Title of article :
Evaluation of false discovery rate and power via sample size in microarray studies
Author/Authors :
Xian-Jie Song، نويسنده , , Herman W. Raadsma&Peter C. Thomson، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Microarray studies are now common for human, agricultural plant and animal studies. False discovery rate
(FDR) is widely used in the analysis of large-scale microarray data to account for problems associated
with multiple testing. A well-designed microarray study should have adequate statistical power to detect
the differentially expressed (DE) genes, while keeping the FDR acceptably low. In this paper, we used a
mixture model of expression responses involving DE genes and non-DE genes to analyse theoretical FDR
and power for simple scenarios where it is assumed that each gene has equal error variance and the gene
effects are independent. A simulation study was used to evaluate the empirical FDR and power for more
complex scenarios with unequal error variance and gene dependence. Based on this approach, we present
a general guide for sample size requirement at the experimental design stage for prospective microarray
studies. This paper presented an approach to explicitly connect the sample size with FDR and power.
While the methods have been developed in the context of one-sample microarray studies, they are readily
applicable to two-sample, and could be adapted to multiple-sample studies.
Keywords :
Microarray , Power , False discovery rate , Multiple testing , Mixture model
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS