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Fine-Mapping Additive and Dominant SNP Effects Using Group-LASSO and Fractional Resample Model Averaging

机译:使用组LASSO和分数重采样模型求平均的精细映射加性和显性SNP效应

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Genomewide association studies (GWAS) sometimes identify loci at which both the number and identities of the underlying causal variants are ambiguous. In such cases, statistical methods that model effects of multiple single-nucleotide polymorphisms (SNPs) simultaneously can help disentangle the observed patterns of association and provide information about how those SNPs could be prioritized for follow-up studies. Current multi-SNP methods, however, tend to assume that SNP effects are well captured by additive genetics; yet when genetic dominance is present, this assumption translates to reduced power and faulty prioritizations. We describe a statistical procedure for prioritizing SNPs at GWAS loci that efficiently models both additive and dominance effects. Our method, LLARRMA-dawg, combines a group LASSO procedure for sparse modeling of multiple SNP effects with a resampling procedure based on fractional observation weights. It estimates for each SNP the robustness of association with the phenotype both to sampling variation and to competing explanations from other SNPs. In producing an SNP prioritization that best identifies underlying true signals, we show the following: our method easily outperforms a single-marker analysis; when additive-only signals are present, our joint model for additive and dominance is equivalent to or only slightly less powerful than modeling additive-only effects; and when dominance signals are present, even in combination with substantial additive effects, our joint model is unequivocally more powerful than a model assuming additivity. We also describe how performance can be improved through calibrated randomized penalization, and discuss how dominance in ungenotyped SNPs can be incorporated through either heterozygote dosage or multiple imputation.
机译:全基因组关联研究(GWAS)有时会确定潜在因果变体的数量和身份都不明确的基因座。在这种情况下,同时模拟多个单核苷酸多态性(SNP)效应的统计方法可以帮助弄清观察到的关联模式,并提供有关如何优先考虑这些SNP进行后续研究的信息。但是,当前的多SNP方法倾向于假定SNP效应可以通过加性遗传学很好地捕获。然而,当存在遗传优势时,这种假设会转化为降低的能力和错误的优先级。我们描述了一种在GWAS基因座上优先处理SNP的统计程序,该模型可以有效地模拟加性和优势效应。我们的方法LLARRMA-dawg将基于LASSO程序的多个SNP效果的稀疏建模与基于分数观测权重的重采样程序相结合。它为每个SNP估计了与表型相关联的鲁棒性,无论是抽样变异还是其他SNP的竞争性解释。在产生最能识别潜在真实信号的SNP优先排序时,我们显示以下内容:我们的方法很容易胜过单标记分析;当存在仅加性信号时,我们的加性和支配性联合模型等效于或仅比建模仅加性效果的功能小;当存在主导信号时,即使结合了实质性的加性效应,我们的联合模型无疑比假设可加性的模型更强大。我们还描述了如何通过校准的随机罚分可以改善性能,并讨论了如何通过杂合子剂量或多次插值结合非基因型SNP中的优势。

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