Kemper Kathryn E, Daetwyler Hans D, Visscher Peter M, Goddard Michael E
Department of Agriculture and Food, University of Melbourne, Parkville, Victoria 3010, Australia.
Genet Res (Camb). 2012 Aug;94(4):191-203. doi: 10.1017/S0016672312000365.
Genome wide association studies (GWAS) have largely succeeded family-based linkage studies in livestock and human populations as the preferred method to map loci for complex or quantitative traits. However, the type of results produced by the two analyses contrast sharply due to differences in linkage disequilibrium (LD) imposed by the design of studies. In this paper, we demonstrate that association and linkage studies are in agreement provided that (i) the effects from both studies are estimated appropriately as random effects, (ii) all markers are fitted simultaneously and (iii) appropriate adjustments are made for the differences in LD between the study designs. We demonstrate with real data that linkage results can be predicted by the sum of association effects. Our association study captured most of the linkage information because we could predict the linkage results with moderate accuracy. We suggest that the ability of common single nucleotide polymorphism (SNP) to capture the genetic variance in a population will depend on the effective population size of the study organism. The results provide further evidence for many loci of small effect underlying complex traits. The analysis suggests a more informed method for GWAS is to fit statistical models where all SNPs are analysed simultaneously and as random effects.
全基因组关联研究(GWAS)在很大程度上已经取代了家畜和人类群体中基于家系的连锁研究,成为绘制复杂或数量性状基因座的首选方法。然而,由于研究设计所导致的连锁不平衡(LD)差异,这两种分析产生的结果类型形成了鲜明对比。在本文中,我们证明了只要满足以下条件,关联研究和连锁研究的结果就是一致的:(i)两项研究的效应均作为随机效应进行适当估计;(ii)所有标记同时进行拟合;(iii)针对研究设计之间LD的差异进行适当调整。我们通过实际数据表明,连锁结果可以通过关联效应的总和来预测。我们的关联研究捕获了大部分连锁信息,因为我们能够以适度的准确性预测连锁结果。我们认为,常见单核苷酸多态性(SNP)捕获群体遗传变异的能力将取决于研究生物体的有效群体大小。这些结果为复杂性状由许多小效应基因座控制提供了进一步的证据。分析表明,一种更明智的GWAS方法是拟合统计模型,其中所有SNP同时作为随机效应进行分析。