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对 EORTC-1219-DAHANCA-29 试验计划的分析表明,基于知识的计划具有提供患者特异性治疗计划质量保证的潜力。

Analysis of EORTC-1219-DAHANCA-29 trial plans demonstrates the potential of knowledge-based planning to provide patient-specific treatment plan quality assurance.

机构信息

VU University Medical Center, Department of Radiation Oncology, Amsterdam, The Netherlands.

VU University Medical Center, Department of Radiation Oncology, Amsterdam, The Netherlands.

出版信息

Radiother Oncol. 2019 Jan;130:75-81. doi: 10.1016/j.radonc.2018.10.005. Epub 2018 Oct 19.

DOI:10.1016/j.radonc.2018.10.005
PMID:30348462
Abstract

INTRODUCTION

Radiotherapy treatment plan quality can influence clinical trial outcomes and general QA may not identify suboptimal organ-at-risk (OAR) sparing. We retrospectively performed patient-specific quality assurance (QA) of 100 head-and-neck cancer (HNC) plans from the EORTC-1219-DAHANCA-29 study.

MATERIALS AND METHODS

A 177-patient RapidPlan (Varian Medical Systems) model comprising institutional HNC plans was used to QA trial plans (P). RapidPlan plans (P) were created using RapidPlan and Eclipse scripting to achieve a high degree of automation. Comparison between P mean predicted/achieved OAR doses, and P mean OAR doses was made for parotid/submandibular glands (PGs/SMGs) and swallowing muscles (SM).

RESULTS

OAR predictions were made within 2 min per patient. Averaged PG/SMG/SM mean doses were 2.0/9.0/3.8 Gy lower in P. Using predicted P combined mean OAR dose as the benchmark, a total of 60/27/4 trial plans could be improved by 3/6/9 Gy respectively.

DISCUSSION

Individualized QA indicated that OAR sparing could frequently be improved in EORTC-1219 study plans, even though they met the trial's generic plan criteria. Automated, patient-specific QA can be performed within a few minutes and should be considered to reduce the influence of planning variation on trial outcomes.

摘要

简介

放射治疗计划的质量会影响临床试验的结果,而一般的质量保证(QA)可能无法识别出不理想的危及器官(OAR)保护。我们回顾性地对 EORTC-1219-DAHANCA-29 研究中的 100 例头颈部癌症(HNC)计划进行了患者特异性质量保证(QA)。

材料与方法

使用包含机构 HNC 计划的 177 例 RapidPlan(Varian Medical Systems)模型来 QA 试验计划(P)。使用 RapidPlan 和 Eclipse 脚本创建 RapidPlan 计划(P),以实现高度自动化。比较 P 的平均预测/实现的 OAR 剂量和 P 的平均 OAR 剂量,包括腮腺/颌下腺(PGs/SMGs)和吞咽肌肉(SM)。

结果

每个患者的 OAR 预测在 2 分钟内完成。P 中的 PG/SMG/SM 平均剂量分别低 2.0/9.0/3.8Gy。使用预测的 P 联合平均 OAR 剂量作为基准,共有 60/27/4 个试验计划可以分别改善 3/6/9Gy。

讨论

个体化 QA 表明,即使 EORTC-1219 研究计划符合试验的通用计划标准,OAR 保护也可以经常得到改善。自动化、患者特异性 QA 可以在几分钟内完成,应该考虑使用它来减少计划变异对试验结果的影响。

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