Neshat Mehdi, Lee Soohyun, Momin Md Moksedul, Truong Buu, van der Werf Julius H J, Lee S Hong
Australian Centre for Precision Health, University of South Australia, Adelaide, SA, Australia.
UniSA Allied Health and Human Performance, University of South Australia, Adelaide, SA, Australia.
Front Genet. 2023 Jun 8;14:1104906. doi: 10.3389/fgene.2023.1104906. eCollection 2023.
The H-matrix best linear unbiased prediction (HBLUP) method has been widely used in livestock breeding programs. It can integrate all information, including pedigree, genotypes, and phenotypes on both genotyped and non-genotyped individuals into one single evaluation that can provide reliable predictions of breeding values. The existing HBLUP method requires hyper-parameters that should be adequately optimised as otherwise the genomic prediction accuracy may decrease. In this study, we assess the performance of HBLUP using various hyper-parameters such as blending, tuning, and scale factor in simulated and real data on Hanwoo cattle. In both simulated and cattle data, we show that blending is not necessary, indicating that the prediction accuracy decreases when using a blending hyper-parameter <1. The tuning process (adjusting genomic relationships accounting for base allele frequencies) improves prediction accuracy in the simulated data, confirming previous studies, although the improvement is not statistically significant in the Hanwoo cattle data. We also demonstrate that a scale factor, , which determines the relationship between allele frequency and per-allele effect size, can improve the HBLUP accuracy in both simulated and real data. Our findings suggest that an optimal scale factor should be considered to increase prediction accuracy, in addition to blending and tuning processes, when using HBLUP.
H矩阵最佳线性无偏预测(HBLUP)方法已在畜牧育种计划中广泛应用。它可以将所有信息,包括系谱、基因型以及基因型个体和非基因型个体的表型,整合到一个单一评估中,从而能够提供可靠的育种值预测。现有的HBLUP方法需要对超参数进行充分优化,否则基因组预测准确性可能会降低。在本研究中,我们在韩牛的模拟数据和实际数据中使用各种超参数(如混合、调整和比例因子)评估HBLUP的性能。在模拟数据和牛数据中,我们都表明混合并非必要,这表明当使用混合超参数<1时预测准确性会降低。调整过程(根据基础等位基因频率调整基因组关系)在模拟数据中提高了预测准确性,这证实了之前的研究,尽管在韩牛数据中这种提高在统计学上并不显著。我们还证明,一个决定等位基因频率与每个等位基因效应大小之间关系的比例因子,可以在模拟数据和实际数据中提高HBLUP的准确性。我们的研究结果表明,在使用HBLUP时,除了混合和调整过程外,还应考虑一个最佳比例因子以提高预测准确性。