| Literature DB >> 30799872 |
Yin Xia1, T Tony Cai2, Hongzhe Li3.
Abstract
Multivariate regression with high-dimensional covariates has many applications in genomic and genetic research, in which some covariates are expected to be associated with multiple responses. This paper considers joint testing for regression coefficients over multiple responses and develops simultaneous testing methods with false discovery rate control. The test statistic is based on inverse regression and bias-corrected group lasso estimates of the regression coefficients and is shown to have an asymptotic chi-squared null distribution. A row-wise multiple testing procedure is developed to identify the covariates associated with the responses. The procedure is shown to control the false discovery proportion and false discovery rate at a prespecified level asymptotically. Simulations demonstrate the gain in power, relative to entrywise testing, in detecting the covariates associated with the responses. The test is applied to an ovarian cancer dataset to identify the microRNA regulators that regulate protein expression.Entities:
Keywords: Bias-corrected group lasso; Error rate control; Multiple phenotypes; Row-wise multiple testing
Year: 2018 PMID: 30799872 PMCID: PMC6374004 DOI: 10.1093/biomet/asx085
Source DB: PubMed Journal: Biometrika ISSN: 0006-3444 Impact factor: 2.445