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Image Guided Surgery in Prostate Brachytherapy

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A growing problem in US and world over with ... Develop plan for needle movement ... Due to anesthesia effects. Time and hormonal therapy. Drawbacks: ... – PowerPoint PPT presentation

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Title: Image Guided Surgery in Prostate Brachytherapy


1
Image Guided Surgery in Prostate Brachytherapy
  • Rohit Saboo

2
Prostate Cancer
  • A growing problem in US and world over with
    increasing longevity
  • Methods of treatment
  • Surgery
  • Irradiation
  • Many problems of existing methods

3
Where is it?
4
Brachytherapy procedure
  • Localized and prolonged dose
  • Brachytherapy overview

5
Brachytherapy - old way
  • Pre-planning CT
  • Outline prostate
  • Develop plan for needle movement
  • Guide needle at time of surgery with help from
    Ultra sound images

Dynamic Brachytherapy of the prostate under
active image guidance, Gang Cheng et. al, MICCAI
2001
6
Brachytherapy old way
  • Problems
  • Prostate movement
  • Prostate size/shape variance
  • Due to anesthesia effects
  • Time and hormonal therapy
  • Drawbacks
  • Lots of error due to prostate movement
  • More than necessary needle insertions

7
Brachytherapy new way
  • General outline of prostate from pre-planning CT
  • Outline prostate in real-time during surgery
  • Provide guidance for the needle with real time
    prostate outlining.
  • Track needle errors in real time

8
Steps in automation
  • Acquire volumetric ultra-sound images on the fly
  • Automatically recognize the prostate/rectum and
    other structures (segmentation)
  • Analyze dose distribution

9
Segmentation
  • The process of outlining the prostate (or any
    organ) is called segmentation
  • Two chief ways to deal with it
  • Model-based
  • Image based

10
Segmentation problem
11
Ultrasound problems
  • Noise!
  • Speed of sound is not uniform
  • Image distance incorrect in one axis

12
Approaches to segmentation
  • Model based
  • Shape model
  • Probable shapes
  • Probable intensity/texture variations
  • Examples ASM, AAM, M-reps
  • Image based
  • Outline drawn by expert on one image (atlas)
  • Image intensity/feature based registration
  • Outline carried over

13
Feature Model Ruo et. al
  • Set of boundary points
  • i - Sample object
  • Xi Tuple representing ith object
  • Each object has m points on the boundary

14
Feature Model
  • Xi
  • (Li, ri1, ri2, rim )T

Rim
Li
15
Shape variation
  • Mean shape
  • Covariance matrix

16
Feature Model
  • Eigenvalue decomposition of covariance matrix
  • pi Principal components (eigenvectors)
  • Eigen-values
  • Sort the eigenvalues, choose the largest t

17
Eigenvalues
18
New plausible models
19
Optimization - GA
20
Image match
  • Fitness function
  • outi and ini average of intensities along a
    profile (15 pixels long)

21
Image Match
  • Simplify and speed it up
  • vi unit normal

22
GA parameters
23
GA parameters
  • 90 crossover rate
  • 1 mutation rate
  • population size 200
  • 2000 generations
  • repeated 15 times

24
Experiment
  • 40 images
  • training from 27, 3 poor quality
  • test on remaining 10
  • Expert segmentation by two different experts
  • human-human disagreement vs automated-human
    disagreement

25
Results
26
Results
27
Results
28
Results
29
Summary
  • Very good analysis
  • Point based boundary models are poor
  • Parameter tuning
  • No reasoning for fitness function

30
Methods
  • Model based methods
  • Image based methods
  • Fully automatic, registration
  • Deformable registration Wei, 2004
  • Snakes

31
Image based
  • Overview
  • MRI/MRSI and US data
  • prostate carefully outlined on MRI data
  • US image is acquired during operation time
  • The two images are brought into alignment during
    operation time.
  • They do for biopsy, but same techniques work for
    brachytherapy

32
Global Alignment
  • US data is poor
  • Model is pre-segmented in MRI
  • Surface to volume alignment methods are used
  • Gradient of image is computed in US and model
    information is used to roughly find the
    correspoding boundary in US

33
Global alignment
  • GA based optimization
  • fitness function

34
Registration
  • Deformation is elastic
  • Two orthogonal directions
  • Therefore 2-parameter model for deformation

35
Registration
  • Obtain Curvature images
  • Obtain mapping g for a few points
  • Use these points to drive a TPS deformation.

36
Validation
  • Phantom
  • Gelatin made prostate phantom
  • 15 fiducial markers implanted inside the prostate
  • Soft container filled with water placed on top to
    simulate pubic bone.

37
Validation
38
Results on phantom
39
Patient study
40
Patient Study
41
Summary
  • Two step registration technique
  • Phantom Studies
  • Only tested over one patient

42
Methods
  • Model based methods
  • Image based methods
  • Fully automatic, registration
  • Deformable registration Wei, 2004
  • Snakes
  • semi-automatic
  • In between both

43
Snakes
  • Give an initial approximate contour
  • Two forces act on a snake
  • Internal force
  • Based on curvature
  • External force
  • Based on image gradients
  • Let the model evolve using ordinary force
    equations till equilibrium

44
Snake based methods
  • Approach used by Zhouping Wei, 2005

45
Snake based methods
  • 1.19 /- 0.14 mm on average

46
Questions?
47
References
  • Dynamic Brachytherapy of the prostate under
    active image guidance, Gang Cheng et. al,
    MICCAI, 2001
  • Automatic Prostate Boundary Recognition in
    Sonographic Images Using Feature Model and
    Genetic Algorithm, Ruo Yun et. al, Journal of
    Ultrasound in Medicine, Vol 19, Issue 11, 2000
  • Deformable Registration Between MRI/MRSI and
    Ultrasound Images for Targeted Robotic Prostate
    Biopsy, Wei Shao et. al, Proceedings of the 2004
    IEEE Conference on Cybernetics and Intelligent
    Systems
  • A Discrete Dynamic Contour Model, Steven
    Lobregt et. al, IEEE Transactions on Medical
    Imaging, vol 14, no 1, March 1995
  • Dynamic Intraoperative Prostate Brachytherapy
    Using 3D TRUS Guidance with Robot Assistance,
    Zhouping Wei et. al, Proceedings of the 2004 IEEE
    Engineering in Medicine and Biology, 2005
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