全乳房放射治疗的自动治疗计划组合。

IF 3.2 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Medical physics Pub Date : 2024-12-19 DOI:10.1002/mp.17588
Hana Baroudi, Leonard Che Fru, Deborah Schofield, Dominique L. Roniger, Callistus Nguyen, Donald Hancock, Christine Chung, Beth M. Beadle, Kent A. Gifford, Tucker Netherton, Joshua S. Niedzielski, Adam Melancon, Manickam Muruganandham, Meena Khan, Simona F. Shaitelman, Sanjay Shete, Patricia Murina, Daniel Venencia, Sheeba Thengumpallil, Conny Vrieling, Joy Zhang, Melissa P. Mitchell, Laurence E. Court
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引用次数: 0

摘要

背景:放射治疗自动化是解决日益增加的癌症负担和劳动力短缺的一个有希望的解决方案。然而,现有的乳腺放疗自动化方法缺乏全面的端到端解决方案,无法满足不同的护理标准。目的:本研究旨在针对个体患者因素、临床途径和现有资源,制定完整的完整乳房自动放疗治疗计划。方法:我们开发了五种自动化的常规治疗方法,并利用已建立的RapidPlan模型进行体积弧治疗。这些方法包括全乳常规切线治疗,锁骨上淋巴结(SCLV)伴/不伴腋窝淋巴结治疗的两种变体,以及综合区域淋巴结治疗的两种选择。后者包括宽切线光子场与SCLV场,光子切线场与匹配的电子场治疗乳腺内淋巴结(IMNs)和SCLV场。每种方法都提供一个或两个等中心设置(带沙发旋转)的选择,以适应各种患者的大小。所有算法首先使用内部nnU-net深度学习模型自动生成乳腺临床目标体积、区域淋巴结和危险器官的轮廓。然后自动生成和优化龙门架角度和场形状,以确保覆盖目标,同时限制对附近器官的剂量。使用淋巴结场的场加权和切线的自动化场对场方法来优化剂量。这些算法被整合到RayStation治疗计划系统中,并对来自瑞士、阿根廷、伊朗和美国四个不同机构的15名内部全乳患者(150个方案)和40名外部患者(360个方案)进行了临床可接受性测试。评估标准包括确保充分覆盖目标和遵守正常结构的剂量限制。一位乳腺放射肿瘤学家评估了单机构数据集的临床可接受性(5分制),一位物理学家评估了多机构数据集(按原样使用或编辑)。结果:所有数据集(510个方案)的剂量学评估显示,100%的自动化方案满足乳腺、巩膜细胞、腋窝淋巴结和内阴淋巴结的剂量覆盖率要求,分别为99%、98%和91%。正如预期的那样,当多个领域结合在一起时,热点更加普遍。对于心脏、同侧肺和对侧乳房,自动计划分别满足95%、92%和95%的限制。医生对15名内部患者的评估表明,所有的自动化计划在临床上都是可以接受的,只有轻微的修改。值得注意的是,使用RapidPlan模型的自动轮廓导致73%的病例(95%置信区间,95% CI[51- 96])患者的计划立即准备好使用,其余病例需要轻微的风格编辑。同样,物理学家对40名多机构患者的回顾显示,79% (95% CI[73,85])的时间(95% CI[73,85])自动计划已准备好使用,其余病例需要进行编辑。结论:本研究验证了全乳腺放疗综合自动化治疗计划模型的可行性,该模型可有效适应多种治疗模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An automated treatment planning portfolio for whole breast radiotherapy

An automated treatment planning portfolio for whole breast radiotherapy

Background

Automation in radiotherapy presents a promising solution to the increasing cancer burden and workforce shortages. However, existing automated methods for breast radiotherapy lack a comprehensive, end-to-end solution that meets varying standards of care.

Purpose

This study aims to develop a complete portfolio of automated radiotherapy treatment planning for intact breasts, tailored to individual patient factors, clinical approaches, and available resources.

Methods

We developed five automated conventional treatment approaches and utilized an established RapidPlan model for volumetric arc therapy. These approaches include conventional tangents for whole breast treatment, two variants for supraclavicular nodes (SCLV) treatment with/without axillary nodes, and two options for comprehensive regional lymph nodes treatment. The latter consists of wide tangents photon fields with a SCLV field, and a photon tangents field with a matched electron field to treat the internal mammary nodes (IMNs), and a SCLV field. Each approach offers the choice of a single or two isocenter setup (with couch rotation) to accommodate a wide range of patient sizes. All algorithms start by automatically generating contours for breast clinical target volume, regional lymph nodes, and organs at risk using an in-house nnU-net deep learning models. Gantry angles and field shapes are then automatically generated and optimized to ensure target coverage while limiting the dose to nearby organs. The dose is optimized using field weighting for the lymph nodes fields and an automated field-in-field approach for the tangents. These algorithms were integrated into the RayStation treatment planning system and tested for clinical acceptability on 15 internal whole breast patients (150 plans) and 40 external patients from four different institutions in Switzerland, Argentina, Iran, and the USA (360 plans). Evaluation criteria included ensuring adequate coverage of targets and adherence to dose constraints for normal structures. A breast radiation oncologist reviewed the single institution dataset for clinical acceptability (5-point scale) and a physicist evaluated the multi-institutional dataset (use as is or edit).

Results

The dosimetric evaluation across all datasets (510 plans) showed that 100% of the automated plans met the dose coverage requirements for the breast, 99% for the SCLV, 98% for the axillary nodes, and 91% for the IMN. As expected, hot spots were more prevalent when multiple fields were combined. For the heart, ipsilateral lung, and contralateral breast, automated plans met constraints for 95%, 92%, and 95% of the plans, respectively. Physician evaluation of the 15 internal patients indicated that all automated plans were clinically acceptable with minor edits. Notably, the use of automated contours with the RapidPlan model resulted in plans that were immediately ready for use in 73% of cases (95% confidence interval, 95% CI [51- 96]) of patients, with the remaining cases requiring minor stylistic edits. Similarly, the physicist's review of the 40 multi-institution patients showed that the auto-plans were ready for use 79% (95% CI [73,85]) of the time (95% CI [73,85]), with edits needed for the remaining cases.

Conclusion

This study demonstrates the feasibility of a comprehensive automated treatment planning model for whole breast radiotherapy, effectively accommodating diverse treatment paradigms.

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来源期刊
Medical physics
Medical physics 医学-核医学
CiteScore
6.80
自引率
15.80%
发文量
660
审稿时长
1.7 months
期刊介绍: Medical Physics publishes original, high impact physics, imaging science, and engineering research that advances patient diagnosis and therapy through contributions in 1) Basic science developments with high potential for clinical translation 2) Clinical applications of cutting edge engineering and physics innovations 3) Broadly applicable and innovative clinical physics developments Medical Physics is a journal of global scope and reach. By publishing in Medical Physics your research will reach an international, multidisciplinary audience including practicing medical physicists as well as physics- and engineering based translational scientists. We work closely with authors of promising articles to improve their quality.
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