학술논문

Machine learning‐based risk prediction of malignant arrhythmia in hospitalized patients with heart failure
Document Type
article
Source
ESC Heart Failure, Vol 8, Iss 6, Pp 5363-5371 (2021)
Subject
Heart failure
Tachycardia, Ventricular
Ventricular fibrillation
Machine learning
Diseases of the circulatory (Cardiovascular) system
RC666-701
Language
English
ISSN
2055-5822
Abstract
Abstract Aims Predicting the risk of malignant arrhythmias (MA) in hospitalized patients with heart failure (HF) is challenging. Machine learning (ML) can handle a large volume of complex data more effectively than traditional statistical methods. This study explored the feasibility of ML methods for predicting the risk of MA in hospitalized HF patients. Methods and results We evaluated the baseline data and MA events of 2794 hospitalized HF patients in the HF cohort in Anhui Province and randomly divided the study population into training and validation sets in a 7:3 ratio. The Lasso‐logistic regression, multivariate adaptive regression splines (MARS), classification and regression tree (CART), random forest (RF), and eXtreme gradient boosting (XGBoost) algorithms were used to construct risk prediction models in the training set, and model performance was verified in the validation set. The area under the receiver operating characteristic curve (AUC) and Brier score were employed to evaluate the discrimination and calibration of the model, respectively. Clinical utility of the Lasso‐logistic regression model was analysed using decision curve analysis (DCA). The median (Q1, Q3) age of the study population was 70 (61, 77) years, and 39.5% were female. MA events occurred in 117 patients (4.2%) during hospitalization. In the training set (n = 1964), the AUC of the XGBoost model was 0.998 [95% confidence interval (CI) 0.997–1.000], which was higher than the other models (all P 0.05], which were higher than that of CART model [AUC: 0.743 (95% CI 0.661–0.824); all P