Abstract
AbstractThis paper addresses a real-world Integrated Operating Room Planning and Scheduling (IORPS) problem encountered by a local hospital in Naples, characterized by stringent emergency management constraints, requiring treatment initiation within a 20-minute time-window. We tackle this problem by an original Integer Linear Programming formulation, capable of dealing with different operating room management strategies (open, block and block-modified). Our work differs from conventional cost-focused models by adopting a patient-oriented objective function, aligning with public hospitals obligations. The proposed method has been validated using real-world data provided by the hospital. The performed experimentation demonstrates the efficiency of the approach, capable of determining the optimal solution within an acceptable computation time that aligns with hospital requirements. Moreover, it also highlights the relevance of using our optimization approach to reduce delays in emergency responsiveness. This confirms its practical usage as a substitute for the current manual procedure.
Funder
Università degli Studi di Napoli Federico II
Publisher
Springer Science and Business Media LLC
Reference48 articles.
1. Addis B, Carello G, Grosso A, Tànfani E (2016) Operating room scheduling and rescheduling: a rolling horizon approach. Flex Serv Manuf J 28(1–2):206–232
2. Agnetis A, Coppi A, Corsini M, Dellino G, Meloni C, Pranzo M (2014) A decomposition approach for the combined master surgical schedule and surgical case assignment problems. Health Care Manag Sci 17:49–59
3. American Society of Anesthesiologists: ASA Physical Status Classification System. https://www.asahq.org/standards-and-guidelines/asa-physical-status-classification-system (2021)
4. Ballestín F, Pérez Á, Quintanilla S (2019) Scheduling and rescheduling elective patients in operating rooms to minimise the percentage of tardy patients. J Schedul 22(1):107–118
5. Bargetto R, Garaix T, Xie X (2018) Dynamic insertion of emergency surgeries with different waiting time targets. IEEE Trans Automat Sci Eng 16(1):87–99