Valerio-Hernández Jonathan Emanuel, Ruíz-Flores Agustín, Nilforooshan Mohammad Ali, Pérez-Rodríguez Paulino
Departamento de Zootecnia, Universidad Autónoma Chapingo, Chapingo, Estado de México, CP 56227, México.
Livestock Improvement Corporation, Private Bag 3016, Hamilton 3240, New Zealand.
Anim Biosci. 2023 Jul;36(7):1003-1009. doi: 10.5713/ab.22.0158. Epub 2023 Feb 28.
The objective was to compare (pedigree-based) best linear unbiased prediction (BLUP), genomic BLUP (GBLUP), and single-step GBLUP (ssGBLUP) methods for genomic evaluation of growth traits in a Mexican Braunvieh cattle population.
Birth (BW), weaning (WW), and yearling weight (YW) data of a Mexican Braunvieh cattle population were analyzed with BLUP, GBLUP, and ssGBLUP methods. These methods are differentiated by the additive genetic relationship matrix included in the model and the animals under evaluation. The predictive ability of the model was evaluated using random partitions of the data in training and testing sets, consistently predicting about 20% of genotyped animals on all occasions. For each partition, the Pearson correlation coefficient between adjusted phenotypes for fixed effects and non-genetic random effects and the estimated breeding values (EBV) were computed.
The random contemporary group (CG) effect explained about 50%, 45%, and 35% of the phenotypic variance in BW, WW, and YW, respectively. For the three methods, the CG effect explained the highest proportion of the phenotypic variances (except for YW-GBLUP). The heritability estimate obtained with GBLUP was the lowest for BW, while the highest heritability was obtained with BLUP. For WW, the highest heritability estimate was obtained with BLUP, the estimates obtained with GBLUP and ssGBLUP were similar. For YW, the heritability estimates obtained with GBLUP and BLUP were similar, and the lowest heritability was obtained with ssGBLUP. Pearson correlation coefficients between adjusted phenotypes for non-genetic effects and EBVs were the highest for BLUP, followed by ssBLUP and GBLUP.
The successful implementation of genetic evaluations that include genotyped and non-genotyped animals in our study indicate a promising method for use in genetic improvement programs of Braunvieh cattle. Our findings showed that simultaneous evaluation of genotyped and non-genotyped animals improved prediction accuracy for growth traits even with a limited number of genotyped animals.
旨在比较(基于系谱的)最佳线性无偏预测(BLUP)、基因组BLUP(GBLUP)和单步GBLUP(ssGBLUP)方法在墨西哥褐牛群体生长性状基因组评估中的效果。
采用BLUP、GBLUP和ssGBLUP方法对墨西哥褐牛群体的出生体重(BW)、断奶体重(WW)和周岁体重(YW)数据进行分析。这些方法的区别在于模型中包含的加性遗传关系矩阵以及所评估的动物。使用训练集和测试集中的数据随机划分来评估模型的预测能力,在所有情况下始终预测约20%的基因分型动物。对于每个划分,计算固定效应和非遗传随机效应的调整后表型与估计育种值(EBV)之间的Pearson相关系数。
随机同期组(CG)效应分别解释了BW、WW和YW表型方差的约50%、45%和35%。对于这三种方法,CG效应解释了表型方差的最高比例(YW - GBLUP除外)。GBLUP获得的BW遗传力估计值最低,而BLUP获得的遗传力最高。对于WW,BLUP获得的遗传力估计值最高,GBLUP和ssGBLUP获得的估计值相似。对于YW,GBLUP和BLUP获得的遗传力估计值相似,ssGBLUP获得的遗传力最低。非遗传效应的调整后表型与EBV之间的Pearson相关系数,BLUP最高,其次是ssBLUP和GBLUP。
在我们的研究中成功实施包括基因分型和非基因分型动物的遗传评估,表明这是一种在褐牛遗传改良计划中很有前景的方法。我们的研究结果表明,即使基因分型动物数量有限,同时评估基因分型和非基因分型动物也能提高生长性状的预测准确性。