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Moving Towards an EHR Data Quality Framework: The MIRACUM Approach

机译:走向EHR数据质量框架:粪便方法

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Introduction: Data quality (DQ) is an important prerequisite for secondary use of electronic health record (EHR) data in clinical research, particularly with regards to progressing towards a learning health system, one of the MIRACUM consortium’s goals. Following the successful integration of the i2b2 research data repository in MIRACUM, we present a standardized and generic DQ framework. State of the art: Already established DQ evaluation methods do not cover all of MIRACUM’s requirements. Concent: A data quality analysis plan was developed to assess common data quality dimensions for demographic-, condition-, procedure- and department-related variables of MIRACUM’s research data repository. Implementation: A data quality analysis (DQA) tool was developed using R scripts packaged in a Docker image with all the necessary dependencies and R libraries for easy distribution. It integrates with the i2b2 data repository at each MIRACUM site, executes an analysis on the data and generates a DQ report. Lessons learned: Our DQA tool brings the analysis to the data and thus meets the MIRACUM data protection requirements. It evaluates established DQ dimensions of data repositories in a standardized and easily distributable way. This analysis allowed us to reveal and revise inconsistencies in earlier versions of the ETL jobs. The framework is portable, easy to deploy across different sites and even further adaptable to other database schemes. Conclusion: The presented framework provides the first step towards a unified, standardized and harmonized EHR DQ assessment in MIRACUM. DQ issues can now be systematically identified by individual hospitals to subsequently implement site- or consortium-wide feedback loops to increase data quality.
机译:介绍:数据质量(DQ)是临床研究中的电子健康记录(EHR)数据的重要前提,特别是对于朝向学习卫生系统的进展,米拉克财团的目标之一。在Miracum中成功集成I2B2研究数据存储库之后,我们提供了标准化和通用DQ框架。最先进:已经建立的DQ评估方法不涵盖所有Miracum的要求。 Concent:开发了一种数据质量分析计划,以评估Miracum研究数据存储库的人口统计,条件,程序和部门相关变量的常见数据质量尺寸。实现:使用rocks在Docker Image中的R脚本进行数据质量分析(DQA)工具,其中包含所有必要的依赖项和R库,以便于分发。它与每个Miracum站点的I2B2数据存储库集成,对数据执行分析并生成DQ报表。经验教训:我们的DQA工具为数据带来了分析,从而符合Miracum数据保护要求。它以标准化且易于分配的方式评估数据存储库的已建立的DQ尺寸。此分析使我们允许我们在早期版本的ETL工作中揭示和修改不一致。该框架是便携式的,易于部署在不同的网站上,甚至还适用于其他数据库方案。结论:本框架提供了迈克兰姆统一,标准化和协调的EHR DQ评估的第一步。现在可以通过各医院系统地确定DQ问题,以便随后实施网站或联盟范围内的反馈循环,以提高数据质量。

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