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Prostate cancer is increasingly treated with high-dose-rate (HDR) brachytherapy, a type of radiotherapy in which a radioactive source is guided through catheters temporarily implanted in the
prostate. Clinicians must set dwell times for the source inside the catheters so the resulting dose
distribution minimizes deviation from dose prescriptions that conform to patient-specific anatomy.
The primary contribution of this paper is to take the well-established dwell times optimization
problem defined by Inverse Planning by Simulated Annealing (IPSA) developed at UCSF and
exactly formulate it as a linear programming (LP) problem. Because LP problems can be solved
exactly and deterministically, this formulation provides strong performance guarantees: one can
rapidly find the dwell times solution that globally minimizes IPSA’s objective function for any
patient case and clinical criteria parameters. For a sample of 20 prostates with volume ranging from
23 to 103 cc, the new LP method optimized dwell times in less than 15 s per case on a standard PC.
The dwell times solutions currently being obtained clinically using simulated annealing (SA), a
probabilistic method, were quantitatively compared to the mathematically optimal solutions obtained using the LP method. The LP method resulted in significantly improved objective function
values compared to SA (P = 1.54 * 10-7), but none of the dosimetric indices indicated a statistically
significant difference (P ≤ 0.01). The results indicate that solutions generated by the current version
of IPSA are clinically equivalent to the mathematically optimal solutions. Alterovitz, R., Lessard, R., Pouliot, J., Hsu, I., O'Brien, J.F., Goldberg, K. "Optimization of HDR Brachytherapy Dose Distributions using Linear Programming with Penalty Costs." Medical Physics, 33(11): 4012-4019, November 2006. |
Project Members |
| Ron Alterovitz | Etienne Lessard | Jean Pouliot | I-Chow Joe Hsu | James F. O'Brien | Ken Goldberg |