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使用知识图谱捕捉电子健康记录中的语义关系:基于MIMIC III数据集和GraphDB的实现

Capturing Semantic Relationships in Electronic Health Records Using Knowledge Graphs: An Implementation Using MIMIC III Dataset and GraphDB.

作者信息

Aldughayfiq Bader, Ashfaq Farzeen, Jhanjhi N Z, Humayun Mamoona

机构信息

Department of Information Systems, College of Computer and Information Sciences, Jouf University, Sakaka 72388, Saudi Arabia.

School of Computer Science-SCS, Taylor's University, Subang Jaya 47500, Malaysia.

出版信息

Healthcare (Basel). 2023 Jun 15;11(12):1762. doi: 10.3390/healthcare11121762.

Abstract

Electronic health records (EHRs) are an increasingly important source of information for healthcare professionals and researchers. However, EHRs are often fragmented, unstructured, and difficult to analyze due to the heterogeneity of the data sources and the sheer volume of information. Knowledge graphs have emerged as a powerful tool for capturing and representing complex relationships within large datasets. In this study, we explore the use of knowledge graphs to capture and represent complex relationships within EHRs. Specifically, we address the following research question: Can a knowledge graph created using the MIMIC III dataset and GraphDB effectively capture semantic relationships within EHRs and enable more efficient and accurate data analysis? We map the MIMIC III dataset to an ontology using text refinement and Protege; then, we create a knowledge graph using GraphDB and use SPARQL queries to retrieve and analyze information from the graph. Our results demonstrate that knowledge graphs can effectively capture semantic relationships within EHRs, enabling more efficient and accurate data analysis. We provide examples of how our implementation can be used to analyze patient outcomes and identify potential risk factors. Our results demonstrate that knowledge graphs are an effective tool for capturing semantic relationships within EHRs, enabling a more efficient and accurate data analysis. Our implementation provides valuable insights into patient outcomes and potential risk factors, contributing to the growing body of literature on the use of knowledge graphs in healthcare. In particular, our study highlights the potential of knowledge graphs to support decision-making and improve patient outcomes by enabling a more comprehensive and holistic analysis of EHR data. Overall, our research contributes to a better understanding of the value of knowledge graphs in healthcare and lays the foundation for further research in this area.

摘要

电子健康记录(EHRs)对于医疗保健专业人员和研究人员而言,正日益成为重要的信息来源。然而,由于数据源的异质性和信息量的庞大,电子健康记录往往是碎片化的、非结构化的,且难以分析。知识图谱已成为一种强大的工具,用于捕捉和表示大型数据集中的复杂关系。在本研究中,我们探索使用知识图谱来捕捉和表示电子健康记录中的复杂关系。具体而言,我们解决以下研究问题:使用MIMIC III数据集和GraphDB创建的知识图谱能否有效地捕捉电子健康记录中的语义关系,并实现更高效、准确的数据分析?我们使用文本细化和Protégé将MIMIC III数据集映射到一个本体;然后,我们使用GraphDB创建一个知识图谱,并使用SPARQL查询从该图谱中检索和分析信息。我们的结果表明,知识图谱可以有效地捕捉电子健康记录中的语义关系,实现更高效、准确的数据分析。我们提供了一些示例,说明我们的实现如何用于分析患者结局并识别潜在风险因素。我们的结果表明,知识图谱是捕捉电子健康记录中语义关系的有效工具,能够实现更高效、准确的数据分析。我们的实现为患者结局和潜在风险因素提供了有价值的见解,为关于在医疗保健中使用知识图谱的文献不断增加做出了贡献。特别是,我们的研究强调了知识图谱通过对电子健康记录数据进行更全面、整体的分析来支持决策和改善患者结局的潜力。总体而言,我们的研究有助于更好地理解知识图谱在医疗保健中的价值,并为该领域的进一步研究奠定基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/13cf/10297905/b038229afdaf/healthcare-11-01762-g001.jpg

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