基于BOR、BTO、TOI、AvLOS指标的医院住院服务效率聚类分析

Tresna Maulana Fahrudin, P. Riyantoko, K. M. Hindrayani, M. H. P. Swari
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引用次数: 2

摘要

目的:研究提出了一种基于聚类层次聚类方法,基于BOR、BTO、TOI和AvLOS指标对具有相同特征的医院住院服务效率进行聚类的方法。设计/方法/方法:采用不同的度量方法,如单链接、完全链接、平均链接和病房链接,应用聚集分层聚类。发现/结果:实验结果表明,ward联动的剪影系数达到0.4454,对聚类质量进行了评价。采用病房联动形成的聚类比其他不相似测度更成比例。Ward联动产生的集群0由23个成员组成,集群1由34个成员组成,而集群2和集群3分别只有1个成员。实验报告,每个聚类都存在住院指标不理想甚至超过理想限度的问题,但聚类0产生了理想的BOR和TOI参数,分别达到52.17%(23例住院患者中有12例)和78.36%(23例住院患者中有18例)。独创性/价值/技术水平:在前人研究的基础上,本研究提供了一种替代方法,在将具有相同特征的医院住院服务效率映射为特定集群时,使用聚集层次聚类方法,而不是经常陷入局部最优的K-means聚类方法。
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Cluster Analysis of Hospital Inpatient Service Efficiency Based on BOR, BTO, TOI, AvLOS Indicators using Agglomerative Hierarchical Clustering
Purpose: The research proposed an approach for grouping hospital inpatient service efficiency that have the same characteristics into certain clusters based on BOR, BTO, TOI, and AvLOS indicators using Agglomerative Hierarchical Clustering.Design/methodology/approach: Applying Agglomerative Hierarchical Clustering with dissimilarity measures such as single linkage, complete linkage, average linkage, and ward linkage.Findings/result: The experiment result has shown that ward linkage was given a quite good score of silhouette coefficient reached 0.4454 for the evaluation of cluster quality. The cluster formed using ward linkage was more proportional than the other dissimilarity measures. Ward linkage has generated cluster 0 consists of 23 members, cluster 1 consists of 34 members, while both of cluster 2 and 3 consists of only 1 member respectively. The experiment reported that each cluster had problems with inpatient indicators that were not ideal and even exceeded the ideal limit, but cluster 0 generated the ideal BOR and TOI parameters, both reached 52.17% (12 of 23 hospital inpatient) and 78.36% (18 of 23 hospital inpatient) respectively.Originality/value/state of the art: Based on previous research, this study provides an alternative to produce more proportional, representative and quality clusters in mapping hospital inpatient service efficiency that have the same characteristics into certain clusters using Agglomerative Hierarchical Clustering Method compared to the K-means Clustering Method which is often trapped in local optima. 
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