Xu Wenwu, Liu Xiaodong, Liao Mingfu, Xiao Shijun, Zheng Min, Yao Tianxiong, Chen Zuoquan, Huang Lusheng, Zhang Zhiyan
State Key Laboratory for Pig Genetic Improvement and Production Technology, Jiangxi Agricultural University, Nanchang, China.
Front Genet. 2021 Nov 18;12:721600. doi: 10.3389/fgene.2021.721600. eCollection 2021.
Genomic selection is an approach to select elite breeding stock based on the use of dense genetic markers and that has led to the development of various models to derive a predictive equation. However, the current genomic selection software faces several issues such as low prediction accuracy, low computational efficiency, or an inability to handle large-scale sample data. We report the development of a genomic prediction model named FMixFN with four zero-mean normal distributions as the prior distributions to optimize the predictive ability and computing efficiency. The variance of the prior distributions in our model is precisely determined based on an F2 population, and genomic estimated breeding values (GEBV) can be obtained accurately and quickly in combination with an iterative conditional expectation algorithm. We demonstrated that FMixFN improves computational efficiency and predictive ability compared to other methods, such as GBLUP, SSgblup, MIX, BayesR, BayesA, and BayesB. Most importantly, FMixFN may handle large-scale sample data, and thus should be able to meet the needs of large breeding companies or combined breeding schedules. Our study developed a Bayes genomic selection model called FMixFN, which combines stable predictive ability and high computational efficiency, and is a big data-oriented genomic selection model that has potential in the future. The FMixFN method can be freely accessed at https://zenodo.org/record/5560913 (DOI: 10.5281/zenodo.5560913).
基因组选择是一种基于密集遗传标记来选择优良种畜的方法,它促使了各种用于推导预测方程的模型的发展。然而,当前的基因组选择软件面临着一些问题,比如预测准确性低、计算效率低或者无法处理大规模样本数据。我们报告了一种名为FMixFN的基因组预测模型的开发,该模型以四个零均值正态分布作为先验分布,以优化预测能力和计算效率。我们模型中先验分布的方差是基于一个F2群体精确确定的,并且结合迭代条件期望算法能够准确快速地获得基因组估计育种值(GEBV)。我们证明,与其他方法(如GBLUP、SSgblup、MIX、BayesR、BayesA和BayesB)相比,FMixFN提高了计算效率和预测能力。最重要的是,FMixFN可以处理大规模样本数据,因此应该能够满足大型育种公司或联合育种计划的需求。我们的研究开发了一种名为FMixFN的贝叶斯基因组选择模型,它结合了稳定的预测能力和高计算效率,是一种面向大数据的基因组选择模型,在未来具有潜力。FMixFN方法可在https://zenodo.org/record/5560913(DOI:10.5281/zenodo.5560913)上免费获取。