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Synergies between centralized and federated approaches to data quality: a report from the national COVID cohort collaborative

Authors :
Emily R, Pfaff
Andrew T, Girvin
Davera L, Gabriel
Kristin, Kostka
Michele, Morris
Matvey B, Palchuk
Harold P, Lehmann
Benjamin, Amor
Mark, Bissell
Katie R, Bradwell
Sigfried, Gold
Stephanie S, Hong
Johanna, Loomba
Amin, Manna
Julie A, McMurry
Emily, Niehaus
Nabeel, Qureshi
Anita, Walden
Xiaohan Tanner, Zhang
Richard L, Zhu
Richard A, Moffitt
Melissa A, Haendel
Christopher G, Chute
William G, Adams
Shaymaa, Al-Shukri
Alfred, Anzalone
Ahmad, Baghal
Tellen D, Bennett
Elmer V, Bernstam
Mark M, Bissell
Brian, Bush
Thomas R, Campion
Victor, Castro
Jack, Chang
Deepa D, Chaudhari
Wenjin, Chen
San, Chu
James J, Cimino
Keith A, Crandall
Mark, Crooks
Sara J Deakyne, Davies
John, DiPalazzo
David, Dorr
Dan, Eckrich
Sarah E, Eltinge
Daniel G, Fort
George, Golovko
Snehil, Gupta
Janos G, Hajagos
David A, Hanauer
Brett M, Harnett
Ronald, Horswell
Nancy, Huang
Steven G, Johnson
Michael, Kahn
Kamil, Khanipov
Curtis, Kieler
Katherine Ruiz De, Luzuriaga
Sarah, Maidlow
Ashley, Martinez
Jomol, Mathew
James C, McClay
Gabriel, McMahan
Brian, Melancon
Stephane, Meystre
Lucio, Miele
Hiroki, Morizono
Ray, Pablo
Lav, Patel
Jimmy, Phuong
Daniel J, Popham
Claudia, Pulgarin
Carlos, Santos
Indra Neil, Sarkar
Nancy, Sazo
Soko, Setoguchi
Selvin, Soby
Sirisha, Surampalli
Christine, Suver
Uma Maheswara Reddy, Vangala
Shyam, Visweswaran
James von, Oehsen
Kellie M, Walters
Laura, Wiley
David A, Williams
Adrian, Zai
Source :
Journal of the American Medical Informatics Association : JAMIA
Publication Year :
2022
Publisher :
Oxford University Press, 2022.

Abstract

Objective In response to COVID-19, the informatics community united to aggregate as much clinical data as possible to characterize this new disease and reduce its impact through collaborative analytics. The National COVID Cohort Collaborative (N3C) is now the largest publicly available HIPAA limited dataset in US history with over 6.4 million patients and is a testament to a partnership of over 100 organizations. Materials and Methods We developed a pipeline for ingesting, harmonizing, and centralizing data from 56 contributing data partners using 4 federated Common Data Models. N3C data quality (DQ) review involves both automated and manual procedures. In the process, several DQ heuristics were discovered in our centralized context, both within the pipeline and during downstream project-based analysis. Feedback to the sites led to many local and centralized DQ improvements. Results Beyond well-recognized DQ findings, we discovered 15 heuristics relating to source Common Data Model conformance, demographics, COVID tests, conditions, encounters, measurements, observations, coding completeness, and fitness for use. Of 56 sites, 37 sites (66%) demonstrated issues through these heuristics. These 37 sites demonstrated improvement after receiving feedback. Discussion We encountered site-to-site differences in DQ which would have been challenging to discover using federated checks alone. We have demonstrated that centralized DQ benchmarking reveals unique opportunities for DQ improvement that will support improved research analytics locally and in aggregate. Conclusion By combining rapid, continual assessment of DQ with a large volume of multisite data, it is possible to support more nuanced scientific questions with the scale and rigor that they require.

Details

Language :
English
Database :
OpenAIRE
Journal :
Journal of the American Medical Informatics Association : JAMIA
Accession number :
edsair.doi.dedup.....3533d16eaddda730bcfae1d98babd62d