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

Full Text via DOI: 10.1093/jamia/ocab217 PMID: 34590684

Cited authors

  • Pfaff, Girvin, Gabriel, Kostka, Morris, Palchuk, Lehmann, Amor, Bissell, Bradwell, Gold, Hong, Loomba, Manna, McMurry, Niehaus, Qureshi, Walden, Zhang, Zhu, Moffitt, Haendel, Chute, N3C Consortium, Adams, Al-Shukri, Anzalone, Baghal, Bennett, Bernstam, Bernstam, Bissell, Bush, Campion, Castro, Chang, Chaudhari, Chen, Chu, Cimino, Crandall, Crooks, Davies, DiPalazzo, Dorr, Eckrich, Eltinge, Fort, Golovko, Gupta, Haendel, Hajagos, Hanauer, Harnett, Horswell, Huang, Johnson, Kahn, Khanipov, Kieler, Luzuriaga, Maidlow, Martinez, Mathew, McClay, McMahan, Melancon, Meystre, Miele, Morizono, Pablo, Patel, Phuong, Popham, Pulgarin, Santos, Sarkar, Sazo, Setoguchi, Soby, Surampalli, Suver, Vangala, Visweswaran, Oehsen, Walters, Wiley, Williams, Zai

Abstract

  • OBJECTIVE\nMATERIALS AND METHODS\nRESULTS\nDISCUSSION\nCONCLUSION\nIn 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.\nWe 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.\nBeyond 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.\nWe 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.\nBy 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.

Authors

Publication date

  • 2022

PubMed Central ID

  • PMC8500110

International Standard Serial Number (ISSN)

  • 1067-5027

Start page

  • 609

End page

  • 618

Volume

  • 29

Issue

  • 4