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Strategies for automatic online treatment plan reoptimization using clinical treatment planning system: A planning parameters study

机译:使用临床治疗计划系统自动优化在线治疗计划的策略:计划参数研究

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Purpose: Adaptive radiation therapy for prostate cancer using online reoptimization provides an improved control of interfractional anatomy variations. However, the clinical implementation of online reoptimization is currently limited by the low efficiency of current strategies and the difficulties associated with integration into the current treatment planning system. This study investigates the strategies for performing fast (~2 min) automatic online reoptimization with a clinical fluence-map-based treatment planning system; and explores the performance with different input parameters settings: dose-volume histogram (DVH) objective settings, starting stage, and iteration number (in the context of real time planning). Methods: Simulated treatments of 10 patients were reoptimized daily for the first week of treatment (5 fractions) using 12 different combinations of optimization strategies. Options for objective settings included guideline-based RTOG objectives, patient-specific objectives based on anatomy on the planning CT, and daily-CBCT anatomy-based objectives adapted from planning CT objectives. Options for starting stages involved starting reoptimization with and without the original plan's fluence map. Options for iteration numbers were 50 and 100. The adapted plans were then analyzed by statistical modeling, and compared both in terms of dosimetry and delivery efficiency. Results: All online reoptimized plans were finished within ~2 min with excellent coverage and conformity to the daily target. The three input parameters, i.e., DVH objectives, starting stage, and iteration number, contributed to the outcome of optimization nearly independently. Patient-specific objectives generally provided better OAR sparing compared to guideline-based objectives. The benefit in high-dose sparing from incorporating daily anatomy into objective settings was positively correlated with the relative change in OAR volumes from planning CT to daily CBCT. The use of the original plan fluence map as the starting stage reduced OAR dose at the mid-dose region, but increased the monitor units by 17%. Differences of only 2cc or less in OAR V50%/V70Gy/V76Gy were observed between 100 and 50 iterations. Conclusions: It is feasible to perform automatic online reoptimization in ~2 min using a clinical treatment planning system. Selecting optimal sets of input parameters is the key to achieving high quality reoptimized plans, and should be based on the individual patient's daily anatomy, delivery efficiency, and time allowed for plan adaptation.
机译:目的:使用在线重新优化的前列腺癌适应性放射疗法可更好地控制分数间解剖结构变化。然而,在线再优化的临床实施目前受到当前策略的低效率以及与整合到当前治疗计划系统相关的困难的限制。本研究探讨了基于临床通量图的治疗计划系统进行快速(〜2分钟)自动在线重新优化的策​​略。并探讨了使用不同输入参数设置的性能:剂量-体积直方图(DVH)目标设置,起始阶段和迭代次数(在实时计划的情况下)。方法:采用12种不同的优化策略组合,在治疗的第一周(5个部分)每天对10例患者的模拟治疗进行重新优化。目标设置的选项包括基于指南的RTOG目标,基于计划CT的解剖结构的患者特定目标,以及根据计划CT目标进行的基于CBCT解剖的日常目标。启动阶段的选项包括在有和没有原始计划的通量图的情况下开始重新优化。迭代次数的选择是50和100。然后,通过统计建模分析调整后的计划,并在剂量和递送效率方面进行比较。结果:所有在线重新优化计划均在〜2分钟内完成,并且覆盖范围广且符合每日目标。 DVH目标,起始阶段和迭代次数这三个输入参数几乎独立地影响了优化的结果。与基于指南的目标相比,针对患者的目标通常可提供更好的OAR保留。通过将日常解剖结构纳入客观环境而节省大剂量的益处与从计划CT到日常CBCT的OAR量的相对变化呈正相关。使用原始计划注量图作为开始阶段可以减少剂量中等区域的OAR剂量,但将监护仪单位增加17%。在100到50次迭代之间,OAR V50%/ V70Gy / V76Gy的差异仅为2cc或更少。结论:使用临床治疗计划系统在约2分钟内进行自动在线重新优化是可行的。选择最佳的输入参数集是获得高质量重新优化计划的关键,并且应基于每个患者的日常解剖结构,输送效率和计划适应时间。

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