Genomic prediction in Brassica napus: evaluating the benefit of imputed whole-genome sequencing data.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
ACS Applied Bio Materials Pub Date : 2024-07-01 Epub Date: 2024-05-06 DOI:10.1139/gen-2023-0126
Sven E Weber, Lennard Roscher-Ehrig, Tobias Kox, Amine Abbadi, Andreas Stahl, Rod J Snowdon
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Abstract

Advances in sequencing technology allow whole plant genomes to be sequenced with high quality. Combining genotypic and phenotypic data in genomic prediction helps breeders to select crossing partners in partially phenotyped populations. In plant breeding programs, the cost of sequencing entire breeding populations still exceeds available genotyping budgets. Hence, the method for genotyping is still mainly single nucleotide polymorphism (SNP) arrays; however, arrays are unable to assess the entire genome- and population-wide diversity. A compromise involves genotyping the entire population using an SNP array and a subset of the population with whole-genome sequencing. Both datasets can then be used to impute markers from whole-genome sequencing onto the entire population. Here, we evaluate whether imputation of whole-genome sequencing data enhances genomic predictions, using data from a nested association mapping population of rapeseed (Brassica napus). Employing two cross-validation schemes that mimic scenarios for the prediction of close and distant relatives, we show that imputed marker data do not significantly improve prediction accuracy, likely due to redundancy in relationship estimates and imputation errors. In simulation studies, only small improvements were observed, further corroborating the findings. We conclude that SNP arrays are already equipped with the information that is added by imputation through relationship and linkage disequilibrium.

甘蓝型油菜的基因组预测:评估估算全基因组测序数据的益处。
测序技术的进步使得高质量的全植物基因组测序成为可能。在基因组预测中结合基因型和表型数据,有助于育种者在部分表型群体中选择杂交伙伴。在植物育种项目中,对整个育种群体进行测序的成本仍然超出了可用的基因分型预算。因此,基因分型的方法仍然主要是单核苷酸多态性(SNP)阵列;然而,阵列无法评估整个基因组和整个群体的多样性。一种折中的方法是使用 SNP 阵列对整个群体进行基因分型,并使用全基因组测序对群体的一个子集进行基因分型。然后,这两个数据集都可用于将全基因组测序的标记推算到整个群体上。在这里,我们利用油菜(Brassica napus)嵌套关联图谱群体的数据,评估了全基因组测序数据的归因是否能增强基因组预测。我们采用了两种交叉验证方案来模拟预测近亲和远亲的情况,结果表明,归因标记数据并不能显著提高预测准确性,这可能是由于关系估计中的冗余和归因误差造成的。在模拟研究中,只观察到很小的改进,这进一步证实了研究结果。我们的结论是,SNP 阵列已经具备了通过关系和连锁不平衡估算所增加的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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