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首页> 外文期刊>Manufacturing and Service Operations Management >Dynamic Capacity Allocation for Elective Surgeries: Reducing Urgency-Weighted Wait Times
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Dynamic Capacity Allocation for Elective Surgeries: Reducing Urgency-Weighted Wait Times

机译:选修手术的动态容量分配:减少紧急加权等待时间

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biProblem definition : Given the variety of urgency levels in highly utilized operating rooms, capacity allocation decisions can have a major impact on how wait times are rationed. We examine a longer-term sequential capacity planning problem in which a hospital allocates operating room time to different surgical specialties. We seek to minimize an urgency-weighted wait-time metric. biAcademic/practical relevance : Our data set on patient selection patterns revealed considerable noise in the queuing discipline. We apply an urn model to generate a probabilistic queuing discipline, which validates well against the selection patterns observed in practice. We believe that this model may prove to be useful for representing noisy queuing disciplines in other settings. Also, our validated simulation model, in combination with our proposed solution approach, demonstrates a substantial reduction in urgency-weighed wait times. biMethodology : For representing the noisy queuing discipline, we fit a Wallenius noncentral hypergeometric distribution. We formulate the capacity allocation problem as a Markov decision process. The large state space and detailed system dynamics lead us to simulation-based dynamic programming approaches for finding good capacity allocation decisions. Rather than approximate the expected cost-to-go function, we propose a limited look-ahead policy and embed this in a rolling-horizon framework. biResults : Our baseline model-based allocation policy yields a 14.3% reduction in urgency-weighed wait time compared with current practice. It also results in a 21.0% improvement in the number of patients treated within their urgency-based recommended wait-time limits. biManagerial implications : In elective surgery settings, it may be important to ration capacity in a way that considers the different urgency levels of patients. We propose a flexible modeling approach for achieving this.
机译:问题定义:鉴于高度利用的手术室中的各种紧急程度,容量分配决策可能对等待时间的分配方式产生重大影响。我们研究了一个长期连续的能力规划问题,其中医院将手术室时间分配给不同的外科专业。我们寻求最小化紧急加权的等待时间公制。 学术/实际相关性:我们在患者选择模式上设置的数据在排队学科中显示了相当大的噪音。我们应用URN模型来生成概率排队纪律,这符合在实践中观察到的选择模式。我们认为,这种模型可能被证明是在其他环境中代表嘈杂的排队学科有用。此外,我们验证的仿真模型与我们提出的解决方案方法相结合,表明紧急权益的等待时间大幅减少。 方法:用于代表嘈杂的排队纪律,我们适合Wallenius NonCentral Hypergeometric分布。我们制定了作为马尔可夫决策过程的容量分配问题。大型状态空间和详细的系统动态导致我们基于仿真的动态编程方法,用于找到良好的容量分配决策。我们提出了一个有限的展望框架,而不是近似预期的成本到期功能。 结果:与当前实践相比,我们基于基于基于基于基于基于基于基于基于基于基于基于基于基于基于基于基于基于基于基于基于的基于基于的分配策略。它还导致在基于紧急的推荐的等待时间限制内治疗的患者数量的提高21.0%。 管理意义:在选修外科设置中,以一种考虑患者的不同诉状水平的方式对分配能力可能很重要。我们提出了一种实现这一目标的灵活建模方法。

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