Abstract Background With DNA microarray data, selecting a compact subset of discriminative genes from thousands of genes is a critical step for accurate classification of phenotypes for, e.g., disease diagnosis. Several widely used gene selection methods often select top-ranked genes according to their individual discriminative power in classifying samples into distinct categories, without considering correlations among genes. A limitation of these gene selection methods is that they may result in gene sets with some redundancy and yield an unnecessary large number of candidate genes for classification analyses. Some latest studies show that incorporating gene to gene correlations into gene selection can remove redundant genes and improve c...
Abstract Background A common task in microarray data analysis is to identify informative genes that ...
In this paper we derive a method for evaluating and improving techniques for selecting informative g...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
Abstract Background ...
Abstract Background ...
In gene expression microarray data analysis, selecting a small number of discriminative genes from t...
Background: The measurement of expression levels of many genes through a single experiment is now po...
Background: The measurement of expression levels of many genes through a single experiment is now po...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
Background: The measurement of expression levels of many genes through a single experiment is now po...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
In this paper we derive a method for evaluating and improving techniques for selecting informative g...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Gene expression data usually contains a large number of genes, but a small number of samples. Featur...
Abstract Background A common task in microarray data analysis is to identify informative genes that ...
In this paper we derive a method for evaluating and improving techniques for selecting informative g...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
Abstract Background ...
Abstract Background ...
In gene expression microarray data analysis, selecting a small number of discriminative genes from t...
Background: The measurement of expression levels of many genes through a single experiment is now po...
Background: The measurement of expression levels of many genes through a single experiment is now po...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
Background: The measurement of expression levels of many genes through a single experiment is now po...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
In this paper we derive a method for evaluating and improving techniques for selecting informative g...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Gene expression data usually contains a large number of genes, but a small number of samples. Featur...
Abstract Background A common task in microarray data analysis is to identify informative genes that ...
In this paper we derive a method for evaluating and improving techniques for selecting informative g...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...