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Beef trait genetic parameters based on old and recent data and its implications for genomic predictions in Italian Simmental cattle

机译:基于旧数据的牛肉性状遗传参数及其对意大利半导体牛基因组预测的影响

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摘要

This study aimed to evaluate the changes in variance components over time to identify a subset of data from the Italian Simmental (IS) population that would yield the most appropriate estimates of genetic parameters and breeding values for beef traits to select young bulls. Data from bulls raised between 1986 and 2017 were used to estimate genetic parameters and breeding values for four beef traits (average daily gain [ADG], body size [BS], muscularity [MUS], and feet and legs [FL]). The phenotypic mean increased during the years of the study for ADG, but it decreased for BS, MUS, and FL. The complete dataset (ALL) was divided into four generational subsets (Gen1, Gen2, Gen3, and Gen4). Additionally, ALL was divided into two larger subsets: the first one (OLD) combined data from Gen1 and Gen2 to represent the starting population, and the second one (CUR) combined data from Gen3 and Gen4 to represent a subpopulation with stronger ties to the current population. Genetic parameters were estimated with a four-trait genomic animal model using a single-step genomic average information restricted maximum likelihood algorithm. Heritability estimates from ALL were 0.26 ± 0.03 for ADG, 0.33 ± 0.04 for BS, 0.55 ± 0.03 for MUS, and 0.23 ± 0.03 for FL. Higher heritability estimates were obtained with OLD and ALL than with CUR. Considerable changes in heritability existed between Gen1 and Gen4 due to fluctuations in both additive genetic and residual variances. Genetic correlations also changed over time, with some values moving from positive to negative or even to zero. Genetic correlations from OLD were stronger than those from CUR. Changes in genetic parameters over time indicated that they should be updated regularly to avoid biases in genomic estimated breeding values (GEBV) and low selection accuracies. GEBV estimated using CUR variance components were less biased and more consistent than those estimated with OLD and ALL variance components. Validation results indicated that data from recent generations produced genetic parameters that more appropriately represent the structure of the current population, yielding accurate GEBV to select young animals and increasing the likelihood of higher genetic gains.
机译:本研究旨在评估随着时间的推移方差分量的变化,以确定意大利SIMMMENTAL(IS)种群的数据子集,这将产生最适当的遗传参数估计和牛肉特征选择幼小公牛的繁殖价值。来自1986年至2017年间的公牛的数据用于估计四个牛肉特征的遗传参数和育种值(平均每日增益[ADG],体型[BS],肌肉发射性[Mus]和脚和腿[FL])。在ADG的研究年份期间,表型平均增加,但它对BS,MU和FL减少。完整的数据集(全部)分为四个世代子集(Gen1,Gen2,Gen3和Gen4)。此外,所有这些都分为两个较大的子集:来自Gen1和Gen2的第一个(旧)组合数据代表起始群体,以及来自Gen3和Gen4的第二个(CUR)组合数据,以表示具有更强关系的亚群目前的人口。使用单步基因组(限制最大似然算法)用四个特征基因组动物模型估计遗传参数。 ADG的所有遗传性估算为0.26±0.03,BS为0.33±0.04,MUS 0.55±0.03,FL为0.23±0.03。较高的遗传性估算是旧的,而不是cur。由于两种添加剂遗传和残留差异的波动,Gen1和Gen4之间存在的可遗传性的相当大变化。遗传相关性也随着时间的推移而变化,一些值从正为负或甚至为零。来自旧的遗传相关性比来自cur的遗传相关性强。遗传参数随时间的变化表明它们应定期更新,以避免基因组估计育种值(GEBV)和低选择精度的偏差。使用CUR方差分量估计的GEBV均偏置较小,并且比具有旧和所有方差分量估计的那些更致力于。验证结果表明,最近世代的数据产生了更适当代表目前群体结构的遗传参数,从而获得精确的GeBV来选择幼小动物并增加遗传收益的可能性。

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