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首页> 外文期刊>Medical Physics >Evaluation of dose prediction errors and optimization convergence errors of deliverable-based head-and-neck IMRT plans computed with a superposition/convolution dose algorithm.
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Evaluation of dose prediction errors and optimization convergence errors of deliverable-based head-and-neck IMRT plans computed with a superposition/convolution dose algorithm.

机译:使用叠加/卷积剂量算法计算的基于可交付结果的头颈IMRT计划的剂量预测误差和优化收敛误差的评估。

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The purpose of this study is to evaluate dose prediction errors (DPEs) and optimization convergence errors (OCEs) resulting from use of a superposition/convolution dose calculation algorithm in deliverable intensity-modulated radiation therapy (IMRT) optimization for head-and-neck (HN) patients. Thirteen HN IMRT patient plans were retrospectively reoptimized. The IMRT optimization was performed in three sequential steps: (1) fast optimization in which an initial nondeliverable IMRT solution was achieved and then converted to multileaf collimator (MLC) leaf sequences; (2) mixed deliverable optimization that used a Monte Carlo (MC) algorithm to account for the incident photon fluence modulation by the MLC, whereas a superposition/convolution (SC) dose calculation algorithm was utilized for the patient dose calculations; and (3) MC deliverable-based optimization in which both fluence and patient dose calculations were performed with a MC algorithm. DPEs of the mixed method were quantified by evaluating the differences between the mixed optimization SC dose result and a MC dose recalculation of the mixed optimization solution. OCEs of the mixed method were quantified by evaluating the differences between the MC recalculation of the mixed optimization solution and the final MC optimization solution. The results were analyzed through dose volume indices derived from the cumulative dose-volume histograms for selected anatomic structures. Statistical equivalence tests were used to determine the significance of the DPEs and the OCEs. Furthermore, a correlation analysis between DPEs and OCEs was performed. The evaluated DPEs were within +/- 2.8% while the OCEs were within 5.5%, indicating that OCEs can be clinically significant even when DPEs are clinically insignificant. The full MC-dose-based optimization reduced normal tissue dose by as much as 8.5% compared with the mixed-method optimization results. The DPEs and the OCEs in the targets had correlation coefficients greater than 0.71, and there was no correlation for the organs at risk. Because full MC-based optimization results in lower normal tissue doses, this method proves advantageous for HN IMRT optimization.
机译:这项研究的目的是评估在头颈可交付强度调制放射治疗(IMRT)优化中使用叠加/卷积剂量计算算法而产生的剂量预测误差(DPE)和优化收敛误差(OCE)。 HN)患者。回顾性地重新优化了13例HN IMRT患者计划。 IMRT优化是通过三个连续步骤执行的:(1)快速优化,其中实现了最初的不可交付IMRT解决方案,然后将其转换为多叶准直器(MLC)叶序列; (2)混合可交付优化,它使用蒙特卡罗(MC)算法来说明MLC对入射光子注量的调制,而叠加/卷积(SC)剂量计算算法用于患者剂量计算; (3)基于MC交付的优化,其中使用MC算法执行注量和患者剂量计算。通过评估混合优化SC剂量结果与混合优化溶液的MC剂量重新计算之间的差异来量化混合方法的DPE。通过评估混合优化解决方案的MC重新计算与最终MC优化解决方案之间的差异来量化混合方法的OCE。通过从选定的解剖结构的累积剂量-体积直方图得出的剂量-体积指数分析结果。统计等效性检验用于确定DPE和OCE的重要性。此外,进行了DPE和OCE之间的相关性分析。评估的DPE在+/- 2.8%之内,而OCE在5.5%之内,这表明即使DPE在临床上不重要,OCE仍具有临床意义。与混合方法优化结果相比,基于MC剂量的完全优化使正常组织剂量减少了8.5%。目标中的DPE和OCE的相关系数大于0.71,并且与处于危险中的器官没有相关性。由于完全基于MC的优化导致较低的正常组织剂量,因此该方法证明对HN IMRT优化有利。

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