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Adaptive Dose-Compensation Technique for Image-Guided Radiotherapy of Prostate Cancer |
WU Qiu-wen |
Department of Radiation Oncology, Duke University Medical Center, Durham, North Carolina, USA |
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Abstract Background: For image-guided radiotherapy (IGRT) of prostate cancer, the current standard is online image guidance which can effectively correct setup errors and inter-fraction rigid organ motion. However, planning margins are still necessary for deformation and intra-fraction motion.Objective: This paper aims to investigate an adaptive planning technique incorporating offline dose feedback to manage interfraction motion and residuals from online corrections. Methods: Repeated CT scans from 28 patients were studied. Online IG was simulated by matching center-of-mass of prostate. A seven-beam IMRT plan with zero margins was designed for each patient. Dose distribution at each fraction was evaluated based on actual target and OARs from that fraction. Cumulative dose was calculated using deformable registration and compared to initial plan. If deviation exceeded pre-defined 2% threshold in prostate D99 an adaptive planning technique called dose compensation was invoked, in which cumulative dose was fed back to the planning system and dose deficit was made up through boost radiation in future fractions through IMRT. Results: If 2% under-dose was allowed at the end of course, then 11 patients failed. If the same criteria was assessed at the end of each week (every 5 fractions), then 14 patients failed. The average dose deficit for these 14 patients was 4.4%. They improved to 2% after weekly compensation. 10 (out of 14) patients passed criterion after weekly dose compensation; 3 failed marginally; 1 failed significantly (10% deficit). A more aggressive compensation frequency (every 3 fractions) could reduce the dose deficit to the acceptable level for this patient. The doses to OARs were not significantly different from online IG only without dose compensation. Conclusion: We demonstrated an offline dose compensation technique in prostate IGRT which can effectively account for residual uncertainties uncorrectable in online IG. Dose compensation allows further margin reduction and critical organs sparing.
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Received: 20 March 2018
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Corresponding Authors:
WU Qiu-wen
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