Floating prioritized subset analysis: A powerful method to detect differentially expressed genes
Computational Statistics & Data Analysis
Causal inference with rare events in large-scale time-series data
IJCAI'13 Proceedings of the Twenty-Third international joint conference on Artificial Intelligence
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Summary: False discovery rate (FDR) methodologies are essential in the study of high-dimensional genomic and proteomic data. The R package ‘fdrtool’ facilitates such analyses by offering a comprehensive set of procedures for FDR estimation. Its distinctive features include: (i) many different types of test statistics are allowed as input data, such as P-values, z-scores, correlations and t-scores; (ii) simultaneously, both local FDR and tail area-based FDR values are estimated for all test statistics and (iii) empirical null models are fit where possible, thereby taking account of potential over-or underdispersion of the theoretical null. In addition, ‘fdrtool’ provides readily interpretable graphical output, and can be applied to very large scale (in the order of millions of hypotheses) multiple testing problems. Consequently, ‘fdrtool’ implements a flexible FDR estimation scheme that is unified across different test statistics and variants of FDR. Availability: The program is freely available from the Comprehensive R Archive Network ( http://cran.r-project.org/) under the terms of the GNU General Public License (version 3 or later). Contact: strimmer@uni-leipzig.de