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A class of Bayesian methods to combine large numbers of genotyped and non-genotyped animals for whole-genome analyses

机译:一类结合大量基因型和非基因型动物的贝叶斯方法用于全基因组分析

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摘要

BackgroundTo obtain predictions that are not biased by selection, the conditional mean of the breeding values must be computed given the data that were used for selection. When single nucleotide polymorphism (SNP) effects have a normal distribution, it can be argued that single-step best linear unbiased prediction (SS-BLUP) yields a conditional mean of the breeding values. Obtaining SS-BLUP, however, requires computing the inverse of the dense matrix G of genomic relationships, which will become infeasible as the number of genotyped animals increases. Also, computing G requires the frequencies of SNP alleles in the founders, which are not available in most situations. Furthermore, SS-BLUP is expected to perform poorly relative to variable selection models such as BayesB and BayesC as marker densities increase.
机译:背景要获得不因选择而产生偏差的预测,必须根据给定的选择数据计算出育种值的条件均值。当单核苷酸多态性(SNP)效应具有正态分布时,可以认为单步最佳线性无偏预测(SS-BLUP)产生了育种值的条件平均值。但是,获得SS-BLUP需要计算基因组关系的密集矩阵G的逆,随着基因型动物数量的增加,这将变得不可行。同样,计算G需要创始人中SNP等位基因的频率,这在大多数情况下不可用。此外,随着标记密度的增加,相对于诸如BayesB和BayesC之类的变量选择模型,SS-BLUP的性能较差。

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