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Redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis

BACKGROUND: Mortality remains unacceptably high in patients with heart failure and reduced left ventricular ejection fraction (LVEF) despite advances in therapeutics. We hypothesised that a novel artificial intelligence approach could better assess multiple and higher-dimension interactions of comor...

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Autores principales: Karwath, Andreas, Bunting, Karina V, Gill, Simrat K, Tica, Otilia, Pendleton, Samantha, Aziz, Furqan, Barsky, Andrey D, Chernbumroong, Saisakul, Duan, Jinming, Mobley, Alastair R, Cardoso, Victor Roth, Slater, Luke, Williams, John A, Bruce, Emma-Jane, Wang, Xiaoxia, Flather, Marcus D, Coats, Andrew J S, Gkoutos, Georgios V, Kotecha, Dipak
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8542730/
https://www.ncbi.nlm.nih.gov/pubmed/34474011
http://dx.doi.org/10.1016/S0140-6736(21)01638-X
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author Karwath, Andreas
Bunting, Karina V
Gill, Simrat K
Tica, Otilia
Pendleton, Samantha
Aziz, Furqan
Barsky, Andrey D
Chernbumroong, Saisakul
Duan, Jinming
Mobley, Alastair R
Cardoso, Victor Roth
Slater, Luke
Williams, John A
Bruce, Emma-Jane
Wang, Xiaoxia
Flather, Marcus D
Coats, Andrew J S
Gkoutos, Georgios V
Kotecha, Dipak
author_facet Karwath, Andreas
Bunting, Karina V
Gill, Simrat K
Tica, Otilia
Pendleton, Samantha
Aziz, Furqan
Barsky, Andrey D
Chernbumroong, Saisakul
Duan, Jinming
Mobley, Alastair R
Cardoso, Victor Roth
Slater, Luke
Williams, John A
Bruce, Emma-Jane
Wang, Xiaoxia
Flather, Marcus D
Coats, Andrew J S
Gkoutos, Georgios V
Kotecha, Dipak
author_sort Karwath, Andreas
collection PubMed
description BACKGROUND: Mortality remains unacceptably high in patients with heart failure and reduced left ventricular ejection fraction (LVEF) despite advances in therapeutics. We hypothesised that a novel artificial intelligence approach could better assess multiple and higher-dimension interactions of comorbidities, and define clusters of β-blocker efficacy in patients with sinus rhythm and atrial fibrillation. METHODS: Neural network-based variational autoencoders and hierarchical clustering were applied to pooled individual patient data from nine double-blind, randomised, placebo-controlled trials of β blockers. All-cause mortality during median 1·3 years of follow-up was assessed by intention to treat, stratified by electrocardiographic heart rhythm. The number of clusters and dimensions was determined objectively, with results validated using a leave-one-trial-out approach. This study was prospectively registered with ClinicalTrials.gov (NCT00832442) and the PROSPERO database of systematic reviews (CRD42014010012). FINDINGS: 15 659 patients with heart failure and LVEF of less than 50% were included, with median age 65 years (IQR 56–72) and LVEF 27% (IQR 21–33). 3708 (24%) patients were women. In sinus rhythm (n=12 822), most clusters demonstrated a consistent overall mortality benefit from β blockers, with odds ratios (ORs) ranging from 0·54 to 0·74. One cluster in sinus rhythm of older patients with less severe symptoms showed no significant efficacy (OR 0·86, 95% CI 0·67–1·10; p=0·22). In atrial fibrillation (n=2837), four of five clusters were consistent with the overall neutral effect of β blockers versus placebo (OR 0·92, 0·77–1·10; p=0·37). One cluster of younger atrial fibrillation patients at lower mortality risk but similar LVEF to average had a statistically significant reduction in mortality with β blockers (OR 0·57, 0·35–0·93; p=0·023). The robustness and consistency of clustering was confirmed for all models (p<0·0001 vs random), and cluster membership was externally validated across the nine independent trials. INTERPRETATION: An artificial intelligence-based clustering approach was able to distinguish prognostic response from β blockers in patients with heart failure and reduced LVEF. This included patients in sinus rhythm with suboptimal efficacy, as well as a cluster of patients with atrial fibrillation where β blockers did reduce mortality. FUNDING: Medical Research Council, UK, and EU/EFPIA Innovative Medicines Initiative BigData@Heart.
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spelling pubmed-85427302021-10-29 Redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis Karwath, Andreas Bunting, Karina V Gill, Simrat K Tica, Otilia Pendleton, Samantha Aziz, Furqan Barsky, Andrey D Chernbumroong, Saisakul Duan, Jinming Mobley, Alastair R Cardoso, Victor Roth Slater, Luke Williams, John A Bruce, Emma-Jane Wang, Xiaoxia Flather, Marcus D Coats, Andrew J S Gkoutos, Georgios V Kotecha, Dipak Lancet Articles BACKGROUND: Mortality remains unacceptably high in patients with heart failure and reduced left ventricular ejection fraction (LVEF) despite advances in therapeutics. We hypothesised that a novel artificial intelligence approach could better assess multiple and higher-dimension interactions of comorbidities, and define clusters of β-blocker efficacy in patients with sinus rhythm and atrial fibrillation. METHODS: Neural network-based variational autoencoders and hierarchical clustering were applied to pooled individual patient data from nine double-blind, randomised, placebo-controlled trials of β blockers. All-cause mortality during median 1·3 years of follow-up was assessed by intention to treat, stratified by electrocardiographic heart rhythm. The number of clusters and dimensions was determined objectively, with results validated using a leave-one-trial-out approach. This study was prospectively registered with ClinicalTrials.gov (NCT00832442) and the PROSPERO database of systematic reviews (CRD42014010012). FINDINGS: 15 659 patients with heart failure and LVEF of less than 50% were included, with median age 65 years (IQR 56–72) and LVEF 27% (IQR 21–33). 3708 (24%) patients were women. In sinus rhythm (n=12 822), most clusters demonstrated a consistent overall mortality benefit from β blockers, with odds ratios (ORs) ranging from 0·54 to 0·74. One cluster in sinus rhythm of older patients with less severe symptoms showed no significant efficacy (OR 0·86, 95% CI 0·67–1·10; p=0·22). In atrial fibrillation (n=2837), four of five clusters were consistent with the overall neutral effect of β blockers versus placebo (OR 0·92, 0·77–1·10; p=0·37). One cluster of younger atrial fibrillation patients at lower mortality risk but similar LVEF to average had a statistically significant reduction in mortality with β blockers (OR 0·57, 0·35–0·93; p=0·023). The robustness and consistency of clustering was confirmed for all models (p<0·0001 vs random), and cluster membership was externally validated across the nine independent trials. INTERPRETATION: An artificial intelligence-based clustering approach was able to distinguish prognostic response from β blockers in patients with heart failure and reduced LVEF. This included patients in sinus rhythm with suboptimal efficacy, as well as a cluster of patients with atrial fibrillation where β blockers did reduce mortality. FUNDING: Medical Research Council, UK, and EU/EFPIA Innovative Medicines Initiative BigData@Heart. Elsevier 2021-10-16 /pmc/articles/PMC8542730/ /pubmed/34474011 http://dx.doi.org/10.1016/S0140-6736(21)01638-X Text en © 2021 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Articles
Karwath, Andreas
Bunting, Karina V
Gill, Simrat K
Tica, Otilia
Pendleton, Samantha
Aziz, Furqan
Barsky, Andrey D
Chernbumroong, Saisakul
Duan, Jinming
Mobley, Alastair R
Cardoso, Victor Roth
Slater, Luke
Williams, John A
Bruce, Emma-Jane
Wang, Xiaoxia
Flather, Marcus D
Coats, Andrew J S
Gkoutos, Georgios V
Kotecha, Dipak
Redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis
title Redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis
title_full Redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis
title_fullStr Redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis
title_full_unstemmed Redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis
title_short Redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis
title_sort redefining β-blocker response in heart failure patients with sinus rhythm and atrial fibrillation: a machine learning cluster analysis
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8542730/
https://www.ncbi.nlm.nih.gov/pubmed/34474011
http://dx.doi.org/10.1016/S0140-6736(21)01638-X
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