AbstractOur main interest in supervised classification of gene expression data is to infer whether the expressions can discriminate biological characteristics of samples. With thousands of gene expressions to consider, a gene selection has been advocated to decrease classification by including only the discriminating genes. We propose to make the gene selection based on partial least squares and logistic regression random-effects (RE) estimates before the selected genes are evaluated in classification models. We compare the selection with that based on the two-sample t-statistics, a current practice, and modified t-statistics. The results indicate that gene selection based on logistic regression RE estimates is recommended in a general situ...
Dimension reduction and selection of a small number of genes with high ability, to discriminate obje...
Gene selection has become a common task in most gene expression studies. The objective of such resea...
Abstract Background Selection of influential genes with microarray data often faces the difficulties...
AbstractOur main interest in supervised classification of gene expression data is to infer whether t...
AbstractGene selection is an important task in bioinformatics studies, because the accuracy of cance...
In recent years, gene selection for cancer classification based on the expression of a small number ...
Currently there is much interest in using microarray gene-expression data to form prediction rules f...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
Selecting a subset of genes with strong discriminative power is a very important step in classificat...
The classification of cancer is a significant application of the DNA microarray data. Gene selection...
In high-dimensional gene expression data analysis, the accuracy and reliability of cancer classifica...
In high-dimensional gene expression data analysis, the accuracy and reliability of cancer classifica...
The classification of cancer is a significant application of the DNA microarray data. Gene selection...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...
Dimension reduction and selection of a small number of genes with high ability, to discriminate obje...
Gene selection has become a common task in most gene expression studies. The objective of such resea...
Abstract Background Selection of influential genes with microarray data often faces the difficulties...
AbstractOur main interest in supervised classification of gene expression data is to infer whether t...
AbstractGene selection is an important task in bioinformatics studies, because the accuracy of cance...
In recent years, gene selection for cancer classification based on the expression of a small number ...
Currently there is much interest in using microarray gene-expression data to form prediction rules f...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
Selecting a subset of genes with strong discriminative power is a very important step in classificat...
The classification of cancer is a significant application of the DNA microarray data. Gene selection...
In high-dimensional gene expression data analysis, the accuracy and reliability of cancer classifica...
In high-dimensional gene expression data analysis, the accuracy and reliability of cancer classifica...
The classification of cancer is a significant application of the DNA microarray data. Gene selection...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...
Dimension reduction and selection of a small number of genes with high ability, to discriminate obje...
Gene selection has become a common task in most gene expression studies. The objective of such resea...
Abstract Background Selection of influential genes with microarray data often faces the difficulties...