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Genomic breeding value estimation using genetic markers, inferred ancestral haplotypes, and the genomic relationship matrix

机译:使用遗传标记,推断的祖先单倍型和基因组关系矩阵估算基因组育种价值

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摘要

With the introduction of new single nucleotide polymorphism (SNP) chips of various densities, more and more genotype data sets will include animals genotyped for only a subset of the SNP. Imputation techniques based on unobserved ancestral haplotypes may be used to infer missing genotypes. These ancestral haplotypes may also be used in the genomic prediction model, instead of using the SNP. This may increase the reliability of predictions because the ancestral haplotype may capture more linkage disequilibrium with quantitative trait loci than SNP. The aim of this paper was to study whether using unobserved ancestral haplotypes in a genomic prediction model would provide more reliable genomic predictions than using SNP, and to determine how many loci in the genomic prediction model would be redundant. Genotypes of 8,960 bulls and cows for 39,557 SNP were analyzed with a hidden Markov model to associate each individual at each locus to 2 ancestral haplotypes. The number of ancestral haplotypes per locus was fixed at 10, 15, or 20. Subsequently, a validation study was performed in which the phenotypes of 3,251 progeny-tested bulls for 16 traits were used in a genomic prediction model to predict the estimated breeding values of at least 753 validation bulls. The squared correlation between genomic prediction and deregressed daughter performance estimated breeding value, when averaged across traits, was slightly higher when 15 or 20 ancestral haplotypes per locus were used in the prediction model instead of the SNP genotypes, whereas the prediction model using a genomic relationship matrix gave the lowest squared correlations. The number of redundant loci [i.e., loci that had less than 18 jumps (0.1%) from one ancestral haplotype to another ancestral haplotype at the next locus], was 18,793 (48%), which means that only 20,764 loci would need to be included in the genomic prediction model. This provides opportunities for greatly decreasing computer requirements of genomic evaluations with very large numbers of markers.
机译:随着各种密度的新的单核苷酸多态性(SNP)芯片的引入,越来越多的基因型数据集将包括仅对SNP的一部分进行基因分型的动物。基于未观察到的祖先单倍型的插补技术可用于推断缺失的基因型。这些祖先单倍型也可以用于基因组预测模型中,而不是使用SNP。这可能会增加预测的可靠性,因为与SNP相比,祖先单倍型可以捕获更多具有定量性状位点的连锁不平衡。本文的目的是研究在基因组预测模型中使用未观察到的祖先单倍型是否会比使用SNP提供更可靠的基因组预测,并确定基因组预测模型中有多少个基因座是多余的。使用隐马尔可夫模型分析了39,557个SNP的8,960头公牛和母牛的基因型,以将每个位点的每个个体与2个祖先单倍型相关联。每个位点的祖先单倍型的数目固定为10、15或20。随后,进行了一项验证研究,其中在基因组预测模型中使用3,251个经过后代测试的公牛的16个性状的表型来预测估计的育种值至少753个验证公牛。当将每个性状的15或20个祖先单倍型用于预测模型而不是SNP基因型时,基因组预测与退化的子代性能估算的育种值之间的平方相关性略高,当每个位点使用15或20个祖先单倍型时矩阵给出了最低的平方相关。冗余基因座的数量(即,在下一个基因座从一个祖先单倍型到另一个祖先单倍型的跳变少于18个点(0.1%)的基因座)为18,793(48%),这意味着仅需要将20,764个基因座包括在基因组预测模型中。这为大大减少使用大量标记的基因组评估的计算机需求提供了机会。

著录项

  • 来源
    《Journal of dairy science》 |2011年第9期|p.4708-4714|共7页
  • 作者单位

    CRV, PO Box 454, 6800 ALArnhem, the Netherlands,Animal Breeding and Genomics Centre, Wageningen University, PO Box 338, 6700 AH Wageningen, the Netherlands;

    CRV, PO Box 454, 6800 ALArnhem, the Netherlands;

    Unit of Animal Genomics, Faculty of Veterinary Medicine and Centre for Biomedical Integrative Genoproteomics, University of Liege,B-4000 Liege, Belgium;

  • 收录信息 美国《科学引文索引》(SCI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    genomic prediction; haplotype; single nucleotide polymorphism; genomic relationship matrix;

    机译:基因组预测单倍型单核苷酸多态性基因组关系矩阵;
  • 入库时间 2022-08-17 23:24:41

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