Wang Junliang, Lu Yujin, Zhang Wenjing, Cai Xiaodian, Xie Shuihua, Gao Yahui, Li Jiaqi, Lin Changguang
State Key Laboratory of Swine and Poultry Breeding Industry, National Engineering Research Center for Breeding Swine Industry, Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, College of Animal Science, South China Agricultural University, Guangzhou, 510642, China.
Guangdong iPig Technology Co., Ltd, Guangzhou, 510470, China.
BMC Genomics. 2025 Aug 27;26(1):779. doi: 10.1186/s12864-025-12011-z.
Genomic selection (GS) has become an essential tool for improving economically important traits in pigs. However, its accuracy depends heavily on the size and composition of the reference population. This study explores strategies for optimizing multi-population genomic evaluations by integrating prior biological knowledge and leveraging advanced genomic models. We assessed population similarities based on phenotypic distribution, linkage disequilibrium (LD) consistency, heritability, and genetic variance. Three genomic prediction models-GBLUP, bivariate GBLUP, and GFBLUP-were applied to evaluate the joint reference populations. The results indicated that differences in phenotypic means and genetic variance between populations significantly affected the prediction accuracy of joint evaluations, particularly for fat thickness traits. The GFBLUP model, integrating meta-GWAS priors, improved prediction accuracy when the genetic contributions were similar between target and reference populations. These findings highlight the importance of carefully selecting reference populations and integrating biological priors into genomic evaluations. The study offers valuable insights for optimizing genomic selection strategies in pig breeding programs.
基因组选择(GS)已成为改善猪经济重要性状的重要工具。然而,其准确性在很大程度上取决于参考群体的大小和组成。本研究探索了通过整合先验生物学知识和利用先进基因组模型来优化多群体基因组评估的策略。我们基于表型分布、连锁不平衡(LD)一致性、遗传力和遗传方差评估了群体相似性。应用三种基因组预测模型——GBLUP、双变量GBLUP和GFBLUP——来评估联合参考群体。结果表明,群体间表型均值和遗传方差的差异显著影响联合评估的预测准确性,尤其是对于背膘厚度性状。当目标群体和参考群体之间的遗传贡献相似时,整合元全基因组关联研究(meta-GWAS)先验信息的GFBLUP模型提高了预测准确性。这些发现突出了仔细选择参考群体并将生物学先验信息整合到基因组评估中的重要性。该研究为优化猪育种计划中的基因组选择策略提供了有价值的见解。