School of Environment and Rural Science, University of New England, NSW 2351, Armidale, Australia.
J Anim Sci. 2024 Jan 3;102. doi: 10.1093/jas/skae038.
Random regression (RR) models are recommended as an alternative to multiple-trait (MT) models for better capturing the variance-covariance structure over a trajectory and hence more accurate genetic evaluation of traits that are repeatedly measured and genetically change gradually over time. However, a limited number of studies have been done to empirically compare RR over a MT model to determine how much extra benefit could be achieved from one method over another. We compared the prediction accuracy of RR and MT models for growth traits of Australian meat sheep measured from 60 to 525 d, using 102,579 weight records from 24,872 animals. Variance components and estimated breeding values (EBVs) estimated at specific ages were compared and validated with forward prediction. The accuracy of EBVs obtained from the MT model was 0.58, 0.51, 0.54, and 0.56 for weaning, postweaning, yearling, and hogget weight stages, respectively. RR model produced accuracy estimates of 0.56, 0.51, 0.54, and 0.54 for equivalent weight stages. Regression of adjusted phenotype on EBVs was very similar between the MT and the RR models (P > 0.05). Although the RR model did not significantly increase the accuracy of predicting future progeny performance, there are other benefits of the model such as no limit to the number of records per animal, estimation of EBVs for early and late growth, no need for age correction. Therefore, RR can be considered a more flexible method for the genetic evaluation of Australian sheep for early and late growth, and no need for age correction.
随机回归(RR)模型被推荐为多性状(MT)模型的替代方法,以更好地捕捉轨迹上的方差协方差结构,从而更准确地评估随时间逐渐重复测量和遗传变化的性状。然而,很少有研究对 RR 进行实证比较,以确定从一种方法中获得的额外好处。我们比较了 RR 和 MT 模型对澳大利亚肉用绵羊生长性状的预测准确性,这些性状在 60 至 525 日龄之间进行测量,使用了 24872 只动物的 102579 个体重记录。比较了特定年龄的方差分量和估计育种值(EBV),并进行了前向预测验证。MT 模型获得的 EBV 的准确性分别为断奶、断奶后、一岁和育肥阶段的体重的 0.58、0.51、0.54 和 0.56。RR 模型产生的等效体重阶段的准确性估计分别为 0.56、0.51、0.54 和 0.54。MT 和 RR 模型之间调整后的表型与 EBV 之间的回归非常相似(P > 0.05)。尽管 RR 模型并没有显著提高预测未来后代性能的准确性,但该模型还有其他好处,例如没有对每只动物记录数量的限制、对早期和晚期生长的 EBV 估计、不需要年龄校正。因此,RR 可以被认为是澳大利亚绵羊早期和晚期生长遗传评估的更灵活的方法,并且不需要年龄校正。