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使用带有边缘适应预警系统的支持向量分类法确定的肝脏立体定向体部放射治疗的个体化计划靶区边缘

Patient-specific PTV margins for liver stereotactic body radiation therapy determined using support vector classification with an early warning system for margin adaptation.

作者信息

Liu Ming, Cygler Joanna E, Vandervoort Eric

机构信息

Department of Physics, Carleton University, Ottawa, ON, K1S 5B6, Canada.

Department of Medical Physics, The Ottawa Hospital Cancer Centre, Ottawa, ON, K1H 8L6, Canada.

出版信息

Med Phys. 2020 Oct;47(10):5172-5182. doi: 10.1002/mp.14419. Epub 2020 Aug 14.

Abstract

PURPOSE

An adaptive planning target volume (PTV) margin strategy incorporating a volumetric tracking error assessment after each fraction is proposed for robotic stereotactic body radiation therapy (SBRT) liver treatments.

METHODS AND MATERIALS

A supervised machine learning algorithm employing retrospective data, which emulates a dry-run session prior to planning, is used to investigate if motion tracking errors are <2 mm, and consequently, planning target volume (PTV) margins can be reduced. A fraction of data collected during the beginning of a treatment course emulates a dry-run session (mock) before planning. Twenty features are calculated using mock data and used for support vector classification (SVC). A treatment course is labeled as Class 1 if the maximum root-mean-square radial tracking error for all remaining fractions is below 2 mm, or Class 2 otherwise. We evaluate the classification using fivefold cross-validation, leave-one-out cross-validation, 500 repeated random subsampling cross-validation, and the receiver operating characteristic (ROC) metric. The classification is independently cross-validated on a cohort of 48 treatment plans for other anatomical sites. A per fraction assessment of volumetric tracking errors is performed for the standard 5 mm PTV margin (PTV ) for courses predicted as Class 2; or for a margin reduced by 2 mm (PTV ) for those predicted as Class 1. We perturb the gross tumor volume (GTV) by the tracking errors for each x-ray image acquisition and calculate the fractional GTV voxel occupancy probability (P ) inside the PTV for each treatment fraction i. For treatment courses classified as Class 1, an early warning system flags treatment courses having any P  < 0.99, and the subsequent treatments are proposed to be replanned using PTV .

RESULTS

The classification accuracies are 0.84 ± 0.06 using fivefold cross-validation, and 0.77 when validated using an independent testing set (other anatomical sites). Eighty percent of treatment courses are correctly classified using leave-one-out cross-validation. The sensitivity, precision, specificity, F1 score, and accuracy are 0.81 ± 0.09, 0.85 ± 0.08, 0.80 ± 0.11, 0.83 ± 0.06, and 0.80 ± 0.07, respectively, using 500 repeated random subsampling cross-validation. The area under the curve for the ROC metric is 0.87 ± 0.05. The four most important features for classification are related to standard deviations of motion tracking errors, the linearity between the target location and external LED marker positions, and marker radial motion amplitudes. Eleven of 64 cases predicted to be of Class 1 have 0.96 < P  < 0.99 for each treatment fraction, and require replanning using PTV . In comparison, the PTV always covers the perturbed GTVs with P  > 0.99 for all patients.

CONCLUSIONS

Support vector classification is proposed for the classification of different motion tracking errors for patient courses based on a mock session before planning for SBRT liver treatments. It is feasible to implement patient-specific PTV margins in the clinic, assisted with an early warning system to flag treatment courses that require replanning using larger PTV margins in an adaptive treatment strategy.

摘要

目的

针对机器人立体定向体部放射治疗(SBRT)肝脏治疗,提出一种自适应计划靶区(PTV)边界策略,该策略在每次分割后纳入体积跟踪误差评估。

方法和材料

采用一种利用回顾性数据的监督机器学习算法,该算法在计划前模拟一次预演环节,用于研究运动跟踪误差是否<2毫米,从而可以减小计划靶区(PTV)边界。在治疗疗程开始时收集的一部分数据在计划前模拟预演环节(模拟)。使用模拟数据计算20个特征,并用于支持向量分类(SVC)。如果所有剩余分割的最大均方根径向跟踪误差低于2毫米,则将一个治疗疗程标记为1类,否则标记为2类。我们使用五折交叉验证、留一法交叉验证、500次重复随机子采样交叉验证和接收器操作特征(ROC)指标来评估分类。在一组48个其他解剖部位的治疗计划上对分类进行独立交叉验证。对于预测为2类的疗程,对标准5毫米PTV边界(PTV )进行逐分割的体积跟踪误差评估;对于预测为1类的疗程,对边界减小2毫米(PTV )进行评估。我们根据每次X射线图像采集的跟踪误差对大体肿瘤体积(GTV)进行扰动,并计算每个治疗分割i时PTV内GTV体素占有率概率(P )。对于分类为1类的治疗疗程,一个预警系统标记出任何P < 0.99的治疗疗程,并建议对后续治疗使用PTV 重新计划。

结果

使用五折交叉验证时分类准确率为0.84±0.06,使用独立测试集(其他解剖部位)验证时为0.77。使用留一法交叉验证时,80%的治疗疗程被正确分类。使用500次重复随机子采样交叉验证时,灵敏度、精确率、特异性、F1分数和准确率分别为0.81±0.09、0.85±0.08、0.80±0.11、0.83±0.06和0.80±0.07。ROC指标的曲线下面积为0.87±0.05。分类的四个最重要特征与运动跟踪误差的标准差、目标位置与外部LED标记位置之间的线性关系以及标记径向运动幅度有关。在预测为1类的64例病例中,有11例在每个治疗分割时0.96 < P < 0.99,需要使用PTV 重新计划。相比之下,对于所有患者,PTV 始终以P > 0.99覆盖扰动后的GTV。

结论

基于SBRT肝脏治疗计划前的模拟环节,提出支持向量分类用于对患者疗程的不同运动跟踪误差进行分类。在临床中实施针对患者的PTV边界是可行的,借助预警系统标记出在自适应治疗策略中需要使用更大PTV边界重新计划的治疗疗程。

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