Background: There is a need to develop patient classification methods and adjust post-discharge care to improve survival after ST-segment elevation myocardial infarction (STEMI).Aims: The study aimed to determine whether a neural network (NN) is better than logistic regression (LR) in mortality prediction in STEMI patients.Methods: The study included patients from the Polish Registry of Acute Coronary Syndromes (PL-ACS). Patients with the first anterior STEMI treated with the primary percutaneous coronary intervention (pPCI) of the left anterior descending (LAD) artery between 2009 and 2015 and discharged alive were included in the study. Patients were randomly divided into three groups: learning (60%), validation (20%), and test group (20%...
The accurate assessment of a patient’s risk of adverse events remains a mainstay of clinical care. C...
Background: Myocardial infarction remains one the leading causes of mortality and morbidity and invo...
Objectives. This study sought to assess the usefulness and accuracy of artificial neural networks in...
Background: There is a need to develop patient classification methods and adjust post-discharge care...
OBJECTIVE: To compare artificial neural networks (ANN) and robust Bayesian classifiers (RBC) in pred...
Background: Patients have an estimated mortality of 15-20% within the first year following myocardia...
Abstract Machine learning (ML) has been suggested to improve the performance of prediction models. N...
Aim. To study the possibilities of neural network analysis of clinical and instrumental data to pred...
Background: Machine learning algorithms hold potential for improved prediction of all-cause mortalit...
Aims and methods We investigated 12763 men enrolled in the Seven Countries Study and 25-year coronar...
OBJECTIVE:Conventional risk stratification models for mortality of acute myocardial infarction (AMI)...
There are few comparative reports on the overall accuracy of neural networks (NN), assessed only ver...
International audienceThe aim of this study was to compare multilayer perceptron neural networks (NN...
Summary Objective Patients with suspicion of acute coronary syndrome (ACS) are difficult to diagnose...
Yi-ming Li,1,* Li-cheng Jiang,2,* Jing-jing He,1 Kai-yu Jia,1 Yong Peng,1 Mao Chen1 1Department of C...
The accurate assessment of a patient’s risk of adverse events remains a mainstay of clinical care. C...
Background: Myocardial infarction remains one the leading causes of mortality and morbidity and invo...
Objectives. This study sought to assess the usefulness and accuracy of artificial neural networks in...
Background: There is a need to develop patient classification methods and adjust post-discharge care...
OBJECTIVE: To compare artificial neural networks (ANN) and robust Bayesian classifiers (RBC) in pred...
Background: Patients have an estimated mortality of 15-20% within the first year following myocardia...
Abstract Machine learning (ML) has been suggested to improve the performance of prediction models. N...
Aim. To study the possibilities of neural network analysis of clinical and instrumental data to pred...
Background: Machine learning algorithms hold potential for improved prediction of all-cause mortalit...
Aims and methods We investigated 12763 men enrolled in the Seven Countries Study and 25-year coronar...
OBJECTIVE:Conventional risk stratification models for mortality of acute myocardial infarction (AMI)...
There are few comparative reports on the overall accuracy of neural networks (NN), assessed only ver...
International audienceThe aim of this study was to compare multilayer perceptron neural networks (NN...
Summary Objective Patients with suspicion of acute coronary syndrome (ACS) are difficult to diagnose...
Yi-ming Li,1,* Li-cheng Jiang,2,* Jing-jing He,1 Kai-yu Jia,1 Yong Peng,1 Mao Chen1 1Department of C...
The accurate assessment of a patient’s risk of adverse events remains a mainstay of clinical care. C...
Background: Myocardial infarction remains one the leading causes of mortality and morbidity and invo...
Objectives. This study sought to assess the usefulness and accuracy of artificial neural networks in...