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通过 APQM 评分来高效地训练和验证 RapidPlan 模型。

Efficiently train and validate a RapidPlan model through APQM scoring.

机构信息

Medical Physics Department, Veneto Institute of Oncology IOV-IRCCS, Padova, 35128, Italy.

出版信息

Med Phys. 2018 Jun;45(6):2611-2619. doi: 10.1002/mp.12896. Epub 2018 Apr 19.

Abstract

PURPOSE

The aim of this study was to propose and validate an intuitive method for training and to validate knowledge-based planning (KBP) systems based on a patient-specific plan quality scoring.

METHODS

A sample of 80 clinical plans of prostate cancer patients were ranked on the basis of the Adjusted Plan Quality Metric (APQM%). This quality metric was computed normalizing the Plan Quality Metric (PQM%) score to the best possible OAR sparing estimated by the Feasibility DVH (FDVH) algorithm. Two different plan libraries were created, purging all the plans below the first quartile or below the median the APQM% distribution. These libraries were used to populate and train two RapidPlan models: respectively, the APMQ and the APMQ models. No further refinements or actions were undertaken on these two models. Their performances were benchmarked against another two RapidPlan models. An Uncleaned model, which was populated and trained with the initial sample of 80 plans, and a Cleaned model, obtained through the standard iterative cleaning and refinement process suggested by the vendor and in literature. The outcomes of a planning test based on 20 patients within the training library (closed loop) and 20 patients outside of the training library (open-loop) were compared through various DVH metrics and the PQM% score.

RESULTS

The selection through APQM% thresholding roughly preserves the geometric variety of the Cleaned model; only the APMQ model showed a modest broadness reduction. The models generated through APQM% thresholding showed target coverage and OARs sparing equal or superior to the Uncleaned and Cleaned models both for the closed- and the open-loop tests. No significant differences were found between the four models. PQM% analysis ranked the overall plan quality as: 86.5 ± 6.5% APQM , 83.1 ± 5.9% APQM , 80.39 ± 10.6% Cleaned and 79.4 ± 8.5% Uncleaned in the closed-loop test; 84.9 ± 7.6% APQM , 82.6 ± 7.9% APQM , 80.39 ± 10.6% Cleaned and 79.4 ± 8.5% Uncleaned in the open-loop test.

CONCLUSIONS

Forward feeding a RapidPlan model through a thresholding selection based on APQM% is proven to produce equal or better results than a model based on a manually and iteratively refined population. A tighter APQM% threshold turns approximately into a higher average quality of plans generated with RapidPlan. A trade-off must be found between the mean quality of the KBP library and its numerosity. The proposed KBP feeding method helps the KBP user, because it makes the model refinement more intuitive and less time consuming.

摘要

目的

本研究旨在提出并验证一种基于患者特异性计划质量评分的直观的培训和验证基于知识的计划(KBP)系统的方法。

方法

基于调整后的计划质量度量(APQM%),对 80 例前列腺癌患者的临床计划进行了排序。该质量度量通过将计划质量度量(PQM%)分数归一化为可行性剂量体积直方图(FDVH)算法估计的最佳 OAR 保护来计算。创建了两个不同的计划库,清除 APQM%分布的第一四分位数或中位数以下的所有计划。使用这两个库填充和训练两个 RapidPlan 模型:分别是 APMQ 和 APMQ 模型。没有对这两个模型进行进一步的改进或操作。将它们的性能与另外两个 RapidPlan 模型进行了基准测试。一个未清洗的模型,使用 80 个计划的初始样本填充和训练,以及一个通过供应商和文献中建议的标准迭代清洗和细化过程获得的清洗模型。通过各种剂量体积直方图(DVH)指标和 PQM%评分,比较了基于培训库中 20 例患者(闭环)和培训库外 20 例患者(开环)的计划测试的结果。

结果

通过 APQM%阈值选择大致保留了清洗模型的几何多样性;仅 APMQ 模型显示出适度的变宽减少。通过 APQM%阈值选择生成的模型,对于闭环和开环测试,其靶区覆盖和 OAR 保护与未清洗和清洗模型一样或更好。四个模型之间没有发现显著差异。PQM%分析将整体计划质量排名为:在闭环测试中,86.5 ± 6.5%APQM 、83.1 ± 5.9%APQM 、80.39 ± 10.6%清洗和 79.4 ± 8.5%未清洗;在开环测试中,84.9 ± 7.6%APQM 、82.6 ± 7.9%APQM 、80.39 ± 10.6%清洗和 79.4 ± 8.5%未清洗。

结论

通过基于 APQM%的阈值选择正向馈送 RapidPlan 模型被证明可以产生与基于手动和迭代细化的人群的模型相同或更好的结果。更严格的 APQM%阈值大约会产生更高的 RapidPlan 生成计划的平均质量。必须在 KBP 库的平均质量与其数量之间找到平衡。所提出的 KBP 馈送方法可以帮助 KBP 用户,因为它使模型细化更加直观,耗时更少。

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