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Machine Learning Algorithm for Predicting Warfarin Dose in Caribbean Hispanics Using Pharmacogenetic Data

Despite some previous examples of successful application to the field of pharmacogenomics, the utility of machine learning (ML) techniques for warfarin dose predictions in Caribbean Hispanic patients has yet to be fully evaluated. This study compares seven ML methods to predict warfarin dosing in Ca...

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Autores principales: Roche-Lima, Abiel, Roman-Santiago, Adalis, Feliu-Maldonado, Roberto, Rodriguez-Maldonado, Jovaniel, Nieves-Rodriguez, Brenda G., Carrasquillo-Carrion, Kelvin, Ramos, Carla M., da Luz Sant’Ana, Istoni, Massey, Steven E., Duconge, Jorge
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6987072/
https://www.ncbi.nlm.nih.gov/pubmed/32038238
http://dx.doi.org/10.3389/fphar.2019.01550
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author Roche-Lima, Abiel
Roman-Santiago, Adalis
Feliu-Maldonado, Roberto
Rodriguez-Maldonado, Jovaniel
Nieves-Rodriguez, Brenda G.
Carrasquillo-Carrion, Kelvin
Ramos, Carla M.
da Luz Sant’Ana, Istoni
Massey, Steven E.
Duconge, Jorge
author_facet Roche-Lima, Abiel
Roman-Santiago, Adalis
Feliu-Maldonado, Roberto
Rodriguez-Maldonado, Jovaniel
Nieves-Rodriguez, Brenda G.
Carrasquillo-Carrion, Kelvin
Ramos, Carla M.
da Luz Sant’Ana, Istoni
Massey, Steven E.
Duconge, Jorge
author_sort Roche-Lima, Abiel
collection PubMed
description Despite some previous examples of successful application to the field of pharmacogenomics, the utility of machine learning (ML) techniques for warfarin dose predictions in Caribbean Hispanic patients has yet to be fully evaluated. This study compares seven ML methods to predict warfarin dosing in Caribbean Hispanics. This is a secondary analysis of genetic and non-genetic clinical data from 190 cardiovascular Hispanic patients. Seven ML algorithms were applied to the data. Data was divided into 80 and 20% to be used as training and test sets. ML algorithms were trained with the training set to obtain the models. Model performance was determined by computing the corresponding mean absolute error (MAE) and % patients whose predicted optimal dose were within ±20% of the actual stabilization dose, and then compared between groups of patients with “normal” (i.e., > 21 but <49 mg/week), low (i.e., ≤21 mg/week, “sensitive”), and high (i.e., ≥49 mg/week, “resistant”) dose requirements. Random forest regression (RFR) significantly outperform all other methods, with a MAE of 4.73 mg/week and 80.56% of cases within ±20% of the actual stabilization dose. Among those with “normal” dose requirements, RFR performance is also better than the rest of models (MAE = 2.91 mg/week). In the “sensitive” group, support vector regression (SVR) shows superiority over the others with lower MAE of 4.79 mg/week. Finally, multivariate adaptive splines (MARS) shows the best performance in the resistant group (MAE = 7.22 mg/week) and 66.7% of predictions within ±20%. Models generated by using RFR, MARS, and SVR algorithms showed significantly better predictions of weekly warfarin dosing in the studied cohorts than other algorithms. Better performance of the ML models for patients with “normal,” “sensitive,” and “resistant” to warfarin were obtained when compared to other populations and previous statistical models.
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spelling pubmed-69870722020-02-07 Machine Learning Algorithm for Predicting Warfarin Dose in Caribbean Hispanics Using Pharmacogenetic Data Roche-Lima, Abiel Roman-Santiago, Adalis Feliu-Maldonado, Roberto Rodriguez-Maldonado, Jovaniel Nieves-Rodriguez, Brenda G. Carrasquillo-Carrion, Kelvin Ramos, Carla M. da Luz Sant’Ana, Istoni Massey, Steven E. Duconge, Jorge Front Pharmacol Pharmacology Despite some previous examples of successful application to the field of pharmacogenomics, the utility of machine learning (ML) techniques for warfarin dose predictions in Caribbean Hispanic patients has yet to be fully evaluated. This study compares seven ML methods to predict warfarin dosing in Caribbean Hispanics. This is a secondary analysis of genetic and non-genetic clinical data from 190 cardiovascular Hispanic patients. Seven ML algorithms were applied to the data. Data was divided into 80 and 20% to be used as training and test sets. ML algorithms were trained with the training set to obtain the models. Model performance was determined by computing the corresponding mean absolute error (MAE) and % patients whose predicted optimal dose were within ±20% of the actual stabilization dose, and then compared between groups of patients with “normal” (i.e., > 21 but <49 mg/week), low (i.e., ≤21 mg/week, “sensitive”), and high (i.e., ≥49 mg/week, “resistant”) dose requirements. Random forest regression (RFR) significantly outperform all other methods, with a MAE of 4.73 mg/week and 80.56% of cases within ±20% of the actual stabilization dose. Among those with “normal” dose requirements, RFR performance is also better than the rest of models (MAE = 2.91 mg/week). In the “sensitive” group, support vector regression (SVR) shows superiority over the others with lower MAE of 4.79 mg/week. Finally, multivariate adaptive splines (MARS) shows the best performance in the resistant group (MAE = 7.22 mg/week) and 66.7% of predictions within ±20%. Models generated by using RFR, MARS, and SVR algorithms showed significantly better predictions of weekly warfarin dosing in the studied cohorts than other algorithms. Better performance of the ML models for patients with “normal,” “sensitive,” and “resistant” to warfarin were obtained when compared to other populations and previous statistical models. Frontiers Media S.A. 2020-01-22 /pmc/articles/PMC6987072/ /pubmed/32038238 http://dx.doi.org/10.3389/fphar.2019.01550 Text en Copyright © 2020 Roche-Lima, Roman-Santiago, Feliu-Maldonado, Rodriguez-Maldonado, Nieves-Rodriguez, Carrasquillo-Carrion, Ramos, da Luz Sant’Ana, Massey and Duconge http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Pharmacology
Roche-Lima, Abiel
Roman-Santiago, Adalis
Feliu-Maldonado, Roberto
Rodriguez-Maldonado, Jovaniel
Nieves-Rodriguez, Brenda G.
Carrasquillo-Carrion, Kelvin
Ramos, Carla M.
da Luz Sant’Ana, Istoni
Massey, Steven E.
Duconge, Jorge
Machine Learning Algorithm for Predicting Warfarin Dose in Caribbean Hispanics Using Pharmacogenetic Data
title Machine Learning Algorithm for Predicting Warfarin Dose in Caribbean Hispanics Using Pharmacogenetic Data
title_full Machine Learning Algorithm for Predicting Warfarin Dose in Caribbean Hispanics Using Pharmacogenetic Data
title_fullStr Machine Learning Algorithm for Predicting Warfarin Dose in Caribbean Hispanics Using Pharmacogenetic Data
title_full_unstemmed Machine Learning Algorithm for Predicting Warfarin Dose in Caribbean Hispanics Using Pharmacogenetic Data
title_short Machine Learning Algorithm for Predicting Warfarin Dose in Caribbean Hispanics Using Pharmacogenetic Data
title_sort machine learning algorithm for predicting warfarin dose in caribbean hispanics using pharmacogenetic data
topic Pharmacology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6987072/
https://www.ncbi.nlm.nih.gov/pubmed/32038238
http://dx.doi.org/10.3389/fphar.2019.01550
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