Journal article

Robust hyperparameter estimation protects against hypervariable genes and improves power to detect differential expression

B Phipson, S Lee, IJ Majewski, WS Alexander, GK Smyth

Annals of Applied Statistics | INST MATHEMATICAL STATISTICS | Published : 2016

Abstract

One of the most common analysis tasks in genomic research is to identify genes that are differentially expressed (DE) between experimental conditions. Empirical Bayes (EB) statistical tests using moderated genewise variances have been very effective for this purpose, especially when the number of biological replicate samples is small. The EB procedures can, however, be heavily influenced by a small number of genes with very large or very small variances. This article improves the differential expression tests by robustifying the hyperparameter estimation procedure. The robust procedure has the effect of decreasing the informativeness of the prior distribution for outlier genes while increasi..

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Grants

Awarded by National Institute of General Medical Sciences


Funding Acknowledgements

Supported in part by the University of Melbourne (Ph.D. scholarship to BP), by the National Health and Medical Research Council (Fellowship 1058892, Program Grant 1054618 and the IRIISS) and by a Victorian State Government OIS grant.