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贝叶斯和 BLUP 字母在基因组预测中的性能:分析、比较和结果。

Performance of Bayesian and BLUP alphabets for genomic prediction: analysis, comparison and results.

机构信息

Division of Statistical Genetics, ICAR-Indian Agricultural Statistics Research Institute, New Delhi-12, India.

Department of Plant and Environmental Sciences, Clemson University Pee Dee Research and Education Center, Darlington, SC, USA.

出版信息

Heredity (Edinb). 2022 Jun;128(6):519-530. doi: 10.1038/s41437-022-00539-9. Epub 2022 May 4.

Abstract

We evaluated the performances of three BLUP and five Bayesian methods for genomic prediction by using nine actual and 54 simulated datasets. The genomic prediction accuracy was measured using Pearson's correlation coefficient between the genomic estimated breeding value (GEBV) and the observed phenotypic data using a fivefold cross-validation approach with 100 replications. The Bayesian alphabets performed better for the traits governed by a few genes/QTLs with relatively larger effects. On the contrary, the BLUP alphabets (GBLUP and CBLUP) exhibited higher genomic prediction accuracy for the traits controlled by several small-effect QTLs. Additionally, Bayesian methods performed better for the highly heritable traits and, for other traits, performed at par with the BLUP methods. Further, genomic BLUP (GBLUP) was identified as the least biased method for the GEBV estimation. Among the Bayesian methods, the Bayesian ridge regression and Bayesian LASSO were less biased than other Bayesian alphabets. Nonetheless, genomic prediction accuracy increased with an increase in trait heritability, irrespective of the sample size, marker density, and the QTL type (major/minor effect). In sum, this study provides valuable information regarding the choice of the selection method for genomic prediction in different breeding programs.

摘要

我们使用 9 个实际数据集和 54 个模拟数据集,评估了三种 BLUP 和五种贝叶斯基因组预测方法的性能。使用 100 次重复的五重交叉验证方法,通过皮尔逊相关系数来衡量基因组估计育种值(GEBV)和观测表型数据之间的基因组预测准确性。贝叶斯字母在受少数基因/QTL 控制的性状中表现更好,这些基因/QTL 的效应相对较大。相反,BLUP 字母(GBLUP 和 CBLUP)在受几个小效应 QTL 控制的性状中表现出更高的基因组预测准确性。此外,贝叶斯方法在遗传力高的性状中表现更好,而在其他性状中则与 BLUP 方法相当。此外,基因组 BLUP(GBLUP)被确定为 GEBV 估计的最无偏差方法。在贝叶斯方法中,贝叶斯岭回归和贝叶斯 LASSO 比其他贝叶斯字母的偏差更小。尽管如此,基因组预测准确性随着性状遗传力的增加而增加,而与样本大小、标记密度和 QTL 类型(主要/次要效应)无关。总之,本研究为不同育种计划中基因组预测的选择方法提供了有价值的信息。

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