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Optimization of Gamma Knife Radiosurgery Michael Ferris University of Wisconsin, Computer Sciences David Shepard University of Maryland School of Medicine.

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Presentation on theme: "Optimization of Gamma Knife Radiosurgery Michael Ferris University of Wisconsin, Computer Sciences David Shepard University of Maryland School of Medicine."— Presentation transcript:

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2 Optimization of Gamma Knife Radiosurgery Michael Ferris University of Wisconsin, Computer Sciences David Shepard University of Maryland School of Medicine

3 Overview Details of machine and problem Formulation –modeling dose –shot / target optimization Results –Two-dimensional data –Real patient (three-dimensional) data

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7 The Leksell Gamma Knife

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9 Problem characteristics Machine has 201 radiation sources focussed on one location Very accurate dose delivery Benefits of computer solution –uniformity of treatment plan –better treatment plan –faster determination of plan

10 Problem outline Target volume (from MRI or CT) Maximum number of shots to use –Which size shots to use –Where to place shots –How long to deliver shot for –Conform to Target (50% isodose curve) –Real-time optimization

11 Two-dimensional example

12 Ideal Optimization

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14 Dose calculation Measure dose at distance from shot center Fit a nonlinear curve to these measurements Functional form from literature, 6 parameters to fit via least-squares

15 8mm shot

16 18mm shot

17 MIP Approach A-priori fix possible shot locations

18 MIP Problem

19 Size Problem Dose(NonTarget) ~= Dose(Rind) Too many shots –Generate grid of large shots grid spacing grid offset –Small shots randomly placed nr boundary –Proportion of each?

20 Features of MIP Large amounts of data/integer variables Shot location on 1mm grid too restrictive Time consuming, even with restrictions and CPLEX but... have guarantee of global optimality

21 Nonlinear Approach

22 Two-stage approach Approximate via “arctan” First, solve with approximation, then fix shot widths and reoptimize

23 3D slice image

24 Slice + 3

25 Axial slice Manual Computer Optimized

26 Axial slice Manual Computer Optimized

27 Coronal slice Manual Computer Optimized

28 Sagittal slice Manual Computer Optimized

29 Challenges Integration into real system Reduction of optimization time What if scenarios? –Improve the objective function –Change number of shots Global versus local solutions


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