A Genome-Wide Association Study Identifies Protein Quantitative Trait Loci (pQTLs)

David Melzer(University of Exeter), John R. B. Perry(University of Exeter), Dena Hernández(National Institute on Aging), A Corsi(Agenzia Regionale di Sanità della Toscana), Kara Stevens(University of Exeter), Ian Rafferty(National Institute on Aging), Fulvio Lauretani(Agenzia Regionale di Sanità della Toscana), Anna Murray(University of Exeter), J. Raphael Gibbs(National Institute on Aging), Giuseppe Paolisso(University of Campania "Luigi Vanvitelli"), Sajjad Rafiq(University of Exeter), Javier Simón‐Sánchez(National Institute on Aging), Hana Lango Allen(University of Exeter), Sonja W. Scholz(National Institute on Aging), Michael N. Weedon(University of Exeter), Sampath Arepalli(National Institute on Aging), Neil Rice(University of Exeter), Nicole Washecka(National Institute on Aging), Alison Hurst(University of Exeter), Angela Britton(National Institute on Aging), William Henley(University of Plymouth), Joyce van de Leemput(National Institute on Aging), Rongling Li(University of Tennessee Health Science Center), Anne B. Newman(University of Pittsburgh), Greg Tranah(California Pacific Medical Center), Tamara Harris(National Institute on Aging), Vijay Panicker(University of Exeter), Colin Dayan(University of Bristol), Amanda J. Bennett(Oxford Centre for Diabetes, Endocrinology and Metabolism), Mark I. McCarthy(Centre for Human Genetics), Aimo Ruokonen(University of Oulu), Marjo‐Riitta Järvelin(Imperial College London), Jack M. Guralnik(National Institute on Aging), Stefania Bandinelli(Azienda Sanitaria di Firenze), Timothy M. Frayling(University of Exeter), Andrew Singleton(National Institute on Aging), Luigi Ferrucci(National Institute on Aging)
PLoS Genetics
May 8, 2008
Cited by 492Open Access
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Abstract

There is considerable evidence that human genetic variation influences gene expression. Genome-wide studies have revealed that mRNA levels are associated with genetic variation in or close to the gene coding for those mRNA transcripts - cis effects, and elsewhere in the genome - trans effects. The role of genetic variation in determining protein levels has not been systematically assessed. Using a genome-wide association approach we show that common genetic variation influences levels of clinically relevant proteins in human serum and plasma. We evaluated the role of 496,032 polymorphisms on levels of 42 proteins measured in 1200 fasting individuals from the population based InCHIANTI study. Proteins included insulin, several interleukins, adipokines, chemokines, and liver function markers that are implicated in many common diseases including metabolic, inflammatory, and infectious conditions. We identified eight Cis effects, including variants in or near the IL6R (p = 1.8x10(-57)), CCL4L1 (p = 3.9x10(-21)), IL18 (p = 6.8x10(-13)), LPA (p = 4.4x10(-10)), GGT1 (p = 1.5x10(-7)), SHBG (p = 3.1x10(-7)), CRP (p = 6.4x10(-6)) and IL1RN (p = 7.3x10(-6)) genes, all associated with their respective protein products with effect sizes ranging from 0.19 to 0.69 standard deviations per allele. Mechanisms implicated include altered rates of cleavage of bound to unbound soluble receptor (IL6R), altered secretion rates of different sized proteins (LPA), variation in gene copy number (CCL4L1) and altered transcription (GGT1). We identified one novel trans effect that was an association between ABO blood group and tumour necrosis factor alpha (TNF-alpha) levels (p = 6.8x10(-40)), but this finding was not present when TNF-alpha was measured using a different assay , or in a second study, suggesting an assay-specific association. Our results show that protein levels share some of the features of the genetics of gene expression. These include the presence of strong genetic effects in cis locations. The identification of protein quantitative trait loci (pQTLs) may be a powerful complementary method of improving our understanding of disease pathways.


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