Patient scheduling is a difficult task as it involves dealing with stochastic factors such as an unknown arrival flow of patients. Scheduling radiotherapy treatments for cancer patients faces a similar problem. Curative patients need to start their treatment within the recommended deadlines, i.e., 14 or 28 days after their admission while reserving treatment capacity for palliative patients who require urgent treatments within 1 to 3 days after their admission. Most cancer centers solve the problem by reserving a fixed number of treatment slots for emergency patients. However, this flat-reservation approach is not ideal and can cause overdue treatments for emergency patients on some days while not fully exploiting treatment capacity on some other days, which also leads to delaying treatment for curative patients. This problem is especially severe in large and crowded hospitals. In this paper, we propose a prediction-based approach for online dynamic radiotherapy scheduling. An offline problem where all future patient arrivals are known in advance is solved to optimality using Integer Programming. A regression model is then trained to recognize the links between patients' arrival patterns and their ideal waiting time. The trained regression model is then embedded in a prediction-based approach that schedules a patient based on their characteristics and the present state of the calendar. The numerical results show that our prediction-based approach efficiently prevents overdue treatments for emergency patients while maintaining a good waiting time compared to other scheduling approaches based on a flat-reservation policy.
翻译:病人的日程安排是一项艰巨的任务,因为它涉及到治疗病人来得不明的因素,例如病人来得不明,因此病人的日程安排是困难的。为癌症病人安排放射治疗也面临类似的问题。治疗病人需要在建议的最后期限内开始治疗,即住院后14天或28天之内,同时为需要紧急治疗的缓和病人保留治疗能力。大多数癌症中心通过为紧急病人保留固定数量的治疗时间来解决问题。然而,这种定额保留治疗时间的做法并不理想,可能会在几天内造成紧急病人的逾期治疗,而不能充分利用其他几天的治疗能力,这也会导致治疗病人治疗时间的拖延。这个问题在大型和拥挤的医院中特别严重。我们在本文件中提出了一种基于预测的在线动态放射治疗时间安排办法。如果所有未来的病人都事先知道,则用Integer方案解决了最佳性的问题。然后培训了一种倒退模式,以确认病人抵达模式和他们理想的等待时间之间的联系。经过训练的倒退模式随后被嵌入了一种基于预测的预测方法,即根据长期和拥挤的病人的日程安排安排安排,从而无法有效地预测其他的治疗结果。