School of Engineering, Pontificia Universidad Católica de Chile, Vicuña Mackenna 4860, Macul, Santiago, Chile.
School of Medicine, Pontificia Universidad Católica de Chile, Libertador Bernardo O'Higgins 340, Santiago, Chile.
Health Care Manag Sci. 2019 Jun;22(2):287-303. doi: 10.1007/s10729-018-9437-7. Epub 2018 Feb 17.
Hospital emergency departments are often overcrowded, resulting in long wait times and a public perception of poor attention. Delays in transferring patients needing further treatment increases emergency department congestion, has negative impacts on their health and may increase their mortality rates. A model built around a Markov decision process is proposed to improve the efficiency of patient flows between the emergency department and other hospital units. With each day divided into time periods, the formulation estimates bed demand for the next period as the basis for determining a proactive rather than reactive transfer decision policy. Due to the high dimensionality of the optimization problem involved, an approximate dynamic programming approach is used to derive an approximation of the optimal decision policy, which indicates that a certain number of beds should be kept free in the different units as a function of the next period demand estimate. Testing the model on two instances of different sizes demonstrates that the optimal number of patient transfers between units changes when the emergency patient arrival rate for transfer to other units changes at a single unit, but remains stable if the change is proportionally the same for all units. In a simulation using real data for a hospital in Chile, significant improvements are achieved by the model in key emergency department performance indicators such as patient wait times (reduction higher than 50%), patient capacity (21% increase) and queue abandonment (from 7% down to less than 1%).
医院急诊部门经常人满为患,导致等待时间长,公众对服务质量差的看法。延迟转移需要进一步治疗的患者会增加急诊部门的拥堵,对他们的健康产生负面影响,并可能增加他们的死亡率。提出了一种基于马尔可夫决策过程的模型,以提高急诊部门和其他医院科室之间的患者流程效率。将每一天划分为时间段,该公式估计下一个时间段的床位需求,作为确定主动而不是被动转移决策策略的基础。由于所涉及的优化问题的高度维度,使用近似动态规划方法来推导出最优决策策略的近似值,这表明不同单位应根据下一个时间段的需求估计保留一定数量的空闲床位。在两个不同大小的实例上测试模型表明,当单个单位的其他单位转移的急诊患者到达率发生变化时,单位之间的最佳患者转移数量会发生变化,但如果所有单位的变化比例相同,则保持稳定。在使用智利一家医院的实际数据进行的模拟中,该模型在关键急诊部门绩效指标方面取得了显著的改进,例如患者等待时间(降低 50%以上)、患者容量(增加 21%)和队列放弃(从 7%下降到不到 1%)。