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Use of Repeated Group Measurements with Drop Out Animals for Variance Component Estimation and Genetic Evaluation: A Simulation Study

机译:重复组测量与辍学动物的方差成分估计和遗传评估:模拟研究。

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摘要

The efficiency of feed utilization plays an important role in animal breeding. However, measuring feed intake (FI) is costly on an individual basis under practical conditions. Using group measurements to model FI could be practically feasible and cost-effective. The objectives of this study were to develop a random regression model based on repeated group measurements with consideration of missing phenotypes caused by drop out animals. Focus is on variance components (VC) estimation and genetic evaluation, and to investigate the effect of group composition on VC estimation and genetic evaluation using simulated datasets. Data were simulated based on individual FI in a pig population. Each individual had measurement on FI at 6 different time points, reflecting 6 different weeks during the test period. The simulated phenotypes consisted of additive genetic, permanent environment, and random residual effects. Additive genetic and permanent environmental effects were both simulated and modeled by first order Legendre polynomials. Three grouping scenarios based on genetic relationships among the group members were investigated: (1) medium within and across pen genetic relationship; (2) high within group relationship; (3) low within group relationship. To investigate the effect of the drop out animals during test period, a proportion (15%) of animals with individual phenotypes was set as the drop out animals, and two drop out scenarios within each grouping scenario were assessed: (1) animals were randomly dropped out; (2) animals with lower phenotypes were dropped out based on the ranking at each time point. The results show that using group measurements yielded similar VCs estimates but with larger SDs compared with the corresponding scenario of using individual measurements. Compared to scenarios without drop out, similar VC estimates were observed when animals were dropped out randomly, whereas reduced VC estimates were observed when animals were dropped out by the ranking of phenotypes. Different grouping scenarios produced similar VC estimates. Compared to scenarios without drop out, there were no loss of accuracies of genetic evaluation for drop out scenarios. However, dropping out animals by the ranking of phenotypes produced larger bias of estimated breeding values compared to the scenario without dropped out animals and scenario of dropping out animals by random. In conclusion, with an optimized group structure, the developed model can properly handle group measurements with drop out animals, and can achieve comparable accuracy of genetic evaluation for traits measured at the group level.
机译:饲料利用效率在动物育种中起着重要作用。但是,在实际条件下,单独测量饲料摄入量(FI)的成本很高。使用组度量来建模FI可能是切实可行的且具有成本效益。这项研究的目的是在重复组测量的基础上开发一个随机回归模型,同时考虑到由辍学动物引起的表型缺失。重点是方差成分(VC)估计和遗传评估,并使用模拟数据集研究群体组成对VC估计和遗传评估的影响。基于猪群中的单个FI模拟数据。每个人在6个不同的时间点进行FI的测量,反映了测试期间6个不同的星期。模拟的表型包括加成遗传,永久环境和随机残留效应。一阶Legendre多项式对可加性遗传效应和永久性环境效应进行了模拟和建模。根据小组成员之间的遗传关系,对三种分组情况进行了研究:(1)笔遗传关系之内和之间的媒介; (2)团内关系高; (3)团内关系低。为了研究测试期间辍学动物的影响,将具有个体表型的动物比例(15%)设置为辍学动物,并对每个分组场景中的两个辍学场景进行了评估:(1)将动物随机分组退学(2)根据每个时间点的排名将具有较低表型的动物剔除。结果表明,与使用单独测量的相应方案相比,使用组测量得出的VC估算值相似,但SD更大。与没有退出的情况相比,当随机丢弃动物时观察到相似的VC估计值,而通过表型排序将动物丢弃时观察到的VC估计值降低。不同的分组方案产生了相似的VC估计。与没有退出的情况相比,对于退出的情况,遗传评估的准确性没有损失。但是,与没有辍学动物的情况和随机丢弃动物的情况相比,通过对表型的排名来剔除动物会产生更大的估计育种值偏差。总之,通过优化的组结构,开发的模型可以正确处理掉落动物的组测量,并可以在组水平上获得可比性状的遗传评估。

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