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Strategies for single nucleotide polymorphism (SNP) genotyping to enhance genotype imputation in Gyr (Bos indicus) dairy cattle: Comparison of commercially available SNP chips

机译:单核苷酸多态性(SNP)基因分型的策略,以增强Gyr(印度s)奶牛的基因型估算:比较市售SNP芯片

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摘要

Genotype imputation is widely used as a cost-effective strategy in genomic evaluation of cattle. Key determinants of imputation accuracies, such as linkage disequilibrium patterns, marker densities, and ascertainment bias, differ between Bos indicus and Bos taurus breeds. Consequently, there is a need to investigate effectiveness of genotype imputation in indicine breeds. Thus, the objective of the study was to investigate strategies and factors affecting the accuracy of genotype imputation in Gyr (Bos indicus) dairy cattle. Four imputation scenarios were studied using 471 sires and 1,644 dams genotyped on Illumina BovineHD (HD-777K; San Diego, CA) and BovineSNP50 (50K) chips, respectively. Scenarios were based on which reference high-density single nucleotide polymorphism (SNP) panel (HDP) should be adopted [HD-777K, 50K, and GeneSeek GGP-75Ki (Lincoln, NE)]. Depending on the scenario, validation animals had their genotypes masked for one of the lower-density panels: Illumina (3K. 7K, and 50K) and GeneSeek (SGGP-20Ki and GGP-75Ki). We randomly selected 171 sires as reference and 300 as validation for all the scenarios. Additionally, all sires were used as reference and the 1,644 dams were imputed for validation. Genotypes of 98 individuals with 4 and more offspring were completely masked and imputed. Imputation algorithms FImpute and Beagle v3.3 and v4 were used. Imputation accuracies were measured using the correlation and allelic correct rate. Flmpute resulted in highest accuracies, whereas Beagle 3.3 gave the least-accurate imputations. Accuracies evaluated as correlation (allelic correct rate) ranged from 0.910 (0.942) to 0.961 (0.974) using 50K as HDP and with 3K (7K) as low-density panels. With GGP-75Ki as HDP, accuracies were moderate for 3K, 7K, and 50K, but high for SGGP-20Ki. The use of HD-777K as HDP resulted in accuracies of 0.888 (3K), 0.941 (7K), 0.980 (SGGP-20Ki), 0.982 (50K), and 0.993 (GGP-75Ki). Ungenotyped individuals were imputed with an average accuracy of 0.970. The average top 5 kinship coefficients between reference and imputed individuals was a strong predictor of imputation accuracy. Flmpute was faster and used less memory than Beagle v4. Beagle v4 outperformed Beagle v3.3 in accuracy and speed of computation. A genotyping strategy that uses the HD-777K SNP chip as a reference panel and SGGP-20Ki as the lower-density SNP panel should be adopted as accuracy was high and similar to that of the 50K. However, the effect of using imputed HD-777K genotypes from the SGGP-20Ki on genomic evaluation is yet to be studied.
机译:基因型估算被广泛用作牛基因组评估中的一种经济高效的策略。插补精度的关键决定因素,例如连锁不平衡模式,标记密度和确定性偏倚,在Bos indicus和Bos taurus品种之间有所不同。因此,有必要研究标记品种中基因型插补的有效性。因此,本研究的目的是研究影响吉尔(印度s)奶牛基因型估算准确性的策略和因素。使用在Illumina BovineHD(HD-777K; San Diego,CA)和BovineSNP50(50K)芯片上进行基因分型的471个父本和1,644个大坝对四种插补方案进行了研究。方案基于应采用参考高密度单核苷酸多态性(SNP)面板(HDP)的情况[HD-777K,50K和GeneSeek GGP-75Ki(林肯,NE)]。根据情况,验证动物的基因型被低密度面板之一掩盖:Illumina(3K,7K和50K)和GeneSeek(SGGP-20Ki和GGP-75Ki)。对于所有场景,我们随机选择171个父本作为参考,并选择300个作为验证。此外,所有父系均用作参考,并估算了1,644个水坝以进行验证。 98个具有4个或更多后代的个体的基因型被完全掩盖和估算。使用归类算法FImpute和Beagle v3.3和v4。使用相关性和等位基因正确率测量插补准确性。 Flmpute的精度最高,而Beagle 3.3的精度最低。使用50K作为HDP和3K(7K)作为低密度面板时,相关性(等位基因正确率)的评估准确度在0.910(0.942)至0.961(0.974)之间。使用GGP-75Ki作为HDP时,3K,7K和50K的精度适中,而SGGP-20Ki的精度较高。将HD-777K用作HDP可产生0.888(3K),0.941(7K),0.980(SGGP-20Ki),0.982(50K)和0.993(GGP-75Ki)的精度。非基因分型个体的平均准确度为0.970。参考个体和估算个体之间的平均前5个亲属系数是估算准确性的有力预测指标。与Beagle v4相比,Flmpute更快并且使用的内存更少。 Beagle v4在计算准确性和速度上均优于Beagle v3.3。应采用以HD-777K SNP芯片为参考面板,以SGGP-20Ki作为低密度SNP面板的基因分型策略,因为它的准确性很高,与50K相似。然而,使用来自SGGP-20Ki的估算的HD-777K基因型对基因组评估的影响尚待研究。

著录项

  • 来源
    《Journal of dairy science》 |2015年第7期|4969-4989|共21页
  • 作者单位

    University of Natural Resources and Life Sciences, Department of Sustainable Agricultural Systems, Gregor-Mendel 33, A-1180, Vienna, Austria;

    Faculdade de Ciencias Agraria e Veterinarias, Universidade Estadual Paulista (UNESP), SP, 148841900, Brazil;

    Faculdade de Ciencias Agraria e Veterinarias, Universidade Estadual Paulista (UNESP), SP, 148841900, Brazil;

    Faculdade de Ciencias Agraria e Veterinarias, Universidade Estadual Paulista (UNESP), SP, 148841900, Brazil;

    Faculdade de Ciencias Agraria e Veterinarias, Universidade Estadual Paulista (UNESP), SP, 148841900, Brazil;

    University of Natural Resources and Life Sciences, Department of Sustainable Agricultural Systems, Gregor-Mendel 33, A-1180, Vienna, Austria;

    Faculdade de Medicina Veterinaria de Aracatuba, Universidade Estadual Paulista (UNESP), Aracatuba, SP, 16015-050, Brazil;

    University of Natural Resources and Life Sciences, Department of Sustainable Agricultural Systems, Gregor-Mendel 33, A-1180, Vienna, Austria;

    Empresa Brasileira de Pesquisa Agropecuaria, Embrapa Gado de Leite, Juiz de Fora, MG, 36038-330, Brazil;

  • 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

    imputation; Gyr; Beagle; Flmpute;

    机译:归责吉尔;小猎犬长笛;
  • 入库时间 2022-08-17 23:23:41

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