Liu Tianfei, Nielsen Bjarne, Christensen Ole F, Lund Mogens Sandø, Su Guosheng
Institute of Animal Science, Guangdong Academy of Agricultural Sciences, Guangzhou, 510640, China.
Center for Quantitative Genetics and Genomics, Aarhus University, 8830, Tjele, Denmark.
J Anim Sci Biotechnol. 2023 Jan 3;14(1):1. doi: 10.1186/s40104-022-00800-5.
Survival from birth to slaughter is an important economic trait in commercial pig productions. Increasing survival can improve both economic efficiency and animal welfare. The aim of this study is to explore the impact of genotyping strategies and statistical models on the accuracy of genomic prediction for survival in pigs during the total growing period from birth to slaughter. RESULTS: We simulated pig populations with different direct and maternal heritabilities and used a linear mixed model, a logit model, and a probit model to predict genomic breeding values of pig survival based on data of individual survival records with binary outcomes (0, 1). The results show that in the case of only alive animals having genotype data, unbiased genomic predictions can be achieved when using variances estimated from pedigree-based model. Models using genomic information achieved up to 59.2% higher accuracy of estimated breeding value compared to pedigree-based model, dependent on genotyping scenarios. The scenario of genotyping all individuals, both dead and alive individuals, obtained the highest accuracy. When an equal number of individuals (80%) were genotyped, random sample of individuals with genotypes achieved higher accuracy than only alive individuals with genotypes. The linear model, logit model and probit model achieved similar accuracy.
Our conclusion is that genomic prediction of pig survival is feasible in the situation that only alive pigs have genotypes, but genomic information of dead individuals can increase accuracy of genomic prediction by 2.06% to 6.04%.
从出生到屠宰的存活率是商业养猪生产中的一个重要经济性状。提高存活率可以提高经济效率和动物福利。本研究的目的是探讨基因分型策略和统计模型对从出生到屠宰的整个生长期间猪存活率基因组预测准确性的影响。
我们模拟了具有不同直接和母体遗传力的猪群,并使用线性混合模型、逻辑模型和概率模型,基于二元结果(0,1)的个体存活记录数据预测猪存活率的基因组育种值。结果表明,在只有存活动物有基因型数据的情况下,使用基于系谱模型估计的方差可以实现无偏基因组预测。与基于系谱的模型相比,使用基因组信息的模型估计育种值的准确性提高了59.2%,这取决于基因分型方案。对所有个体(包括死亡和存活个体)进行基因分型的方案获得了最高的准确性。当对相同数量的个体(80%)进行基因分型时,随机选择有基因型的个体比只选择有基因型的存活个体获得更高的准确性。线性模型、逻辑模型和概率模型的准确性相似。
我们的结论是,在只有存活猪有基因型的情况下,猪存活率的基因组预测是可行的,但死亡个体的基因组信息可以将基因组预测的准确性提高2.06%至6.04%。