Risk models have historically displayed only moderate predictive performance in estimating mortality risk in left ventricular assist device therapy. This study evaluated whether machine learning can improve risk prediction for left ventricular assist devices. Primary durable left ventricular assist devices reported in the Interagency Registry for Mechanically Assisted Circulatory Support between March 1, 2006 and December 31, 2016 were included. The study cohort was randomly divided 3:1 into training and testing sets. Logistic regression and machine learning models (extreme gradient boosting) were created in the training set for 90-day and 1-year mortality and their performance was evaluated after bootstrapping with 1000 replications in the...
The identification of optimal candidates for ventricular assist device (VAD) therapy is of great imp...
ObjectivesThe aim of this study was to derive and validate a model to predict survival in candidates...
Objective: Machine learning (ML) algorithm can improve risk prediction because ML can select feature...
Heart failure is a significant global public health concern affecting millions of individuals. Impla...
Abstract Aims Most patients who receive implanta...
AIMS Most patients who receive implantable cardioverter defibrillators (ICDs) for primary prevent...
Background: Predicting mortality is important in patients with heart failure (HF). However, current ...
Existing risk assessment tools for patient selection for left ventricular assist devices (LVADs) suc...
Background: Machine learning (ML) and artificial intelligence are emerging as important components o...
This study investigated the use of Bayesian Networks (BNs) for left ventricular assist device (LVAD)...
Background: Existing prognostic tools for patient selection for ventricular assist devices (VADs) su...
Current approaches to predict cardiovascular risk fail to identify many people who would benefit fro...
This study investigated the use of Bayesian Networks (BNs) for left ventricular assist device (LVAD)...
Background Current approaches to predict cardiovascular risk fail to identify many people who would...
Objective: Risk assessment tools typically used in congenital heart surgery (CHS) assume that variou...
The identification of optimal candidates for ventricular assist device (VAD) therapy is of great imp...
ObjectivesThe aim of this study was to derive and validate a model to predict survival in candidates...
Objective: Machine learning (ML) algorithm can improve risk prediction because ML can select feature...
Heart failure is a significant global public health concern affecting millions of individuals. Impla...
Abstract Aims Most patients who receive implanta...
AIMS Most patients who receive implantable cardioverter defibrillators (ICDs) for primary prevent...
Background: Predicting mortality is important in patients with heart failure (HF). However, current ...
Existing risk assessment tools for patient selection for left ventricular assist devices (LVADs) suc...
Background: Machine learning (ML) and artificial intelligence are emerging as important components o...
This study investigated the use of Bayesian Networks (BNs) for left ventricular assist device (LVAD)...
Background: Existing prognostic tools for patient selection for ventricular assist devices (VADs) su...
Current approaches to predict cardiovascular risk fail to identify many people who would benefit fro...
This study investigated the use of Bayesian Networks (BNs) for left ventricular assist device (LVAD)...
Background Current approaches to predict cardiovascular risk fail to identify many people who would...
Objective: Risk assessment tools typically used in congenital heart surgery (CHS) assume that variou...
The identification of optimal candidates for ventricular assist device (VAD) therapy is of great imp...
ObjectivesThe aim of this study was to derive and validate a model to predict survival in candidates...
Objective: Machine learning (ML) algorithm can improve risk prediction because ML can select feature...