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Methods for enhancing the reproducibility of biomedical research findings using electronic health records

机译:使用电子健康记录提高生物医学研究结果可重复性的方法

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Background The ability of external investigators to reproduce published scientific findings is critical for the evaluation and validation of biomedical research by the wider community. However, a substantial proportion of health research using electronic health records (EHR), data collected and generated during clinical care, is potentially not reproducible mainly due to the fact that the implementation details of most data preprocessing, cleaning, phenotyping and analysis approaches are not systematically made available or shared. With the complexity, volume and variety of electronic health record data sources made available for research steadily increasing, it is critical to ensure that scientific findings from EHR data are reproducible and replicable by researchers. Reporting guidelines, such as RECORD and STROBE, have set a solid foundation by recommending a series of items for researchers to include in their research outputs. Researchers however often lack the technical tools and methodological approaches to actuate such recommendations in an efficient and sustainable manner. Results In this paper, we review and propose a series of methods and tools utilized in adjunct scientific disciplines that can be used to enhance the reproducibility of research using electronic health records and enable researchers to report analytical approaches in a transparent manner. Specifically, we discuss the adoption of scientific software engineering principles and best-practices such as test-driven development, source code revision control systems, literate programming and the standardization and re-use of common data management and analytical approaches. Conclusion The adoption of such approaches will enable scientists to systematically document and share EHR analytical workflows and increase the reproducibility of biomedical research using such complex data sources.
机译:背景技术外部研究人员复制已发表的科学发现的能力对于更广泛的社区评估和验证生物医学研究至关重要。但是,使用电子健康记录(EHR),在临床护理过程中收集和生成的数据进行的大量健康研究潜在地不可复制,这主要是因为大多数数据预处理,清洁,表型和分析方法的实施细节并不明确。系统地提供或共享。随着可用于研究的电子病历数据源的复杂性,数量和种类的不断增加,确保EHR数据的科学发现可被研究人员再现和复制是至关重要的。报告指南(例如RECORD和STROBE)为研究人员推荐了一系列项目,以纳入其研究成果,从而奠定了坚实的基础。然而,研究人员通常缺乏以有效和可持续的方式来启动此类建议的技术工具和方法论方法。结果在本文中,我们回顾并提出了一系列辅助科学学科中使用的方法和工具,这些方法和工具可用于增强使用电子健康记录进行研究的可重复性,并使研究人员能够以透明的方式报告分析方法。具体来说,我们讨论了科学软件工程原理和最佳实践的采用,例如测试驱动的开发,源代码修订控制系统,识字编程以及通用数据管理和分析方法的标准化和重复使用。结论采用这种方法将使科学家能够系统地记录和共享EHR分析工作流程,并使用这种复杂的数据源提高生物医学研究的可重复性。

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