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Introduction to FreeSurfer surfer.nmr.mgh.harvard.edu

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Presentation on theme: "Introduction to FreeSurfer surfer.nmr.mgh.harvard.edu"— Presentation transcript:

1 Introduction to FreeSurfer surfer.nmr.mgh.harvard.edu

2 Why FreeSurfer? Anatomical analysis is not like functional analysis – it is completely stereotyped. Registration to a template (e.g. MNI/Talairach) doesn’t account for individual anatomy. Even if you don’t care about the anatomy, anatomical models allow functional analysis not otherwise possible. 2

3 Why not just register to an ROI Atlas?
12 DOF (Affine) ICBM Atlas

4 Problems with Affine (12 DOF) Registration
Subject 2 aligned with Subject 1 (Subject 1’s Surface) Subject 1

5 Surface and Volume Analysis
Cortical Reconstruction and Automatic Labeling Inflation and Functional Mapping Automatic Subcortical Gray Matter Labeling Surface-based Intersubject Alignment and Statistics Automatic Gyral White Matter Labeling Surface Flattening

6 Cortical (surface-based) Analysis. Volume Analysis.
Talk Outline Cortical (surface-based) Analysis. Volume Analysis.

7 Surface Reconstruction Overview
Input: T1-weighted (MPRAGE,SPGR) Find white/gray surface Find pial surface “Find” = create mesh Vertices, neighbors, triangles, coordinates Accurately follows boundaries between tissue types “Topologically Correct” closed surface, no donut holes no self-intersections Generate surface-based cross-subject registration Label cortical folding patterns Subcortical Segmentation along the way

8 Surface Model Mesh (“Finite Element”) Vertex = point of triangles
Neighborhood XYZ at each vertex Triangles/Faces ~ 150,000 Area, Distance Curvature, Thickness Moveable The cortical surface is represented by a finite element model using triangles to cover the cortical surface. The reconstruction is the (mostly automated) process of assigning an xyz to each corner of each triangle. Once the xyz of each corner of each triangle is known, then it is possible to characterize the entire cortical surface in terms of area, distance, curvature, and thickness.

9 Surfaces: White and Pial

10 Cortical Thickness pial surface
Distance between white and pial surfaces One value per vertex white/gray surface lh.thickness, rh.thickness

11 A Surface-Based Coordinate System

12 Comparing Coordinate Systems and Brodmann Areas
Can use the ex vivo Brodmann delineations to assess the accuracy of a coordinate system. Of course being better than Talairach isn’t the strongest statement in the world…. Cumulative histogram (red=surface, blue=nonlinear Talairach) Ratio of surface accuracy to volume accuracy

13 Automatic Surface Segmentation
Precentral Gyrus Postcentral Gyrus Superior Temporal Gyrus Based on individual’s folding pattern

14 Inter-Subject Averaging
Spherical Spherical Native GLM Subject 1 Surface-to- Surface Demographics Subject 2 Surface-to- Surface mri_glmfit cf. Talairach

15 Visualization Borrowed from (Halgren et al., 1999)

16 Automatic Cortical Parcellation
Spherical Atlas based on Manual Parcellations (40 of them) Map to Individual Thru Spherical Reg Fine-tune based on individual anatomy Note: Similar methodology to volume labeling More in the Anatomical ROI talk

17 Cortical (surface-based) Analysis. Volume Analysis.
Talk Outline Cortical (surface-based) Analysis. Volume Analysis.

18 Volume Analysis: Automatic Individualized Segmentation
Surface-based coordinate system/registration appropriate for cortex but not for thalamus, ventricular system, basal ganglia, etc… Anatomy is extremely variable – measuring the variance and accounting for it is critical (more in the individual subject talk)!

19 Volumetric Segmentation (aseg)
Caudate Pallidum Putamen Amygdala Hippocampus Lateral Ventricle Thalamus White Matter Cortex Not Shown: Nucleus Accumbens Cerebellum

20 Summary Why Surface-based Analysis?
Function has surface-based organization Visualization: Inflation/Flattening Cortical Morphometric Measures Inter-subject registration Automatically generated ROI tuned to each subject individually Use FreeSurfer Be Happy

21 FreeSurfer Directory Tree
Each data set has its own unique SubjectId (eg, bert) Subject Subject Name bert scripts surf label mri stats orig.mgz T1.mgz brain.mgz wm.mgz aseg.mgz Set SUBJECTS_DIR, issue a command (mksubjdirs) to create directory structure. Convert (using mri_convert) data to COR format and store in mri/RRR, run recon-all. Typically, we acquire 3 high-quality T1 volumes to use as input to reconstruction (128-slice sagital, 1 mm in-plane resolution). recon-all –i file.dcm –subject bert –all

22 Other File Formats Surface: Vertices, XYZ, neighbors (lh.white)
Curv: lh.curv, lh.sulc, lh.thickness Annotation: lh.aparc.annot Label: lh.pericalcarine.label Unique to FreeSurfer FreeSurfer can read/write: NIFTI, Analyze, MINC FreeSurfer can read: DICOM, Siemens IMA, AFNI


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