Quantifying Missing Heritability at Known GWAS Loci
Author(s) -
Alexander Gusev,
Gaurav Bhatia,
Noah Zaitlen,
Bjarni J. Vilhjálmsson,
Dorothée Diogo,
Eli A. Stahl,
Peter K. Gregersen,
Jane Worthington,
Lars Klareskog,
Soumya Raychaudhuri,
Robert M. Plenge,
Bogdan Paşaniuc,
Alkes L. Price
Publication year - 2013
Publication title -
plos genetics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.587
H-Index - 233
eISSN - 1553-7404
pISSN - 1553-7390
DOI - 10.1371/journal.pgen.1003993
Subject(s) - heritability , genome wide association study , single nucleotide polymorphism , biology , missing heritability problem , genetics , genetic association , allele , linkage disequilibrium , genotype , gene
Recent work has shown that much of the missing heritability of complex traits can be resolved by estimates of heritability explained by all genotyped SNPs. However, it is currently unknown how much heritability is missing due to poor tagging or additional causal variants at known GWAS loci. Here, we use variance components to quantify the heritability explained by all SNPs at known GWAS loci in nine diseases from WTCCC1 and WTCCC2. After accounting for expectation, we observed all SNPs at known GWAS loci to explainmore heritability than GWAS-associated SNPs on average ( ). For some diseases, this increase was individually significant:for Multiple Sclerosis (MS) ( ) andfor Crohn's Disease (CD) ( ); all analyses of autoimmune diseases excluded the well-studied MHC region. Additionally, we found that GWAS loci from other related traits also explained significant heritability. The union of all autoimmune disease loci explainedmore MS heritability than known MS SNPs ( ) andmore CD heritability than known CD SNPs ( ), with an analogous increase for all autoimmune diseases analyzed. We also observed significant increases in an analysis ofRheumatoid Arthritis (RA) samples typed on ImmunoChip, withmore heritability from all SNPs at GWAS loci ( ) andmore heritability from all autoimmune disease loci ( ) compared to known RA SNPs (including those identified in this cohort). Our methods adjust for LD between SNPs, which can bias standard estimates of heritability from SNPs even if all causal variants are typed. By comparing adjusted estimates, we hypothesize that the genome-wide distribution of causal variants is enriched for low-frequency alleles, but that causal variants at known GWAS loci are skewed towards common alleles. These findings have important ramifications for fine-mapping study design and our understanding of complex disease architecture.
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