A Data Quality Assessment Guideline for Electronic Health Record Data Reuse.

Nicole G Weiskopf, Suzanne Bakken, George Hripcsak, Chunhua Weng
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引用次数: 92

Abstract

Introduction: We describe the formulation, development, and initial expert review of 3x3 Data Quality Assessment (DQA), a dynamic, evidence-based guideline to enable electronic health record (EHR) data quality assessment and reporting for clinical research.

Methods: 3x3 DQA was developed through the triangulation results from three studies: a review of the literature on EHR data quality assessment, a quantitative study of EHR data completeness, and a set of interviews with clinical researchers. Following initial development, the guideline was reviewed by a panel of EHR data quality experts.

Results: The guideline embraces the task-dependent nature of data quality and data quality assessment. The core framework includes three constructs of data quality: complete, correct, and current data. These constructs are operationalized according to the three primary dimensions of EHR data: patients, variables, and time. Each of the nine operationalized constructs maps to a methodological recommendation for EHR data quality assessment. The initial expert response to the framework was positive, but improvements are required.

Discussion: The initial version of 3x3 DQA promises to enable explicit guideline-based best practices for EHR data quality assessment and reporting. Future work will focus on increasing clarity on how and when 3x3 DQA should be used during the research process, improving the feasibility and ease-of-use of recommendation execution, and clarifying the process for users to determine which operationalized constructs and recommendations are relevant for a given dataset and study.

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电子健康记录数据重用的数据质量评估指南。
简介:我们描述了3x3数据质量评估(DQA)的制定、发展和初步专家审查,这是一个动态的、基于证据的指南,可实现电子健康记录(EHR)数据质量评估和临床研究报告。方法:通过对电子病历数据质量评估的文献回顾、电子病历数据完整性的定量研究和对临床研究人员的访谈三项研究的三角剖分结果,开发3x3 DQA。在最初制定之后,该指南由电子病历数据质量专家小组审查。结果:该指南包含了数据质量和数据质量评估的任务依赖性质。核心框架包括三个数据质量结构:完整数据、正确数据和当前数据。这些结构根据电子病历数据的三个主要维度进行操作:患者、变量和时间。9个可操作结构中的每一个都映射到电子病历数据质量评估的方法学建议。专家对该框架的初步反应是积极的,但仍需改进。讨论:3x3 DQA的初始版本承诺为EHR数据质量评估和报告提供明确的基于指南的最佳实践。未来的工作将集中于提高在研究过程中如何以及何时使用3x3 DQA的清晰度,提高推荐执行的可行性和易用性,并澄清用户确定哪些可操作的结构和建议与给定数据集和研究相关的过程。
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