Gurjar Mruga, Lindberg Jesper, Björk-Eriksson Thomas, Olsson Caroline
Medical Radiation Sciences, Institute of Clinical Sciences, Sahlgrenska Academy, University of Gothenburg, Sweden.
Department of Medical Physics and Biomedical Engineering, Sahlgrenska University Hospital, Gothenburg, Sweden.
Tech Innov Patient Support Radiat Oncol. 2024 Oct 15;32:100282. doi: 10.1016/j.tipsro.2024.100282. eCollection 2024 Dec.
There is an increase in demand for Radiotherapy (RT) and it is a time critical treatment with a complex scheduling process. RT workflow is inter-dependent and involves various steps including pre-treatment and treatment-related tasks which adds to these challenges. Globally, scheduling delays are reported as one of the most common issues in RT. We aim to create and evaluate an automated strategy which generates a patient allocation list to assist the scheduling staff to create an efficient scheduling process.
We used historical data from a large RT department in Sweden from January to December 2022 with 11-13 operational linear accelerators. The algorithm was developed in C# language. It utilizes patient and treatment-related characteristics including the patient timeline (referral date, preferred treatment start dates), booking category, diagnosis group and intent. Based on this, the algorithm assigns patient priority individually.
The algorithm's output resulted in a scheduling list sorted by high to low patient priority per week. We evaluated the algorithm with historical manual allocations from the same year. The comparison between manual and algorithm allocations showed that the number of delayed patients reduced by 10 % in the algorithm suggestion with an average delay reduction of 2 weeks. Furthermore, the focus on patient-related characteristics resulted in diagnosis groups being better balanced.
The algorithm's ability to produce quick results may save significant time that the scheduling staff otherwise need to assess individual patient profiles. RT departments can incorporate such algorithms to accelerate their scheduling decisions and enhance their overall scheduling performance before going through major organizational changes.
放射治疗(RT)的需求在增加,它是一种时间紧迫的治疗方法,调度过程复杂。RT工作流程相互依存,涉及多个步骤,包括治疗前和与治疗相关的任务,这增加了这些挑战。在全球范围内,调度延迟被报告为RT中最常见的问题之一。我们旨在创建和评估一种自动化策略,该策略生成患者分配列表,以协助调度人员创建高效的调度流程。
我们使用了瑞典一个大型RT部门2022年1月至12月的历史数据,该部门有11 - 13台运行中的直线加速器。该算法用C#语言开发。它利用患者和与治疗相关的特征,包括患者时间线(转诊日期、首选治疗开始日期)、预约类别、诊断组和治疗意图。基于此,该算法分别为患者分配优先级。
该算法的输出生成了一个每周按患者优先级从高到低排序的调度列表。我们用同一年的历史手动分配数据对该算法进行了评估。手动分配和算法分配的比较表明,在算法建议中,延迟患者数量减少了10%,平均延迟减少了2周。此外,对患者相关特征的关注使诊断组得到了更好的平衡。
该算法快速产生结果的能力可能节省调度人员原本需要评估每个患者档案的大量时间。RT部门可以在进行重大组织变革之前,纳入此类算法以加速其调度决策并提高整体调度性能。