Institute for Medical Informatics, RWTH Aachen University, Pauwelsstr. 30, Aachen 52074, Germany.
BMC Med Inform Decis Mak. 2013 Jan 7;13:3. doi: 10.1186/1472-6947-13-3.
Elective patient admission and assignment planning is an important task of the strategic and operational management of a hospital and early on became a central topic of clinical operations research. The management of hospital beds is an important subtask. Various approaches have been proposed, involving the computation of efficient assignments with regard to the patients' condition, the necessity of the treatment, and the patients' preferences. However, these approaches are mostly based on static, unadaptable estimates of the length of stay and, thus, do not take into account the uncertainty of the patient's recovery. Furthermore, the effect of aggregated bed capacities have not been investigated in this context. Computer supported bed management, combining an adaptable length of stay estimation with the treatment of shared resources (aggregated bed capacities) has not yet been sufficiently investigated. The aim of our work is: 1) to define a cost function for patient admission taking into account adaptable length of stay estimations and aggregated resources, 2) to define a mathematical program formally modeling the assignment problem and an architecture for decision support, 3) to investigate four algorithmic methodologies addressing the assignment problem and one base-line approach, and 4) to evaluate these methodologies w.r.t. cost outcome, performance, and dismissal ratio.
The expected free ward capacity is calculated based on individual length of stay estimates, introducing Bernoulli distributed random variables for the ward occupation states and approximating the probability densities. The assignment problem is represented as a binary integer program. Four strategies for solving the problem are applied and compared: an exact approach, using the mixed integer programming solver SCIP; and three heuristic strategies, namely the longest expected processing time, the shortest expected processing time, and random choice. A baseline approach serves to compare these optimization strategies with a simple model of the status quo. All the approaches are evaluated by a realistic discrete event simulation: the outcomes are the ratio of successful assignments and dismissals, the computation time, and the model's cost factors.
A discrete event simulation of 226,000 cases shows a reduction of the dismissal rate compared to the baseline by more than 30 percentage points (from a mean dismissal ratio of 74.7% to 40.06% comparing the status quo with the optimization strategies). Each of the optimization strategies leads to an improved assignment. The exact approach has only a marginal advantage over the heuristic strategies in the model's cost factors (≤3%). Moreover,this marginal advantage was only achieved at the price of a computational time fifty times that of the heuristic models (an average computing time of 141 s using the exact method, vs. 2.6 s for the heuristic strategy).
In terms of its performance and the quality of its solution, the heuristic strategy RAND is the preferred method for bed assignment in the case of shared resources. Future research is needed to investigate whether an equally marked improvement can be achieved in a large scale clinical application study, ideally one comprising all the departments involved in admission and assignment planning.
择期病人入院和分配计划是医院战略和运营管理的一项重要任务,很早就成为临床运营研究的核心课题。病床管理是一个重要的子任务。已经提出了各种方法,涉及到根据病人的病情、治疗的必要性和病人的偏好来计算有效的分配。然而,这些方法大多基于对住院时间的静态、不可适应的估计,因此没有考虑到病人康复的不确定性。此外,在这种情况下,还没有研究聚集病床容量的影响。计算机支持的床位管理,结合适应住院时间的估计和共享资源(聚集的床位容量)的处理,尚未得到充分研究。我们工作的目的是:1)定义一个考虑适应住院时间估计和聚集资源的病人入院成本函数,2)定义一个正式表示分配问题的数学规划和决策支持架构,3)研究解决分配问题的四种算法方法和一种基线方法,4)根据成本结果、性能和解雇率评估这些方法。
根据个体住院时间的估计,计算预计的免费病房容量,引入伯努利分布的病房占用状态随机变量,并近似概率密度。分配问题表示为二进制整数规划。应用并比较了四种解决问题的策略:一种精确方法,使用混合整数规划求解器 SCIP;以及三种启发式策略,即最长预期处理时间、最短预期处理时间和随机选择。基线方法用于将这些优化策略与现状的简单模型进行比较。所有方法都通过一个现实的离散事件模拟进行评估:结果是成功分配和解雇的比例、计算时间和模型的成本因素。
对 226000 个病例的离散事件模拟显示,与基线相比,解雇率降低了 30 多个百分点(从现状的 74.7%平均解雇率降低到优化策略的 40.06%)。每种优化策略都导致了分配的改进。精确方法在模型成本因素方面仅比启发式策略略有优势(≤3%)。此外,这种边际优势仅以计算时间的五倍为代价(使用精确方法的平均计算时间为 141 秒,而启发式策略的计算时间为 2.6 秒)。
在性能和解决方案质量方面,启发式策略 RAND 是共享资源情况下床位分配的首选方法。需要进一步研究,以确定在大规模临床应用研究中是否可以取得同样显著的改善,理想情况下,该研究应包括参与入院和分配计划的所有部门。