Examining discordance in spirometry reference equations: A retrospective study.
Publication/Presentation Date
3-1-2025
Abstract
This study aimed to evaluate discordance, binary classification, and model fit between race-predicted and race-neutral spirometry prediction equations. Spirometry data from 9506 patients (18-95 years old) self-identifying as White, Black, or Hispanic were analyzed, focusing on the lower limit of normal (LLN). Best-fit prediction equations were developed from 3771 patients with normal spirometry, using Bayesian Information Criterion (BIC) to compare models with and without race as a covariate. Results showed that including race as a covariate improved model fit, reducing BIC by at least ten units compared to Race-Neutral equations. Discordance between race-specific and race-neutral equations for detecting airway obstruction and restrictive spirometry patterns ranged from 4% to 13%. Using race-neutral equations resulted in false discovery rates (FDR) of 14% for Hispanics and 45% for Blacks and false negative rates (FNR) of 21% for Hispanics and 27% for Blacks in diagnosing airway obstruction. These findings indicate that removing race as a covariate in spirometry equations increases FDR and FNR, leading to higher misclassification rates. The 4%-13% discordance in interpreting airway obstruction and restrictive patterns has significant clinical implications, underscoring the need for careful consideration in developing spirometry reference equations.
Volume
13
Issue
5
First Page
70212
Last Page
70212
ISSN
2051-817X
Published In/Presented At
Zavorsky, G. S., Elkinany, S., Alismail, A., Thapamagar, S. B., Terry, M. H., Anholm, J. D., & Giri, P. C. (2025). Examining discordance in spirometry reference equations: A retrospective study. Physiological reports, 13(5), e70212. https://doi.org/10.14814/phy2.70212
Disciplines
Medicine and Health Sciences
PubMedID
40012207
Department(s)
Department of Medicine
Document Type
Article