Department of Horticulture, University of Wisconsin-Madison, Wisconsin 53706
Department of Horticulture, University of Wisconsin-Madison, Wisconsin 53706.
Genetics. 2018 May;209(1):77-87. doi: 10.1534/genetics.118.300685. Epub 2018 Mar 7.
As one of the world's most important food crops, the potato ( L.) has spurred innovation in autotetraploid genetics, including in the use of SNP arrays to determine allele dosage at thousands of markers. By combining genotype and pedigree information with phenotype data for economically important traits, the objectives of this study were to (1) partition the genetic variance into additive nonadditive components, and (2) determine the accuracy of genome-wide prediction. Between 2012 and 2017, a training population of 571 clones was evaluated for total yield, specific gravity, and chip fry color. Genomic covariance matrices for additive (), digenic dominant (), and additive × additive epistatic (#) effects were calculated using 3895 markers, and the numerator relationship matrix () was calculated from a 13-generation pedigree. Based on model fit and prediction accuracy, mixed model analysis with was superior to for yield and fry color but not specific gravity. The amount of additive genetic variance captured by markers was 20% of the total genetic variance for specific gravity, compared to 45% for yield and fry color. Within the training population, including nonadditive effects improved accuracy and/or bias for all three traits when predicting total genotypic value. When six F populations were used for validation, prediction accuracy ranged from 0.06 to 0.63 and was consistently lower (0.13 on average) without allele dosage information. We conclude that genome-wide prediction is feasible in potato and that it will improve selection for breeding value given the substantial amount of nonadditive genetic variance in elite germplasm.
作为世界上最重要的粮食作物之一,马铃薯(L.)在同源四倍体遗传学方面的创新,包括使用 SNP 阵列来确定数千个标记的等位基因剂量,推动了这一领域的发展。通过将基因型和系谱信息与经济重要性状的表型数据相结合,本研究的目的是:(1)将遗传方差分解为加性和非加性成分,(2)确定全基因组预测的准确性。在 2012 年至 2017 年间,对 571 个克隆的总产量、比重和薯条颜色进行了训练群体评估。使用 3895 个标记计算了加性()、双基因显性()和加性×加性上位性(#)效应的基因组协方差矩阵,并从 13 代系谱计算了分子关系矩阵()。基于模型拟合和预测准确性,带有的混合模型分析在产量和薯条颜色方面优于,而在比重方面则不然。标记捕获的加性遗传方差量占比重总遗传方差的 20%,而产量和薯条颜色的加性遗传方差量占 45%。在训练群体中,包括非加性效应在内,当预测总基因型值时,所有三个性状的准确性和/或偏差都得到了改善。当使用六个 F 群体进行验证时,预测准确性范围从 0.06 到 0.63,并且在没有等位基因剂量信息的情况下,始终较低(平均为 0.13)。我们得出结论,在马铃薯中,全基因组预测是可行的,并且鉴于在优良种质中存在大量的非加性遗传方差,它将提高对育种值的选择。