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Imputation Without Doing Imputation: A New Method for the Detection of Non-Genotyped Causal Variants

机译:不进行插补的插补:一种检测非基因型因果变量的新方法

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摘要

Genome-wide association studies allow detection of non-genotyped disease-causing variants through testing of nearby genotyped SNPs. This approach may fail when there are no genotyped SNPs in strong LD with the causal variant. Several genotyped SNPs in weak LD with the causal variant may, however, considered together, provide equivalent information. This observation motivates popular but computationally intensive approaches based on imputation or haplotyping. Here we present a new method and accompanying software designed for this scenario. Our approach proceeds by selecting, for each genotyped “anchor” SNP, a nearby genotyped “partner” SNP, chosen via a specific algorithm we have developed. These two SNPs are used as predictors in linear or logistic regression analysis to generate a final significance test. In simulations, our method captures much of the signal captured by imputation, while taking a fraction of the time and disc space, and generating a smaller number of false-positives. We apply our method to a case/control study of severe malaria genotyped using the Affymetrix 500K array. Previous analysis showed that fine-scale sequencing of a Gambian reference panel in the region of the known causal locus, followed by imputation, increased the signal of association to genome-wide significance levels. Our method also increases the signal of association from to . Our method thus, in some cases, eliminates the need for more complex methods such as sequencing and imputation, and provides a useful additional test that may be used to identify genetic regions of interest.
机译:全基因组关联研究允许通过测试附近的基因型SNP来检测非基因型致病变体。当强LD中没有因果变异的基因型SNP时,这种方法可能会失败。但是,将具有因果变异的弱LD中的几种基因型SNP一起考虑,可以提供相同的信息。这种观察激发了基于插补或单倍型的流行但计算量大的方法。在这里,我们介绍了针对这种情况设计的新方法和随附的软件。我们的方法是通过为每个基因型“ anchor” SNP选择附近的基因型“伙伴” SNP(通过我们开发的特定算法选择)来进行的。这两个SNP在线性或逻辑回归分析中用作预测因子,以生成最终的显着性检验。在仿真中,我们的方法捕获了许多通过插补捕获的信号,同时占用了一部分时间和磁盘空间,并生成了较少数量的假阳性。我们将我们的方法应用于使用Affymetrix 500K阵列进行基因分型的严重疟疾病例/对照研究。先前的分析表明,在已知因果基因座区域内对冈比亚参考面板进行精细测序,再进行归因,可以增加与全基因组显着性水平相关的信号。我们的方法还将关联信号从增加到。因此,在某些情况下,我们的方法消除了对更复杂方法(例如测序和插补)的需求,并提供了可用于识别目标遗传区域的有用附加测试。

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