A Graphical Tool and Methods for Assessing Margin Definition From Daily Image Deformations

A. Apte, R. Al-Lozi, G. Pereira, Matthew E. Johnson, D. Mansur, I. E. Naqa
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Abstract

Estimating the proper margins for the planning target volume (PTV) could be a challenging task in cases where the organ undergoes significant changes during the course of radiotherapy treatment. Developments in image-guidance and the presence of onboard imaging technologies facilitate the process of correcting setup errors. However, estimation of errors to organ motions remain an open question due to the lack of proper software tools to accompany these imaging technological advances. Therefore, we have developed a new tool for visualization and quantification of deformations from daily images. The tool allows for estimation of tumor coverage and normal tissue exposure as a function of selected margin (isotropic or anisotropic). Moreover, the software allows estimation of the optimal margin based on the probability of an organ being present at a particular location. Methods based on swarm intelligence, specifically Ant Colony Optimization (ACO) are used to provide an efficient estimate of the optimal margin extent in each direction. ACO can provide global optimal solutions in highly nonlinear problems such as margin estimation. The proposed method is demonstrated using cases from gastric lymphoma with daily TomoTherapy megavoltage CT (MVCT) contours. Preliminary results using Dice similarity index are promising and it is expected that the proposed tool will be very helpful and have significant impact for guiding future margin definition protocols.
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从日常图像变形中评估边缘定义的图形工具和方法
在放射治疗过程中器官发生重大变化的情况下,估计计划靶体积(PTV)的适当边界可能是一项具有挑战性的任务。图像制导的发展和机载成像技术的出现促进了纠正设置错误的过程。然而,由于缺乏适当的软件工具来配合这些成像技术的进步,对器官运动误差的估计仍然是一个悬而未决的问题。因此,我们开发了一种新的工具,用于从日常图像中可视化和量化变形。该工具可以估计肿瘤覆盖范围和正常组织暴露作为选择边缘的函数(各向同性或各向异性)。此外,该软件允许基于器官存在于特定位置的概率来估计最佳边缘。采用基于群体智能的方法,特别是蚁群优化(蚁群优化),在每个方向上提供最优边际范围的有效估计。蚁群算法可以为边界估计等高度非线性问题提供全局最优解。本文以胃淋巴瘤病例为例,用每日TomoTherapy的巨压CT (MVCT)轮廓图进行了验证。使用Dice相似指数的初步结果是有希望的,预计所提出的工具将非常有帮助,并对指导未来的边际定义协议产生重大影响。
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