1 / 23

Overview

Statistical Parametric Map. Design matrix. fMRI time-series. kernel. Motion correction. Smoothing. General Linear Model. Spatial normalisation. Parameter Estimates. Standard template. Overview. PHJ. a) Direct Normalization i ) Realign -> Slice Time* -> Normalization -> Smoothing

bunme
Download Presentation

Overview

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. Statistical Parametric Map Design matrix fMRI time-series kernel Motion correction Smoothing General Linear Model Spatial normalisation Parameter Estimates Standard template Overview

  2. PHJ a) Direct Normalization i) Realign -> Slice Time* -> Normalization -> Smoothing b) Indirect Normalization • Realign -> Slice Time* -> Coregistration -> Segmentation -> Normalization ->Smoothing * optional

  3. Realignment fMRI time-series • Aligns all volumes of all runs spatially • Rigid-body transformation: three translations, three rotations • Objective function: mean squared error of corresponding voxel intensities • Voxel correspondence via Interpolation REALIGN Motion corrected Mean functional Signal, Noise and Preprocessing

  4. Realignment Output: Parameters Signal, Noise and Preprocessing

  5. The preprocessing sequence revisted • Realignment • Motion correction: Adjust for movement between slices • Coregistration • Overlay structural and functional images: Link functional scans to anatomical scan • Normalisation • Warp images to fit to a standard template brain • Smoothing • To increase signal-to-noise ratio • Extras (optional) • Slice timing correction; unwarping

  6. Co-registration • Term co-registration applies to any method for aligning images • By this token, motion correction is also co-registration • However, term is usually used to refer to alignment of images from different modalities. E.g.: • Low resolution T2* fMRI scan (EPI image) to high resolution, T1, structural image from the same individual

  7. Co-registration: Principles behind this step of processing • When several images of the same participants have been acquired, it is useful to have them all in register • Image registration involves estimating a set of parameters describing a spatial transformation that ‘best ‘ matches the images together

  8. fMRI to structural • Matching the functional image to the structural image • Overlaying activation on individual anatomy • Better spatial image for normalisation • Two significant differences between co-registering to structural scans and motion correction • When co-registering to structural, the images do not have the same signal intensity in the same areas; they cannot be subtracted • They may not be the same shape

  9. Problem: Images are different • Differences in signal intensity between the images • Normalise to appropriate template (EPI to EPI; T1 to T1), then segment

  10. Segmentation • Use the gray/white estimates from the normalisation step as starting estimates of the probability of each voxel being grey or white matter • Estimate the mean and variance of the gray/white matter signal intensities • Reassign probabilities for voxels on basis of • Probability map from template • Signal intensity and distributions of intensity for gray/white matter • Iterate until there is a good fit

  11. Register segmented images • Grey/white/CSF probability images for EPI (T2*) and T1 • Combined least squares match (simultaneously) of gray/white/CSF images of EPI (T2*) + T1 segmented images

  12. The preprocessing sequence revisted • Realignment • Motion correction: Adjust for movement between slices • Coregistration • Overlay structural and functional images: Link functional scans to anatomical scan • Normalisation • Warp images to fit to a standard template brain • Smoothing • To increase signal-to-noise ratio • Extras (optional) • Slice timing correction; unwarping

  13. Normalisation Goal: Register images from different participants into roughly the same co-ordinate system (where the co-ordinate system is defined by a template image) • This enables: • Signal averaging across participants: • Derive group statistics -> generalise findings to population • Identify commonalities and differences between groups (e.g., patient vs. healthy) • Report results in standard co-ordinate system (e.g. Talairach and Tournoux stereotactic space)

  14. Matthew Brett

  15. Standard spaces The Talairach Atlas The MNI/ICBM AVG152 Template The MNI template follows the convention of T&T, but doesn’t match the particular brainRecommended reading: http://imaging.mrc-cbu.cam.ac.uk/imaging/MniTalairach

  16. SPM: Spatial Normalisation • SPM adopts a two-stage procedure to determine a transformation that minimises the sum of squared differences between images: • Step 1: Linear transformation (12-parameter affine) • Step 2: Non-linear transformation (warping) • High-dimensionality problem • The affine and warping transformations are constrained within an empirical Bayesian framework (i.e., using prior knowledge of the variability of head shape and size): “maximum a posteriori” (MAP)estimates of the registration parameters

  17. Step 1: Affine Transformation Determines the optimum 12-parameter affine transformation to match the size and position of the images 12 parameters = 3 translations and 3 rotations (rigid-body) + 3 shears and 3 zooms Rotation Shear Translation Zoom

  18. Step 2: Non-linear Registration • Assumes prior approximate registration with 12-parameter affine step • Modelled by linear combinations of smooth discrete cosine basis functions (3D) • Choice of basis functions depend on distribution of warps likely to be required • For speed and simplicity, uses a “small” number of parameters (~1000)

  19. Matthew Brett

  20. 2-D visualisation (horizontal and vertical deformations): • Brain • visualisation: Ashburner; HBF Chap 3 Source Template Deformation field Warped image

  21. Smoothing • Why blurring the data? • Improves spatial overlap by blurring over anatomical differences • Suppresses thermal noise (averaging) • Increases sensitivity to effects of similar scale to kernel (matched filter theorem) • Makes data more normally distributed (central limit theorem) • Reduces the effective number of multiple comparisons Kernel SMOOTH • How is it implemented? • Convolution with a 3D Gaussian kernel, of specified full-width at half-maximum (FWHM) in mm MNI Space Signal, Noise and Preprocessing GLM

  22. Smoothing Lars Kasper: A Toolbox

More Related