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既定在线自适应放射治疗计划的质量保证:补丁与软件升级

Quality assurance of an established online adaptive radiotherapy program: patch and software upgrade.

作者信息

Bassiri Nema, Bayouth John, Chuong Michael D, Kotecha Rupesh, Weiss Yonatan, Mehta Minesh P, Gutierrez Alonso N, Mittauer Kathryn E

机构信息

Department of Radiation Oncology, Miami Cancer Institute, Baptist Health South Florida, Miami, FL, United States.

Herbert Wertheim College of Medicine, Florida International University, Miami, FL, United States.

出版信息

Front Oncol. 2024 May 28;14:1358487. doi: 10.3389/fonc.2024.1358487. eCollection 2024.

Abstract

INTRODUCTION

The ability to dynamically adjust target contours, derived Boolean structures, and ultimately, the optimized fluence is the end goal of online adaptive radiotherapy (ART). The purpose of this work is to describe the necessary tests to perform after a software patch installation and/or upgrade for an established online ART program.

METHODS

A patch upgrade on a low-field MR Linac system was evaluated for post-software upgrade quality assurance (QA) with current infrastructure of ART workflow on (1) the treatment planning system (TPS) during the initial planning stage and (2) the treatment delivery system (TDS), which is a TPS integrated into the delivery console for online ART planning. Online ART QA procedures recommended for post-software upgrade include: (1) user interface (UI) configuration; (2) TPS beam model consistency; (3) segmentation consistency; (4) dose calculation consistency; (5) optimizer robustness consistency; (6) CT density table consistency; and (7) end-to-end absolute ART dose and predicted dose measured including interruption testing. Differences of calculated doses were evaluated through DVH and/or 3D gamma comparisons. The measured dose was assessed using an MR-compatible A26 ionization chamber in a motion phantom. Segmentation differences were assessed through absolute volume and visual inspection.

RESULTS

(1) No UI configuration discrepancies were observed. (2) Dose differences on TPS pre-/post-software upgrade were within 1% for DVH metrics. (3) Differences in segmentation when observed were small in general, with the largest change noted for small-volume regions of interest (ROIs) due to partial volume impact. (4) Agreement between TPS and TDS calculated doses was 99.9% using a 2%/2-mm gamma criteria. (5) Comparison between TPS and online ART plans for a given patient plan showed agreement within 2% for targets and 0.6 cc for organs at risk. (6) Relative electron densities demonstrated comparable agreement between TPS and TDS. (7) ART absolute and predicted measured end-to-end doses were within 1% of calculated TDS.

DISCUSSION

An online ART QA program for post-software upgrade has been developed and implemented on an MR Linac system. Testing mechanics and their respective baselines may vary across institutions, but all necessary components for a post-software upgrade QA have been outlined and detailed. These outlined tests were demonstrated feasible for a low-field MR Linac system; however, the scope of this work may be applied and adapted more broadly to other online ART platforms.

摘要

引言

动态调整靶区轮廓、派生布尔结构以及最终优化注量的能力是在线自适应放射治疗(ART)的最终目标。本研究的目的是描述在既定的在线ART程序进行软件补丁安装和/或升级后需要执行的必要测试。

方法

在低场MR直线加速器系统上进行补丁升级,利用ART工作流程的当前基础设施,在(1)初始计划阶段的治疗计划系统(TPS)和(2)治疗输送系统(TDS)上评估软件升级后的质量保证(QA),TDS是集成到输送控制台用于在线ART计划的TPS。推荐用于软件升级后的在线ART QA程序包括:(1)用户界面(UI)配置;(2)TPS射束模型一致性;(3)分割一致性;(4)剂量计算一致性;(5)优化器稳健性一致性;(6)CT密度表一致性;以及(7)端到端绝对ART剂量和预测剂量测量,包括中断测试。通过剂量体积直方图(DVH)和/或三维伽马比较评估计算剂量的差异。使用运动模体中的MR兼容A26电离室评估测量剂量。通过绝对体积和目视检查评估分割差异。

结果

(1)未观察到UI配置差异。(2)软件升级前后TPS上的剂量差异对于DVH指标在1%以内。(3)观察到的分割差异总体较小,由于部分容积影响,小体积感兴趣区(ROI)的变化最大。(4)使用2%/2毫米伽马标准时,TPS和TDS计算剂量之间的一致性为99.9%。(5)对于给定患者计划,TPS和在线ART计划之间的比较显示,靶区一致性在2%以内,危及器官一致性在0.6立方厘米以内。(6)相对电子密度在TPS和TDS之间显示出可比的一致性。(7)ART绝对和预测的端到端测量剂量在计算的TDS的1%以内。

讨论

已在MR直线加速器系统上开发并实施了用于软件升级后的在线ART QA程序。测试机制及其各自的基线可能因机构而异,但已概述并详细说明了软件升级后QA的所有必要组件。这些概述的测试在低场MR直线加速器系统上证明是可行的;然而,本研究的范围可能更广泛地应用于其他在线ART平台并进行调整。

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