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Integrated framework of process mining and simulation-optimization for pod structured clinical layout design

机译:POD结构型临床布局设计的过程挖掘和仿真优化综合框架

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This paper proposes a three-phase framework to leverage hospital tracking data of patient visits while designing healthcare layouts with pod structures. The first phase proposes a process mining algorithm that modifies the Probabilistic Determining Finite Automata (PDFA) with Particle Swarm Optimization (PDFA-PSO) algorithm to predict the significant patient workflows from hospital historical data. The second phase employs simulation modeling to solve a right-sizing problem to determine the optimal size of the layout pods and the frequency of flows between the different clinical locations. The final phase uses an Unequal Area Facility Layout Problem (UAFLP) to determine the layout typology. The proposed process mining and simulation model are vital steps to measure the frequency between spaces and pod areas, which are needed to solve the UAFLP for outpatient settings. The proposed framework is validated using a case study for a renovation project of a large heart and vascular clinic in the US. The research shows that process mining is an efficient tool to extract a subset of significant patient pathways among 90 pathway variants and build a more realistic simulation that reflects behavioral and operational aspects. The research shows that the PSO algorithm is efficient in estimating the PDFA parameters and improving the prediction accuracy of the extracted patient pathways. In addition, the research shows that Genetic Algorithm with Placement Staretegy is an efficient algorithm for layout automation.
机译:本文提出了一种三相框架,以利用医院跟踪患者访问数据,同时设计具有豆荚结构的医疗保健布局。第一阶段提出了一种过程挖掘算法,可以修改具有粒子群优化(PDFA-PSO)算法的概率确定有限自动机(PDFA),以预测医院历史数据的重要患者工作流程。第二阶段采用模拟建模来解决右尺寸问题以确定不同临床位置之间的布局荚的最佳尺寸和流动频率。最后阶段使用不等的区域设施布局问题(UAFLP)来确定布局类型。所提出的过程挖掘和仿真模型是测量求解UAFLP的空间和豆荚区之间的频率的重要步骤,以便门诊设置。拟议的框架是使用美国大型心脏和血管诊所的改造项目的案例研究验证。该研究表明,过程挖掘是一种有效的工具,可以在90个途径变体中提取显着患者途径的子集,并建立更现实的模拟,反映行为和操作方面。该研究表明,PSO算法在估计PDFA参数方面是有效的,提高提取的患者途径的预测精度。此外,该研究表明,具有放置训练的遗传算法是一种用于布局自动化的有效算法。

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