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Underestimated Effect Sizes in GWAS: Fundamental Limitations of Single SNP Analysis for Dichotomous Phenotypes

机译:在GWAS中被低估的效应大小:二分法表型的单SNP分析的基本局限性

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摘要

Complex diseases are often highly heritable. However, for many complex traits only a small proportion of the heritability can be explained by observed genetic variants in traditional genome-wide association (GWA) studies. Moreover, for some of those traits few significant SNPs have been identified. Single SNP association methods test for association at a single SNP, ignoring the effect of other SNPs. We show using a simple multi-locus odds model of complex disease that moderate to large effect sizes of causal variants may be estimated as relatively small effect sizes in single SNP association testing. This underestimation effect is most severe for diseases influenced by numerous risk variants. We relate the underestimation effect to the concept of non-collapsibility found in the statistics literature. As described, continuous phenotypes generated with linear genetic models are not affected by this underestimation effect. Since many GWA studies apply single SNP analysis to dichotomous phenotypes, previously reported results potentially underestimate true effect sizes, thereby impeding identification of true effect SNPs. Therefore, when a multi-locus model of disease risk is assumed, a multi SNP analysis may be more appropriate.
机译:复杂的疾病通常是高度遗传的。但是,对于许多复杂的性状,只有一小部分的遗传力可以通过在传统的全基因组关联(GWA)研究中观察到的遗传变异来解释。此外,对于其中一些特征,几乎没有发现明显的SNP。单个SNP关联方法会测试单个SNP的关联,而忽略其他SNP的影响。我们显示使用复杂疾病的简单多位点赔率模型,在单个SNP关联测试中,因果变异的中等到较大影响大小可能被估计为相对较小的影响大小。这种低估的影响对于受众多风险变量影响的疾病最为严重。我们将低估效应与统计文献中发现的非竞争性概念联系起来。如上所述,线性遗传模型产生的连续表型不受这种低估效应的影响。由于许多GWA研究将单SNP分析应用于二分型表型,因此先前报道的结果可能低估了真实效应的大小,从而阻碍了真实效应SNP的鉴定。因此,当采用疾病风险的多位点模型时,多SNP分析可能更合适。

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