Muir W M
Department of Animal Sciences, Purdue University, West Lafayette, Indiana 47907, USA.
J Anim Breed Genet. 2007 Dec;124(6):342-55. doi: 10.1111/j.1439-0388.2007.00700.x.
Accuracy of prediction of estimated breeding values based on genome-wide markers (GEBV) and selection based on GEBV as compared with traditional Best Linear Unbiased Prediction (BLUP) was examined for a number of alternatives, including low heritability, number of generations of training, marker density, initial distributions, and effective population size (Ne). Results show that the more the generations of data in which both genotypes and phenotypes were collected, termed training generations (TG), the better the accuracy and persistency of accuracy based on GEBV. GEBV excelled for traits of low heritability regardless of initial equilibrium conditions, as opposed to traditional marker-assisted selection, which is not useful for traits of low heritability. Effective population size is critical for populations starting in Hardy-Weinberg equilibrium but not for populations started from mutation-drift equilibrium. In comparison with traditional BLUP, GEBV can exceed the accuracy of BLUP provided enough TG are included. Unfortunately selection rapidly reduces the accuracy of GEBV. In all cases examined, classic BLUP selection exceeds what was possible for GEBV selection. Even still, GEBV could have an advantage over traditional BLUP in cases such as sex-limited traits, traits that are expensive to measure, or can only be measured on relatives. A combined approach, utilizing a mixed model with a second random effect to account for quantitative trait loci in linkage equilibrium (the polygenic effect) was suggested as a way to capitalize on both methodologies.
针对多种情况,包括低遗传力、训练世代数、标记密度、初始分布和有效种群大小(Ne),研究了基于全基因组标记的估计育种值预测(GEBV)的准确性以及与传统最佳线性无偏预测(BLUP)相比基于GEBV的选择情况。结果表明,同时收集基因型和表型数据的世代数(称为训练世代,TG)越多,基于GEBV的准确性和准确性持续性就越好。无论初始平衡条件如何,GEBV在低遗传力性状方面表现出色,这与传统的标记辅助选择不同,传统标记辅助选择对低遗传力性状无用。有效种群大小对于处于哈迪-温伯格平衡的种群至关重要,但对于从突变-漂变平衡开始的种群则不然。与传统BLUP相比,如果包含足够的TG,GEBV可以超过BLUP的准确性。不幸的是,选择会迅速降低GEBV的准确性。在所有研究的情况下,经典的BLUP选择超过了GEBV选择的可能性。即便如此,在诸如限性性状、测量成本高或只能在亲属上测量的性状等情况下,GEBV可能比传统BLUP具有优势。建议采用一种组合方法,利用具有第二个随机效应的混合模型来考虑连锁平衡中的数量性状位点(多基因效应),以此来利用两种方法的优势。