Carvalho Filho Ivan, Campos Gabriel Soares, Lourenco Daniela, Schenkel Flavio Schram, da Silva Delvan Alves, Lima Silva Thales, Souza Teixeira Caio, Fonseca Larissa Fernanda Simielli, Fernandes Júnior Gerardo Alves, de Albuquerque Lucia Galvão, Carvalheiro Roberto
School of Agricultural and Veterinarian Sciences, São Paulo State University (UNESP), Jaboticabal, 14884-900, Brazil.
Department of Animal and Dairy Science, University of Georgia, Athens, GA, USA.
J Appl Genet. 2025 Jul 21. doi: 10.1007/s13353-025-00987-z.
Accounting for genotype by environment interaction (GxE) and using genomic information may enhance the prediction accuracy of breeding values. Hence, the objective of this study was to evaluate the gain in using single-step genomic BLUP using high-density SNP chip (ssGBLUP_HD) or whole genome imputed sequence (ssGBLUP_SEQ) compared to pedigree BLUP in the presence of GxE. Phenotypic data for age at first calving (AFC), scrotal circumference (SC), post-weaning weight gain (PWG), and yearling weight (YW) were obtained from commercial breeding programs of Nellore cattle. There were 1,578,591 animals in the pedigree, from which 51,485 had genotypes with high-density SNP chip (HD) and whol- genome imputed sequence (WGS), totaling 460,578 and 2,437,948 SNPs, respectively, after quality control. Contemporary group effects, estimated with a regular animal model (without modeling GxE), were used to define the environmental gradients (EG) for the reaction norm model (RNM). Genetic sensitivity to environmental variation was assessed by fitting three different linear RNM: the first considering only pedigree (BLUP), the second also considering the genomic information from HD, and the third considering the genomic information from WGS. The validation was carried out for genotyped young bulls, with no progeny records in the reduced data and at least one in the complete data. Models were compared using prediction accuracy, dispersion, correlation between the breeding values from reduced data and complete data, and bias from the linear regression method. Re-ranking between animals and heterogeneity of genetic variance in different EG were observed, suggesting the presence of GxE. The results for the regression coefficients of the RNM showed, in general, that the inclusion of genomic information increased the for the RNM regression coefficients for all traits. For SC, PWG, and YW, the highest accuracies were obtained with ssGBLUP_SEQ. Conversely, AFC had higher accuracy with ssGBLUP_HD. In addition, the for genotyped young bulls increased as the EG increased. In conclusion, ssGBLUP_SEQ yielded higher and correlation and a lower bias than the BLUP across all EG, indicating that the implementation of genomic selection using the whole genome sequence and accounting for GxE benefits this Nellore beef cattle population.
考虑基因型与环境互作(GxE)并利用基因组信息可提高育种值的预测准确性。因此,本研究的目的是评估在存在GxE的情况下,与系谱BLUP相比,使用高密度SNP芯片的单步基因组BLUP(ssGBLUP_HD)或全基因组推算序列(ssGBLUP_SEQ)的收益。首次产犊年龄(AFC)、阴囊周长(SC)、断奶后体重增加(PWG)和周岁体重(YW)的表型数据来自内洛尔牛的商业育种计划。系谱中有1,578,591头动物,其中51,485头具有高密度SNP芯片(HD)和全基因组推算序列(WGS)的基因型,经过质量控制后,分别共有460,578和2,437,948个SNP。用常规动物模型(不构建GxE模型)估计的当代组效应用于定义反应规范模型(RNM)的环境梯度(EG)。通过拟合三种不同的线性RNM评估对环境变异的遗传敏感性:第一种仅考虑系谱(BLUP),第二种还考虑来自HD的基因组信息,第三种考虑来自WGS的基因组信息。对基因分型的年轻公牛进行验证,在简化数据中没有后代记录,在完整数据中至少有一个后代记录。使用预测准确性、离散度、简化数据和完整数据的育种值之间的相关性以及线性回归方法的偏差对模型进行比较。观察到不同EG中动物之间的重新排名和遗传方差的异质性,表明存在GxE。RNM回归系数的结果总体表明,纳入基因组信息增加了所有性状的RNM回归系数。对于SC、PWG和YW,使用ssGBLUP_SEQ获得了最高的准确性。相反,AFC使用ssGBLUP_HD具有更高的准确性。此外,基因分型年轻公牛的准确性随着EG的增加而增加。总之,在所有EG中,ssGBLUP_SEQ比BLUP产生更高的准确性和相关性以及更低的偏差,表明使用全基因组序列并考虑GxE实施基因组选择对这个内洛尔肉牛群体有益。