Abstract Machine learning (ML) has been suggested to improve the performance of prediction models. Nevertheless, research on predicting the risk in patients with acute myocardial infarction (AMI) has been limited and showed inconsistency in the performance of ML models versus traditional models (TMs). This study developed ML-based models (logistic regression with regularization, random forest, support vector machine, and extreme gradient boosting) and compared their performance in predicting the short- and long-term mortality of patients with AMI with those of TMs with comparable predictors. The endpoints were the in-hospital mortality of 14,183 participants and the three- and 12-month mortality in patients who survived at discharge. The pe...
Abstract Background Machine learning (ML) can include more diverse and more complex variables to con...
Nowadays, machine learning (ML) is a revolutionary and cutting-edge technology widely used in the me...
This thesis has investigated and demonstrated the potential for developing prediction models using M...
Jia Zhao,1,2 Pengyu Zhao,3 Chunjie Li,2 Yonghong Hou3 1Graduate School, Tianjin Medical University, ...
Yi-ming Li,1,* Li-cheng Jiang,2,* Jing-jing He,1 Kai-yu Jia,1 Yong Peng,1 Mao Chen1 1Department of C...
Background: Machine learning algorithms hold potential for improved prediction of all-cause mortalit...
Hybrid combinations of feature selection, classification and visualisation using machine learning (M...
Background: There is a need to develop patient classification methods and adjust post-discharge care...
Aims: In the present study, we aimed to evaluate the performance of machine learning (ML) models for...
Abstract Aims Heart failure (HF) is one of the common adverse cardiovascular events after acute myoc...
BackgroundThe ability to accurately predict readmission after acute myocardial infarction (AMI) hosp...
Prediction, identification, understanding and visualization of relationship between factors affectin...
OBJECTIVE:Conventional risk stratification models for mortality of acute myocardial infarction (AMI)...
Objective: Investigation of the clinical potential of extensive phenotype data and machine learning ...
Stroke is among the leading causes of death and disability worldwide. Approximately 20-25% of stroke...
Abstract Background Machine learning (ML) can include more diverse and more complex variables to con...
Nowadays, machine learning (ML) is a revolutionary and cutting-edge technology widely used in the me...
This thesis has investigated and demonstrated the potential for developing prediction models using M...
Jia Zhao,1,2 Pengyu Zhao,3 Chunjie Li,2 Yonghong Hou3 1Graduate School, Tianjin Medical University, ...
Yi-ming Li,1,* Li-cheng Jiang,2,* Jing-jing He,1 Kai-yu Jia,1 Yong Peng,1 Mao Chen1 1Department of C...
Background: Machine learning algorithms hold potential for improved prediction of all-cause mortalit...
Hybrid combinations of feature selection, classification and visualisation using machine learning (M...
Background: There is a need to develop patient classification methods and adjust post-discharge care...
Aims: In the present study, we aimed to evaluate the performance of machine learning (ML) models for...
Abstract Aims Heart failure (HF) is one of the common adverse cardiovascular events after acute myoc...
BackgroundThe ability to accurately predict readmission after acute myocardial infarction (AMI) hosp...
Prediction, identification, understanding and visualization of relationship between factors affectin...
OBJECTIVE:Conventional risk stratification models for mortality of acute myocardial infarction (AMI)...
Objective: Investigation of the clinical potential of extensive phenotype data and machine learning ...
Stroke is among the leading causes of death and disability worldwide. Approximately 20-25% of stroke...
Abstract Background Machine learning (ML) can include more diverse and more complex variables to con...
Nowadays, machine learning (ML) is a revolutionary and cutting-edge technology widely used in the me...
This thesis has investigated and demonstrated the potential for developing prediction models using M...