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Fast and robust association tests for untyped SNPs in case-control studies.

机译:病例对照研究中针对未分型SNP的快速而强大的关联测试。

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Genome-wide association studies (GWASs) aim to genotype enough single nucleotide polymorphisms (SNPs) to effectively capture common genetic variants across the genome. Even though the number of SNPs genotyped in such studies can exceed a million, there is still interest in testing association with SNPs that were not genotyped in the study sample. Analyses of such untyped SNPs can assist in signal localization, permit cross-platform integration of samples from separate studies, and can improve power - especially for rarer SNPs. External information on a larger collection of SNPs from an appropriate reference panel, comprising both SNPs typed in the sample and the untyped SNPs we wish to test for association, is necessary for an untyped variant analysis to proceed. Linkage disequilibrium patterns observed in the reference panel are then used to infer the likely genotype at the untyped SNPs in the study sample. We propose here a novel statistical approach for testing untyped SNPs in case-control GWAS, based on an efficient score function derived from a prospective likelihood, that automatically accounts for the variability in the process of estimating the untyped variant. Computationally efficient methods of phasing can be used without affecting the validity of the test, and simple measures of haplotype sharing can be used to infer genotypes at the untyped SNPs, making our approach computationally much faster than existing approaches for untyped analysis. At the same time, we show, using simulated data, that our approach often has performance nearly equivalent to hidden Markov methods of untyped analysis. The software package 'untyped' is available to implement our approach.
机译:全基因组关联研究(GWAS)旨在对足够的单核苷酸多态性(SNP)进行基因分型,以有效捕获整个基因组中的常见遗传变异。即使在此类研究中进行基因分型的SNP数量可以超过一百万,但仍然有兴趣测试与研究样本中未进行基因分型的SNP的关联。对此类未分型SNP的分析可以帮助进行信号定位,允许跨平台整合来自不同研究的样品,并可以提高功效-尤其是对于稀有SNP。要进行未分类的变异分析,需要从适当的参考面板中获取更多有关SNP的外部信息,包括样本中输入的SNP和我们希望测试关联的未分类SNP。然后使用参考面板中观察到的连锁不平衡模式推断研究样品中未分型SNP的可能基因型。我们在此提出一种新颖的统计方法,用于基于病例可能性GWAS中的有效分值函数来测试病例对照GWAS中的未分型SNP,该评分函数可自动考虑估计无分型变体过程中的变异性。可以使用计算上有效的定相方法,而不会影响测试的有效性,并且可以使用单倍型共享的简单度量来推断未分型SNP处的基因型,这使得我们的方法在计算上比现有的未分型分析方法快得多。同时,我们使用模拟数据表明,我们的方法通常具有几乎等同于非类型化分析的隐马尔可夫方法的性能。可使用“无类型”软件包来实施我们的方法。

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