Liu Jiacheng, Wang Ruoxi, Wang Qingying, Yao Kaining, Wang Meijiao, Du Yi, Yue Haizhen, Wu Hao
Key laboratory of Carcinogenesis and Translational Research (Ministry of Education/Beijing), Department of Radiation Oncology, Peking University Cancer Hospital & Institute, Beijing, China.
Institute of Medical Technology, Peking University Health Science Center, Beijing, China.
J Appl Clin Med Phys. 2025 Jan;26(1):e14552. doi: 10.1002/acm2.14552. Epub 2024 Oct 15.
To develop and implement a fully automatic iterative planning (AIP) system in the clinical practice, generating volumetric-modulated arc therapy plans combined with simultaneous integrated boost technique VMAT (SIB-VMAT) for locally advanced rectal cancer (LARC) patients.
The designed AIP system aimed to automate the entire planning process through a web-based service, including auxiliary structure generation, plan creation, field configuration, plan optimization, dose calculation, and plan assessment. The system was implemented based on the Eclipse scripting application programming interface and an efficient iterative optimization algorithm was proposed to reduce the required iterations in the optimization process. To verify the performance of the implemented AIP system, we retrospectively selected a total of 106 patients and performed dosimetric comparisons between the automatic plans (APs) and the manual plans (MPs), in terms of dose-volume histogram (DVH) metrics, homogeneity index (HI), and conformity index (CI) for different volumes of interest.
The AIP system has successfully created 106 APs within clinically acceptable timeframes. The average planning time per case was 36.8 ± 6.5 min, with an average iteration number of 6.8 (±1.1) in plan optimization. Compared to MPs, APs exhibited better performance in the planning target volume conformity and hotspot control ( ). The organs at risk (OARs) sparing was significantly improved in APs, with mean dose reductions in the femoral heads, the bone marrow, and the SmallBowel-Avoid of 0.53 Gy, 1.18 Gy, and 1.00 Gy, respectively ( ). Slight improvement was also observed in the urinary bladder and the small bowel . Additionally, quality variation between plans from different planners was observed in DVH metrics while the APs represented better plan quality consistency.
An AIP system has been implemented and integrated into the clinical treatment planning workflow. The AIP-generated SIB-VMAT plans for LARC have demonstrated superior plan quality and consistency compared with the manual counterparts. In the meantime, the planning time has been reduced by the AIP approach. Based on the reported results, the implemented AIP framework has been proven to improve plan quality and planning efficiency, liberating planners from the laborious parameter-tuning in the optimization phase.
在临床实践中开发并实施一种全自动迭代计划(AIP)系统,为局部晚期直肠癌(LARC)患者生成结合同步整合加量技术的容积调强弧形治疗计划(VMAT-SIB)。
设计的AIP系统旨在通过基于网络的服务使整个计划过程自动化,包括辅助结构生成、计划创建、射野配置、计划优化、剂量计算和计划评估。该系统基于Eclipse脚本应用程序编程接口实现,并提出了一种高效的迭代优化算法以减少优化过程中所需的迭代次数。为验证所实施的AIP系统的性能,我们回顾性选取了共106例患者,并就不同感兴趣体积的剂量体积直方图(DVH)指标、均匀性指数(HI)和适形指数(CI),对自动计划(AP)和手动计划(MP)进行了剂量学比较。
AIP系统已在临床可接受的时间范围内成功创建了106个AP。每例的平均计划时间为36.8±6.5分钟,计划优化中的平均迭代次数为6.8(±1.1)次。与MP相比,AP在计划靶体积适形性和热点控制方面表现更佳( )。AP在危及器官(OAR)保护方面有显著改善,股骨头、骨髓和小肠的平均剂量分别降低了0.53 Gy、1.18 Gy和1.00 Gy( )。膀胱和小肠也有轻微改善( )。此外,在DVH指标方面观察到不同计划者的计划之间存在质量差异,而AP表现出更好的计划质量一致性。
已实施一种AIP系统并将其整合到临床治疗计划工作流程中。AIP为LARC生成的VMAT-SIB计划与手动计划相比显示出卓越的计划质量和一致性。同时,AIP方法减少了计划时间。基于所报告的结果,已实施的AIP框架已被证明可提高计划质量和计划效率,使计划者从优化阶段繁琐的参数调整中解放出来。