The classification is a one of the most indispensable domains in the data mining and machine learning. The classification process has a good reputation in the area of diseases diagnosis by computer systems where the progress in smart technologies of computer can be invested in diagnosing various diseases based on data of real patients documented in databases. The paper introduced a methodology for diagnosing a set of diseases including two types of cancer (breast cancer and lung), two datasets for diabetes and heart attack. Back Propagation Neural Network plays the role of classifier. The performance of neural net is enhanced by using the genetic algorithm which provides the classifier with the optimal features to raise the classification...
This paper presents the use of various type of neural network architectures for the classification o...
With the advance of gene expression data in the bioinformatics field, the questions which frequently...
Medical diagnosis can be viewed as a pattern classification problem: based a set of input features t...
The classification is a one of the most indispensable domains in the data mining and machine learnin...
AbstractApplying neural networks, genetic and immune algorithms enable solving tasks of computed-aid...
In this research the k-means method was used for classification purposes after it was improved using...
The back propagation algorithm is most popular algorithm in feed forward neural network with the mul...
Computer assisted medical diagnosis is a major machine learning problem being researched recently. G...
The problem of developing universal classifiers of biomedical data, in particular those that charact...
Artificial neural networks (ANNs) are new technology emerged from approximate simulation of human br...
The problem of developing universal classifiers of biomedical data, in particular those that charact...
In this paper, attempt has been made to make use of Artificial Neural network in Disease Diagnosis w...
To analysis the speed of sending message in Healthcare standard 7 with the use of back propagation i...
Summary: Neural networks have shown strong potential in research and in healthcare. Mainly due to th...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
This paper presents the use of various type of neural network architectures for the classification o...
With the advance of gene expression data in the bioinformatics field, the questions which frequently...
Medical diagnosis can be viewed as a pattern classification problem: based a set of input features t...
The classification is a one of the most indispensable domains in the data mining and machine learnin...
AbstractApplying neural networks, genetic and immune algorithms enable solving tasks of computed-aid...
In this research the k-means method was used for classification purposes after it was improved using...
The back propagation algorithm is most popular algorithm in feed forward neural network with the mul...
Computer assisted medical diagnosis is a major machine learning problem being researched recently. G...
The problem of developing universal classifiers of biomedical data, in particular those that charact...
Artificial neural networks (ANNs) are new technology emerged from approximate simulation of human br...
The problem of developing universal classifiers of biomedical data, in particular those that charact...
In this paper, attempt has been made to make use of Artificial Neural network in Disease Diagnosis w...
To analysis the speed of sending message in Healthcare standard 7 with the use of back propagation i...
Summary: Neural networks have shown strong potential in research and in healthcare. Mainly due to th...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
This paper presents the use of various type of neural network architectures for the classification o...
With the advance of gene expression data in the bioinformatics field, the questions which frequently...
Medical diagnosis can be viewed as a pattern classification problem: based a set of input features t...