Motivation: The decision to commit some or many false positives in practice rests with the investigator. Unfortunately, not all error control procedures perform the same. Our problem is to choose an error control procedure to determine a P-value threshold for identifying differentially expressed pathways in high-throughput gene expression studies. Pathway analysis involves fewer tests than differential gene expression analysis, on the order of a few hundred. We discuss and compare methods for error control for pathway analysis with gene expression data. Results: In consideration of the variability in test results, we find that the widely used Benjamini and Hochberg’s (BH) false discovery rate (FDR) analysis is less robust than alternative p...
Many exploratory microarray data analysis tools such as gene clustering and relevance networks rely ...
Background: Many tools used to analyze microarrays in different conditions have been described. Howe...
Many exploratory microarray data analysis tools such as gene clustering and relevance networks rely ...
Motivation: The decision to commit some or many false positives in practice rests with the investiga...
Motivation: The decision to commit some or many false positives in practice rests with the investiga...
All living organisms are made up of several thousand genes which are responsible for the control of ...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
The methodological advancement in microarray data analysis on the basis of false discovery rate (FDR...
The goal of many microarray studies is to identify genes that are differentially expressed between t...
Abstract Background Sustained research on the problem of determining which genes are differentially ...
Background: The genomewide pattern of changes in mRNA expression measured using DNA microarrays is t...
The development of microarray technology allows the simultaneous measurement of the expression of ma...
This article is available through the Brunel Open Access Publishing Fund. This is an Open Access art...
Gene expression data can provide a very rich source of information for elucidating the biological fu...
DNA microarray expression signatures are expected to provide new insights into patho- physiological ...
Many exploratory microarray data analysis tools such as gene clustering and relevance networks rely ...
Background: Many tools used to analyze microarrays in different conditions have been described. Howe...
Many exploratory microarray data analysis tools such as gene clustering and relevance networks rely ...
Motivation: The decision to commit some or many false positives in practice rests with the investiga...
Motivation: The decision to commit some or many false positives in practice rests with the investiga...
All living organisms are made up of several thousand genes which are responsible for the control of ...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
The methodological advancement in microarray data analysis on the basis of false discovery rate (FDR...
The goal of many microarray studies is to identify genes that are differentially expressed between t...
Abstract Background Sustained research on the problem of determining which genes are differentially ...
Background: The genomewide pattern of changes in mRNA expression measured using DNA microarrays is t...
The development of microarray technology allows the simultaneous measurement of the expression of ma...
This article is available through the Brunel Open Access Publishing Fund. This is an Open Access art...
Gene expression data can provide a very rich source of information for elucidating the biological fu...
DNA microarray expression signatures are expected to provide new insights into patho- physiological ...
Many exploratory microarray data analysis tools such as gene clustering and relevance networks rely ...
Background: Many tools used to analyze microarrays in different conditions have been described. Howe...
Many exploratory microarray data analysis tools such as gene clustering and relevance networks rely ...