Cargando…

Machine Learning Risk Prediction for Incident Heart Failure in Patients With Atrial Fibrillation

BACKGROUND: Atrial fibrillation (AF) increases the risk of heart failure (HF); however, little focus is placed on the risk stratification for, and prevention of, incident HF in patients with AF. OBJECTIVES: This study aimed to construct and validate a machine learning (ML) prediction model for HF ho...

Descripción completa

Detalles Bibliográficos
Autores principales: Hamatani, Yasuhiro, Nishi, Hidehisa, Iguchi, Moritake, Esato, Masahiro, Tsuji, Hikari, Wada, Hiromichi, Hasegawa, Koji, Ogawa, Hisashi, Abe, Mitsuru, Fukuda, Shunichi, Akao, Masaharu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9700042/
https://www.ncbi.nlm.nih.gov/pubmed/36444329
http://dx.doi.org/10.1016/j.jacasi.2022.07.007
_version_ 1784839219613532160
author Hamatani, Yasuhiro
Nishi, Hidehisa
Iguchi, Moritake
Esato, Masahiro
Tsuji, Hikari
Wada, Hiromichi
Hasegawa, Koji
Ogawa, Hisashi
Abe, Mitsuru
Fukuda, Shunichi
Akao, Masaharu
author_facet Hamatani, Yasuhiro
Nishi, Hidehisa
Iguchi, Moritake
Esato, Masahiro
Tsuji, Hikari
Wada, Hiromichi
Hasegawa, Koji
Ogawa, Hisashi
Abe, Mitsuru
Fukuda, Shunichi
Akao, Masaharu
author_sort Hamatani, Yasuhiro
collection PubMed
description BACKGROUND: Atrial fibrillation (AF) increases the risk of heart failure (HF); however, little focus is placed on the risk stratification for, and prevention of, incident HF in patients with AF. OBJECTIVES: This study aimed to construct and validate a machine learning (ML) prediction model for HF hospitalization in patients with AF. METHODS: The Fushimi AF Registry is a community-based prospective survey of patients with AF in Fushimi-ku, Kyoto, Japan. We divided the data set of the registry into derivation (n = 2,383) and validation (n = 2,011) cohorts. An ML model was built to predict the incidence of HF hospitalization using the derivation cohort, and predictive ability was examined using the validation cohort. RESULTS: HF hospitalization occurred in 606 patients (14%) during a median follow-up period of 4.4 years in the entire registry. Data of transthoracic echocardiography and biomarkers were frequently nominated as important predictive variables across all 6 ML models. The ML model based on a random forest algorithm using 7 variables (age, history of HF, creatinine clearance, cardiothoracic ratio on x-ray, left ventricular [LV] ejection fraction, LV end-systolic diameter, and LV asynergy) had high prediction performance (area under the receiver operating characteristics curve [AUC]: 0.75) and was significantly superior to the Framingham HF risk model (AUC: 0.67; P < 0.001). Based on Kaplan-Meier curves, the ML model could stratify the risk of HF hospitalization during the follow-up period (log-rank; P < 0.001). CONCLUSIONS: The ML model revealed important predictors and helped us to stratify the risk of HF, providing opportunities for the prevention of HF in patients with AF.
format Online
Article
Text
id pubmed-9700042
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-97000422022-11-27 Machine Learning Risk Prediction for Incident Heart Failure in Patients With Atrial Fibrillation Hamatani, Yasuhiro Nishi, Hidehisa Iguchi, Moritake Esato, Masahiro Tsuji, Hikari Wada, Hiromichi Hasegawa, Koji Ogawa, Hisashi Abe, Mitsuru Fukuda, Shunichi Akao, Masaharu JACC Asia Original Research BACKGROUND: Atrial fibrillation (AF) increases the risk of heart failure (HF); however, little focus is placed on the risk stratification for, and prevention of, incident HF in patients with AF. OBJECTIVES: This study aimed to construct and validate a machine learning (ML) prediction model for HF hospitalization in patients with AF. METHODS: The Fushimi AF Registry is a community-based prospective survey of patients with AF in Fushimi-ku, Kyoto, Japan. We divided the data set of the registry into derivation (n = 2,383) and validation (n = 2,011) cohorts. An ML model was built to predict the incidence of HF hospitalization using the derivation cohort, and predictive ability was examined using the validation cohort. RESULTS: HF hospitalization occurred in 606 patients (14%) during a median follow-up period of 4.4 years in the entire registry. Data of transthoracic echocardiography and biomarkers were frequently nominated as important predictive variables across all 6 ML models. The ML model based on a random forest algorithm using 7 variables (age, history of HF, creatinine clearance, cardiothoracic ratio on x-ray, left ventricular [LV] ejection fraction, LV end-systolic diameter, and LV asynergy) had high prediction performance (area under the receiver operating characteristics curve [AUC]: 0.75) and was significantly superior to the Framingham HF risk model (AUC: 0.67; P < 0.001). Based on Kaplan-Meier curves, the ML model could stratify the risk of HF hospitalization during the follow-up period (log-rank; P < 0.001). CONCLUSIONS: The ML model revealed important predictors and helped us to stratify the risk of HF, providing opportunities for the prevention of HF in patients with AF. Elsevier 2022-11-01 /pmc/articles/PMC9700042/ /pubmed/36444329 http://dx.doi.org/10.1016/j.jacasi.2022.07.007 Text en © 2022 The Authors 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 Original Research
Hamatani, Yasuhiro
Nishi, Hidehisa
Iguchi, Moritake
Esato, Masahiro
Tsuji, Hikari
Wada, Hiromichi
Hasegawa, Koji
Ogawa, Hisashi
Abe, Mitsuru
Fukuda, Shunichi
Akao, Masaharu
Machine Learning Risk Prediction for Incident Heart Failure in Patients With Atrial Fibrillation
title Machine Learning Risk Prediction for Incident Heart Failure in Patients With Atrial Fibrillation
title_full Machine Learning Risk Prediction for Incident Heart Failure in Patients With Atrial Fibrillation
title_fullStr Machine Learning Risk Prediction for Incident Heart Failure in Patients With Atrial Fibrillation
title_full_unstemmed Machine Learning Risk Prediction for Incident Heart Failure in Patients With Atrial Fibrillation
title_short Machine Learning Risk Prediction for Incident Heart Failure in Patients With Atrial Fibrillation
title_sort machine learning risk prediction for incident heart failure in patients with atrial fibrillation
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9700042/
https://www.ncbi.nlm.nih.gov/pubmed/36444329
http://dx.doi.org/10.1016/j.jacasi.2022.07.007
work_keys_str_mv AT hamataniyasuhiro machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT nishihidehisa machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT iguchimoritake machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT esatomasahiro machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT tsujihikari machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT wadahiromichi machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT hasegawakoji machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT ogawahisashi machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT abemitsuru machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT fukudashunichi machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT akaomasaharu machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation
AT machinelearningriskpredictionforincidentheartfailureinpatientswithatrialfibrillation