Natural Resources Institute Finland, Green Technology, Biometrical Genetics, 31600 Jokioinen, Finland.
Department of Animal Breeding and Genetics, Swedish University of Agricultural Sciences, 75007 Uppsala, Sweden.
J Dairy Sci. 2018 Mar;101(3):2187-2198. doi: 10.3168/jds.2017-13255. Epub 2017 Dec 28.
Experiences from international sire evaluation indicate that the multiple-trait across-country evaluation method is sensitive to changes in genetic variance over time. Top bulls from birth year classes with inflated genetic variance will benefit, hampering reliable ranking of bulls. However, none of the methods available today enable countries to validate their national evaluation models for heterogeneity of genetic variance. We describe a new validation method to fill this gap comprising the following steps: estimating within-year genetic variances using Mendelian sampling and its prediction error variance, fitting a weighted linear regression between the estimates and the years under study, identifying possible outliers, and defining a 95% empirical confidence interval for a possible trend in the estimates. We tested the specificity and sensitivity of the proposed validation method with simulated data using a real data structure. Moderate (M) and small (S) size populations were simulated under 3 scenarios: a control with homogeneous variance and 2 scenarios with yearly increases in phenotypic variance of 2 and 10%, respectively. Results showed that the new method was able to estimate genetic variance accurately enough to detect bias in genetic variance. Under the control scenario, the trend in genetic variance was practically zero in setting M. Testing cows with an average birth year class size of more than 43,000 in setting M showed that tolerance values are needed for both the trend and the outlier tests to detect only cases with a practical effect in larger data sets. Regardless of the magnitude (yearly increases in phenotypic variance of 2 or 10%) of the generated trend, it deviated statistically significantly from zero in all data replicates for both cows and bulls in setting M. In setting S with a mean of 27 bulls in a year class, the sampling error and thus the probability of a false-positive result clearly increased. Still, overall estimated genetic variance was close to the parametric value. Only rather strong trends in genetic variance deviated statistically significantly from zero in setting S. Results also showed that the new method was sensitive to the quality of the approximated reliabilities of breeding values used in calculating the prediction error variance. Thus, we recommend that only animals with a reliability of Mendelian sampling higher than 0.1 be included in the test and that low heritability traits be analyzed using bull data sets only.
国际种公牛评估经验表明,多性状跨国评估方法对遗传方差随时间的变化很敏感。遗传方差膨胀的出生年份组中的顶级公牛将受益,从而阻碍了对公牛的可靠排名。然而,目前尚无方法可使各国验证其国家遗传方差异质性评估模型。我们描述了一种新的验证方法来填补这一空白,包括以下步骤:使用孟德尔抽样及其预测误差方差来估计年内遗传方差,拟合估计值与研究年份之间的加权线性回归,识别可能的异常值,并定义估计值可能趋势的 95%经验置信区间。我们使用真实数据结构的模拟数据测试了所提出的验证方法的特异性和敏感性。在 3 种情况下模拟了中等(M)和小(S)规模群体:具有同质方差的对照以及分别具有表型方差每年增加 2%和 10%的 2 种情况。结果表明,该新方法能够准确估计遗传方差,足以检测遗传方差的偏差。在对照情况下,M 中遗传方差的趋势实际上为零。在 M 中测试具有平均出生年份类大小超过 43000 头的母牛的结果表明,趋势和异常值检验都需要容忍值,以仅在更大的数据集检测到具有实际效果的情况。无论生成趋势的幅度(表型方差每年增加 2%或 10%)如何,M 中的所有数据复制中,趋势都在统计上明显偏离零。在 M 中,每年平均有 27 头公牛的情况下,采样误差,从而假阳性结果的概率明显增加。尽管如此,总体估计遗传方差仍接近参数值。只有遗传方差的相当大的趋势在 S 中在统计上明显偏离零。结果还表明,该新方法对用于计算预测误差方差的育种值近似可靠性的质量很敏感。因此,我们建议仅将孟德尔抽样可靠性高于 0.1 的动物纳入测试,并且仅使用公牛数据集分析低遗传力性状。