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Insights from GWAS into the quantitative genetics of transcription in humans

Published online by Cambridge University Press:  23 March 2011

JINHEE KIM
Affiliation:
School of Biology, Georgia Institute of Technology, Atlanta GA 30332, USA
GREG GIBSON*
Affiliation:
School of Biology, Georgia Institute of Technology, Atlanta GA 30332, USA
*
*Corresponding author: School of Biology, Georgia Institute of Technology. Tel: (404) 835-2343. e-mail: greg.gibson@biology.gatech.edu
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Summary

Human gene expression profiles have emerged as an effective model system for the dissection of quantitative genetic traits. Peripheral blood and transformed lymphoblasts are particularly attractive for their ready availability and repeatability, respectively, and the advent of relatively inexpensive genotyping and microarray analysis technologies has facilitated genome-wide association for transcript abundance in numerous settings. Thousands of genes have been shown to harbour regulatory polymorphisms that have large local effects on transcription, explaining 20% or more of the variance in many cases, but the focus on such results obscures the reality that the vast majority of the genetic component of transcriptional variance remains to be ascertained. This mini-review surveys the inferences derived from genome-wide association studies (GWAS) for gene expression to date, and discusses some of the issues we face in finding the remainder of the heritability and understanding how environmental and genetic regulatory factors orchestrate the highly structured architecture of transcriptional variation.

Information

Type
Research Papers
Copyright
Copyright © Cambridge University Press 2011
Figure 0

Fig. 1. Allelic contributions to gene expression variation. (a) The allelic effect, estimated as the absolute value of the slope of the regression of genotype against transcript abundance, divided by the standard deviation of transcript abundance. Data are for the 450 most significant eSNPs in a study of healthy adults in Morocco described in Idaghdour et al. (2010). (b) The proportion of variance explained (R-squared) for the same eSNP effects.