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基于不同群体参数的多组基因型的 BLUPs 或 BLUEs 进行优化选择。

Optimizing selection based on BLUPs or BLUEs in multiple sets of genotypes differing in their population parameters.

机构信息

Plant Breeding, TUM School of Life Sciences, Technical University of Munich, 85354, Freising, Germany.

Institute of Plant Breeding, Seed Science and Population Genetics, University of Hohenheim, 70599, Stuttgart, Germany.

出版信息

Theor Appl Genet. 2024 Apr 15;137(5):104. doi: 10.1007/s00122-024-04592-2.

Abstract

Selection response in truncation selection across multiple sets of candidates hinges on their post-selection proportions, which can deviate grossly from their initial proportions. For BLUPs, using a uniform threshold for all candidates maximizes the selection response, irrespective of differences in population parameters. Plant breeding programs typically involve multiple families from either the same or different populations, varying in means, genetic variances and prediction accuracy of BLUPs or BLUEs for true genetic values (TGVs) of candidates. We extend the classical breeder's equation for truncation selection from single to multiple sets of genotypes, indicating that the expected overall selection response for TGVs depends on the selection response within individual sets and their post-selection proportions. For BLUEs, we show that maximizing requires thresholds optimally tailored for each set, contingent on their population parameters. For BLUPs, we prove that is maximized by applying a uniform threshold across all candidates from all sets. We provide explicit formulas for the origin of the selected candidates from different sets and show that their proportions before and after selection can differ substantially, especially for sets with inferior properties and low proportion. We discuss implications of these results for (a) optimum allocation of resources to training and prediction sets and (b) the need to counteract narrowing the genetic variation under genomic selection. For genomic selection of hybrids based on BLUPs of GCA of their parent lines, selecting distinct proportions in the two parent populations can be advantageous, if these differ substantially in the variance and/or prediction accuracy of GCA. Our study sheds light on the complex interplay of selection thresholds and population parameters for the selection response in plant breeding programs, offering insights into the effective resource management and prudent application of genomic selection for improved crop development.

摘要

在多组候选者的截断选择中,选择响应取决于它们的选择后比例,这些比例可能与初始比例有很大的偏差。对于 BLUP 来说,对于所有候选者使用统一的阈值可以最大限度地提高选择响应,而与群体参数的差异无关。植物育种计划通常涉及来自同一或不同群体的多个家系,其平均值、遗传方差和 BLUP 或 BLUE 对候选者真实遗传值 (TGV) 的预测准确性各不相同。我们将经典的选择者方程从单一到多组基因型进行扩展,表明对 TGV 的预期总体选择响应取决于单个组内的选择响应及其选择后的比例。对于 BLUE,我们表明最大化需要根据每个组的群体参数,为每个组量身定制的最佳阈值。对于 BLUP,我们证明通过在所有组的所有候选者中应用统一的阈值可以最大化。我们提供了来自不同组的选定候选者的起源的显式公式,并表明它们在选择前后的比例可能有很大差异,尤其是对于具有较差特性和低比例的组。我们讨论了这些结果对 (a) 最佳分配资源用于训练和预测组以及 (b) 对抗基因组选择下遗传变异变窄的必要性的影响。对于基于亲本系 GCA 的 BLUP 对杂种进行基因组选择,如果亲本群体在 GCA 的方差和/或预测准确性方面有很大差异,则选择不同的比例可能是有利的。我们的研究阐明了选择阈值和群体参数对植物育种计划中选择响应的复杂相互作用,为有效资源管理和明智应用基因组选择以改善作物发展提供了深入了解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1514/11018695/0769fbe59a8f/122_2024_4592_Fig1_HTML.jpg

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