Motivation: Statistical methods are used to test for the differential expression of genes in microarray experiments. The most widely used methods successfully test whether the true differential expression is different from zero, but give no assurance that the differences found are large enough to be biologically meaningful. Results: We present a method, t-tests relative to a threshold (TREAT), that allows researchers to test formally the hypothesis (with associated p-values) that the differential expression in a microarray experiment is greater than a given (biologically meaningful) threshold. We have evaluated the method using simulated data, a dataset from a quality control experiment for microarrays and data from a biological experiment ...
Abstract Background Microarray data analysts commonly...
[[abstract]]Current approaches to identifying differentially expressed genes are based either on the...
Motivation: The problems of analyzing dose effects on gene expres-sion are gaining attention in biom...
MOTIVATION: Statistical methods are used to test for the differential expression of genes in microar...
Abstract Background Because of the large volume of data and the intrinsic variation of data intensit...
Microarray data analysis typically consists in identifying a list of differentially expressed genes ...
Microarray data analysis typically consists in identifying a list of differentially expressed genes ...
BACKGROUND:Reproducibility is a fundamental requirement in scientific experiments. Some recent publi...
The methodological advancement in microarray data analysis on the basis of false discovery rate (FDR...
Abstract\ud \ud Background\ud Sustained research on th...
*Corresponding authors Gene expression signatures from microarray experiments promise to provide imp...
Abstract Background Sustained research on the problem of determining which genes are differentially ...
Motivation: Under two biologically different conditions, we are often interested in identifying diff...
Abstract Background Microarray data analysts commonly...
[[abstract]]Current approaches to identifying differentially expressed genes are based either on the...
Abstract Background Microarray data analysts commonly...
[[abstract]]Current approaches to identifying differentially expressed genes are based either on the...
Motivation: The problems of analyzing dose effects on gene expres-sion are gaining attention in biom...
MOTIVATION: Statistical methods are used to test for the differential expression of genes in microar...
Abstract Background Because of the large volume of data and the intrinsic variation of data intensit...
Microarray data analysis typically consists in identifying a list of differentially expressed genes ...
Microarray data analysis typically consists in identifying a list of differentially expressed genes ...
BACKGROUND:Reproducibility is a fundamental requirement in scientific experiments. Some recent publi...
The methodological advancement in microarray data analysis on the basis of false discovery rate (FDR...
Abstract\ud \ud Background\ud Sustained research on th...
*Corresponding authors Gene expression signatures from microarray experiments promise to provide imp...
Abstract Background Sustained research on the problem of determining which genes are differentially ...
Motivation: Under two biologically different conditions, we are often interested in identifying diff...
Abstract Background Microarray data analysts commonly...
[[abstract]]Current approaches to identifying differentially expressed genes are based either on the...
Abstract Background Microarray data analysts commonly...
[[abstract]]Current approaches to identifying differentially expressed genes are based either on the...
Motivation: The problems of analyzing dose effects on gene expres-sion are gaining attention in biom...