The Significance Analysis of Microarrays (SAM) software is a very practical tool for detecting significantly expressed genes and controlling the proportion of falsely detected genes, the False Discovery Rate (FDR). However, SAM tends to find biased estimates of the FDR. We show that the same method with the data replaced by rank scores does not have this tendency. We discuss the choice of the rank score function in view of the power of this nonparametric multiple testing procedure. Moreover, we introduce a testing formalization of the popular 2-fold rule. This testing procedure is more selective than the basic procedure and it enables the scientist to make a stronger statement about the selected genes than with the 2-fold rule. All procedur...
Abstract Background Microarray experiments examine th...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Dondrup M, Hueser AT, Mertens D, Goesmann A. An evaluation framework for statistical tests on microa...
The Significance Analysis of Microarrays (SAM) software is a very practical tool for detecting signi...
The Significance Analysis of Microarrays (SAM) is one of the most popular method [1] to iden-tify ge...
AbstractOne of the main objectives in the analysis of microarray experiments is the identification o...
Abstract Background The evaluation of statistical significance has become a critical process in iden...
Gene expression data from microarray experiments have been studied using several statistical models....
The methodological advancement in microarray data analysis on the basis of false discovery rate (FDR...
We have recently introduced a rank-based test statistic, RankProducts (RP), as a new non-parametric ...
Abstract—False discovery rate (FDR) control is widely practiced to correct for multiple comparisons ...
DNA microarrays have been used for the purpose of monitoring expression levels of thousands of genes...
One of multiple testing problems in drug finding experiments is the comparison of several treatments...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
A randomization procedure to evaluate the significance level and the false-discovery rate in complex...
Abstract Background Microarray experiments examine th...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Dondrup M, Hueser AT, Mertens D, Goesmann A. An evaluation framework for statistical tests on microa...
The Significance Analysis of Microarrays (SAM) software is a very practical tool for detecting signi...
The Significance Analysis of Microarrays (SAM) is one of the most popular method [1] to iden-tify ge...
AbstractOne of the main objectives in the analysis of microarray experiments is the identification o...
Abstract Background The evaluation of statistical significance has become a critical process in iden...
Gene expression data from microarray experiments have been studied using several statistical models....
The methodological advancement in microarray data analysis on the basis of false discovery rate (FDR...
We have recently introduced a rank-based test statistic, RankProducts (RP), as a new non-parametric ...
Abstract—False discovery rate (FDR) control is widely practiced to correct for multiple comparisons ...
DNA microarrays have been used for the purpose of monitoring expression levels of thousands of genes...
One of multiple testing problems in drug finding experiments is the comparison of several treatments...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
A randomization procedure to evaluate the significance level and the false-discovery rate in complex...
Abstract Background Microarray experiments examine th...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Dondrup M, Hueser AT, Mertens D, Goesmann A. An evaluation framework for statistical tests on microa...