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Harmonizing units and values of quantitative data elements in a very large nationally pooled electronic health record (EHR) dataset
31
Zitationen
23
Autoren
2022
Jahr
Abstract
Abstract Objective The goals of this study were to harmonize data from electronic health records (EHRs) into common units, and impute units that were missing. Materials and Methods The National COVID Cohort Collaborative (N3C) table of laboratory measurement data—over 3.1 billion patient records and over 19 000 unique measurement concepts in the Observational Medical Outcomes Partnership (OMOP) common-data-model format from 55 data partners. We grouped ontologically similar OMOP concepts together for 52 variables relevant to COVID-19 research, and developed a unit-harmonization pipeline comprised of (1) selecting a canonical unit for each measurement variable, (2) arriving at a formula for conversion, (3) obtaining clinical review of each formula, (4) applying the formula to convert data values in each unit into the target canonical unit, and (5) removing any harmonized value that fell outside of accepted value ranges for the variable. For data with missing units for all the results within a lab test for a data partner, we compared values with pooled values of all data partners, using the Kolmogorov-Smirnov test. Results Of the concepts without missing values, we harmonized 88.1% of the values, and imputed units for 78.2% of records where units were absent (41% of contributors’ records lacked units). Discussion The harmonization and inference methods developed herein can serve as a resource for initiatives aiming to extract insight from heterogeneous EHR collections. Unique properties of centralized data are harnessed to enable unit inference. Conclusion The pipeline we developed for the pooled N3C data enables use of measurements that would otherwise be unavailable for analysis.
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Autoren
- Katie R. Bradwell
- Jacob T. Wooldridge
- Benjamin Amor
- Tellen D. Bennett
- Adit Anand
- Carolyn Bremer
- Yun Jae Yoo
- Zhenglong Qian
- Steve Johnson
- Emily Pfaff
- Andrew T. Girvin
- Amin Manna
- Emily Niehaus
- Stephanie Hong
- Xiaohan Tanner Zhang
- Richard L. Zhu
- Mark M. Bissell
- Nabeel Qureshi
- Joel Saltz
- Melissa Haendel
- Christopher G. Chute
- Harold P. Lehmann
- Richard A. Moffitt