TY - JOUR
T1 - An evaluation of different meta-analysis approaches in the presence of allelic heterogeneity
AU - Asimit, Jennifer
AU - Day-Williams, Aaron
AU - Zgaga, Lina
AU - Rudan, Igor
AU - Boraska, Vesna
AU - Zeggini, Eleftheria
N1 - Funding Information:
EZ, JA and ADW are supported by the Wellcome Trust (098051).
PY - 2012/6
Y1 - 2012/6
N2 - Meta-analysis has proven a useful tool in genetic association studies. Allelic heterogeneity can arise from ethnic background differences across populations being meta-analyzed (for example, in search of common frequency variants through genome-wide association studies), and through the presence of multiple low frequency and rare associated variants in the same functional unit of interest (for example, within a gene or a regulatory region). The latter challenge will be increasingly relevant in whole-genome and whole-exome sequencing studies investigating association with complex traits. Here, we evaluate the performance of different approaches to meta-analysis in the presence of allelic heterogeneity. We simulate allelic heterogeneity scenarios in three populations and examine the performance of current approaches to the analysis of these data. We show that current approaches can detect only a small fraction of common frequency causal variants. We also find that for low-frequency variants with large effects (odds ratios 2-3), single-point tests have high power, but also high false-positive rates. P-value based meta-analysis of summary results from allele-matching locus-wide tests outperforms collapsing approaches. We conclude that current strategies for the combination of genetic association data in the presence of allelic heterogeneity are insufficiently powered.
AB - Meta-analysis has proven a useful tool in genetic association studies. Allelic heterogeneity can arise from ethnic background differences across populations being meta-analyzed (for example, in search of common frequency variants through genome-wide association studies), and through the presence of multiple low frequency and rare associated variants in the same functional unit of interest (for example, within a gene or a regulatory region). The latter challenge will be increasingly relevant in whole-genome and whole-exome sequencing studies investigating association with complex traits. Here, we evaluate the performance of different approaches to meta-analysis in the presence of allelic heterogeneity. We simulate allelic heterogeneity scenarios in three populations and examine the performance of current approaches to the analysis of these data. We show that current approaches can detect only a small fraction of common frequency causal variants. We also find that for low-frequency variants with large effects (odds ratios 2-3), single-point tests have high power, but also high false-positive rates. P-value based meta-analysis of summary results from allele-matching locus-wide tests outperforms collapsing approaches. We conclude that current strategies for the combination of genetic association data in the presence of allelic heterogeneity are insufficiently powered.
KW - Genetic association
KW - multiple rare variants
KW - trans-ethnic mapping
UR - http://www.scopus.com/inward/record.url?scp=84861195544&partnerID=8YFLogxK
U2 - 10.1038/ejhg.2011.274
DO - 10.1038/ejhg.2011.274
M3 - Article
C2 - 22293689
AN - SCOPUS:84861195544
SN - 1018-4813
VL - 20
SP - 709
EP - 712
JO - European Journal of Human Genetics
JF - European Journal of Human Genetics
IS - 6
ER -