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基于 GPU 加速的蒙特卡罗在线自适应质子治疗:一项可行性研究。

GPU-accelerated Monte Carlo-based online adaptive proton therapy: A feasibility study.

机构信息

Department of Radiation Oncology, Mayo Clinic, Phoenix, Arizona, USA.

Department of Radiation Oncology, Mayo Clinic, Rochester, Minnesota, USA.

出版信息

Med Phys. 2022 Jun;49(6):3550-3563. doi: 10.1002/mp.15678. Epub 2022 Apr 27.

DOI:10.1002/mp.15678
PMID:35443080
Abstract

PURPOSE

To develop an online graphic processing unit (GPU)-accelerated Monte Carlo-based adaptive radiation therapy (ART) workflow for pencil beam scanning (PBS) proton therapy to address interfraction anatomical changes in patients treated with PBS.

METHODS AND MATERIALS

A four-step workflow was developed using our in-house developed GPU-accelerated Monte Carlo-based treatment planning system to implement online Monte Carlo-based ART for PBS. The first step conducts diffeomorphic demon-based deformable image registration (DIR) to propagate contours on the initial planning CT (pCT) to the verification CT (vCT) to form a new structure set. The second step performs forward dose calculation of the initial plan on the vCT with the propagated contours after manual approval (possible modifications involved). The third step triggers a reoptimization of the plan depending on whether the verification dose meets the clinical requirements or not. A robust evaluation will be done for both the verification plan in the second step and the reopotimized plan in the third step. The fourth step involves a two-stage (before and after delivery) patient-specific quality assurance (PSQA) of the reoptimized plan. The before-delivery PSQA is to compare the plan dose to the dose calculated using an independent fast open-source Monte Carlo code, MCsquare. The after-delivery PSQA is to compare the plan dose to the dose recalculated using the log file (spot MU, spot position, and spot energy) collected during the delivery. Jaccard index (JI), dice similarity coefficients (DSCs), and Hausdorff distance (HD) were used to assess the quality of the propagated contours in the first step. A commercial plan evaluation software, ClearCheck™, was integrated into the workflow to carry out efficient plan evaluation. 3D Gamma analysis was used during the fourth step to ensure the accuracy of the plan dose from reoptimization. Three patients with three different disease sites were chosen to evaluate the feasibility of the online ART workflow for PBS.

RESULTS

For all three patients, the propagated contours were found to have good volume conformance [JI (lowest-highest: 0.833-0.983) and DSC (0.909-0.992)] but suboptimal boundary coincidence [HD (2.37-20.76 mm)] for organs-at-risk. The verification dose evaluated by ClearCheck™ showed significant degradation of the target coverage due to the interfractional anatomical changes. Reoptimization on the vCT resulted in great improvement of the plan quality to a clinically acceptable level. 3D Gamma analyses of PSQA confirmed the accuracy of the plan dose before delivery (mean Gamma index = 98.74% with a threshold of 2%/2 mm/10%), and after delivery based on the log files (mean Gamma index = 99.05% with a threshold of 2%/2 mm/10%). The average time cost for the complete execution of the workflow was around 858 s, excluding the time for manual intervention.

CONCLUSION

The proposed online ART workflow for PBS was demonstrated to be efficient and effective by generating a reoptimized plan that significantly improved the plan quality.

摘要

目的

为笔形束扫描(PBS)质子治疗开发一种基于图形处理单元(GPU)的在线蒙特卡罗自适应放射治疗(ART)工作流程,以解决接受 PBS 治疗的患者分次间解剖变化问题。

方法与材料

我们使用内部开发的基于 GPU 的蒙特卡罗治疗计划系统开发了一个四步工作流程,以实现基于在线蒙特卡罗的 PBS 在线 ART。第一步是进行基于差分恶魔的可变形图像配准(DIR),将初始计划 CT(pCT)上的轮廓传播到验证 CT(vCT)上,形成新的结构集。第二步是在手动批准后(可能涉及修改),在 vCT 上对初始计划进行正向剂量计算。第三步是根据验证剂量是否满足临床要求,触发计划的重新优化。第二步中的验证计划和第三步中的重新优化计划都将进行稳健的评估。第四步包括对重新优化计划进行两次(治疗前和治疗后)患者特定质量保证(PSQA)。治疗前 PSQA 是将计划剂量与使用独立的快速开源蒙特卡罗代码 MCsquare 计算的剂量进行比较。治疗后 PSQA 是将计划剂量与在治疗过程中收集的日志文件(点 MU、点位置和点能量)重新计算的剂量进行比较。第一步中使用 Jaccard 指数(JI)、骰子相似系数(DSC)和 Hausdorff 距离(HD)来评估传播轮廓的质量。商业计划评估软件 ClearCheck™ 被集成到工作流程中,以进行有效的计划评估。3D Gamma 分析用于第四步,以确保重新优化后的计划剂量的准确性。选择了三名患有三种不同疾病部位的患者来评估 PBS 在线 ART 工作流程的可行性。

结果

对于所有三名患者,传播的轮廓都具有良好的体积一致性[JI(最低-最高:0.833-0.983)和 DSC(0.909-0.992)],但危险器官的边界一致性不理想[HD(2.37-20.76mm)]。ClearCheck™ 评估的验证剂量由于分次间解剖变化而导致靶区覆盖明显恶化。在 vCT 上重新优化导致计划质量得到极大改善,达到临床可接受水平。PSQA 的 3D Gamma 分析证实了治疗前(平均伽玛指数=98.74%,阈值为 2%/2mm/10%)和基于日志文件的治疗后(平均伽玛指数=99.05%,阈值为 2%/2mm/10%)计划剂量的准确性。完整执行工作流程的平均时间成本约为 858 秒,不包括手动干预的时间。

结论

通过生成显著提高计划质量的重新优化计划,证明了用于 PBS 的在线 ART 工作流程是高效和有效的。

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