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Title: Computational Anatomy: Simple Statistics on Interesting Spaces


1
Computational Anatomy Simple Statistics on
Interesting Spaces
  • Sarang Joshi,
  • Scientific Computing and Imaging Institute
  • Department of Bioengineering, University of Utah
  • Brad Davis, Peter Lorenzen
  • University of North Carolina at Chapel Hill
  • Joan Glaunes and Alain Truouve
  • ENS de Cachan, Paris

2
Motivation A Natural Question
  • Given a collection of Anatomical Images what is
    the Image of the Average Anatomy.

3
Motivation A Natural Question
  • Given a set of unlabeled Landmarks points what is
    the Average Landmark Configuration
  • Given a set of Surfaces what is the Average
    Surface

4
Regression
  • Given an age index population what are the
    average anatomical changes?

5
Outline
  • Mathematical Framework
  • Capturing Geometrical variability via
    Diffeomorphic transformations.
  • Average estimation via metric minimization
    Fréchet Mean.
  • Averaging Images.
  • Averaging Point sets
  • Weak norm on signed dirac measures.
  • Averaging Curves and Surfaces
  • Weak norm on dirac currents
  • Regression of age indexed anatomical imagery

6
Motivation A Natural Question
Consider two simple images of circles
What is the Average?
7
Motivation A Natural Question
Consider two simple images of circles
What is the Average?
8
Motivation A Natural Question
What is the Average?
9
Motivation A Natural Question
Average considering Geometric Structure
A circle with average radius
10
Mathematical Foundations of Computational Anatomy
  • Structural variation with in a population
    represented by transformation groups
  • For circles simple multiplicative group of
    positive reals (R)
  • Scale and Orientation Finite dimensional Lie
    Groups such as Rotations, Similarity and Affine
    Transforms.
  • High dimensional anatomical structural variation
    Infinite dimensional Group of Diffeomorphisms.

11
Mathematical Foundations of Computational Anatomy
  • transformations constructed from the
    group of diffeomorphisms of the underlying
    coordinate system
  • Diffeomorphisms one-to-one onto (invertible) and
    differential transformations. Preserve topology.
  • Anatomical variability understood via
    transformations
  • Traditional approach Given a family of images
    construct registration
    transformations
    that map all the images to a single template
    image or the Atlas.
  • How can we define an Average anatomy in this
    framework The template estimation problem!!

12
Large deformation diffeomorphisms
  • Space of all Diffeomorphisms forms a
    group under composition
  • Space of diffeomorphisms not a vector space.
  • Small deformations, or Linear Elastic
    registration approaches ignore this.

13
Large deformation diffeomorphisms.
  • infinite dimensional Lie Group.
  • Tangent space The space of smooth vector valued
    velocity fields on .
  • Construct deformations by integrating flows of
    velocity fields.
  • Induce a metric via a differential norm on
    velocity fields.

14
Space of Images and Anatomical Structure
  • Images as function of a underlying coordinate
    space
  • Image intensities
  • Space of structural transformations
    diffeomorphisms of the underlying coordinate
    space
  • Space of Images and Transformations a semi-direct
    product of the two spaces.

15
Simple Statistics on Interesting Spaces Average
Anatomical Image
  • Use the notion of Fréchet mean to define the
    Average Anatomical image.
  • The Average Anatomical image The image that
    minimizes the mean squared metric on the
    semi-direct product space.
  • Metamorphoses Through Lie Group Action. Alain
    Trouvé, Laurent Younes Foundations of
    Computational Mathematics 5(2) 173-198 (2005) .

16
Metric on the Group of Diffeomorphisms
  • Induce a metric via a sobolev norm on the
    velocity fields. Distance defined as the length
    of geodesics under this norm.
  • Distance between e, the identity and any
    diffeomorphism j is defined via the geodesic
    equation
  • Right invariant distance between any two
    diffeomorphisms is defined as

17
Simple Statistics on Interesting Spaces
Averaging Anatomies
  • The average anatomical image is the Image that
    requires Least Energy for each of the Images to
    deform and match to it
  • Warning Not Consistent for large noise.
  • For reasonable noise in practice very stable.
    (Mode approximation holds).

18
Simple Statistics on Interesting Spaces
Averaging Anatomies
19
Alternating Algorithm
  • If the transformations are fixed than the average
    image is simply the average of the deformed
    images!!
  • Alternate until convergence between estimating
    the average and the transformations.

20
Results Sample of 16 Bulls eye Images
21
Averaging of 16 Bulls eye images
22
Works for reasonable noise
23
Averaging of 16 Bulls eye images
Voxel Averaging
LDMM Averaging
Numerical geometric average of the radii
of the individual circles forming the bulls eye
sample.
24
Averaging Brain Images
25
Averaging Unlabeled Point Sets
  • Given a set of unlabeled Landmarks points what is
    the Average Landmark Configuration

26
Averaging Unlabeled Point Sets
  • Given a set of Unlabelled weighted point sets
  • we define an Average point set in the Large
    Deformation Fréchet sense by
  • Defining a metric between two Unlabelled point
    sets Diffeomorphic matching of distributions A
    new approach for unlabelled point-sets and
    sub-manifolds matching Glaunes, et. al.
  • Analogues to Image averaging, using the metric
    defined previously on the space to diffeomorphic
    transformations to define the Average via a
    minimization problem.

27
Unlabelled Point sets as signed measures
(Glaunes et al.)
  • Treat a set of points in as collection of
    signed dirac delta measures.
  • Space of signed measures is a vector space.
  • Let be the measure associated with Point
    set
  • Action of diffeomorphism defined via
    integration of measurable functions
  • is the measure associated with the
    transformed point set

28
Weak RKHS norm on signed measures.
  • Induce a week norm on signed measures via a
    reproducing kernel Hilbert space structure with a
    kernel k on the dual space The space of bounded
    continuous functions
  • If than after
    a simple calculation

29
Averaging Unlabeled Point Sets
  • Give a collection of unlabeled point sets
    ,j 1,,N
  • Let be the measure associated with point
    set
  • Let be the action of the diffeomorphic
    transformation on
  • The average point set estimation problem
    becomes
  • If the transformations are fixed than the optimal
    measure is given by

30
Results
31
Results
32
Representing Curves and Surfaces via Currents
(Glaunes et al.)
  • The space of currents is the dual space of
    differential forms with compact support.
  • Generalization of Schwarz distributions (0
    dimensional currents).
  • Treat discretized curves and surfaces as Dirac
    currents.

Electrical Engineering perspective If the
dimension or the co-dimension is 1 then Vector
weighted Dirac deltas
33
Averaging Curves and Surfaces via Currents
(Glaunes et al.)
  • Action of diffeomorphism on the current is
    the current of the transformed surface

34
Representing Curves and Surfaces via Currents
(Glaunes et al.)
  • Space of all currents forms a vector space
  • Let be a current associated with a surface
    then
  • is the current associated with the same
    surface with the opposite orientation.
  • Induce a week norm on currents via a Reproducing
    Kernel Hilbert Space structure, with a kernel K,
    on the dual space.
  • If than after
    a simple calculation
  • K a matrix kernel. If
    ,then

35
Averaging Curves and Surfaces
  • Give a collection of curves or surfaces ,j
    1,,N
  • Let be the current associated with
  • Let be the action of the diffeomorphic
    transformation on
  • The Average estimation problem becomes
  • If the transformations are fixed than the optimal
    current is given by

36
Results
37
Regression analysis (Review of Kernel Regression)
  • Given a set of observation where
  • Estimate function
  • An estimator defined as a conditional
    expectation
  • Nadaraya-Watson kernel regression replaces the
    unknown densities via a kernel densities of
    bandwidths g and h

38
Regression analysis (Review of Kernel Regression)
  • Finally, assuming that the kernels is symmetric
    about the origin, integration of the numerator
    leads to
  • Weighted average weighted by a kernel.

39
Kernel regression on Riemannien manifolds
  • Replace conditional expectation by Fréchet mean!

40
Results
41
Diffeomorphic growth model
  • Now given a dense regressed image estimate a
    real time indexed deformation to quantify the
    shape changes

42
Results
  • Jacobian of the age indexed deformation.
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