Roslin Institute and Royal (Dick) School of Veterinary Studies, University of Edinburgh Midlothian, UK ; National Livestock Breeding Center Fukushima, Japan.
Front Genet. 2013 Nov 19;4:232. doi: 10.3389/fgene.2013.00232. eCollection 2013.
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).
全基因组关联研究(GWAS)为复杂性状的遗传基础提供了有价值的见解。然而,它们只解释了相对较少的性状遗传性。最近,我们提出了一种新的分析方法,称为区域遗传性作图(RHM),可以捕获更多缺失的遗传变异。该方法既适用于相关人群,也适用于无关人群。在这里,我们在一个广泛的场景下,比较了 RHM 与单 SNP GWAS 和基于基因的关联方法的效能,这些场景具有不同数量的常见和罕见因果变异的数量性状基因座(QTL),并在一个狭窄的基因组区域内。基于真实基因型数据进行了模拟,以评估捕获 QTL 方差的能力,我们证明 RHM 比其他方法更有能力检测该区域中的稀有变体和/或多个等位基因。此外,我们表明 RHM 可以更准确地捕获由多个独立效应和/或稀有变体引起的 QTL 方差。我们应用 RHM 分析了三个生物计量眼性状,其中已经发表了单 SNP GWAS 或进行了 GWAS 分析,以评估该方法在真实数据分析中的有效性,并检测到了一些其他 GWAS 方法未检测到的额外位点。RHM 有可能通过捕获由低 MAF 和区域内多个独立 QTL 引起的 QTL 方差来解释部分缺失的遗传性,而其他 GWAS 方法则无法捕获这些方差。RHM 分析可以使用软件 REACTA(http://www.epcc.ed.ac.uk/projects-portfolio/reacta)来实现。