS Fondazione ‘Santa Lucia’, Rome

  2. Examples • n1=17 subjects with non-missile brain trauma (coma 3-14 days), and n2=19 age and sex matched controls • Y = WM density and vector deformations • Covariates = group • Find regions of damage • Between trauma group and control group • Between a single trauma case and control group (clinical) • n=321 subjects aged 20-70 years • Y = cortical thickness • Covariates = age, gender • Find cortical thickness differences between males and females • All data smoothed 10mm

  3. How do we measure anatomy? • Structure density: • Segment image GM/WM/CSF or hippocampus/thalamus/amygdala … • Smooth to produce structure density • Deformations: • Find non-linear warps needed to warp structure to atlas (data is 3D deformation vectors) • Cortical thickness: • Find inner and outer cortical surface • Find cortical thickness

  4. Structure Deformations Segmented Density 1 1 0.8 0.8 0.6 0.6 0.4 0.4 0.2 0.2 0 0 Atlas

  5. How do we model anatomy? • Y = structure density or structure thickness: • linear model: • Y = covariate × coef + … + error • T = coef / sd • Y1×3= vector deformations (x,y,z components): • multivariate linear model: • Y1×3 = covariate × coef1×3 + … + error1×3 • Take a linear combination a3×1 of components to give a univariate linear model: • Y = Y1×3× a3×1 = covariate × coef + … + error • Hotelling’s T2 = maxa T2 = coef1×3×var3×3-1 × coef3×1t

  6. Which method is better? • Assess methods / measures by the SD of the difference between cases and controls: • Group use: n1=100 cases and n2=100 controls • sd decreases as sqrt(n) • Clinical use: n1=1 case and n2=100 controls • sd not much affected by n • ~ 6 times this sd is 95% detectable (at P=0.05, searching over the whole brain).

  7. Sd for group comparison (n1=n2=100)WM Density Deformations 3 0.3 30 40 50 60 16 21 26 31 0.25 2.5 0.2 2 36 41 46 51 70 80 90 100 0.15 1.5 0.1 1 56 61 66 71 110 120 130 140 0.05 0.5 0 0 GM density, % mm ~0.15 ×6 = 0.9 mm deformation difference can be detected ~1.5 ×6 = 9% density difference can be detected For clinical use, multiply everything by 7

  8. Sd for group comparison (n1=n2=100) Cortical thickness 0.15 0.12 0.09 0.06 0.03 0 mm ~0.1 ×6 = 0.6 mm thickness difference can be detected, slightly better than deformations

  9. “Anatomical connectivity” • Measured by the correlation between residuals at a pair of voxels • Choose one voxel as reference, correlate its values with those at every other voxel • Y ~ refvoxval × coef + error • Correlation is equivalent to usual T statistic • for univariate data e.g. WM, cortical thickness … Activation only Correlation only Voxel 2 + + Voxel 2 + + + + + + + Voxel 1 + Voxel 1 + +

  10. “Deformation vector connectivity” • Something new for multivariate data, such as vector deformations: There are now three reference voxel values (x,y,z components) • Y1×3= refvoxval1×3 × coef3×3 + error1×3 • There are several choices of test statistic: • Wilk’s Lambda (likelihood ratio), Pillai trace, Lawley-Hotelling trace, • but the most convenient is Roy’s maximum root • Again take a linear combination a3×1 of components to give a univariate linear model: • Y = Y1×3 × a3×1 = refvoxval1×3 × coef3×1 + error • Roy’s maximum root R = maxa F statistic • R = maximum eigenvalue of coef3×3×var3×3-1 × coef3×3t • Equivalent to maximum canonical correlation • P-value random field theory is now available in FMRISTAT

  11. 6D connectivity • Measured by the correlation between residuals at every pair of voxels (6D data!) • Local maxima are larger than all 12 neighbours • P-value random field theory now available, even for multivariate data (using maximum canonical correlation) • Good at detecting focal connectivity, but • PCA of subjects × voxels is better at detecting large regions of co-correlated voxels

More Related