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Radiotherapy treatment scheduling considering time window preferences

机译:放射疗法治疗调度考虑时间窗口偏好

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External-beam radiotherapy treatments are delivered by a linear accelerator (linac) in a series of high-energy radiation sessions over multiple days. With the increase in the incidence of cancer and the use of radiotherapy (RT), the problem of automatically scheduling RT sessions while satisfying patient preferences regarding the time of their appointments becomes increasingly relevant. While most literature focuses on timeliness of treatments, several Dutch RT centers have expressed their need to include patient preferences when scheduling appointments for irradiation sessions. In this study, we propose a mixed-integer linear programming (MILP) model that solves the problem of scheduling and sequencing RT sessions considering time window preferences given by patients. The MILP model alone is able to solve the problem to optimality, scheduling all sessions within the desired window, in reasonable time for small size instances up to 66 patients and 2 linacs per week. For larger centers, we propose a heuristic method that pre-assigns patients to linacs to decompose the problem in subproblems (clusters of linacs) before using the MILP model to solve the subproblems to optimality in a sequential manner. We test our methodology using real-world data from a large Dutch RT center (8 linacs). Results show that, combining the heuristic with the MILP model, the problem can be solved in reasonable computation time with as few as 2.8% of the sessions being scheduled outside the desired time window.
机译:外束放射治疗由直线加速器(linac)在多天的一系列高能放射治疗中进行。随着癌症发病率的增加和放射治疗(RT)的使用,在满足患者预约时间偏好的同时自动安排RT疗程的问题变得越来越重要。虽然大多数文献关注治疗的及时性,但荷兰的几家放射治疗中心表示,在安排放射治疗预约时,需要考虑患者的偏好。在这项研究中,我们提出了一个混合整数线性规划(MILP)模型,该模型解决了考虑患者给定时间窗口偏好的RT会话调度和排序问题。仅MILP模型就能够将问题解决到最佳状态,将所有疗程安排在所需的时间窗口内,在合理的时间内,用于每周最多66名患者和2台直线加速器的小型病例。对于较大的中心,我们提出了一种启发式方法,在使用MILP模型以顺序方式将子问题求解为最优之前,将患者预先分配给直线加速器,以将问题分解为子问题(直线加速器集群)。我们使用荷兰大型RT中心(8条直线加速器)的真实数据测试我们的方法。结果表明,将启发式算法与MILP模型相结合,可以在合理的计算时间内解决该问题,只需将2.8%的会话安排在所需的时间窗口之外。

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