Abstract

Genome-wide association studies (GWAS) have provided valuable insights into the genetic basis of complex traits. However, they have explained relatively little trait heritability. Recently, we proposed a new analytical approach called regional heritability mapping (RHM) that captures more of the missing genetic variation. This method is applicable both to related and unrelated populations. Here, we demonstrate the power of RHM in comparison with single-SNP GWAS and gene-based association approaches under a wide range of scenarios with variable numbers of quantitative trait loci (QTL) with common and rare causal variants in a narrow genomic region. Simulations based on real genotype data were performed to assess power to capture QTL variance, and we demonstrate that RHM has greater power to detect rare variants and/or multiple alleles in a region than other approaches. In addition, we show that RHM can capture more accurately the QTL variance, when it is caused by multiple independent effects and/or rare variants. We applied RHM to analyze three biometrical eye traits for which single-SNP GWAS have been published or performed to evaluate the effectiveness of this method in real data analysis and detected some additional loci which were not detected by other GWAS methods. RHM has the potential to explain some of missing heritability by capturing variance caused by QTL with low MAF and multiple independent QTL in a region, not captured by other GWAS methods. RHM analyses can be implemented using the software REACTA (http://www.epcc.ed.ac.uk/projects-portfolio/reacta).

Highlights

  • Genome-wide association studies (GWAS) have provided valuable insights into the genetic basis of complex traits

  • THE POWER OF regional heritability mapping (RHM) AND SINGLE-SNP GWAS IN THE 100-SNP WINDOW In the low_info group, there was no significant replicate in all simulations, indicating that the power was low for both methods

  • For RHM, as the number of quantitative trait loci (QTL) increased, the power to detect QTL was almost constant in all simulated scenarios, except when the QTL had low minor allele frequency (MAF) and 0.05 QTL heritability

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Summary

Introduction

Genome-wide association studies (GWAS) have provided valuable insights into the genetic basis of complex traits. The heritability of human height is about 80% (Visscher et al, 2008), but the SNPs significantly associated with height explain only 10% of the phenotypic variance (Lango Allen et al, 2010). This has been called the “missing heritability” problem (Maher, 2008). Causal variants may have lower minor allele frequency (MAF) than genotyped SNPs if they are subject to purifying natural selection. A pressing need is analytical approaches adapted to capturing genetic variation due to causal variants with low MAF

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