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Diffusion Tensor Processing and Visualization Ross Whitaker University of Utah National Alliance for Medical Image Computing
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Acknowledgments Contributors: A. Alexander G. Kindlmann L. O’Donnell J. Fallon National Alliance for Medical Image Computing (NIH U54EB005149)
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Diffusion in Biological Tissue Motion of water through tissue Sometimes faster in some directions than others Kleenex newspaper Anisotropy: diffusion rate depends on direction isotropic anisotropic G. Kindlmann
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The Physics of Diffusion Density of substance changes (evolves) over time according to a differential equation (PDE) Change in density Derivatives (gradients) in space Diffusion – matrix, tensor (2x2 or 3x3)
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Solutions of the Diffusion Equation Simple assumptions –Small dot of a substance (point) –D constant everywhere in space Solution is a multivariate Gaussian –Normal distribution –D plays the role of the covariance matrix\ This relationship is not a coincidence –Probabilistic models of diffusion (random walk)
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D Is A Special Kind of Matrix The universe of matrices Matrices NonsquareSquare Symmetric Positive Skew symmetric D is a “square, symmetric, positive- definite matrix” (SPD)
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Properties of SPD Bilinear forms and quadratics Eigen Decomposition –Lambda – shape information, independent of orientation –R – orientation, independent of shape –Lambda’s > 0 Quadratic equation – implicit equation for ellipse (ellipsoid in 3D)
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Eigen Directions and Values (Principle Directions) 1 2 3 v3v3 v2v2 v1v1 v1v1 v2v2 2 1
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Tensors From Diffusion-Weighted Images Big assumption –At the scale of DW-MRI measurements –Diffusion of water in tissue is approximated by Gaussian Solution to heat equation with constant diffusion tensor Stejskal-Tanner equation –Relationship between the DW images and D k th DW Image Base image Gradient direction Physical constants Strength of gradient Duration of gradient pulse Read-out time
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Tensors From Diffusion-Weighted Images Stejskal-Tanner equation –Relationship between the DW images and D k th DW Image Base image Gradient direction Physical constants Strength of gradient Duration of gradient pulse Read-out time
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Tensors From Diffusion-Weighted Images Solving S-T for D –Take log of both sides –Linear system for elements of D –Six gradient directions (3 in 2D) uniquely specify D –More gradient directions overconstrain D Solve least-squares »(constrain lambda>0) 2D S-T Equation
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Shape Measures on Tensors Represent or visualization shape Quanitfy meaningful aspect of shape Shape vs size Different sizes/orientations Different shapes
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Measuring the Size of A Tensor Length – ( 1 + 2 + 3 )/3 –( 1 2 + 2 2 + 3 2 ) 1/2 Area – ( 1 2 + 1 3 + 2 3 ) Volume – ( 1 2 3 ) Generally used. Also called: “Mean diffusivity” “Trace” Sometimes used. Also called: “Root sum of squares” “Diffusion norm” “Frobenius norm”
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Shape Other Than Size 1 2 3 l 1 >= l 2 >= l 3 Barycentric shape space (C S,C L,C P ) Westin, 1997 G. Kindlmann
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Reducing Shape to One Number Fractional Anisotropy FA (not quite) Properties: Normalized variance of eigenvalues Difference from sphere
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Visualization – ignore tissue that is not WM Registration – Align WM bundles Tractography – terminate tracts as they exit WM Analysis –Axon density/degeneration –Myelin Big question –What physiological/anatomical property does FA measure? FA As An Indicator for White Matter
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Various Measures of Anisotropy A1A1 VFRAFA A. Alexander
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Visualizing Tensors: Direction and Shape Color mapping Glyphs
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Principal eigenvector, linear anisotropy determine color e1e1 R = | e 1. x | G = | e 1. y | B = | e 1. z | Coloring by Principal Diffusion Direction Pierpaoli, 1997 Axial Sagittal Coronal G. Kindlmann
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Issues With Coloring by Direction Set transparency according to FA (highlight- tracts) Coordinate system dependent Primary colors dominate –Perception: saturated colors tend to look more intense –Which direction is “cyan”?
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Visualization with Glyphs Density and placement based on FA or detected features Place ellipsoids at regular intervals
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Backdrop: FA Color: RGB(e 1 ) G. Kindlmann
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Glyphs: ellipsoids Problem: Visual ambiguity
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Worst case scenario: ellipsoids one viewpoint: another viewpoint:
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Glyphs: cuboids Problem: missing symmetry
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Superquadrics Barr 1981
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Superquadric Glyphs for Visualizing DTI Kindlmann 2004
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Worst case scenario, revisited
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Backdrop: FA Color: RGB(e 1 )
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Backdrop: FA Color: RGB(e 1 )
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Backdrop: FA Color: RGB(e 1 )
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Backdrop: FA Color: RGB(e 1 )
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Backdrop: FA Color: RGB(e 1 )
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Backdrop: FA Color: RGB(e 1 )
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Backdrop: FA Color: RGB(e 1 )
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Going Beyond Voxels: Tractography Method for visualization/analysis Integrate vector field associated with grid of principle directions Requires –Seed point(s) –Stopping criteria FA too low Directions not aligned (curvature too high) Leave region of interest/volume
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DTI Tractography Seed point(s) Move marker in discrete steps and find next direction Direction of principle eigen value
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Tractography J. Fallon
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Whole-Brian White Matter Architecture L. O’Donnell 2006 Saved structure information Analysis High-Dimensional Atlas Atlas Generation Automatic Segmentation
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Path of Interest D. Tuch and Others A B Find the path(s) between A and B that is most consistent with the data
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The Problem with Tractography How Can It Work? Integrals of uncertain quantities are prone to error –Problem can be aggravated by nonlinearities Related problems –Open loop in controls (tracking) –Dead reckoning in robotics Wrong turn Nonlinear: bad information about where to go
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Mathematics and Tensors Certain basic operations we need to do on tensors –Interpolation –Filtering –Differences –Averaging –Statistics Danger –Tensor operations done element by element Mathematically unsound Nonintuitive
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Averaging Tensors What should be the average of these two tensors? Linear Average Componentwise
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Arithmetic Operations On Tensor Don’t preserve size –Length, area, volume Reduce anisotropy Extrapolation –> nonpositive, nonsymmetric Why do we care? –Registration/normalization of tensor images –Smoothing/denoising –Statistics mean/variance
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What Can We Do? (Open Problem) Arithmetic directly on the DW images –How to do statics? –Rotational invariance Operate on logarithms of tensors (Arsigny) –Exponent always positive Riemannian geometry (Fletcher, Pennec) –Tensors live in a curved space
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Riemannian Arithmetic Example Interpolation Linear Riemannian
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Low-Level Processing DTI Status Set of tools in ITK –Linear and nonlinear filtering with Riemannian geometry –Interpolation with Riemannian geometry –Set of tools for processing/interpolation of tensors from DW images More to come…
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Questions
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