Validation of Multi-State EHR-Based Network for Disease Surveillance (MENDS) Data and Implications for Improving Data Quality and Representativeness.

IF 4.4 3区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Preventing Chronic Disease Pub Date : 2024-06-13 DOI:10.5888/pcd21.230409
Katherine H Hohman, Michael Klompas, Bob Zambarano, Hilary K Wall, Sandra L Jackson, Emily M Kraus
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Abstract

Introduction: Surveillance modernization efforts emphasize the potential use of electronic health record (EHR) data to inform public health surveillance and prevention. However, EHR data streams vary widely in their completeness, accuracy, and representativeness.

Methods: We developed a validation process for the Multi-State EHR-Based Network for Disease Surveillance (MENDS) pilot project to identify and resolve data quality issues that could affect chronic disease prevalence estimates. We examined MENDS validation processes from December 2020 through August 2023 across 5 data-contributing organizations and outlined steps to resolve data quality issues.

Results: We identified gaps in the EHR databases of data contributors and in the processes to extract, map, integrate, and analyze their EHR data. Examples of source-data problems included missing data on race and ethnicity and zip codes. Examples of data processing problems included duplicate or missing patient records, lower-than-expected volumes of data, use of multiple fields for a single data type, and implausible values.

Conclusion: Validation protocols identified critical errors in both EHR source data and in the processes used to transform these data for analysis. Our experience highlights the value and importance of data validation to improve data quality and the accuracy of surveillance estimates that use EHR data. The validation process and lessons learned can be applied broadly to other EHR-based surveillance efforts.

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基于多州电子病历的疾病监测网络 (MENDS) 数据验证及对提高数据质量和代表性的影响。
导言:监测现代化工作强调电子健康记录(EHR)数据在为公共卫生监测和预防提供信息方面的潜在用途。然而,电子病历数据流在完整性、准确性和代表性方面存在很大差异:我们为基于电子病历的多州疾病监测网络(MENDS)试点项目制定了一个验证流程,以确定并解决可能影响慢性病患病率估计的数据质量问题。我们检查了 2020 年 12 月至 2023 年 8 月期间 5 个数据提供机构的 MENDS 验证过程,并概述了解决数据质量问题的步骤:结果:我们发现数据贡献者的电子病历数据库以及提取、映射、整合和分析其电子病历数据的流程中存在漏洞。源数据问题包括种族、民族和邮政编码数据缺失。数据处理问题包括病人记录重复或缺失、数据量低于预期、单一数据类型使用多个字段以及数值不合理等:验证协议发现了电子病历源数据和用于分析的数据转换过程中的关键错误。我们的经验凸显了数据验证对于提高数据质量和使用电子病历数据进行监测估算的准确性的价值和重要性。验证过程和经验教训可广泛应用于其他基于电子病历的监测工作。
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来源期刊
Preventing Chronic Disease
Preventing Chronic Disease PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
6.70
自引率
3.60%
发文量
74
期刊介绍: Preventing Chronic Disease (PCD) is a peer-reviewed electronic journal established by the National Center for Chronic Disease Prevention and Health Promotion. The mission of PCD is to promote the open exchange of information and knowledge among researchers, practitioners, policy makers, and others who strive to improve the health of the public through chronic disease prevention. The vision of PCD is to be the premier forum where practitioners and policy makers inform research and researchers help practitioners and policy makers more effectively improve the health of the population. Articles focus on preventing and controlling chronic diseases and conditions, promoting health, and examining the biological, behavioral, physical, and social determinants of health and their impact on quality of life, morbidity, and mortality across the life span.
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