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首页> 外文期刊>Genome research >Detection of common single nucleotide polymorphisms synthesizing quantitative trait association of rarer causal variants.
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Detection of common single nucleotide polymorphisms synthesizing quantitative trait association of rarer causal variants.

机译:常见的单核苷酸多态性的检测合成了罕见的因果变异的数量性状关联。

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Genome-wide association (GWA) studies have identified hundreds of common (minor allele frequency >/=5%) single nucleotide polymorphisms (SNPs) associated with phenotype traits or diseases, yet causal variants accounting for the association signals have rarely been determined. A question then raised is whether a GWA signal represents an "indirect association" as a proxy of a strongly correlated causal variant with similar frequency, or a "synthetic association" of one or more rarer causal variants in linkage disequilibrium (D' approximately 1, but r(2) not large); answering the question generally requires extensive resequencing and association analysis. Instead, we propose to test statistically whether a quantitative trait (QT) association of an SNP represents a synthetic association or not by inspecting the QT distribution at each genotype, not requiring the causal variant(s) to be known. We devised two test statistics and assessed the power by mathematical analysis and simulation. Testing the heterogeneity of variance was powerful when low-frequency causal alleles are linked mostly to one SNP allele, while testing the skewness outperformed when the causal alleles are linked evenly to either of the SNP alleles. By testing a statistic combining these two in 5000 individuals, we could detect synthetic association of a GWA signal when causal alleles sum up to 3% in frequency. Such signal only partially explains the heritability contributed by the whole locus. The proposed test is useful for designing fine mapping after studying association of common SNPs exhaustively; we can prioritize which GWA signal and which individuals to be resequenced, and identify the causal variants efficiently.
机译:全基因组关联(GWA)研究已经确定了数百种与表型特征或疾病相关的常见(次要等位基因频率> / = 5%)单核苷酸多态性(SNP),但很少能确定导致关联信号的因果变体。然后提出的问题是,GWA信号是代表“间接关联”作为具有相似频率的强相关因果变体的代理,还是代表连锁不平衡中一个或多个罕见因果变体的“合成关联”(D'约为1,但r(2)不大);要回答这个问题,通常需要进行大量的重新排序和关联分析。相反,我们建议通过检查每个基因型的QT分布来统计检验SNP的数量性状(QT)关联是否代表合成关联,而无需了解因果变异。我们设计了两个测试统计数据,并通过数学分析和仿真评估了功效。当低频因果等位基因主要与一个SNP等位基因相关联时,方差异质性的测试非常有效,而当因果等位基因与任何一个SNP等位基因均等相关时,测试偏度的效果则优于后者。通过在5000个个体中测试将两者结合的统计数据,当因果等位基因的频率总计达到3%时,我们可以检测到GWA信号的合成关联。这样的信号仅部分解释了整个基因座所贡献的遗传力。在详尽研究了常见SNP的关联之后,提出的测试对于设计精细映射很有用。我们可以区分哪些GWA信号和哪些个体需要重新排序,并可以有效地识别因果变异。

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