Motivation: Algorithms for differential analysis of microarray data are vital to mod-ern biomedical research. Their accuracy strongly depends on effective treatment of inter-gene correlation. Correlation is ordinarily accounted for in terms of its effect on significance cut-offs. In this paper it is shown that correlation can, in fact, be exploited to share information across tests, which, in turn, can increase statistical power. Results: Vastly and demonstrably improved differential analysis approaches are the result of combining identifiability (the fact that in most microarray data sets, a large proportion of genes can be identified a priori as non-differential) with optimization criteria that incorporate correlation. As a special case, ...
Abstract Background Detecting the differences in gene expression data is important for understanding...
Abstract Background Detecting the differences in gene expression data is important for understanding...
Motivation: The power of a microarray experiment derives from the identification of genes differenti...
Abstract Background Microarray technology is commonly used as a simple screening tool with a focus o...
<p>We propose a method for detecting differential gene expression that exploits the correlation betw...
We propose a method for detecting differential gene expression that exploits the correlation between...
AbstractBackgroundDetection of correlated gene expression is a fundamental process in the characteri...
Motivation: A common objective of microarray experiments is the detection of differential gene expre...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
Microarrays are a powerful tool for studying differential gene expression. However, lists of many di...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Competitive gene set tests are commonly used in molecular pathway analysis to test for enrichment of...
Competitive gene set tests are commonly used in molecular pathway analysis to test for enrichment of...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Abstract Background Detecting the differences in gene expression data is important for understanding...
Abstract Background Detecting the differences in gene expression data is important for understanding...
Motivation: The power of a microarray experiment derives from the identification of genes differenti...
Abstract Background Microarray technology is commonly used as a simple screening tool with a focus o...
<p>We propose a method for detecting differential gene expression that exploits the correlation betw...
We propose a method for detecting differential gene expression that exploits the correlation between...
AbstractBackgroundDetection of correlated gene expression is a fundamental process in the characteri...
Motivation: A common objective of microarray experiments is the detection of differential gene expre...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
Microarrays are a powerful tool for studying differential gene expression. However, lists of many di...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Competitive gene set tests are commonly used in molecular pathway analysis to test for enrichment of...
Competitive gene set tests are commonly used in molecular pathway analysis to test for enrichment of...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Abstract Background Detecting the differences in gene expression data is important for understanding...
Abstract Background Detecting the differences in gene expression data is important for understanding...
Motivation: The power of a microarray experiment derives from the identification of genes differenti...