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Admixture mapping of growth related traits in F_2 mice dataset using ancestry informative markers

机译:使用祖先信息性标记物对F_2小鼠数据集中的生长相关性状进行混合作图

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Most of the associated single nucleotide polymorphisms (SNPs) for genome wide association studies (GWAS) explain very little proportion of phenotypic variance in outbred populations. One reason is; large number of markers raises the problem of multiple hypothesis testing correction using conservative statistical tests in single marker models. Admixture mapping could be used as alternative model to detect the genes associated with quantitative traits by less number of ancestry informative markers. Ancestral genotypes of founder populations were available for the F_2 mice dataset for growth related traits. The objectives of this study were (1) to detect genomic signals by admixture mapping for growth related traits by ancestry informative markers and ancestral genotypes (2) to detect genomic signals for growth related traits by Bayes C(π) model and compare results with those obtained by use of admixture mapping. Bayes C(π) model detected more SNPs that has high ancestry informative markers. But due to stringent significance tests and small SNPs effects admixture model did not detect the same SNPs in Bayes C(π). As was expected higher ancestral informative markers lead to higher Z values in admixture model with a little variation. Admixture model could incorporate and use ancestral genomic information.
机译:用于全基因组关联研究(GWAS)的大多数相关的单核苷酸多态性(SNP)解释了近亲群体中很少的表型变异比例。原因之一是;大量标记提出了使用单个标记模型中的保守统计检验进行多重假设检验校正的问题。混合作图可以用作通过较少数量的祖先信息标记物检测与数量性状相关的基因的替代模型。建立者群体的祖先基因型可用于生长相关性状的F_2小鼠数据集。这项研究的目的是(1)通过祖先信息标记和祖先基因型的混合映射来检测生长相关性状的基因组信号(2)通过贝叶斯C(π)模型检测与生长相关性状的基因组信号并将结果与​​那些进行比较通过使用混合映射获得。 Bayes C(π)模型检测到更多具有高祖先信息标记的SNP。但是由于严格的显着性检验和小的SNP效应,混合模型在Bayes C(π)中未检测到相同的SNP。如预期的那样,较高的祖先信息标记在混合模型中导致较高的Z值,且变化很小。外加剂模型可以合并和使用祖先基因组信息。

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