Acute myocardial infarction (AMI) is complex disease; its pathogenesis is not completely understood and several variables are involved in the disease.. The aim of this paper was to assess: 1) the predictive capacity of Artificial Neural Networks (ANNs) in consistently distinguishing the two different conditions (AMI or control). 2) the identification of those variables with the maximal relevance for AMI. Genetic variances in inflammatory genes and clinical and classical risk factors in 149 AMI patients and 72 controls were investigated. From the data base of this case/control study 36 variables were selected. TWIST system, an evolutionary algorithm able to remove redundant and noisy information from complex data sets, selected 18 variable...
<div><p>We present the use of innovative machine learning techniques in the understanding of Coronar...
We have previously shown in a large cross-sectional study that intima media thickness (IMT) of carot...
BACKGROUND: Artificial neural networks (ANNs) are computer algorithms inspired by the highly interac...
The accurate assessment of a patient’s risk of adverse events remains a mainstay of clinical care. C...
We have previously shown, in a large cross-sectional study, that intima media thickness (IMT) of car...
Background: Myocardial infarction remains one the leading causes of mortality and morbidity and invo...
Identifying and phenotyping patients at risk of developing major cardiovascular events is an ongoing...
Great strides have been made in past years toward revealing the pathogenesis of acute myocardial inf...
Great strides have been made in past years toward revealing the pathogenesis of acute myocardial inf...
OBJECTIVE: To compare artificial neural networks (ANN) and robust Bayesian classifiers (RBC) in pred...
The study investigated the effect of different input selections on the performance of artificial neu...
Acute myocardial infarction (AMI) is the main cause of death in developed and developing countries. ...
Acute myocardial infarction (AMI) is a multifactorial disease with a complex pathogenesis where life...
Heart disease is increasing rapidly due to number of reasons. If we predict cardiac arrest (dangerou...
SummaryThe aim of this study was to develop an artificial neural networks-based (ANNs) diagnostic mo...
<div><p>We present the use of innovative machine learning techniques in the understanding of Coronar...
We have previously shown in a large cross-sectional study that intima media thickness (IMT) of carot...
BACKGROUND: Artificial neural networks (ANNs) are computer algorithms inspired by the highly interac...
The accurate assessment of a patient’s risk of adverse events remains a mainstay of clinical care. C...
We have previously shown, in a large cross-sectional study, that intima media thickness (IMT) of car...
Background: Myocardial infarction remains one the leading causes of mortality and morbidity and invo...
Identifying and phenotyping patients at risk of developing major cardiovascular events is an ongoing...
Great strides have been made in past years toward revealing the pathogenesis of acute myocardial inf...
Great strides have been made in past years toward revealing the pathogenesis of acute myocardial inf...
OBJECTIVE: To compare artificial neural networks (ANN) and robust Bayesian classifiers (RBC) in pred...
The study investigated the effect of different input selections on the performance of artificial neu...
Acute myocardial infarction (AMI) is the main cause of death in developed and developing countries. ...
Acute myocardial infarction (AMI) is a multifactorial disease with a complex pathogenesis where life...
Heart disease is increasing rapidly due to number of reasons. If we predict cardiac arrest (dangerou...
SummaryThe aim of this study was to develop an artificial neural networks-based (ANNs) diagnostic mo...
<div><p>We present the use of innovative machine learning techniques in the understanding of Coronar...
We have previously shown in a large cross-sectional study that intima media thickness (IMT) of carot...
BACKGROUND: Artificial neural networks (ANNs) are computer algorithms inspired by the highly interac...