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Multi-objective optimization of radiotherapy: distributed Q-learning and agent-based simulation

机译:放射治疗的多目标优化:分布式Q学习和基于代理的模拟

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Radiotherapy (RT) is among the regular techniques for the treatment of cancerous tumours. Many of cancer patients are treated by this manner. Treatment planning is the most important phase in RT and it plays a key role in therapy quality achievement. As the goal of RT is to irradiate the tumour with adequately high levels of radiation while sparing neighbouring healthy tissues as much as possible, it is a multi-objective problem naturally. In this study, we propose an agent-based model of vascular tumour growth and also effects of RT. Next, we use multi-objective distributed Q-learning algorithm to find Pareto-optimal solutions for calculating RT dynamic dose. We consider multiple objectives and each group of optimizer agents attempt to optimise one of them, iteratively. At the end of each iteration, agents compromise the solutions to shape the Pareto-front of multi-objective problem. We propose a new approach by defining three schemes of treatment planning created based on different combinations of our objectives namely invasive, conservative and moderate. In invasive scheme, we enforce killing cancer cells and pay less attention about irradiation effects on normal cells. In conservative scheme, we take more care of normal cells and try to destroy cancer cells in a less stressed manner. The moderate scheme stands in between. For implementation, each of these schemes is handled by one agent in MDQ-learning algorithm and the Pareto optimal solutions are discovered by the collaboration of agents. By applying this methodology, we could reach Pareto treatment plans through building different scenarios of tumour growth and RT. The proposed multi-objective optimisation algorithm generates robust solutions and finds the best treatment plan for different conditions.
机译:放射疗法(RT)是用于治疗癌性肿瘤的常规技术。通过这种方式可以治疗许多癌症患者。治疗计划是放疗中最重要的阶段,它对实现治疗质量起着关键作用。由于RT的目标是用足够高的辐射水平照射肿瘤,同时尽可能多地保留邻近的健康组织,所以这自然是一个多目标问题。在这项研究中,我们提出了一种基于代理的血管肿瘤生长模型以及RT的影响。接下来,我们使用多目标分布式Q学习算法来找到用于计算RT动态剂量的帕累托最优解。我们考虑了多个目标,每组优化器代理都试图迭代地优化其中之一。在每次迭代结束时,代理会折衷解决方案以塑造多目标问题的帕累托前沿。我们通过定义根据我们目标的不同组合(即侵入性,保守性和中度性)创建的三种治疗计划方案,提出了一种新方法。在侵入性方案中,我们强制杀死癌细胞,而较少关注辐射对正常细胞的影响。在保守方案中,我们更加注意正常细胞,并尝试以较少的压力破坏癌细胞。温和的计划介于两者之间。为了实现,这些方案中的每一个都由一个代理在MDQ学习算法中处理,并且通过代理的协作发现了Pareto最优解。通过应用这种方法,我们可以通过建立不同的肿瘤生长和放疗方案来达到帕累托治疗计划。所提出的多目标优化算法可生成鲁棒的解决方案,并针对不同情况找到最佳的治疗方案。

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