Assessing quality and agreement of structured data in automatic versus manual abstraction of the electronic health record for a clinical epidemiology study

Author:

Brazeal Joseph Grant1ORCID,Alekseyenko Alexander V1234,Li Hong1,Fugal Mario1,Kirchoff Katie3,Marsh Courtney5,Lewin David N16,Wu Jennifer789,Obeid Jihad13ORCID,Wallace Kristin12

Affiliation:

1. Department of Public Health Sciences, College of Medicine, Medical University of South Carolina, Charleston, SC, USA

2. Hollings Cancer Center, Medical University of South Carolina, Charleston, SC, USA

3. Biomedical Informatics Center, Medical University of South Carolina, Charleston, SC, USA

4. Department of Oral Health Sciences, College of Dental Medicine, and Department of Healthcare Leadership and Management, College of Health Professions, Medical University of South Carolina, Charleston, SC, USA

5. Department of Otolaryngology, College of Medicine, Medical University of South Carolina, Charleston, SC, USA

6. Department of Pathology and Laboratory Medicine, College of Medicine, Medical University of South Carolina, Charleston, SC, USA

7. Robert H. Lurie Comprehensive Cancer Center of Northwestern University, Chicago, IL, USA

8. Department of Microbiology-Immunology, Feinberg School of Medicine, Northwestern University, Chicago, IL, USA

9. Department of Urology, Feinberg School of Medicine, Northwestern University, Chicago, IL, USA

Abstract

Objective We evaluate data agreement between an electronic health record (EHR) sample abstracted by automated characterization with a standard abstracted by manual review. Study Design and Setting We obtain data for an epidemiology cohort study using standard manual abstraction of the EHR and automated identification of the same patients using a structured algorithm to query the EHR. Summary measures of agreement (e.g., Cohen’s kappa) are reported for 12 variables commonly used in epidemiological studies. Results Best agreement between abstraction methods is observed among demographic characteristics such as age, sex, and race, and for positive history of disease. Poor agreement is found in missing data and negative history, suggesting potential impact for researchers using automated EHR characterization. EHR data quality depends upon providers, who may be influenced by both institutional and federal government documentation guidelines. Conclusion Automated EHR abstraction discrepancies may decrease power and increase bias; therefore, caution is warranted when selecting variables from EHRs for epidemiological study using an automated characterization approach. Validation of automated methods must also continue to advance in sophistication with other technologies, such as machine learning and natural language processing, to extract non-structured data from the EHR, for application to EHR characterization for clinical epidemiology.

Funder

National Cancer Institute

U.S. National Library of Medicine

Hollings Cancer Center, Medical University of South Carolina

South Carolina Clinical and Translational Research Center

Publisher

SAGE Publications

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