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Quantifying the extent to which index event biases influence large genetic association studies.

Authors :
Yaghootkar H
Bancks MP
Jones SE
McDaid A
Beaumont R
Donnelly L
Wood AR
Campbell A
Tyrrell J
Hocking LJ
Tuke MA
Ruth KS
Pearson ER
Murray A
Freathy RM
Munroe PB
Hayward C
Palmer C
Weedon MN
Pankow JS
Frayling TM
Kutalik Z
Source :
Human molecular genetics [Hum Mol Genet] 2017 Mar 01; Vol. 26 (5), pp. 1018-1030.
Publication Year :
2017

Abstract

As genetic association studies increase in size to 100 000s of individuals, subtle biases may influence conclusions. One possible bias is 'index event bias' (IEB) that appears due to the stratification by, or enrichment for, disease status when testing associations between genetic variants and a disease-associated trait. We aimed to test the extent to which IEB influences some known trait associations in a range of study designs and provide a statistical framework for assessing future associations. Analyzing data from 113 203 non-diabetic UK Biobank participants, we observed three (near TCF7L2, CDKN2AB and CDKAL1) overestimated (body mass index (BMI) decreasing) and one (near MTNR1B) underestimated (BMI increasing) associations among 11 type 2 diabetes risk alleles (at P  <  0.05). IEB became even stronger when we tested a type 2 diabetes genetic risk score composed of these 11 variants (-0.010 standard deviations BMI per allele, P  =  5 × 10- 4), which was confirmed in four additional independent studies. Similar results emerged when examining the effect of blood pressure increasing alleles on BMI in normotensive UK Biobank samples. Furthermore, we demonstrated that, under realistic scenarios, common disease alleles would become associated at P <  5 × 10- 8 with disease-related traits through IEB alone, if disease prevalence in the sample differs appreciably from the background population prevalence. For example, some hypertension and type 2 diabetes alleles will be associated with BMI in sample sizes of  >500 000 if the prevalence of those diseases differs by >10% from the background population. In conclusion, IEB may result in false positive or negative genetic associations in very large studies stratified or strongly enriched for/against disease cases.<br /> (© The Author 2016. Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oup.com.)

Details

Language :
English
ISSN :
1460-2083
Volume :
26
Issue :
5
Database :
MEDLINE
Journal :
Human molecular genetics
Publication Type :
Academic Journal
Accession number :
28040731
Full Text :
https://doi.org/10.1093/hmg/ddw433