<p>We propose a method for detecting differential gene expression that exploits the correlation between genes. Our proposal averages the univariate scores of each feature with the scores in correlation neighborhoods. In a number of real and simulated examples, the new method often exhibits lower false discovery rates than simple t-statistic thresholding. We also provide some analysis of the asymptotic behavior of our proposal. The general idea of correlation-sharing can be applied to other prediction problems involving a large number of correlated features. We give an example in protein mass spectrometry.</p
Abstract Background Microarray technology is commonly used as a simple screening tool with a focus o...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Motivation: Many exploratory microarray data analysis tools such as gene clustering and relevance ne...
We propose a method for detecting differential gene expression that exploits the correlation between...
MOTIVATION: Standard analysis routines for microarray data aim at differentially expressed genes. In...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. I...
Motivation: Algorithms for differential analysis of microarray data are vital to mod-ern biomedical ...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. In...
Motivated by differential co-expression analysis in genomics, we consider in this paper estimation a...
AbstractBackgroundDetection of correlated gene expression is a fundamental process in the characteri...
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...
The standard algorithms for detecting differential genes from microarray data are mostly designed fo...
Many exploratory microarray data analysis tools such as gene clustering and relevance networks rely ...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Abstract Background Microarray technology is commonly used as a simple screening tool with a focus o...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Motivation: Many exploratory microarray data analysis tools such as gene clustering and relevance ne...
We propose a method for detecting differential gene expression that exploits the correlation between...
MOTIVATION: Standard analysis routines for microarray data aim at differentially expressed genes. In...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. I...
Motivation: Algorithms for differential analysis of microarray data are vital to mod-ern biomedical ...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. In...
Motivated by differential co-expression analysis in genomics, we consider in this paper estimation a...
AbstractBackgroundDetection of correlated gene expression is a fundamental process in the characteri...
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...
The standard algorithms for detecting differential genes from microarray data are mostly designed fo...
Many exploratory microarray data analysis tools such as gene clustering and relevance networks rely ...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Abstract Background Microarray technology is commonly used as a simple screening tool with a focus o...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Motivation: Many exploratory microarray data analysis tools such as gene clustering and relevance ne...