Increased Surgical Capacity without Additional Resources: Generalized Operating Room Planning and Scheduling

We study a generalized operating room planning and scheduling (GORPS) problem at the Toronto General Hospital (TGH) in Ontario, Canada. GORPS allocates elective patients and resources (i.e., operating rooms, surgeons, anesthetists) to days, assigns resources to patients, and sequences patients in ea...

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Veröffentlicht in:Production and operations management 2021-08, Vol.30 (8), p.2608-2635
Hauptverfasser: Naderi, Bahman, Roshanaei, Vahid, Begen, Mehmet A., Aleman, Dionne M., Urbach, David R.
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container_end_page 2635
container_issue 8
container_start_page 2608
container_title Production and operations management
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creator Naderi, Bahman
Roshanaei, Vahid
Begen, Mehmet A.
Aleman, Dionne M.
Urbach, David R.
description We study a generalized operating room planning and scheduling (GORPS) problem at the Toronto General Hospital (TGH) in Ontario, Canada. GORPS allocates elective patients and resources (i.e., operating rooms, surgeons, anesthetists) to days, assigns resources to patients, and sequences patients in each day. We consider patients’ due‐date, resource eligibility, heterogeneous performances of resources, downstream unit requirements, and lag times between resources. The goal is to create a weekly surgery schedule that minimizes fixed‐ and over‐time costs. We model GORPS using mixed‐integer and constraint programming models. To efficiently and effectively solve these models, we develop new‘ multi‐featured logic‐based Benders decomposition approaches. Using data from TGH, we demonstrate that our best algorithm solves GORPS with an average optimality gap of 2.71% which allows us to provide our practical recommendations. First, we can increase daily OR utilization to reach 80%—25% higher than the status quo in TGH. Second, we do not require to optimize for the daily selection of anesthetists—this finding allows for the development of effective dominance rules that significantly mitigate intractability. Third, solving GORPS without downstream capacities (like many papers in literature) makes GORPS easier to solve, but such OR schedules are only feasible in 24% of instances. Finally, with existing ORs’ safety capacities, TGH can manage 40% increase in its surgical volumes. We provide recommendations on how TGH must adjust its downstream capacities for varying levels of surgical volume increases (e.g., current urgent need for more capacity due to the current Covid‐19 pandemic).
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source Wiley Online Library Journals; SAGE Complete; EBSCOhost Business Source Complete
subjects COVID-19
downstream capacities
Healthcare operations
logic‐based Benders decomposition
multiple resources
operating rooms
overtime
performance heterogeneity
planning and scheduling
title Increased Surgical Capacity without Additional Resources: Generalized Operating Room Planning and Scheduling
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