Using common data elements to foster interoperability of research on health disparities

Authors

DOI:

https://doi.org/10.29173/iq1112

Keywords:

health research, data interoperability, Common Data Elements

Abstract

Common data elements (CDEs) are standardized questions, variables, or measures with specific sets of responses that are used across multiple studies. They are organized around a particular research topic or question, validated, and defined via a consensus building process. Their use fosters comparability of results and findings across studies. CDEs are more common in NIH-funded clinical and biomedical research than in social, behavioral, and economic (SBE) research. Yet the community-driven, consensus-building approach to defining CDEs makes them well suited to measuring complex social phenomena. The Social, Behavioral, and Economic COVID Coordinating Center at ICPSR (SBE CCC) is leading the effort to establish CDEs for SBE research into the effects of the COVID-19 pandemic. We are collaborating with fifteen NIH-funded research teams who are examining pandemic-related health disparities related to race, ethnicity, sex, geography, income, and other factors. In this article, we discuss ways in which CDEs support research into health disparities and describe our process for identifying, validating, and building consensus on CDEs related to COVID public health policies.

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Published

2025-06-25

How to Cite

Chenoweth, M., & Kubale, J. (2025). Using common data elements to foster interoperability of research on health disparities. IASSIST Quarterly, 49(2). https://doi.org/10.29173/iq1112