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Sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the PINNACLE registry using machine learning

BACKGROUND: Current risk scores that are solely based on clinical factors have shown modest predictive ability for understanding of factors associated with gaps in real-world prescription of oral anticoagulation (OAC) in patients with atrial fibrillation (AF). OBJECTIVE: In this study, we sought to...

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Autores principales: Azizi, Zahra, Ward, Andrew T., Lee, Donghyun J., Gad, Sanchit S., Bhasin, Kanchan, Beetel, Robert J., Ferreira, Tiago, Shankar, Sushant, Rumsfeld, John S., Harrington, Robert A., Virani, Salim S., Gluckman, Ty J., Dash, Rajesh, Rodriguez, Fatima
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10041076/
https://www.ncbi.nlm.nih.gov/pubmed/36993910
http://dx.doi.org/10.1016/j.hroo.2022.11.004
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author Azizi, Zahra
Ward, Andrew T.
Lee, Donghyun J.
Gad, Sanchit S.
Bhasin, Kanchan
Beetel, Robert J.
Ferreira, Tiago
Shankar, Sushant
Rumsfeld, John S.
Harrington, Robert A.
Virani, Salim S.
Gluckman, Ty J.
Dash, Rajesh
Rodriguez, Fatima
author_facet Azizi, Zahra
Ward, Andrew T.
Lee, Donghyun J.
Gad, Sanchit S.
Bhasin, Kanchan
Beetel, Robert J.
Ferreira, Tiago
Shankar, Sushant
Rumsfeld, John S.
Harrington, Robert A.
Virani, Salim S.
Gluckman, Ty J.
Dash, Rajesh
Rodriguez, Fatima
author_sort Azizi, Zahra
collection PubMed
description BACKGROUND: Current risk scores that are solely based on clinical factors have shown modest predictive ability for understanding of factors associated with gaps in real-world prescription of oral anticoagulation (OAC) in patients with atrial fibrillation (AF). OBJECTIVE: In this study, we sought to identify the role of social and geographic determinants, beyond clinical factors associated with variation in OAC prescriptions using a large national registry of ambulatory patients with AF. METHODS: Between January 2017 and June 2018, we identified patients with AF from the American College of Cardiology PINNACLE (Practice Innovation and Clinical Excellence) Registry. We examined associations between patient and site-of-care factors and prescription of OAC across U.S. counties. Several machine learning (ML) methods were used to identify factors associated with OAC prescription. RESULTS: Among 864,339 patients with AF, 586,560 (68%) were prescribed OAC. County OAC prescription rates ranged from 26.8% to 93%, with higher OAC use in the Western United States. Supervised ML analysis in predicting likelihood of OAC prescriptions and identified a rank order of patient features associated with OAC prescription. In the ML models, in addition to clinical factors, medication use (aspirin, antihypertensives, antiarrhythmic agents, lipid modifying agents), and age, household income, clinic size, and U.S. region were among the most important predictors of an OAC prescription. CONCLUSION: In a contemporary, national cohort of patients with AF underuse of OAC remains high, with notable geographic variation. Our results demonstrated the role of several important demographic and socioeconomic factors in underutilization of OAC in patients with AF.
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spelling pubmed-100410762023-03-28 Sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the PINNACLE registry using machine learning Azizi, Zahra Ward, Andrew T. Lee, Donghyun J. Gad, Sanchit S. Bhasin, Kanchan Beetel, Robert J. Ferreira, Tiago Shankar, Sushant Rumsfeld, John S. Harrington, Robert A. Virani, Salim S. Gluckman, Ty J. Dash, Rajesh Rodriguez, Fatima Heart Rhythm O2 Clinical BACKGROUND: Current risk scores that are solely based on clinical factors have shown modest predictive ability for understanding of factors associated with gaps in real-world prescription of oral anticoagulation (OAC) in patients with atrial fibrillation (AF). OBJECTIVE: In this study, we sought to identify the role of social and geographic determinants, beyond clinical factors associated with variation in OAC prescriptions using a large national registry of ambulatory patients with AF. METHODS: Between January 2017 and June 2018, we identified patients with AF from the American College of Cardiology PINNACLE (Practice Innovation and Clinical Excellence) Registry. We examined associations between patient and site-of-care factors and prescription of OAC across U.S. counties. Several machine learning (ML) methods were used to identify factors associated with OAC prescription. RESULTS: Among 864,339 patients with AF, 586,560 (68%) were prescribed OAC. County OAC prescription rates ranged from 26.8% to 93%, with higher OAC use in the Western United States. Supervised ML analysis in predicting likelihood of OAC prescriptions and identified a rank order of patient features associated with OAC prescription. In the ML models, in addition to clinical factors, medication use (aspirin, antihypertensives, antiarrhythmic agents, lipid modifying agents), and age, household income, clinic size, and U.S. region were among the most important predictors of an OAC prescription. CONCLUSION: In a contemporary, national cohort of patients with AF underuse of OAC remains high, with notable geographic variation. Our results demonstrated the role of several important demographic and socioeconomic factors in underutilization of OAC in patients with AF. Elsevier 2022-11-24 /pmc/articles/PMC10041076/ /pubmed/36993910 http://dx.doi.org/10.1016/j.hroo.2022.11.004 Text en © 2022 Heart Rhythm Society. Published by Elsevier Inc. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Clinical
Azizi, Zahra
Ward, Andrew T.
Lee, Donghyun J.
Gad, Sanchit S.
Bhasin, Kanchan
Beetel, Robert J.
Ferreira, Tiago
Shankar, Sushant
Rumsfeld, John S.
Harrington, Robert A.
Virani, Salim S.
Gluckman, Ty J.
Dash, Rajesh
Rodriguez, Fatima
Sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the PINNACLE registry using machine learning
title Sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the PINNACLE registry using machine learning
title_full Sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the PINNACLE registry using machine learning
title_fullStr Sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the PINNACLE registry using machine learning
title_full_unstemmed Sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the PINNACLE registry using machine learning
title_short Sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the PINNACLE registry using machine learning
title_sort sociodemographic determinants of oral anticoagulant prescription in patients with atrial fibrillations: findings from the pinnacle registry using machine learning
topic Clinical
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10041076/
https://www.ncbi.nlm.nih.gov/pubmed/36993910
http://dx.doi.org/10.1016/j.hroo.2022.11.004
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