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Medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model

OBJECTIVE: Our previously established machine learning-based clustering model classified heart failure with preserved ejection fraction (HFpEF) into four distinct phenotypes. Given the heterogeneous pathophysiology of HFpEF, specific medications may have favourable effects in specific phenotypes of...

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Autores principales: Sotomi, Yohei, Hikoso, Shungo, Nakatani, Daisaku, Okada, Katsuki, Dohi, Tomoharu, Sunaga, Akihiro, Kida, Hirota, Sato, Taiki, Matsuoka, Yuki, Kitamura, Tetsuhisa, Komukai, Sho, Seo, Masahiro, Yano, Masamichi, Hayashi, Takaharu, Nakagawa, Akito, Nakagawa, Yusuke, Tamaki, Shunsuke, Ohtani, Tomohito, Yasumura, Yoshio, Yamada, Takahisa, Sakata, Yasushi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10423528/
https://www.ncbi.nlm.nih.gov/pubmed/36822821
http://dx.doi.org/10.1136/heartjnl-2022-322181
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author Sotomi, Yohei
Hikoso, Shungo
Nakatani, Daisaku
Okada, Katsuki
Dohi, Tomoharu
Sunaga, Akihiro
Kida, Hirota
Sato, Taiki
Matsuoka, Yuki
Kitamura, Tetsuhisa
Komukai, Sho
Seo, Masahiro
Yano, Masamichi
Hayashi, Takaharu
Nakagawa, Akito
Nakagawa, Yusuke
Tamaki, Shunsuke
Ohtani, Tomohito
Yasumura, Yoshio
Yamada, Takahisa
Sakata, Yasushi
author_facet Sotomi, Yohei
Hikoso, Shungo
Nakatani, Daisaku
Okada, Katsuki
Dohi, Tomoharu
Sunaga, Akihiro
Kida, Hirota
Sato, Taiki
Matsuoka, Yuki
Kitamura, Tetsuhisa
Komukai, Sho
Seo, Masahiro
Yano, Masamichi
Hayashi, Takaharu
Nakagawa, Akito
Nakagawa, Yusuke
Tamaki, Shunsuke
Ohtani, Tomohito
Yasumura, Yoshio
Yamada, Takahisa
Sakata, Yasushi
author_sort Sotomi, Yohei
collection PubMed
description OBJECTIVE: Our previously established machine learning-based clustering model classified heart failure with preserved ejection fraction (HFpEF) into four distinct phenotypes. Given the heterogeneous pathophysiology of HFpEF, specific medications may have favourable effects in specific phenotypes of HFpEF. We aimed to assess effectiveness of medications on clinical outcomes of the four phenotypes using a real-world HFpEF registry dataset. METHODS: This study is a posthoc analysis of the PURSUIT-HFpEF registry, a prospective, multicentre, observational study. We evaluated the clinical effectiveness of the following four types of postdischarge medication in the four different phenotypes: angiotensin-converting enzyme inhibitors (ACEi) or angiotensin-receptor blockers (ARB), beta blockers, mineralocorticoid-receptor antagonists (MRA) and statins. The primary endpoint of this study was a composite of all-cause death and heart failure hospitalisation. RESULTS: Of 1231 patients, 1100 (83 (IQR 77, 87) years, 604 females) were eligible for analysis. Median follow-up duration was 734 (398, 1108) days. The primary endpoint occurred in 528 patients (48.0%). Cox proportional hazard models with inverse-probability-of-treatment weighting showed the following significant effectiveness of medication on the primary endpoint: MRA for phenotype 2 (weighted HR (wHR) 0.40, 95% CI 0.21 to 0.75, p=0.005); ACEi or ARB for phenotype 3 (wHR 0.66 0.48 to 0.92, p=0.014) and statin therapy for phenotype 3 (wHR 0.43 (0.21 to 0.88), p=0.020). No other medications had significant treatment effects in the four phenotypes. CONCLUSIONS: Machine learning-based clustering may have the potential to identify populations in which specific medications may be effective. This study suggests the effectiveness of MRA, ACEi or ARB and statin for specific phenotypes of HFpEF. TRIAL REGISTRATION NUMBER: UMIN000021831.
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spelling pubmed-104235282023-08-14 Medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model Sotomi, Yohei Hikoso, Shungo Nakatani, Daisaku Okada, Katsuki Dohi, Tomoharu Sunaga, Akihiro Kida, Hirota Sato, Taiki Matsuoka, Yuki Kitamura, Tetsuhisa Komukai, Sho Seo, Masahiro Yano, Masamichi Hayashi, Takaharu Nakagawa, Akito Nakagawa, Yusuke Tamaki, Shunsuke Ohtani, Tomohito Yasumura, Yoshio Yamada, Takahisa Sakata, Yasushi Heart Heart Failure and Cardiomyopathies OBJECTIVE: Our previously established machine learning-based clustering model classified heart failure with preserved ejection fraction (HFpEF) into four distinct phenotypes. Given the heterogeneous pathophysiology of HFpEF, specific medications may have favourable effects in specific phenotypes of HFpEF. We aimed to assess effectiveness of medications on clinical outcomes of the four phenotypes using a real-world HFpEF registry dataset. METHODS: This study is a posthoc analysis of the PURSUIT-HFpEF registry, a prospective, multicentre, observational study. We evaluated the clinical effectiveness of the following four types of postdischarge medication in the four different phenotypes: angiotensin-converting enzyme inhibitors (ACEi) or angiotensin-receptor blockers (ARB), beta blockers, mineralocorticoid-receptor antagonists (MRA) and statins. The primary endpoint of this study was a composite of all-cause death and heart failure hospitalisation. RESULTS: Of 1231 patients, 1100 (83 (IQR 77, 87) years, 604 females) were eligible for analysis. Median follow-up duration was 734 (398, 1108) days. The primary endpoint occurred in 528 patients (48.0%). Cox proportional hazard models with inverse-probability-of-treatment weighting showed the following significant effectiveness of medication on the primary endpoint: MRA for phenotype 2 (weighted HR (wHR) 0.40, 95% CI 0.21 to 0.75, p=0.005); ACEi or ARB for phenotype 3 (wHR 0.66 0.48 to 0.92, p=0.014) and statin therapy for phenotype 3 (wHR 0.43 (0.21 to 0.88), p=0.020). No other medications had significant treatment effects in the four phenotypes. CONCLUSIONS: Machine learning-based clustering may have the potential to identify populations in which specific medications may be effective. This study suggests the effectiveness of MRA, ACEi or ARB and statin for specific phenotypes of HFpEF. TRIAL REGISTRATION NUMBER: UMIN000021831. BMJ Publishing Group 2023-08 2023-02-23 /pmc/articles/PMC10423528/ /pubmed/36822821 http://dx.doi.org/10.1136/heartjnl-2022-322181 Text en © Author(s) (or their employer(s)) 2023. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited, appropriate credit is given, any changes made indicated, and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) .
spellingShingle Heart Failure and Cardiomyopathies
Sotomi, Yohei
Hikoso, Shungo
Nakatani, Daisaku
Okada, Katsuki
Dohi, Tomoharu
Sunaga, Akihiro
Kida, Hirota
Sato, Taiki
Matsuoka, Yuki
Kitamura, Tetsuhisa
Komukai, Sho
Seo, Masahiro
Yano, Masamichi
Hayashi, Takaharu
Nakagawa, Akito
Nakagawa, Yusuke
Tamaki, Shunsuke
Ohtani, Tomohito
Yasumura, Yoshio
Yamada, Takahisa
Sakata, Yasushi
Medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model
title Medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model
title_full Medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model
title_fullStr Medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model
title_full_unstemmed Medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model
title_short Medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model
title_sort medications for specific phenotypes of heart failure with preserved ejection fraction classified by a machine learning-based clustering model
topic Heart Failure and Cardiomyopathies
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10423528/
https://www.ncbi.nlm.nih.gov/pubmed/36822821
http://dx.doi.org/10.1136/heartjnl-2022-322181
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