Onorato d'Angelis, Valerio Lapadula, Manuel Iacuitto, D. Ivziku, Anna Sabatini, L. Vollero, M. Merone
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引用次数: 0
摘要
护理路径的分类能够明确患者住院期间的临床演变。它还可以找到在事件数量方面压力更大的部门或临床症状复杂的患者。通过分析这些方面,有可能提出改进医疗保健环境的建议,使提供的医疗服务更有效。通过应用过程挖掘技术,可以对住院病人管理复杂性的演变进行建模。本文以2016年1月1日至2017年12月31日期间在politlinico Universitario Campus Bio-Medico di Roma收集的由匿名患者记录组成的数据为基础,介绍了一些过程挖掘技术的应用。根据患者的自主水平、认知稳定性和临床稳定性,通过患者状态网格描述患者及其住院情况。这一措施被用作住院病人管理复杂性的间接措施。这些数据符合事件日志的典型结构,然后对入院患者的护理复杂性进行建模,甚至分析压力最大的部门。拟议的方法为医疗保健机构提供重要信息,确保改善所提供的服务。
Application of process mining in the management of inpatient analysis
The classification of the care pathway is able to define the clinical evolution of patients during hospitalization. It can also find the departments that are more stressed in terms of number of events or patients with complex clinical pictures. By analysing these aspects, it is possible to suggest improvements to the healthcare setting, making the health service provided more efficient. By applying the techniques of Process Mining it is possible to model the evolution of the complexity of inpatient management. In this paper, we present an application of some techniques of Process Mining starting from the data collected at Policlinico Universitario Campus Bio-Medico di Roma composed of anonymized records of patients in the period between 01/01/2016 and 31/12/2017. The patients and thus their hospitalization are described through a patient status grid, according to their level of autonomy, cognitive stability and clinical stability. This measure is used as an indirect measure of the complexity of inpatient management. The data were made compliant with the typical structure of an event log, and then the complexity of care of patients admitted to the facility was modelled, analyzing even the most stressed departments. The proposed approach suggests important information for the healthcare setting, ensuring an improvement of the services provided.