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基于知识的心脏保护型肺部放射治疗计划模型的实施

Implementation of a Knowledge-Based Treatment Planning Model for Cardiac-Sparing Lung Radiation Therapy.

作者信息

Harms Joseph, Zhang Jiahan, Kayode Oluwatosin, Wolf Jonathan, Tian Sibo, McCall Neal, Higgins Kristin A, Castillo Richard, Yang Xiaofeng

机构信息

Department of Radiation Oncology and Winship Cancer Institute, Emory University, Atlanta, Georgia.

Department of Radiation Oncology, University of Alabama at Birmingham, Birmingham, Alabama.

出版信息

Adv Radiat Oncol. 2021 Jun 24;6(6):100745. doi: 10.1016/j.adro.2021.100745. eCollection 2021 Nov-Dec.

Abstract

PURPOSE

High radiation doses to the heart have been correlated with poor overall survival in patients receiving radiation therapy for stage III non-small cell lung cancer (NSCLC). We built a knowledge-based planning (KBP) tool to limit the dose to the heart during creation of volumetric modulated arc therapy (VMAT) treatment plans for patients being treated to 60 Gy in 30 fractions for stage III NSCLC.

METHODS AND MATERIALS

A previous study at our institution retrospectively delineated intracardiac volumes and optimized VMAT treatment plans to reduce dose to these substructures and to the whole heart. Two RapidPlan (RP) KBP models were built from this cohort, 1 model using the clinical plans and a separate model using the cardiac-optimized plans. Using target volumes and 6 organs at risk (OARs), models were trained to generate treatment plans in a semiautomated process. The cardiac-sparing KBP model was tested in the same cohort used for training, and both models were tested on an external validation cohort of 30 patients.

RESULTS

Both RP models produced clinically acceptable plans in terms of target coverage, dose uniformity, and dose to OARs. Compared with the previously created cardiac-optimized plans, cardiac-sparing RPs showed significant reductions in the mean dose to the esophagus and lungs while performing similarly or better in all evaluated heart dose metrics. When comparing the 2 models, the cardiac-sparing RP showed reduced ( < .05) heart mean and maximum doses as well as volumes receiving 60 Gy, 50 Gy, and 30 Gy.

CONCLUSIONS

By using a set of cardiac-optimized treatment plans for training, the proposed KBP model provided a means to reduce the dose to the heart and its substructures without the need to explicitly delineate cardiac substructures. This tool may offer reduced planning time and improved plan quality and might be used to improve patient outcomes.

摘要

目的

对于接受放射治疗的III期非小细胞肺癌(NSCLC)患者,心脏接受高辐射剂量与总体生存率低相关。我们构建了一种基于知识的计划(KBP)工具,以在为III期NSCLC患者创建容积调强弧形治疗(VMAT)治疗计划(30次分割,总剂量60 Gy)时限制心脏的剂量。

方法和材料

我们机构之前的一项研究回顾性地勾画了心内体积,并优化了VMAT治疗计划,以减少这些亚结构和整个心脏的剂量。从该队列中构建了两个RapidPlan(RP)KBP模型,一个模型使用临床计划,另一个单独的模型使用心脏优化计划。使用靶区体积和6个危及器官(OAR),对模型进行训练,以在半自动过程中生成治疗计划。在用于训练的同一队列中测试了心脏保护KBP模型,并在30例患者的外部验证队列中测试了这两个模型。

结果

就靶区覆盖、剂量均匀性和OAR剂量而言两个RP模型均产生了临床可接受的计划。与之前创建的心脏优化计划相比,心脏保护RP在食管和肺部的平均剂量显著降低,同时在所有评估的心脏剂量指标上表现相似或更好。比较这两个模型时,心脏保护RP的心脏平均和最大剂量以及接受60 Gy、50 Gy和30 Gy的体积均降低(< .05)。

结论

通过使用一组心脏优化治疗计划进行训练,所提出的KBP模型提供了一种减少心脏及其亚结构剂量的方法,而无需明确勾画心脏亚结构。该工具可能会减少计划时间,提高计划质量,并可能用于改善患者预后。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b22c/8463738/9e96526682da/gr1.jpg

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