Ogawa Shinichiro, Zoda Atsushi, Kagawa Rino, Obinata Rui
Division of Meat Animal and Poultry Research, Institute of Livestock and Grassland Science, National Agriculture and Food Research Organization (NARO), Tsukuba 305-0901, Japan.
Research and Development Group, Zen-Noh Embryo Transfer Center, Kamishihoro 080-1407, Japan.
Animals (Basel). 2023 Feb 11;13(4):638. doi: 10.3390/ani13040638.
As optimization methods to identify the best animals for dense genotyping to construct a reference population for genotype imputation, the MCA and MCG methods, which use the pedigree-based additive genetic relationship matrix ( matrix) and the genomic relationship matrix ( matrix), respectively, have been proposed. We assessed the performance of MCA and MCG methods using 575 Japanese Black cows. Pedigree data were provided to trace back up to five generations to construct the matrix with changing the pedigree depth from 1 to 5 (five MCA methods). Genotype information on 36,426 single-nucleotide polymorphisms was used to calculate the matrix based on VanRaden's methods 1 and 2 (two MCG methods). The MCG always selected one cow per iteration, while MCA sometimes selected multiple cows. The number of commonly selected cows between the MCA and MCG methods was generally lower than that between different MCA methods or between different MCG methods. For the studied population, MCG appeared to be more reasonable than MCA in selecting cows as a reference population for higher-density genotype imputation to perform genomic prediction and a genome-wide association study.
作为用于识别最佳动物进行密集基因分型以构建基因型填充参考群体的优化方法,分别提出了使用基于系谱的加性遗传关系矩阵(矩阵)的MCA方法和使用基因组关系矩阵(矩阵)的MCG方法。我们使用575头日本黑牛评估了MCA和MCG方法的性能。提供系谱数据以追溯多达五代,通过将系谱深度从1改变到5来构建矩阵(五种MCA方法)。基于VanRaden方法1和2使用36,426个单核苷酸多态性的基因型信息来计算矩阵(两种MCG方法)。MCG每次迭代总是选择一头牛,而MCA有时会选择多头牛。MCA和MCG方法之间共同选择的牛的数量通常低于不同MCA方法之间或不同MCG方法之间的数量。对于所研究的群体,在选择牛作为用于进行基因组预测和全基因组关联研究的更高密度基因型填充的参考群体方面,MCG似乎比MCA更合理。