The Center for Health and the Social Sciences, University of Chicago, Chicago, IL, 60637, USA.
Department of Health Informatics and Administration, University of Wisconsin, Milwaukee, Milwaukee, WI, 53211-2906, USA.
Health Care Manag Sci. 2020 Mar;23(1):117-141. doi: 10.1007/s10729-019-09483-3. Epub 2019 Apr 19.
A fundamental activity in hospital operations is patient assignment, which we define as the process of assigning hospital patients to specific physician services and clinical units based on their diagnosis. When the preferred assignment is not possible, typically due to capacity limits, hospitals often allow for overflow, which is the assignment of patients to other services and/or units. Overflow accelerates assignment, but can also reduce care quality and increase length of stay. This paper develops a discrete-event simulation model to evaluate different assignment strategies. Using a simulation-based optimization approach, we evaluate and heuristically optimize these strategies accounting for expected hospital and physician profit, care quality and patient waiting time. We apply the model using data from the University of Chicago Medical Center. We find that the strategies that use heuristically optimized designation of overflow services and units increase expected profit relative to the capacity-based strategy in which overflow patients are assigned to a service and unit with the most available capacity. We also find further improvement in the strategy that uses heuristically optimized overflow services and units as well as a holding unit that holds patients until a bed in their primary or secondary unit becomes available. Additionally, we demonstrate the effects of these strategies on other performance measures such as patient concentration, waiting time, and outcomes.
医院运营的基本活动是患者分配,我们将其定义为根据患者的诊断将其分配到特定医师服务和临床科室的过程。当首选分配不可行时,通常由于容量限制,医院通常允许溢出,即患者被分配到其他服务和/或科室。溢出可以加快分配速度,但也会降低护理质量并延长住院时间。本文开发了一个离散事件模拟模型来评估不同的分配策略。使用基于仿真的优化方法,我们根据预期的医院和医生利润、护理质量和患者等待时间来评估和启发式优化这些策略。我们使用芝加哥大学医学中心的数据来应用该模型。我们发现,与使用基于容量的策略相比,使用启发式优化的溢出服务和科室指定的策略可以增加预期利润,在该策略中,溢出患者被分配到具有最大可用容量的服务和科室。我们还发现,使用启发式优化的溢出服务和科室以及一个容纳患者的等待单元的策略也有进一步的改进,直到他们的主要或次要科室有床位可用。此外,我们展示了这些策略对其他绩效指标(如患者集中程度、等待时间和结果)的影响。