Abstract

Operating room (OR) surgery scheduling is a challenging combinatorial optimization problem that determines the operation start time of every surgery to be performed in different surgical groups, as well as the resources assigned to each surgery over a schedule period. One of the main challenges in health care systems is to deliver the highest quality of care at the lowest cost. In real-life situations, there is significant uncertainty in several of the activities involved in the delivery of surgical care, including the duration of the surgical procedures. This paper tackles the operating room surgery scheduling problem with uncertain surgery durations, where uncertainty in surgery durations is represented by means of fuzzy numbers. The problem can be considered as a Fuzzy Flexible Job-shop Scheduling Problem (FFJSP) due to similarities between operating room surgery scheduling with uncertain surgery durations and a multi-resource constraint flexible job-shop scheduling problem with uncertain processing times. This research handles both the advanced and allocation scheduling problems simultaneously and provides an Ant Colony Optimization (ACO) metaheuristic algorithm which utilized a two-level ant graph to integrate sequencing jobs and allocating resources at the same time. To assess the performance of the proposed method, a computational study on five test surgery cases is presented, considering both deterministic and fuzzy surgery durations to enhance the significance of the study. The results of this experiment demonstrated the effectiveness of the proposed metaheuristic algorithm.

Highlights

  • Operating room surgery scheduling deals with determining operation start times of surgeries on hand and allocating the required resources to the scheduled surgeries, considering several constraints to ensure a complete surgery flow

  • This paper tackles the operating room surgery scheduling problem with uncertain surgery durations, where uncertainty in surgery durations is represented by means of fuzzy numbers

  • An operating room surgery scheduling problem with uncertain surgery durations is addressed, where uncertainty in surgery durations is represented by means of fuzzy numbers

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Summary

Introduction

Operating room surgery scheduling deals with determining operation start times of surgeries on hand and allocating the required resources to the scheduled surgeries, considering several constraints to ensure a complete surgery flow. Several metaheuristics have been proposed to solve the fuzzy job-shop scheduling problem since the 1990s, such as the simulated annealing method [19], the genetic algorithm (GA) [20], the particle swarm optimization algorithm [21], a hybrid algorithm which combines a GA with a very efficient local search method [22], the swarm based neighbourhood search algorithm [23], a hybrid algorithm, combining particle swarm optimization with tabu search [24], and an artificial bee colony algorithm [25]. The problem can be considered as a FFJSP due to similarities between operating room surgery scheduling with uncertain surgery durations and a multi-resource constraint flexible job-shop scheduling problem with uncertain processing times.

Surgery Scheduling Problem
Ant Colony Algorithm for Surgery Scheduling Problem
62 Surgeon OR
Computational Experiments
Findings
Conclusions
Full Text
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