SINGLE-INDEX MODULATED MULTIPLE TESTING
成果类型:
Article
署名作者:
Du, Lilun; Zhang, Chunming
署名单位:
University of Wisconsin System; University of Wisconsin Madison; Nankai University
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/14-AOS1222
发表日期:
2014
页码:
1262-1311
关键词:
false discovery rate
dna copy number
integrative analysis
prostate-cancer
microarray data
P-values
rates
POWER
expression
genes
摘要:
In the context of large-scale multiple testing, hypotheses are often accompanied with certain prior information. In this paper, we present a single-index modulated (SIM) multiple testing procedure, which maintains control of the false discovery rate while incorporating prior information, by assuming the availability of a bivariate p-value, (p(1), p(2)), for each hypothesis, where pi is a preliminary p-value from prior information and p(2) is the primary p-value for the ultimate analysis. To find the optimal rejection region for the bivariate p-value, we propose a criteria based on the ratio of probability density functions of (p(1), p(2)) under the true null and nonnull. This criteria in the bivariate normal setting further motivates us to project the bivariate p-value to a single-index, p(theta), for a wide range of directions theta. The true null distribution of p(theta) is estimated via parametric and nonparametric approaches, leading to two procedures for estimating and controlling the false discovery rate. To derive the optimal projection direction theta, we propose a new approach based on power comparison, which is further shown to be consistent under some mild conditions. Simulation evaluations indicate that the SIM multiple testing procedure improves the detection power significantly while controlling the false discovery rate. Analysis of a real dataset will be illustrated.