School of Nuclear Science and Technology, University of Science and Technology of China, Hefei, China.
Department of Radiation Oncology, Chinese Academy of Medical Sciences, Peking Union Medical College Hospital, Beijing, China.
J Appl Clin Med Phys. 2024 Oct;25(10):e14462. doi: 10.1002/acm2.14462. Epub 2024 Jul 27.
Anatomical and other changes during radiotherapy will cause inaccuracy of dose distributions, therefore the expectation for online adaptive radiation therapy (ART) is high in effectively reducing uncertainties due to intra-variation. However, ART requires extensive time and effort. This study investigated an adaptive assessment workflow based on fractional cone-beam computed tomography (CBCT) images.
Image registration, synthetic CT (sCT) generation, auto-segmentation, and dose calculation were implemented and integrated into ArcherQA Adaptive Check. The rigid registration was based on ITK open source. The deformable image registration (DIR) method was based on a 3D multistage registration network, and the sCT generation method was performed based on a 2D cycle-consistent adversarial network (CycleGAN). The auto-segmentation of organs at risk (OARs) on sCT images was finished by a deep learning-based auto-segmentation software, DeepViewer. The contours of targets were obtained by the structure-guided registration. Finally, the dose calculation was based on a GPU-based Monte Carlo (MC) dose code, ArcherQA.
The dice similarity coefficient (DSCs) were over 0.86 for target volumes and over 0.79 for OARs. The gamma pass rate of ArcherQA versus Eclipse treatment planning system was more than 99% at the 2%/2 mm criterion with a low-dose threshold of 10%. The time for the whole process was less than 3 min. The dosimetric results of ArcherQA Adaptive Check were consistent with the Ethos scheduled plan, which can effectively identify the fractions that need the implementation of the Ethos adaptive plan.
This study integrated AI-based technologies and GPU-based MC technology to evaluate the dose distributions using fractional CBCT images, demonstrating remarkably high efficiency and precision to support future ART processes.
放疗过程中的解剖和其他变化会导致剂量分布不准确,因此在线自适应放疗(ART)有望通过有效减少由于个体变异而导致的不确定性。然而,ART 需要大量的时间和精力。本研究探讨了一种基于分次锥形束 CT(CBCT)图像的自适应评估工作流程。
实现并集成了图像配准、合成 CT(sCT)生成、自动分割和剂量计算到 ArcherQA Adaptive Check 中。刚性配准基于 ITK 开源。变形图像配准(DIR)方法基于 3D 多阶段注册网络,sCT 生成方法基于 2D 循环一致对抗网络(CycleGAN)。sCT 图像上危及器官(OAR)的自动分割由基于深度学习的自动分割软件 DeepViewer 完成。目标轮廓由结构引导的注册获得。最后,剂量计算基于基于 GPU 的蒙特卡罗(MC)剂量代码 ArcherQA。
靶区的 Dice 相似系数(DSC)超过 0.86,OAR 超过 0.79。ArcherQA 与 Eclipse 治疗计划系统的伽玛通过率在 2%/2mm 标准下超过 99%,低剂量阈值为 10%。整个过程的时间不到 3 分钟。ArcherQA Adaptive Check 的剂量学结果与 Ethos 计划一致,可以有效识别需要实施 Ethos 自适应计划的部分。
本研究集成了基于人工智能的技术和基于 GPU 的 MC 技术,使用分次 CBCT 图像评估剂量分布,显示出极高的效率和精度,能够支持未来的 ART 流程。