Some characteristics of the neural network approach have been tested and validated for the particular problem of diagnostic classification in the field of computerized electrocardiography. Two different databases have been used for the evaluation process: CORDA, developed by the Medical Informatics Department of the University of Leuven, and ECG-UCL, developed by the Cliniques Universitaires Saint-Luc, Universite Catholique de Louvain. Electrocardiographic signals classified on the basis of electrocardiographic independent clinical data, with a single diagnosis and no conduction abnormalities, have been considered. Seven diagnostic classes have been taken into account, including the different locations of ventricular hypertrophy and myocard...
The prognosis of acute myocardial infarction (AMI) improves by early revascularization. However the ...
The main cause of human death is cardiovascular disease (CVD) in today’s world. In order to combat a...
"This paper presents an application of Neural. Networks (NNs) and Support Vector Machines (SVMs) for...
Abstract- bioelectrical signal, which records the heart’s electrical activity versus time, is an ele...
Most conventional ECG interpretation programs use decision tree logic for interpretation of the ECG....
New information retrieval method is applied to detect low amplitude high frequency components of ele...
An electrocardiogram (ECG) is a bioelectrical signal which records the heart's electrical activity v...
Artificial neural networks, which can be used for pattern recognition, have recently become more rea...
This thesis describes research carried out to construct an effective method of achieving data reduct...
This thesis discusses the utilization of the artificial neural networks (ANN) as electrocardiography...
This thesis discusses the design and the utilization of the artificial neural networks as ECG classi...
This work deals with using of artificial neural networks (ANN) for ECG classification. The issue of ...
The main parameters of the electrocardiogram (ECG) were processed on the basis of the neural network...
ABSTRACT The present study is Electrocardiogram (ECG),- waveforms and prediction of particular decea...
The study was aimed at assessing the effect of incorporating neural networks (NN) inside an existing...
The prognosis of acute myocardial infarction (AMI) improves by early revascularization. However the ...
The main cause of human death is cardiovascular disease (CVD) in today’s world. In order to combat a...
"This paper presents an application of Neural. Networks (NNs) and Support Vector Machines (SVMs) for...
Abstract- bioelectrical signal, which records the heart’s electrical activity versus time, is an ele...
Most conventional ECG interpretation programs use decision tree logic for interpretation of the ECG....
New information retrieval method is applied to detect low amplitude high frequency components of ele...
An electrocardiogram (ECG) is a bioelectrical signal which records the heart's electrical activity v...
Artificial neural networks, which can be used for pattern recognition, have recently become more rea...
This thesis describes research carried out to construct an effective method of achieving data reduct...
This thesis discusses the utilization of the artificial neural networks (ANN) as electrocardiography...
This thesis discusses the design and the utilization of the artificial neural networks as ECG classi...
This work deals with using of artificial neural networks (ANN) for ECG classification. The issue of ...
The main parameters of the electrocardiogram (ECG) were processed on the basis of the neural network...
ABSTRACT The present study is Electrocardiogram (ECG),- waveforms and prediction of particular decea...
The study was aimed at assessing the effect of incorporating neural networks (NN) inside an existing...
The prognosis of acute myocardial infarction (AMI) improves by early revascularization. However the ...
The main cause of human death is cardiovascular disease (CVD) in today’s world. In order to combat a...
"This paper presents an application of Neural. Networks (NNs) and Support Vector Machines (SVMs) for...