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Data-Driven Approach To Patient Flow Management And Resource Utilization In Urban Medical Facilities

机译:数据驱动的城市医疗机构患者流管理和资源利用方法

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Healthcare services are tightly connected with complex data analysis techniques to enable optimal resource allocation in medical institutions. This paper proposes a detailed analysis of incoming patient flow to local polyclinic by integrating clustering techniques, process mining and a concept of self-organizing systems. The study takes into account concepts based on models of managing social networks, the participants of which today can be both people and intelligent software. How could patient flow model be developed using a clinical pathways approach that combines clinical pathways tool, social media analysis, hierarchical agglomerative clustering method and probabilistic topic modeling to investigate the optimal resource utilization of medical facility? The methodology to answer this research question was demonstrated using a time- series clustering (kmedoids, Ward’s method, Latent Dirichlet Allocation, Additive Regularization of Topic Models), Naive Bayes classifier based on public real data of 64668 depersonalized patient- doctor of 32 specialties conversions. In this paper, a modeling methodology for heterogeneous patient flow segmentation is proposed. The presented approaches serve as the foundation for the further development of a queuing system model of a medical institution. In addition, the shared economy principles are applied by the development of such service that would reduce the workload of appointments to therapists by matching patients to needed doctors.
机译:医疗保健服务与复杂的数据分析技术紧密相连,以实现医疗机构中的最佳资源分配。本文通过集成聚类技术,过程挖掘和自组织系统的概念,提出了对进入本地综合医院的患者流量的详细分析。这项研究考虑了基于社交网络管理模型的概念,今天的参与者既可以是人员,也可以是智能软件。如何使用结合临床路径工具,社交媒体分析,层次化聚集聚类方法和概率主题建模的临床路径方法来开发患者流量模型,以研究医疗机构的最佳资源利用情况?使用时间序列聚类(kmedoids,Ward方法,Latent Dirichlet分配,主题模型的加法正则化),朴素贝叶斯分类器(基于64668名个性化患者-医生的32种专业转换的公共真实数据)展示了回答该研究问题的方法。在本文中,提出了一种用于异种患者流量分割的建模方法。所提出的方法为进一步建立医疗机构排队系统模型奠定了基础。此外,这种服务的发展应用了共享经济原则,通过使患者与需要的医生匹配,可以减少任命治疗师的工作量。

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