By combining methods from artificial intelligence and signal analysis, we have developed a hybrid system for medical diagnosis. The core of the system is a fuzzy expert system with a dual source knowledge base. Two sets of rules are acquired, automatically from given examples and indirectly formulated by the physician. A fuzzy neural network serves to learn from sample data and allows to extract fuzzy rules for the knowledge base. A complex signal transformation preprocesses the digital data a priori to the symbolic representation. Results demonstrate the high accuracy of the system in the field of diagnosing electroencephalograms where it outperforms the visual diagnosis by a human expert for some phenomena
Sensors possess several properties of physical measures. Whether devices that convert a sensed signa...
In this paper a novel approach to automatic medical signal diagnosis is proposed. The authors propos...
Artificial neural systems promise to integrate symbolic and sub-symbolic processing to achieve real ...
International audienceFault diagnosis is a complex and fuzzy cognitive process, and soft computing m...
This paper presents a technique for building expert systems that combines the fuzzy-set approach wit...
AbstractMore and more applications of artificial intelligence technologies are made in biomedical so...
One of the major problems that both the developed and under-developed countries are facing is the di...
In this paper neural networks are used as associative memories to build an expert system for aiding ...
Hybrid systems composed of AI approaches have shown quite remarkable results in diagnosis. Designing...
In this paper, application of artificial neural networks in typical disease diagnosis has been inves...
Decision making has become a problem in environments full of uncertain, vague and imprecise informat...
Medical image data like ECG, EEG, MRI and CT-scan images are the most important way to diagnose dise...
Disease diagnosis often involves acquiring medical images using devices such as MRI, CT scan, x-ray,...
Abstract. This paper discusses the effectiveness and the worth of designing and applying hybrid inte...
The methods of Computational Intelligence (CI) including a framework of Granular Computing, open pro...
Sensors possess several properties of physical measures. Whether devices that convert a sensed signa...
In this paper a novel approach to automatic medical signal diagnosis is proposed. The authors propos...
Artificial neural systems promise to integrate symbolic and sub-symbolic processing to achieve real ...
International audienceFault diagnosis is a complex and fuzzy cognitive process, and soft computing m...
This paper presents a technique for building expert systems that combines the fuzzy-set approach wit...
AbstractMore and more applications of artificial intelligence technologies are made in biomedical so...
One of the major problems that both the developed and under-developed countries are facing is the di...
In this paper neural networks are used as associative memories to build an expert system for aiding ...
Hybrid systems composed of AI approaches have shown quite remarkable results in diagnosis. Designing...
In this paper, application of artificial neural networks in typical disease diagnosis has been inves...
Decision making has become a problem in environments full of uncertain, vague and imprecise informat...
Medical image data like ECG, EEG, MRI and CT-scan images are the most important way to diagnose dise...
Disease diagnosis often involves acquiring medical images using devices such as MRI, CT scan, x-ray,...
Abstract. This paper discusses the effectiveness and the worth of designing and applying hybrid inte...
The methods of Computational Intelligence (CI) including a framework of Granular Computing, open pro...
Sensors possess several properties of physical measures. Whether devices that convert a sensed signa...
In this paper a novel approach to automatic medical signal diagnosis is proposed. The authors propos...
Artificial neural systems promise to integrate symbolic and sub-symbolic processing to achieve real ...