Department of Animal and Dairy Science, University of Georgia, Athens, GA, USA.
Instituto Nacional de Investigación Agropecuaria (INIA), Montevideo, Uruguay.
Genet Sel Evol. 2023 Jan 23;55(1):6. doi: 10.1186/s12711-023-00778-2.
Reliabilities of best linear unbiased predictions (BLUP) of breeding values are defined as the squared correlation between true and estimated breeding values and are helpful in assessing risk and genetic gain. Reliabilities can be computed from the prediction error variances for models with a single base population but are undefined for models that include several base populations and when unknown parent groups are modeled as fixed effects. In such a case, the use of metafounders in principle enables reliabilities to be derived.
We propose to compute the reliability of the contrast of an individual's estimated breeding value with that of a metafounder based on the prediction error variances of the individual and the metafounder, their prediction error covariance, and their genetic relationship. Computation of the required terms demands only little extra work once the sparse inverse of the mixed model equations is obtained, or they can be approximated. This also allows the reliabilities of the metafounders to be obtained. We studied the reliabilities for both BLUP and single-step genomic BLUP (ssGBLUP), using several definitions of reliability in a large dataset with 1,961,687 dairy sheep and rams, most of which had phenotypes and among which 27,000 rams were genotyped with a 50K single nucleotide polymorphism (SNP) chip. There were 23 metafounders with progeny sizes between 100,000 and 2000 individuals.
In models with metafounders, directly using the prediction error variance instead of the contrast with a metafounder leads to artificially low reliabilities because they refer to a population with maximum heterozygosity. When only one metafounder is fitted in the model, the reliability of the contrast is shown to be equivalent to the reliability of the individual in a model without metafounders. When there are several metafounders in the model, using a contrast with the oldest metafounder yields reliabilities that are on a meaningful scale and very close to reliabilities obtained from models without metafounders. The reliabilities using contrasts with ssGBLUP also resulted in meaningful values.
This work provides a general method to obtain reliabilities for both BLUP and ssGBLUP when several base populations are included through metafounders.
最佳线性无偏预测(BLUP)的育种值可靠性定义为真实和估计育种值之间的平方相关性,有助于评估风险和遗传增益。可靠性可以从具有单个基础群体的模型的预测误差方差中计算得出,但对于包括多个基础群体的模型以及当未知亲本组被建模为固定效应时,可靠性是未定义的。在这种情况下,原则上使用元祖先可以得出可靠性。
我们建议根据个体和元祖先的预测误差方差、它们的预测误差协方差以及它们的遗传关系,计算个体估计育种值与元祖先的对比的可靠性。一旦获得混合模型方程的稀疏逆,或者可以对其进行近似,计算所需项只需要很少的额外工作。这也允许获得元祖先的可靠性。我们使用大型数据集(1961687 只奶绵羊和公羊)中的几种可靠性定义,对 BLUP 和单步基因组 BLUP(ssGBLUP)进行了研究,其中大多数都有表型,其中 27000 只公羊用 50K 单核苷酸多态性(SNP)芯片进行了基因分型。有 23 个元祖先,后代大小在 100000 到 2000 个个体之间。
在具有元祖先的模型中,直接使用预测误差方差而不是与元祖先的对比会导致人为的低可靠性,因为它们指的是具有最大杂合度的群体。当模型中仅拟合一个元祖先时,对比的可靠性被证明与没有元祖先的模型中的个体可靠性相同。当模型中有多个元祖先时,使用与最老元祖先的对比产生有意义规模的可靠性,并且非常接近没有元祖先的模型中获得的可靠性。使用与 ssGBLUP 的对比的可靠性也产生了有意义的值。
这项工作提供了一种通用方法,当通过元祖先包括多个基础群体时,可以为 BLUP 和 ssGBLUP 获得可靠性。