Statistical methods to harmonize electronic health record data across healthcare systems: case study and lessons learned

利用统计方法协调不同医疗系统间的电子健康记录数据:案例研究及经验教训

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Abstract

MOTIVATION: Although common data models for electronic health record (EHR) data can facilitate multi-site data organization and querying, the same medical event may still be coded differently between healthcare systems. In this paper, we present statistical methods to identify and mitigate coding discrepancies using summary-level data, and demonstrate these methods using data from two FDA Sentinel data partners: Kaiser Permanente Washington and Kaiser Permanente Northwest. RESULTS: We first characterize differences in coding patterns, then compute a code mapping matrix to harmonize data between systems. Our findings reveal significant heterogeneity in coded EHR data, even after adopting a common data model with the same coding system, highlighting the importance of data harmonization before downstream analyses. Our study also demonstrates the effectiveness of the data harmonization approaches, which provide a foundational data quality step to promote semantic interoperability, enhance data integration, and improve the integrity of study conclusions. AVAILABILITY AND IMPLEMENTATION: Computation prototypes, including R/Python codes and examples, are included in Section 7, available as supplementary data at Bioinformatics online and will be posted on GitHub upon publication.

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