Capacity and surgery partitioning: An approach for improving surgery scheduling in the inpatient surgical department

EUROPEAN JOURNAL OF OPERATIONAL RESEARCH(2024)

引用 0|浏览0
暂无评分
摘要
In hospitals, efficiently scheduling operating rooms (ORs) is challenging, especially for an inpatient surgical department where complex and long surgeries with different surgery types are often performed in combination with surgeries on emergency patients. Although pooling ORs for surgeries could counter various uncertainties, all ORs might be disrupted. To improve the scheduling of the inpatient department, this paper develops a promising scheduling approach (namely OR capacity and surgery partitioning) which separates in surgery scheduling the more predictable elective surgeries (MPS) from the less predictable elective and emergency surgeries. To study the effect of partitioning, we apply Markov decision process, linear programming and simulation models, while incorporating surgeons' preferences for using one OR for a whole day. Based on extensive numerical experiments, we report important findings. First, the partitioning can considerably reduce the cancellation rate without damaging the OR utilization. Meanwhile, an overflow must be allowed to schedule elective patients across OR subgroups rather than sticking to complete partitioning. Second, to better partition surgeries into subgroups, it is important to consider both surgery duration length and variability, while those surgeries with a better bin-packing nature should be given more consideration than those with a smaller surgery duration variability in the MPS ORs. Third, the benefit of partitioning increases with a larger surgery duration uncertainty and a growing non-elective demand. This framework is an easy-to-implement way to manage various variabilities and complexities in the inpatient surgical department. Our findings can help OR managers to better perform partitioning and guide surgery scheduling.
更多
查看译文
关键词
OR in health services,Operating room planning and scheduling,Surgery partitioning,Mathematical modeling,Simulation
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要