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首页> 外文期刊>Genetic epidemiology. >MaCH: using sequence and genotype data to estimate haplotypes and unobserved genotypes.
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MaCH: using sequence and genotype data to estimate haplotypes and unobserved genotypes.

机译:MaCH:使用序列和基因型数据估计单倍型和未观察到的基因型。

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摘要

Genome-wide association studies (GWAS) can identify common alleles that contribute to complex disease susceptibility. Despite the large number of SNPs assessed in each study, the effects of most common SNPs must be evaluated indirectly using either genotyped markers or haplotypes thereof as proxies. We have previously implemented a computationally efficient Markov Chain framework for genotype imputation and haplotyping in the freely available MaCH software package. The approach describes sampled chromosomes as mosaics of each other and uses available genotype and shotgun sequence data to estimate unobserved genotypes and haplotypes, together with useful measures of the quality of these estimates. Our approach is already widely used to facilitate comparison of results across studies as well as meta-analyses of GWAS. Here, we use simulations and experimental genotypes to evaluate its accuracy and utility, considering choices of genotyping panels, reference panel configurations, and designs where genotyping is replaced with shotgun sequencing. Importantly, we show that genotype imputation not only facilitates cross study analyses but also increases power of genetic association studies. We show that genotype imputation of common variants using HapMap haplotypes as a reference is very accurate using either genome-wide SNP data or smaller amounts of data typical in fine-mapping studies. Furthermore, we show the approach is applicable in a variety of populations. Finally, we illustrate how association analyses of unobserved variants will benefit from ongoing advances such as larger HapMap reference panels and whole genome shotgun sequencing technologies.
机译:全基因组关联研究(GWAS)可以识别导致复杂疾病易感性的常见等位基因。尽管在每项研究中评估了大量SNP,但必须使用基因型标记或其单倍型作为代理间接评估大多数常见SNP的作用。我们以前已经在可免费获得的MaCH软件包中实现了用于基因型插补和单倍型化的计算有效的马尔可夫链框架。该方法将采样的染色体描述为彼此的镶嵌体,并使用可用的基因型和shot弹枪序列数据来估计未观察到的基因型和单倍型,以及这些估计质量的有用度量。我们的方法已被广泛用于促进跨研究以及GWAS的荟萃分析的结果比较。在这里,我们使用模拟和实验基因型来评估其准确性和实用性,同时考虑基因分型面板的选择,参考面板配置以及用shot弹枪测序替代基因型的设计。重要的是,我们表明基因型估算不仅有助于交叉研究分析,而且还可以增强遗传关联研究的能力。我们显示使用HapMap单倍型作为参考的常见变异的基因型插补使用全基因组范围的SNP数据或精细映射研究中典型的少量数据是非常准确的。此外,我们证明了该方法适用于各种人群。最后,我们说明了未观察到的变异的关联分析如何从不断发展的进步中受益,例如更大的HapMap参考面板和全基因组shot弹枪测序技术。

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