Machine Learning for Prediction of Stable Warfarin Dose in US Latinos and Latin Americans
Author
Steiner, H.E.Giles, J.B.
Patterson, H.K.
Feng, J.
El Rouby, N.
Claudio, K.
Marcatto, L.R.
Tavares, L.C.
Galvez, J.M.
Calderon-Ospina, C.-A.
Sun, X.
Hutz, M.H.
Scott, S.A.
Cavallari, L.H.
Fonseca-Mendoza, D.J.
Duconge, J.
Botton, M.R.
Santos, P.C.J.L.
Karnes, J.H.
Affiliation
Department of Pharmacy Practice and Science, University of Arizona College of PharmacyDepartment of Epidemiology Biostatistics, University of Arizona College of Public Health
Issue Date
2021
Metadata
Show full item recordPublisher
Frontiers Media S.A.Citation
Steiner, H. E., Giles, J. B., Patterson, H. K., Feng, J., El Rouby, N., Claudio, K., Marcatto, L. R., Tavares, L. C., Galvez, J. M., Calderon-Ospina, C.-A., Sun, X., Hutz, M. H., Scott, S. A., Cavallari, L. H., Fonseca-Mendoza, D. J., Duconge, J., Botton, M. R., Santos, P. C. J. L., & Karnes, J. H. (2021). Machine Learning for Prediction of Stable Warfarin Dose in US Latinos and Latin Americans. Frontiers in Pharmacology.Journal
Frontiers in PharmacologyRights
Copyright © 2021 Steiner, Giles, Patterson, Feng, El Rouby, Claudio, Marcatto, Tavares, Galvez, Calderon-Ospina, Sun, Hutz, Scott, Cavallari, Fonseca-Mendoza, Duconge, Botton, Santos and Karnes. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY).Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
Populations used to create warfarin dose prediction algorithms largely lacked participants reporting Hispanic or Latino ethnicity. While previous research suggests nonlinear modeling improves warfarin dose prediction, this research has mainly focused on populations with primarily European ancestry. We compare the accuracy of stable warfarin dose prediction using linear and nonlinear machine learning models in a large cohort enriched for US Latinos and Latin Americans (ULLA). Each model was tested using the same variables as published by the International Warfarin Pharmacogenetics Consortium (IWPC) and using an expanded set of variables including ethnicity and warfarin indication. We utilized a multiple linear regression model and three nonlinear regression models: Bayesian Additive Regression Trees, Multivariate Adaptive Regression Splines, and Support Vector Regression. We compared each model’s ability to predict stable warfarin dose within 20% of actual stable dose, confirming trained models in a 30% testing dataset with 100 rounds of resampling. In all patients (n = 7,030), inclusion of additional predictor variables led to a small but significant improvement in prediction of dose relative to the IWPC algorithm (47.8 versus 46.7% in IWPC, p = 1.43 × 10−15). Nonlinear models using IWPC variables did not significantly improve prediction of dose over the linear IWPC algorithm. In ULLA patients alone (n = 1,734), IWPC performed similarly to all other linear and nonlinear pharmacogenetic algorithms. Our results reinforce the validity of IWPC in a large, ethnically diverse population and suggest that additional variables that capture warfarin dose variability may improve warfarin dose prediction algorithms. Copyright © 2021 Steiner, Giles, Patterson, Feng, El Rouby, Claudio, Marcatto, Tavares, Galvez, Calderon-Ospina, Sun, Hutz, Scott, Cavallari, Fonseca-Mendoza, Duconge, Botton, Santos and Karnes.Note
Open access journalISSN
1663-9812Version
Final published versionae974a485f413a2113503eed53cd6c53
10.3389/fphar.2021.749786
Scopus Count
Collections
Except where otherwise noted, this item's license is described as Copyright © 2021 Steiner, Giles, Patterson, Feng, El Rouby, Claudio, Marcatto, Tavares, Galvez, Calderon-Ospina, Sun, Hutz, Scott, Cavallari, Fonseca-Mendoza, Duconge, Botton, Santos and Karnes. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY).