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Joint genotype- and ancestry-based genome-wide association studies in admixed populations

机译:链接基因型和祖先的基于血统基因组关联研究

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In genome-wide association studies (GWAS) genetic loci that influence complex traits are localized by inspecting associations between genotypes of genetic markers and the values of the trait of interest. On the other hand, admixture mapping, which is performed in case of populations consisting of a recent mix of two ancestral groups, relies on the ancestry information at each locus (locus-specific ancestry). Recently it has been proposed to jointly model genotype and locus-specific ancestry within the framework of single marker tests. Here, we extend this approach for population-based GWAS in the direction of multimarker models. A modified version of the Bayesian information criterion is developed for building a multilocus model that accounts for the differential correlation structure due to linkage disequilibrium (LD) and admixture LD. Simulation studies and a real data example illustrate the advantages of this new approach compared to single-marker analysis or modern model selection strategies based on separately analyzing genotype and ancestry data, as well as to single-marker analysis combining genotypic and ancestry information. Depending on the signal strength, our procedure automatically chooses whether genotypic or locus-specific ancestry markers are added to the model. This results in a good compromise between the power to detect causal mutations and the precision of their localization. The proposed method has been implemented in R and is available at http://www.math.uni.wroc.pl/similar to mbogdan/admixtures/.
机译:在基因组 - 宽协会研究(GWAS)中,影响复杂性状的遗传基因座通过检查遗传标记的基因型与感兴趣的特征的价值之间的关联而定位。另一方面,在由最近两个祖先组组成的群体中进行的混合映射,依赖于每个基因座(特定于轨迹特定的祖先)的祖先信息。最近,已经提出了在单一标记试验框架内共同模拟基因型和特定于轨迹的祖先。在这里,我们在多星形模型方向上扩展了基于人口的GWA方法。开发了一种修改的贝叶斯信息标准的版本,用于构建由于链接不平衡(LD)和混合物LD而占差分相关结构的多层模型。仿真研究和实际数据示例说明了与单一标记分析或现代模型选择策略相比,这种新方法的优势基于单独分析基因型和祖先数据,以及组合基因型和祖先信息的单标记分析。根据信号强度,我们的程序自动选择基因型或特定于基因座的祖先标记是否已添加到模型中。这导致能够检测因果突变和定位精度之间的良好折衷。该方法已在R中实现,可在http://www.math.uni.wroc.pl/imilarer到mbogdan / admixturs。

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