Skip to main content
Journal cover image

Assessing the harmonization of structured electronic health record data to reference terminologies and data completeness through data provenance.

Publication ,  Journal Article
Marsolo, K; Curtis, L; Qualls, L; Xu, J; Zhang, Y; Phillips, T; Hill, CL; Sanders, G; Maro, JC; Kiernan, D; Draper, C; Coughlin, K ...
Published in: Learn Health Syst
April 2025

INTRODUCTION: (1) Assess the harmonization of structured electronic health record data (laboratory results and medications) to reference terminologies and characterize the severity of issues. (2) Identify issues of data completeness by comparing complementary data domains, stratifying by time, care setting, and provenance. METHODS: Queries were distributed to 3 Data Partners (DP). Using harmonization queries, we examined the top 200 laboratory results and medications by volume, identifying outliers and computing summary statistics. The completeness queries looked at 4 conditions of interest and related clinical concepts. Counts were generated for each condition, stratified by year, encounter type, and provenance. We analyzed trends over time within and across DPs. RESULTS: We found that the median number of codes associated with a given laboratory/medication name (and vice versa) generally met expectations, though there were DP-specific issues that resulted in outliers. In addition, there were drastic differences in the percentage of patients with a given concept depending on provenance. CONCLUSIONS: The harmonization queries surfaced several mapping errors, as well as issues with overly specific codes and records with "null" codes. The completeness queries demonstrated having access to multiple types of data provenance provides more robust results compared with any single provenance type. Harmonization errors between source data and reference terminologies may not be widespread but do exist within CDMs, affecting tens of thousands or even millions of records. Provenance information can help identify potential completeness issues with EHR data, but only if it is represented in the CDM and then populated by DPs.

Duke Scholars

Published In

Learn Health Syst

DOI

EISSN

2379-6146

Publication Date

April 2025

Volume

9

Issue

2

Start / End Page

e10468

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Marsolo, K., Curtis, L., Qualls, L., Xu, J., Zhang, Y., Phillips, T., … Falconer, M. (2025). Assessing the harmonization of structured electronic health record data to reference terminologies and data completeness through data provenance. Learn Health Syst, 9(2), e10468. https://doi.org/10.1002/lrh2.10468
Marsolo, Keith, Lesley Curtis, Laura Qualls, Jennifer Xu, Yinghong Zhang, Thomas Phillips, C Larry Hill, et al. “Assessing the harmonization of structured electronic health record data to reference terminologies and data completeness through data provenance.Learn Health Syst 9, no. 2 (April 2025): e10468. https://doi.org/10.1002/lrh2.10468.
Marsolo K, Curtis L, Qualls L, Xu J, Zhang Y, Phillips T, et al. Assessing the harmonization of structured electronic health record data to reference terminologies and data completeness through data provenance. Learn Health Syst. 2025 Apr;9(2):e10468.
Marsolo, Keith, et al. “Assessing the harmonization of structured electronic health record data to reference terminologies and data completeness through data provenance.Learn Health Syst, vol. 9, no. 2, Apr. 2025, p. e10468. Pubmed, doi:10.1002/lrh2.10468.
Marsolo K, Curtis L, Qualls L, Xu J, Zhang Y, Phillips T, Hill CL, Sanders G, Maro JC, Kiernan D, Draper C, Coughlin K, Dutcher SK, Hernández-Muñoz JJ, Falconer M. Assessing the harmonization of structured electronic health record data to reference terminologies and data completeness through data provenance. Learn Health Syst. 2025 Apr;9(2):e10468.
Journal cover image

Published In

Learn Health Syst

DOI

EISSN

2379-6146

Publication Date

April 2025

Volume

9

Issue

2

Start / End Page

e10468

Location

United States