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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.
Afiliação
  • Hamatani Y; Department of Cardiology, National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
  • Nishi H; Division of Neurosurgery, St. Michael's Hospital, Toronto, Canada.
  • Iguchi M; Department of Cardiology, National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
  • Esato M; Department of Arrhythmia, Ogaki Tokushukai Hospital, Gifu, Japan.
  • Tsuji H; Tsuji Clinic, Kyoto, Japan.
  • Wada H; Division of Translational Research, National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
  • Hasegawa K; Division of Translational Research, National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
  • Ogawa H; Department of Cardiology, National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
  • Abe M; Department of Cardiology, National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
  • Fukuda S; Department of Neurosurgery, National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
  • Akao M; Department of Cardiology, National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
JACC Asia ; 2(6): 706-716, 2022 Nov.
Article em En | MEDLINE | ID: mdl-36444329
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.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Etiology_studies / Prognostic_studies / Risk_factors_studies Idioma: En Revista: JACC Asia Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Japão País de publicação: Estados Unidos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Etiology_studies / Prognostic_studies / Risk_factors_studies Idioma: En Revista: JACC Asia Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Japão País de publicação: Estados Unidos