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A machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure

INTRODUCTION/BACKGROUND: Patients with heart failure and reduced ejection fraction (HFrEF) are consistently underprescribed guideline-directed medications. Although many barriers to prescribing are known, identification of these barriers has relied on traditional a priori hypotheses or qualitative m...

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Autores principales: Kim, Rachel, Suresh, Krithika, Rosenberg, Michael A., Tan, Malinda S., Malone, Daniel C., Allen, Larry A., Kao, David P., Anderson, Heather D., Tiwari, Premanand, Trinkley, Katy E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10321403/
https://www.ncbi.nlm.nih.gov/pubmed/37416920
http://dx.doi.org/10.3389/fcvm.2023.1169574
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author Kim, Rachel
Suresh, Krithika
Rosenberg, Michael A.
Tan, Malinda S.
Malone, Daniel C.
Allen, Larry A.
Kao, David P.
Anderson, Heather D.
Tiwari, Premanand
Trinkley, Katy E.
author_facet Kim, Rachel
Suresh, Krithika
Rosenberg, Michael A.
Tan, Malinda S.
Malone, Daniel C.
Allen, Larry A.
Kao, David P.
Anderson, Heather D.
Tiwari, Premanand
Trinkley, Katy E.
author_sort Kim, Rachel
collection PubMed
description INTRODUCTION/BACKGROUND: Patients with heart failure and reduced ejection fraction (HFrEF) are consistently underprescribed guideline-directed medications. Although many barriers to prescribing are known, identification of these barriers has relied on traditional a priori hypotheses or qualitative methods. Machine learning can overcome many limitations of traditional methods to capture complex relationships in data and lead to a more comprehensive understanding of the underpinnings driving underprescribing. Here, we used machine learning methods and routinely available electronic health record data to identify predictors of prescribing. METHODS: We evaluated the predictive performance of machine learning algorithms to predict prescription of four types of medications for adults with HFrEF: angiotensin converting enzyme inhibitor/angiotensin receptor blocker (ACE/ARB), angiotensin receptor-neprilysin inhibitor (ARNI), evidence-based beta blocker (BB), or mineralocorticoid receptor antagonist (MRA). The models with the best predictive performance were used to identify the top 20 characteristics associated with prescribing each medication type. Shapley values were used to provide insight into the importance and direction of the predictor relationships with medication prescribing. RESULTS: For 3,832 patients meeting the inclusion criteria, 70% were prescribed an ACE/ARB, 8% an ARNI, 75% a BB, and 40% an MRA. The best-predicting model for each medication type was a random forest (area under the curve: 0.788–0.821; Brier score: 0.063–0.185). Across all medications, top predictors of prescribing included prescription of other evidence-based medications and younger age. Unique to prescribing an ARNI, the top predictors included lack of diagnoses of chronic kidney disease, chronic obstructive pulmonary disease, or hypotension, as well as being in a relationship, nontobacco use, and alcohol use. DISCUSSION/CONCLUSIONS: We identified multiple predictors of prescribing for HFrEF medications that are being used to strategically design interventions to address barriers to prescribing and to inform further investigations. The machine learning approach used in this study to identify predictors of suboptimal prescribing can also be used by other health systems to identify and address locally relevant gaps and solutions to prescribing.
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spelling pubmed-103214032023-07-06 A machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure Kim, Rachel Suresh, Krithika Rosenberg, Michael A. Tan, Malinda S. Malone, Daniel C. Allen, Larry A. Kao, David P. Anderson, Heather D. Tiwari, Premanand Trinkley, Katy E. Front Cardiovasc Med Cardiovascular Medicine INTRODUCTION/BACKGROUND: Patients with heart failure and reduced ejection fraction (HFrEF) are consistently underprescribed guideline-directed medications. Although many barriers to prescribing are known, identification of these barriers has relied on traditional a priori hypotheses or qualitative methods. Machine learning can overcome many limitations of traditional methods to capture complex relationships in data and lead to a more comprehensive understanding of the underpinnings driving underprescribing. Here, we used machine learning methods and routinely available electronic health record data to identify predictors of prescribing. METHODS: We evaluated the predictive performance of machine learning algorithms to predict prescription of four types of medications for adults with HFrEF: angiotensin converting enzyme inhibitor/angiotensin receptor blocker (ACE/ARB), angiotensin receptor-neprilysin inhibitor (ARNI), evidence-based beta blocker (BB), or mineralocorticoid receptor antagonist (MRA). The models with the best predictive performance were used to identify the top 20 characteristics associated with prescribing each medication type. Shapley values were used to provide insight into the importance and direction of the predictor relationships with medication prescribing. RESULTS: For 3,832 patients meeting the inclusion criteria, 70% were prescribed an ACE/ARB, 8% an ARNI, 75% a BB, and 40% an MRA. The best-predicting model for each medication type was a random forest (area under the curve: 0.788–0.821; Brier score: 0.063–0.185). Across all medications, top predictors of prescribing included prescription of other evidence-based medications and younger age. Unique to prescribing an ARNI, the top predictors included lack of diagnoses of chronic kidney disease, chronic obstructive pulmonary disease, or hypotension, as well as being in a relationship, nontobacco use, and alcohol use. DISCUSSION/CONCLUSIONS: We identified multiple predictors of prescribing for HFrEF medications that are being used to strategically design interventions to address barriers to prescribing and to inform further investigations. The machine learning approach used in this study to identify predictors of suboptimal prescribing can also be used by other health systems to identify and address locally relevant gaps and solutions to prescribing. Frontiers Media S.A. 2023-06-21 /pmc/articles/PMC10321403/ /pubmed/37416920 http://dx.doi.org/10.3389/fcvm.2023.1169574 Text en © 2023 Kim, Suresh, Rosenberg, Tan, Malone, Allen, Kao, Anderson, Tiwari and Trinkley. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY) (https://creativecommons.org/licenses/by/4.0/) . 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 Cardiovascular Medicine
Kim, Rachel
Suresh, Krithika
Rosenberg, Michael A.
Tan, Malinda S.
Malone, Daniel C.
Allen, Larry A.
Kao, David P.
Anderson, Heather D.
Tiwari, Premanand
Trinkley, Katy E.
A machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure
title A machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure
title_full A machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure
title_fullStr A machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure
title_full_unstemmed A machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure
title_short A machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure
title_sort machine learning evaluation of patient characteristics associated with prescribing of guideline-directed medical therapy for heart failure
topic Cardiovascular Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10321403/
https://www.ncbi.nlm.nih.gov/pubmed/37416920
http://dx.doi.org/10.3389/fcvm.2023.1169574
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