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首页> 外文期刊>Computational and mathematical methods in medicine >Data-Driven Models for Capacity Allocation of Inpatient Beds in a Chinese Public Hospital
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Data-Driven Models for Capacity Allocation of Inpatient Beds in a Chinese Public Hospital

机译:中国公立医院容量分配的数据驱动模型

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Hospital beds are a critical but limited resource shared between distinct classes of elective patients. Urgent elective patients are more sensitive to delays and should be treated immediately, whereas regular patients can wait for an extended time. Public hospitals in countries like China need to maximize their revenue and at the same time equitably allocate their limited bed capacity between distinct patient classes. Consequently, hospital bed managers are under great pressure to optimally allocate the available bed capacity to all classes of patients, particularly considering random patient arrivals and the length of patient stay. To address the difficulties, we propose data-driven stochastic optimization models that can directly utilize historical observations and feature data of capacity and demand. First, we propose a single-period model assuming known capacity; since it recovers and improves the current decision-making process, it may be deployed immediately. We develop a nonparametric kernel optimization method and demonstrate that an optimal allocation can be effectively obtained with one year’s data. Next, we consider the dynamic transition of system state and extend the study to a multiperiod model that allows random capacity; this further brings in substantial improvement. Sensitivity analysis also offers interesting managerial insights. For example, it is optimal to allocate more beds to urgent patients on Mondays and Thursdays than on other weekdays; this is in sharp contrast to the current myopic practice.
机译:医院病床是在不同类别的选修患者之间共享的关键但有限的资源。紧急的选修患者对延误更敏感,并且应立即治疗,而常规患者可以等待延长。中国等国家的公立医院需要最大限度地提高他们的收入,同时在不同的患者课程之间公平地分配其有限的床能力。因此,医院病床管理人员在很大的压力下,最佳地分配给所有类别的患者,特别是考虑随机患者到达和患者留下的长度。为了解决困难,我们提出了数据驱动的随机优化模型,可以直接利用历史观察和功能数据和需求数据。首先,假设已知容量的单次模型提出了单一的模型;由于它恢复并提高了当前的决策过程,因此可以立即部署。我们开发非参数内核优化方法,并证明可以通过一年的数据有效地获得最佳分配。接下来,我们考虑系统状态的动态转换,并将研究扩展到允许随机容量的多级模型;这进一步带来了实质性的改进。敏感性分析还提供有趣的管理见解。例如,在周一和周四的迫切患者中,它是最佳的,而不是在周四的情况下分配更多的床;这与当前的近视实践形成鲜明对比。

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