University of Pannonia, Department of Computer Science and Systems Technology 8200 Veszprém, Egyetem u. 10., Hungary.
University of Pannonia, Department of Electrical Engineering and Information Systems 8200 Veszprém, Egyetem u. 10., Hungary.
J Biomed Inform. 2022 Jan;125:103979. doi: 10.1016/j.jbi.2021.103979. Epub 2021 Dec 22.
Public healthcare is a complex domain with many actors and highly variable protocols, which makes traditional process mining tools less effective and calls for specialized methods.
The objective of the work was to develop a generally applicable process mining methodology to explore care processes related to diseases.
The proposed methodology called Process Mining Methodology for Exploring Disease-specific Care Processes (MEDCP) is based on a systematic, step-wise refinement of the raw event logs by using such a multi-level expert taxonomy of events that encapsulates the professional concepts of the analysis. A treatment process is defined according to domain-specific rules to identify the starting (index) and closing events. Concepts from various levels of the taxonomy support the final process definition for an analysis that can deliver meaningful conclusions for domain experts.
The applicability of the methodology was demonstrated on two case studies in the cardiological and oncological care domains, in the public health care system in Hungary over a period of ten years. Thanks to the multi-level taxonomy, these studies successfully identified the most important high-level event sequence patterns and some key anomalies in the national care system, such as the significantly different behavior of low-volume vs. high volume care providers in the oncology study or the geographically connected, homogeneous clusters of providers with similar care spectra in the cardiology study.
As the case studies showed, the proposed methodology can improve the efficiency of standard process mining methods, and deliver high level conclusions that are easy to interpret by domain experts. System-level insight into health care processes can serve as a basis for the optimisation and long-term planning of the whole care system.
公共卫生保健是一个涉及众多参与者和高度可变协议的复杂领域,这使得传统的流程挖掘工具效果不佳,需要专门的方法。
本研究旨在开发一种通用的流程挖掘方法,以探索与疾病相关的护理流程。
所提出的方法称为用于探索疾病特定护理流程的流程挖掘方法(MEDCP),它基于通过使用多级别事件分类法对原始事件日志进行系统、逐步细化,该分类法封装了分析的专业概念。根据特定于领域的规则定义治疗流程,以识别起始(索引)和结束事件。分类法各个级别的概念支持针对可向领域专家提供有意义结论的分析的最终流程定义。
该方法的适用性在匈牙利公共卫生保健系统中,历时十年针对心血管和肿瘤护理领域的两个案例研究中得到了验证。由于采用了多级别分类法,这些研究成功地识别出了国家护理系统中最重要的高级别事件序列模式和一些关键异常,例如肿瘤学研究中低容量与高容量护理提供者的行为明显不同,或心脏病学研究中具有相似护理范围的提供者在地理上连接、同质的集群。
正如案例研究所示,所提出的方法可以提高标准流程挖掘方法的效率,并提供易于被领域专家解释的高级结论。对医疗保健流程的系统级洞察可以作为整个护理系统优化和长期规划的基础。