Approximation of reliabilities for random-regression single-step genomic best linear unbiased predictor models

M. Bermann, I. Aguilar, A. A. Munera, J. Bauer, J. Šplíchal, D. Lourenco, I. Misztal
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引用次数: 0

Abstract

: Random-regression models (RRM) are used in national genetic evaluations for longitudinal traits. The outputs of RRM are an index based on random regression coefficients and its reliability. The reliabilities are obtained from the inverse of the coefficient matrix of mixed model equations (MME). The reliabilities must be approximated for large data sets because it is impossible to invert the MME. There is no extensive literature on methods to approximate the reliabilities of RRM when genomic information is included by single-step GBLUP. We developed an algorithm to approximate such reliabilities. Our method combines the reliability of the index without genomic information with the reliability of a GBLUP model in terms of effective record contributions. We tested our algorithm in the 3-lactation model for milk yield from the Czech Republic. The data had 30 million test-day records, 2.5 million animals in the pedigree, and 54,000 genotyped animals. The correlation between our approximation and the reliabilities obtained from the inversion of the MME was 0.98, and the slope and intercept of the regression were 0.91 and 0.02, respectively. The elapsed time to approximate the
随机回归单步基因组最佳线性无偏预测模型的可靠性近似值
:随机回归模型(RRM)用于纵向性状的国家遗传评估。随机回归模型的输出结果是基于随机回归系数的指数及其可靠性。可靠性是从混合模型方程(MME)系数矩阵的逆矩阵中获得的。由于无法反演 MME,因此必须对大型数据集的可靠性进行近似处理。目前还没有大量文献介绍在单步 GBLUP 包含基因组信息的情况下近似 RRM 信度的方法。我们开发了一种近似这种可靠性的算法。我们的方法将不包含基因组信息的指数可靠性与 GBLUP 模型在有效记录贡献方面的可靠性结合起来。我们在捷克共和国的三泌乳期产奶量模型中测试了我们的算法。该数据有 3000 万个测试日记录、250 万只血统动物和 54000 只基因分型动物。我们的近似值与 MME 反演得到的可靠度之间的相关性为 0.98,回归的斜率和截距分别为 0.91 和 0.02。逼近
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来源期刊
JDS communications
JDS communications Animal Science and Zoology
CiteScore
2.00
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