Background: This paper presents a unified framework for finding differentially expressed genes (DEGs) from the microarray data. The proposed framework has three interrelated modules: (i) gene ranking, ii) significance analysis of genes and (iii) validation. The first module uses two gene selection algorithms, namely, a) two-way clustering and b) combined adaptive ranking to rank the genes. The second module converts the gene ranks into p-values using an R-test and fuses the two sets of p-values using the Fisher\u27s omnibus criterion. The DEGs are selected using the FDR analysis. The third module performs three fold validations of the obtained DEGs. The robustness of the proposed unified framework in gene selection is first illustrated usin...
DNA microarray is an innovative technology for obtaining information on gene function. Because it ...
This paper introduces a statistical methodology for identication of differentially expressed genes i...
Small sample size and high dimensionality of microarray data impose challenges on detecting differen...
This paper presents a unified framework for finding differentially expressed genes (DEGs) from the t...
DNA microarrays have been used for the purpose of monitoring expression levels of thousands of genes...
Abstract:- This paper presents adaptive algorithms for ranking and selecting differentially expresse...
AbstractMicroarrays allow researchers to examine the expression of thousands of genes simultaneously...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
Motivation: Microarray experiments typically analyze thousands to tens of thousands of genes from sm...
BACKGROUND:Reproducibility is a fundamental requirement in scientific experiments. Some recent publi...
BACKGROUND: An important issue in microarray data is to select, from thousands of genes, a small num...
Motivation: A common objective of microarray experiments is the detection of differential gene expre...
Global gene expression analysis using microarrays and, more recently, RNA-seq, has allowed investiga...
Abstract Background DNA microarrays are used to investigate differences in gene expression between t...
Global gene expression analysis using microarrays and, more recently, RNA-seq, has al-lowed investig...
DNA microarray is an innovative technology for obtaining information on gene function. Because it ...
This paper introduces a statistical methodology for identication of differentially expressed genes i...
Small sample size and high dimensionality of microarray data impose challenges on detecting differen...
This paper presents a unified framework for finding differentially expressed genes (DEGs) from the t...
DNA microarrays have been used for the purpose of monitoring expression levels of thousands of genes...
Abstract:- This paper presents adaptive algorithms for ranking and selecting differentially expresse...
AbstractMicroarrays allow researchers to examine the expression of thousands of genes simultaneously...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
Motivation: Microarray experiments typically analyze thousands to tens of thousands of genes from sm...
BACKGROUND:Reproducibility is a fundamental requirement in scientific experiments. Some recent publi...
BACKGROUND: An important issue in microarray data is to select, from thousands of genes, a small num...
Motivation: A common objective of microarray experiments is the detection of differential gene expre...
Global gene expression analysis using microarrays and, more recently, RNA-seq, has allowed investiga...
Abstract Background DNA microarrays are used to investigate differences in gene expression between t...
Global gene expression analysis using microarrays and, more recently, RNA-seq, has al-lowed investig...
DNA microarray is an innovative technology for obtaining information on gene function. Because it ...
This paper introduces a statistical methodology for identication of differentially expressed genes i...
Small sample size and high dimensionality of microarray data impose challenges on detecting differen...