RT Journal Article SR Electronic T1 Buffet-Style Expression Factor-Adjusted Discovery Increases the Yield of Robust Expression Quantitative Trait Loci JF bioRxiv FD Cold Spring Harbor Laboratory SP 028878 DO 10.1101/028878 A1 Peter Castaldi A1 Ma’en Obeidat A1 Eitan Halper-Stromberg A1 Andrew Lamb A1 Margaret Parker A1 Robert Chase A1 Vincent Carey A1 Ruth Tal-Singer A1 Edwin Silverman A1 Don Sin A1 Peter D Paré A1 Craig Hersh YR 2015 UL http://biorxiv.org/content/early/2015/10/11/028878.abstract AB Expression quantitative trait locus (eQTL) analysis relates genetic variation to gene expression, and it has been shown that power to detect eQTLs is substantially increased by adjustment for measures of expression variability derived from singular value decomposition-based procedures (referred to as expression factors, or EFs). A potential downside to this approach is that power will be reduced for eQTL that are correlated with one or more EFs, but these approaches are commonly used in human eQTL studies on the assumption that this risk is low for cis (i.e. local) eQTL associations. Using two independent blood eQTL datasets, we show that this assumption is incorrect and that, in fact, 10-25% of eQTL that are significant without adjustment for EFs are no longer detected after EF adjustment. In addition, the majority of these “lost” eQTLs replicate in independent data, indicating that they are not spurious associations. Thus, in the ideal case, EFs would be re-estimated for each eQTL association test, as has been suggested by others; however, this is computationally infeasible for large datasets with densely imputed genotype data. We propose an alternative, “buffet-style” approach in which a series of EF and non-EF eQTL analyses are performed and significant eQTL discoveries are collected across these analyses. We demonstrate that standard methods to control the false discovery rate perform similarly between the single EF and buffet-style approaches, and we provide biological support for eQTL discovered by this approach in terms of immune cell-type specific enhancer enrichment in Roadmap Epigenomics and ENCODE cell lines.Significance Statement: Genetic differences between individuals cause disease through their effects on the function of cells and tissues. One of the important biological changes affected by genetic differences is the expression of genes, which can be identified with expression quantitative trait locus (eQTL) analysis. Here we explore the basic methods for performing eQTL analysis, and we identify some underappreciated negative impacts of commonly applied methods, and propose a practical solution to improve the ability to identify genetic differences that affect gene expression levels, thereby improving the ability to understand the biological causes of many common diseases.