We aimed to examine the diagnostic performances of multilayer perceptron neural networks (MLPNNs) for predicting coronary artery disease and to compare them with different types of artificial neural network methods, namely recurrent neural networks (RNNs) and two statistical methods (quadratic discriminant analysis (QDA) and logistic regression (LR)). MLPNNs were trained with backpropagation, quick propagation, delta-bar-delta and extended delta-bar-delta algorithms as classifiers; the RNN was trained with the Levenberg-Marquardt algorithm; LR and QDA were used for predicting coronary artery disease. Coronary artery disease was classified with accuracy rates varying from 79.9% to 83.9% by MLPNNs. Even though MLPNNs achieved higher accuracy ...
Heart disease is the first cause of death in different countries. Artificial neural network (ANN) te...
Study objective: clinical and ECG data from presentation are highly discriminatory for diagnosis of ...
A parallel committee machines technique for neural network systems with back propagation together wi...
Artificial Neural Networks (ANNs) have been widely advocated as tools for solving many decision mode...
In this paper we present an extensive comparison between several feedforward neural network types in...
The present work is aimed at comparing the effectiveness of two different methods of risk factor ass...
An artificial neural network (ANN) is a network designed with adaptation to a computer system. The d...
Aims and methods We investigated 12763 men enrolled in the Seven Countries Study and 25-year coronar...
Improved system performance diagnosis of coronary heart disease becomes an important topic in resear...
Background:The purpose of this study was to apply an artificial neural network (ANN) in patients wit...
Aim of the study was to analyze the possibility of using neural network analysis to predict the sev...
Medical science industry has huge amount of data, but most of this data is not mined to find out hid...
Cardiovascular disease (CVD) or heart disease is one of the main reasons for early death, even at yo...
This paper describes an approach based on machine learning technology that is of particular interest...
Machine learning (ML) are the central tool of artificial intelligence, the use of which makes it pos...
Heart disease is the first cause of death in different countries. Artificial neural network (ANN) te...
Study objective: clinical and ECG data from presentation are highly discriminatory for diagnosis of ...
A parallel committee machines technique for neural network systems with back propagation together wi...
Artificial Neural Networks (ANNs) have been widely advocated as tools for solving many decision mode...
In this paper we present an extensive comparison between several feedforward neural network types in...
The present work is aimed at comparing the effectiveness of two different methods of risk factor ass...
An artificial neural network (ANN) is a network designed with adaptation to a computer system. The d...
Aims and methods We investigated 12763 men enrolled in the Seven Countries Study and 25-year coronar...
Improved system performance diagnosis of coronary heart disease becomes an important topic in resear...
Background:The purpose of this study was to apply an artificial neural network (ANN) in patients wit...
Aim of the study was to analyze the possibility of using neural network analysis to predict the sev...
Medical science industry has huge amount of data, but most of this data is not mined to find out hid...
Cardiovascular disease (CVD) or heart disease is one of the main reasons for early death, even at yo...
This paper describes an approach based on machine learning technology that is of particular interest...
Machine learning (ML) are the central tool of artificial intelligence, the use of which makes it pos...
Heart disease is the first cause of death in different countries. Artificial neural network (ANN) te...
Study objective: clinical and ECG data from presentation are highly discriminatory for diagnosis of ...
A parallel committee machines technique for neural network systems with back propagation together wi...