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A Multi-encoded Genetic Algorithm Approach to Scheduling Recurring Radiotherapy Treatment Activities with Alternative Resources, Optional Activities, and Time Window Constraints

机译:具有替代资源,可选活动和时间窗口约束的重复性放射治疗活动调度的多编码遗传算法方法

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The radiotherapy patient scheduling problem deals with the assignment of recurring treatment appointments to patients diagnosed with cancer. The appointments must take place at least four times within five consecutive days at approximately the same time. Between daily appointments, optional (imaging) activities that require alternative resources, also must be scheduled. A pertinent goal therefore is minimizing both the idle time of the bottleneck resource (i.e., the particle beam used for the irradiation) and the potential risk of a delayed start. To address this problem, we propose a multi-encoded genetic algorithm. The chromosome contains the assignment of treatments to days for each patient, information on which optional activities to schedule, and the patient sequence for each day. To ensure feasibility during the evolutionary process, we present tailored crossover and mutation operators. We also compare a chronological solution decoding approach and an algorithm that fills idle times between already scheduled activities. The latter approach outperforms chronological scheduling on real-world-inspired problem instances. Furthermore, forcing some of the offspring to improve the parent's fitness (i.e., offspring selection) within the genetic algorithm is beneficial for this problem setting.
机译:放射治疗患者安排问题涉及将复发性治疗预约分配给诊断为癌症的患者。约会必须在连续大约五天内连续五天至少进行四次。在每日约会之间,还必须安排需要替代资源的可选(影像)活动。因此,一个相关的目标是使瓶颈资源(即用于辐照的粒子束)的空闲时间和延迟启动的潜在风险最小化。为了解决这个问题,我们提出了一种多编码遗传算法。染色体包含每位患者每天的治疗分配,计划安排哪些可选活动的信息以及每天的患者序列。为了确保在进化过程中的可行性,我们提出了量身定制的交叉和变异算子。我们还比较了按时间顺序排列的解决方案解码方法和填充已经安排好的活动之间的空闲时间的算法。后一种方法在按现实世界启发的问题实例上按时间排序的效果要好于后者。此外,在遗传算法中强迫一些后代改善父母的适应性(即,后代选择)对于该问题的解决是有益的。

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