Strategies to improve genomic predictions for 35 duck carcass traits in an F2 population

Author:

Cai Wentao,Hu Jian,Fan Wenlei,Xu Yaxi,Tang Jing,Xie Ming,Zhang Yunsheng,Guo Zhanbao,Zhou Zhengkui,Hou Shuisheng

Abstract

Abstract Background Carcass traits are crucial for broiler ducks, but carcass traits can only be measured postmortem. Genomic selection (GS) is an effective approach in animal breeding to improve selection and reduce costs. However, the performance of genomic prediction in duck carcass traits remains largely unknown. Results In this study, we estimated the genetic parameters, performed GS using different models and marker densities, and compared the estimation performance between GS and conventional BLUP on 35 carcass traits in an F2 population of ducks. Most of the cut weight traits and intestine length traits were estimated to be high and moderate heritabilities, respectively, while the heritabilities of percentage slaughter traits were dynamic. The reliability of genome prediction using GBLUP increased by an average of 0.06 compared to the conventional BLUP method. The Permutation studies revealed that 50K markers had achieved ideal prediction reliability, while 3K markers still achieved 90.7% predictive capability would further reduce the cost for duck carcass traits. The genomic relationship matrix normalized by our true variance method instead of the widely used $$\sum {2p}_{i}(1-{p}_{i})$$ 2 p i ( 1 - p i ) could achieve an increase in prediction reliability in most traits. We detected most of the bayesian models had a better performance, especially for BayesN. Compared to GBLUP, BayesN can further improve the predictive reliability with an average of 0.06 for duck carcass traits. Conclusion This study demonstrates genomic selection for duck carcass traits is promising. The genomic prediction can be further improved by modifying the genomic relationship matrix using our proposed true variance method and several Bayesian models. Permutation study provides a theoretical basis for the fact that low-density arrays can be used to reduce genotype costs in duck genome selection.

Funder

the Key Technologies Research on New Breed of Broiler Poultry by Integration of Breeding, Reproduction and Promotion

Taishan Industry Leadership Talent Project of Shandong province in China

China Agriculture Research System of MOF and MARA

the Science and Technology Innovation Project of the Chinese Academy of Agricultural Sciences

Publisher

Springer Science and Business Media LLC

Subject

Animal Science and Zoology,Biochemistry,Food Science,Biotechnology

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