Towards Adaptive Robust Radiotherapy to Manage Radioresistance

A. Roy, S. Dabadghao, Ahmadreza Marandi
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Abstract

In radiotherapy, uncertainties in tumor radioresistance and its progression can degrade the efficacy of deterministic treatments. While a robust methodology can overcome this, it often produces overly conservative or suboptimal decisions, especially when there are changes in time. We aim to develop an adaptive radiotherapy planning framework that can reduce over-conservatism yet remain robust to the uncertainties in radioresistance. Specifically, intermediate imaging is used to update the uncertainty at each stage and curb over-conservatism. While additional imaging reduces uncertainty, it accrues costs such as extra radiation to organs, which deters continuous imaging. We probe this trade-off in uncertainty and cost of observation by computing and comparing results from two-stage, three-stage, and four-stage robust models. The three robust models are also compared to two currently practiced deterministic methods, one that does not account for radioresistance and one that assumes a constant radioresistance. All five models are evaluated on a clinical prostate case. The three robust models improve control of the tumor compared to the deterministic model ignoring radioresistance, at comparable radiation dose to critical organs. The robust models also reduce tumor overdose and organ dose compared to the deterministic model assuming a constant radioresistance. Increasing the number of intermediate imaging leads to further improvements, especially on tumor dose criteria under best-case and nominal scenarios. Under the worst-case, intermediate images provide no additional benefit as robust optimization inherently protects against the worst-case. The proposed method is generic and can include additional sources of uncertainties that reduce the effect of radiation.
迈向自适应稳健放射治疗以管理放射抵抗
在放疗中,肿瘤放射耐药及其进展的不确定性会降低确定性治疗的疗效。虽然健壮的方法可以克服这一点,但它通常会产生过于保守或次优的决策,特别是当时间发生变化时。我们的目标是开发一种自适应放疗计划框架,可以减少过度保守,但对放射抗性的不确定性保持稳健。具体而言,中间成像用于更新每个阶段的不确定度并抑制过度保守性。虽然额外的成像减少了不确定性,但它增加了成本,如对器官的额外辐射,这阻碍了连续成像。我们通过计算和比较两阶段、三阶段和四阶段鲁棒模型的结果来探讨这种不确定性和观察成本的权衡。还将这三种稳健模型与目前采用的两种确定性方法进行了比较,一种不考虑辐射阻力,另一种假设辐射阻力恒定。所有五种模式评估了临床前列腺病例。与忽略放射耐药的确定性模型相比,在对关键器官的相当辐射剂量下,这三种鲁棒模型改善了对肿瘤的控制。与假设恒定辐射阻力的确定性模型相比,鲁棒模型还减少了肿瘤过量和器官剂量。增加中间成像的次数会导致进一步的改善,特别是在最佳情况和名义情况下的肿瘤剂量标准。在最坏情况下,中间图像没有提供额外的好处,因为鲁棒优化本身就可以防止最坏情况的发生。所提出的方法是通用的,可以包括减少辐射影响的其他不确定源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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