健康数据管理中的语义互操作性促进过程挖掘

Barbara Traxler, Emmanuel Helm, O. Krauss, Andreas Schuler, J. Kueng
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引用次数: 0

摘要

作为一种基于证据的业务流程分析方法,流程挖掘可用于调查护理交付中的变化。现有的方法仅基于一个数据源。不同的数据源意味着不同的领域语言和理解,不同组织中的特殊过程工作流,具有不同目标和不同名称的不同文档以及编码系统的不同使用。本文描述了一种基于CDA的模块化、基于规则的信息提取算法,并将其与专有的医疗保健参考模型方法和使用新标准FHIR的基于资源的医疗保健数据提取方法进行了比较。所有这三种方法都可以用来推导模型来提取临床和患者的路径。描述了基于互操作性和流程挖掘任务的异同。结论是,基于标准的方法允许更多的互操作性,并且可用于广泛的系统,以提供流程洞察力,从而促进跨机构边界的更好的医疗保健管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Semantic Interoperability in Health Data Management Facilitating Process Mining
As an evidence-based business process analysis method, process mining can be used to investigate variations in delivery of care. Existing approaches are only based on one data source. A variety of data sources means different domain languages and understanding, special processes workflows in various organizations, varying documentation with different goals and different designations and varying use of coding systems. This article describes a modular, rule-based information extraction algorithm based on CDA and compares it to a proprietary healthcare reference model approach and a resource-based extraction of healthcare data using the new standard FHIR. All three approaches can be used to derive models to extract clinical and patient pathways. Similarities and differences according to interoperability and process mining tasks are described. It is concluded that standards-based approaches allow for more interoperability and can be used for a wide range of systems to provide process insight, thus facilitating better healthcare management across institutional boundaries.
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