A model predictive control approach for discovering nonstationary fluence-maps in cancer radiotherapy fractionation

A. Ajdari, A. Ghate
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引用次数: 4

Abstract

We consider an optimization problem in radiotherapy, where the goal is to maximize the biological effect on the tumor of radiation intensity profiles across multiple treatment sessions, while limiting their toxic effects on nearby healthy tissues. We utilize the standard linear-quadratic dose-response model, which yields a nonconvex quadratically constrained quadratic programming (QCQP) formulation. Since nonconvex QCQPs are in general computationally difficult, recent work on this problem has only considered stationary solutions. This restriction allows a convex reformulation, enabling efficient solution. All other generic convexification methods for nonconvex QCQPs also yield a stationary solution in our case. While stationary solutions could be sub-optimal, currently there is no efficient method for finding nonstationary solutions. We propose a model predictive control approach that can, in principle, efficiently discover nonstationary solutions. We demonstrate via numerical experiments on head-and-neck cancer that these nonstationary solutions could produce a larger biological effect on the tumor than stationary.
肿瘤放疗分诊中发现非平稳通量图的模型预测控制方法
我们考虑了放射治疗中的一个优化问题,其目标是最大化放射强度分布在多个治疗阶段对肿瘤的生物效应,同时限制其对附近健康组织的毒性作用。我们利用标准的线性二次剂量响应模型,它产生了一个非凸二次约束二次规划(QCQP)公式。由于非凸qcqp通常在计算上很困难,所以最近对这个问题的研究只考虑了平稳解。这个限制允许凸重构,从而实现有效的解决方案。所有其他非凸qcqp的一般凸化方法在我们的情况下也产生一个平稳解。虽然平稳解可能是次优的,但目前还没有有效的方法来寻找非平稳解。我们提出了一种模型预测控制方法,原则上可以有效地发现非平稳解。我们通过头颈癌的数值实验证明,这些非稳态溶液比稳态溶液对肿瘤产生更大的生物学效应。
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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