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Genetic structured antedependence and random regression models applied to the longitudinal feed conversion ratio in growing Large White pigs

机译:遗传结构化抗竞争和随机回归模型应用于种植大白猪的纵向饲料转换率

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摘要

The objective of the present study was to compare a random regression model, usually used in genetic analyses of longitudinal data, with the structured antedependence (SAD) model to study the longitudinal feed conversion ratio (FCR) in growing Large White pigs and to propose criteria for animal selection when used for genetic evaluation. The study was based on data from 11,790 weekly FCR measures collected on 1,186 Large White male growing pigs. Random regression (RR) using orthogonal polynomial Legendre and SAD models was used to estimate genetic parameters and predict FCR-based EBV for each of the 10 wk of the test. The results demonstrated that the best SAD model (1 order of antedependence of degree 2 and a polynomial of degree 2 for the innovation variance for the genetic and permanent environmental effects, i.e., 12 parameters) provided a better fit for the data than RR with a quadratic function for the genetic and permanent environmental effects (13 parameters), with Bayesian information criteria values of -10,060 and -9,838, respectively. Heritabilities with the SAD model were higher than those of RR over the first 7 wk of the test. Genetic correlations between weeks were higher than 0.68 for short intervals between weeks and decreased to 0.08 for the SAD model and -0.39 for RR for the longest intervals. These differences in genetic parameters showed that, contrary to the RR approach, the SAD model does not suffer from border effect problems and can handle genetic correlations that tend to 0. Summarized breeding values were proposed for each approach as linear combinations of the individual weekly EBV weighted by the coefficients of the first or second eigenvector computed from the genetic covariance matrix of the additive genetic effects. These summarized breeding values isolated EBV trajectories over time, capturing either the average general value or the slope of the trajectory. Finally, applying the SAD model over a reduced period of time suggested that similar selection choices would result from the use of the records from the first 8 wk of the test. To conclude, the SAD model performed well for the genetic evaluation of longitudinal phenotypes.
机译:本研究的目的是比较随机回归模型,通常用于纵向数据的遗传分析,具有结构化的抗竞争(SAD)模型,以研究生长大白猪中的纵向饲料转化率(FCR)并提出标准用于遗传评估时的动物选择。该研究基于收集于1,186名大白男性生长猪的11,790周的FCR措施数据。使用正交多项式Legendre和SAD模型的随机回归(RR)用于估计遗传参数并预测用于10WK的每个测试中的每一个的FCR基EBV。结果表明,最好SAD模型(1个有序度2的antedependence的和多项式的创新方差的遗传和永久环境影响度为2,即,12个参数)提供了更好的适合的数据比RR与遗传和永久环境效应(13个参数)的二次功能,分别具有-10,060和-9,838的贝叶斯信息标准。与悲伤模型的遗产高于RR在测试的前7周的RR。数周之间的遗传相关性高于0.68,短的间隔之间的短间隔,为悲伤模型的时间减少至0.08,对于最长的间隔,RR为-0.39。遗传参数这些差异表明,违背了RR方法,伤心模型不从边界效应问题的困扰,可以处理趋向于0。总结育种值提出了每种方法的个体每周EBV的线性组合的遗传相关由从添加剂遗传效应的遗传协方差基质计算的第一或第二特征向量的系数加权。这些总结育种值随着时间的推移隔离EBV轨迹,捕获平均一般值或轨迹的斜率。最后,在减少的时间段内将悲伤模型应用于类似的选择选择将由使用来自测试的前8个WK的记录来实现。为了得出结论,悲伤模型对纵向表型的遗传评估表现良好。

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