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基于知识的10种不同癌症部位全自动放射治疗治疗计划规划

Knowledge-based planning for fully automated radiation therapy treatment planning of 10 different cancer sites.

作者信息

Chung Christine V, Khan Meena S, Olanrewaju Adenike, Pham Mary, Nguyen Quyen T, Patel Tina, Das Prajnan, O'Reilly Michael S, Reed Valerie K, Jhingran Anuja, Simonds Hannah, Ludmir Ethan B, Hoffman Karen E, Naidoo Komeela, Parkes Jeannette, Aggarwal Ajay, Mayo Lauren L, Shah Shalin J, Tang Chad, Beadle Beth M, Wetter Julie, Walker Gary, Hughes Simon, Mullassery Vinod, Skett Stephen, Thomas Christopher, Zhang Lifei, Nguyen Son, Mumme Raymond P, Douglas Raphael J, Baroudi Hana, Court Laurence E

机构信息

Department of Radiation Physics, University of Texas MD Anderson Cancer Center, Houston, TX, USA.

Department of Radiation Physics, University of Texas MD Anderson Cancer Center, Houston, TX, USA.

出版信息

Radiother Oncol. 2025 Jan;202:110609. doi: 10.1016/j.radonc.2024.110609. Epub 2024 Oct 30.

Abstract

PURPOSE

Radiation treatment planning is highly complex and can have significant inter- and intra-planner inconsistency, as well as variability in planning time and plan quality. Knowledge-based planning (KBP) is a tool that can be used to efficiently produce high-quality, consistent, clinically acceptable plans, independent of planner skills and experience. In this study, we created and validated multiple clinically acceptable and fully automatable KBP models, with the goal of creating VMAT plans without user intervention.

METHODS

Ten KBP models were configured using high quality clinical plans from a single institution. They were then honed to be part of a fully automatable system by incorporating scriptable planning structures, plan creation, and plan optimization. These models were verified and validated using quantitative (model statistics) and qualitative (dose-volume histogram estimation review) analysis. The resulting KBP-generated plans were reviewed by physicians and rated for clinical acceptability.

RESULTS

Autoplanning models were created for anorectal, bladder, breast/chest wall, cervix, esophagus, head and neck, liver, lung/mediastinum, prostate, and prostate with nodes treatment sites. All models were successfully created to be part of a fully automated system without the need for human intervention to create a fully optimized plan. The physician review indicated that, on average, 88% of all KBP-generated plans were "acceptable as is" and 98% were "acceptable after minor edits."

CONCLUSION

KBP models for multiple treatment sites were used as a basis to generate fully automatable, efficient, consistent, high-quality, and clinically acceptable plans. These plans do not require human intervention, demonstrating the potential this work has to significantly impact treatment planning workflows.

摘要

目的

放射治疗计划高度复杂,在计划者之间和计划者内部可能存在显著的不一致性,以及计划时间和计划质量的变异性。基于知识的计划(KBP)是一种工具,可用于高效地生成高质量、一致且临床可接受的计划,而不受计划者技能和经验的影响。在本研究中,我们创建并验证了多个临床可接受且完全可自动化的KBP模型,目标是在无需用户干预的情况下创建容积调强弧形放疗(VMAT)计划。

方法

使用来自单一机构的高质量临床计划配置了10个KBP模型。然后通过纳入可编写脚本的计划结构、计划创建和计划优化,将它们完善为完全可自动化系统的一部分。使用定量(模型统计)和定性(剂量体积直方图估计审查)分析对这些模型进行验证。由医生审查由此产生的KBP生成的计划,并对其临床可接受性进行评级。

结果

为肛门直肠、膀胱、乳腺/胸壁、宫颈、食管、头颈部、肝脏、肺/纵隔、前列腺以及有淋巴结转移的前列腺治疗部位创建了自动计划模型。所有模型均成功创建为完全自动化系统的一部分,无需人工干预即可创建完全优化的计划。医生审查表明,平均而言,所有KBP生成的计划中有88%“原样可接受”,98%“稍作编辑后可接受”。

结论

多个治疗部位的KBP模型被用作生成完全可自动化、高效、一致、高质量且临床可接受计划的基础。这些计划无需人工干预,证明了这项工作对显著影响治疗计划工作流程的潜力。

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