| Literature DB >> 18424815 |
Roger Higdon1, Gerald van Belle, Eugene Kolker.
Abstract
MOTIVATION: The false discovery rate (FDR) has been widely adopted to address the multiple comparisons issue in high-throughput experiments such as microarray gene-expression studies. However, while the FDR is quite useful as an approach to limit false discoveries within a single experiment, like other multiple comparison corrections it may be an inappropriate way to compare results across experiments. This article uses several examples based on gene-expression data to demonstrate the potential misinterpretations that can arise from using FDR to compare across experiments. Researchers should be aware of these pitfalls and wary of using FDR to compare experimental results. FDR should be augmented with other measures such as p-values and expression ratios. It is worth including standard error and variance information for meta-analyses and, if possible, the raw data for re-analyses. This is especially important for high-throughput studies because data are often re-used for different objectives, including comparing common elements across many experiments. No single error rate or data summary may be appropriate for all of the different objectives.Entities:
Mesh:
Year: 2008 PMID: 18424815 DOI: 10.1093/bioinformatics/btn120
Source DB: PubMed Journal: Bioinformatics ISSN: 1367-4803 Impact factor: 6.937