Medical diagnostic and prognostic problems are prime examples of decision making in the face of uncertainty. In this paper, we investigate the applicability of the Fuzzy ARTMAP neural network as an intelligent decision support system in clinical medicine. In particular, Fuzzy ARTMAP is employed as a predictive model for prognosis of complications in patients admitted to the Coronary Care Units. A number of off-line and on-line experiments have been conducted with various network parameter settings, training methods, and learning rules. The results are compared with those from other systems including the logistic regression model. In addition, the outcomes of a set of on-line learning experiments revealed the potential of employing Fuzzy ART...
AbstractThe fuzzy medical diagnosis decision models of Esogbue and Elder employed fuzzy sets theory ...
This paper investigates the effectiveness of an ordering algorithm applied to the supervised Fuzzy A...
Artificial neural networks offer a way to actively assimilate both past and present knowledge, to ex...
The purpose of this contribution is to motivate the use of artificial neural networks in "intelligen...
In this paper, a study of the effectiveness of a multiple classifier system (MCS) in a medical diagn...
In this paper, the effectiveness of three different operating strategies applied to the Fuzzy ARTMAP...
In this paper, a hybrid model consisting of the fuzzy ARTMAP (FAM) neural network and the classifica...
In this paper, application of artificial neural networks in typical disease diagnosis has been inves...
Artificial Neural Networks or in short, Neural networks (ANNs or NNs) is a computational paradigm th...
AbstractObjectiveThe continuous uninterrupted feedback system is the essential part of any well-orga...
Artificial intelligence applications in medicine is the major and evolutionary topic in the technolo...
This paper shows how knowledge, in the form of fuzzy rules, can be derived from a self-organizing su...
Gastric cancer (GC), one of the most common cancers around the world, is a multifactorial disease an...
There are two large groups of sources of uncertainty at various stages of construction of neural ne...
In this paper neural networks are used as associative memories to build an expert system for aiding ...
AbstractThe fuzzy medical diagnosis decision models of Esogbue and Elder employed fuzzy sets theory ...
This paper investigates the effectiveness of an ordering algorithm applied to the supervised Fuzzy A...
Artificial neural networks offer a way to actively assimilate both past and present knowledge, to ex...
The purpose of this contribution is to motivate the use of artificial neural networks in "intelligen...
In this paper, a study of the effectiveness of a multiple classifier system (MCS) in a medical diagn...
In this paper, the effectiveness of three different operating strategies applied to the Fuzzy ARTMAP...
In this paper, a hybrid model consisting of the fuzzy ARTMAP (FAM) neural network and the classifica...
In this paper, application of artificial neural networks in typical disease diagnosis has been inves...
Artificial Neural Networks or in short, Neural networks (ANNs or NNs) is a computational paradigm th...
AbstractObjectiveThe continuous uninterrupted feedback system is the essential part of any well-orga...
Artificial intelligence applications in medicine is the major and evolutionary topic in the technolo...
This paper shows how knowledge, in the form of fuzzy rules, can be derived from a self-organizing su...
Gastric cancer (GC), one of the most common cancers around the world, is a multifactorial disease an...
There are two large groups of sources of uncertainty at various stages of construction of neural ne...
In this paper neural networks are used as associative memories to build an expert system for aiding ...
AbstractThe fuzzy medical diagnosis decision models of Esogbue and Elder employed fuzzy sets theory ...
This paper investigates the effectiveness of an ordering algorithm applied to the supervised Fuzzy A...
Artificial neural networks offer a way to actively assimilate both past and present knowledge, to ex...