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Development and validation of a race-agnostic computable phenotype for kidney health in adult hospitalized patients

Author

Listed:
  • Tezcan Ozrazgat-Baslanti
  • Yuanfang Ren
  • Esra Adiyeke
  • Rubab Islam
  • Haleh Hashemighouchani
  • Matthew Ruppert
  • Shunshun Miao
  • Tyler Loftus
  • Crystal Johnson-Mann
  • R W M A Madushani
  • Elizabeth A Shenkman
  • William Hogan
  • Mark S Segal
  • Gloria Lipori
  • Azra Bihorac
  • Charles Hobson

Abstract

Standard race adjustments for estimating glomerular filtration rate (GFR) and reference creatinine can yield a lower acute kidney injury (AKI) and chronic kidney disease (CKD) prevalence among African American patients than non–race adjusted estimates. We developed two race-agnostic computable phenotypes that assess kidney health among 139,152 subjects admitted to the University of Florida Health between 1/2012–8/2019 by removing the race modifier from the estimated GFR and estimated creatinine formula used by the race-adjusted algorithm (race-agnostic algorithm 1) and by utilizing 2021 CKD-EPI refit without race formula (race-agnostic algorithm 2) for calculations of the estimated GFR and estimated creatinine. We compared results using these algorithms to the race-adjusted algorithm in African American patients. Using clinical adjudication, we validated race-agnostic computable phenotypes developed for preadmission CKD and AKI presence on 300 cases. Race adjustment reclassified 2,113 (8%) to no CKD and 7,901 (29%) to a less severe CKD stage compared to race-agnostic algorithm 1 and reclassified 1,208 (5%) to no CKD and 4,606 (18%) to a less severe CKD stage compared to race-agnostic algorithm 2. Of 12,451 AKI encounters based on race-agnostic algorithm 1, race adjustment reclassified 591 to No AKI and 305 to a less severe AKI stage. Of 12,251 AKI encounters based on race-agnostic algorithm 2, race adjustment reclassified 382 to No AKI and 196 (1.6%) to a less severe AKI stage. The phenotyping algorithm based on refit without race formula performed well in identifying patients with CKD and AKI with a sensitivity of 100% (95% confidence interval [CI] 97%–100%) and 99% (95% CI 97%–100%) and a specificity of 88% (95% CI 82%–93%) and 98% (95% CI 93%–100%), respectively. Race-agnostic algorithms identified substantial proportions of additional patients with CKD and AKI compared to race-adjusted algorithm in African American patients. The phenotyping algorithm is promising in identifying patients with kidney disease and improving clinical decision-making.

Suggested Citation

  • Tezcan Ozrazgat-Baslanti & Yuanfang Ren & Esra Adiyeke & Rubab Islam & Haleh Hashemighouchani & Matthew Ruppert & Shunshun Miao & Tyler Loftus & Crystal Johnson-Mann & R W M A Madushani & Elizabeth A , 2024. "Development and validation of a race-agnostic computable phenotype for kidney health in adult hospitalized patients," PLOS ONE, Public Library of Science, vol. 19(4), pages 1-18, April.
  • Handle: RePEc:plo:pone00:0299332
    DOI: 10.1371/journal.pone.0299332
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