为基因组选择构建训练集,以识别候选群体中的优良基因型。

IF 4.4 1区 农林科学 Q1 AGRONOMY
Szu-Ping Chen, Wen-Hsiu Sung, Chen-Tuo Liao
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引用次数: 0

摘要

关键信息:提出了在基因组选择中构建训练集的方法,以有效地从育种群体中鉴定出表现最好的基因型。从候选种群中识别优良基因型是植物育种计划的一个关键目标。本研究评估了基因组选择中优化训练集的各种方法,目的是提高从育种群体中发现顶级表现基因型的效率。此外,受经典优化设计标准的启发,本研究还提出了两种方法来扩展最佳基因型的搜索空间,并将其与侧重于最大化育种价值预测准确性的方法进行了比较。在模拟研究和实际性状分析中,采用归一化折算累积增益、斯皮尔曼等级相关性和皮尔逊相关性等评价指标来评估性能。总体而言,对于缺乏强亚群结构的候选种群,推荐使用基于脊回归的方法(称为 MSPE Ridge)。对于具有较强亚群结构的候选种群,基于启发式的广义决定系数 CD 平均值(v 2)和最大化整体基因组变异(GV overall)的类似 D-最优的方法是植物育种首要目标的首选方法。对于候选种群数量较多的种群,可首先使用建议的排序方法(GV 平均值)来缩小候选种群的规模,然后采用启发式方法来确定最佳基因型。值得注意的是,拟议的 CD 平均值(v 2)已被证实等同于原始版本的 CD 平均值,但其实现的计算效率要高得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constructing training sets for genomic selection to identify superior genotypes in candidate populations.

Key message: Approaches for constructing training sets in genomic selection are proposed to efficiently identify top-performing genotypes from a breeding population. Identifying superior genotypes from a candidate population is a key objective in plant breeding programs. This study evaluates various methods for the training set optimization in genomic selection, with the goal of enhancing efficiency in discovering top-performing genotypes from a breeding population. Additionally, two approaches, inspired by classical optimal design criteria, are proposed to expand the search space for the best genotypes and compared with methods focusing on maximizing accuracy in breeding value prediction. Evaluation metrics such as normalized discounted cumulative gain, Spearman's rank correlation, and Pearson's correlation are employed to assess performance in both simulation studies and real trait analyses. Overall, for candidate populations lacking a strong subpopulation structure, a ridge regression-based method, referred to as MSPE Ridge , is recommended. For candidate populations with a strong subpopulation structure, a heuristic-based version of generalized coefficient of determination CD mean ( v 2 ) and a D-optimality-like method that maximizes overall genomic variation ( GV overall ) are preferred approaches for the primary objective of plant breeding. For populations with a large number of candidates, a proposed ranking method ( GV average ) can first be used to down-scale the candidate population, after which a heuristic-based method is employed to identify the best genotypes. Notably, the proposed CD mean ( v 2 ) has been verified to be equivalent to the original version, known as CD mean , but its implementation is much more computationally efficient.

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来源期刊
CiteScore
9.60
自引率
7.40%
发文量
241
审稿时长
2.3 months
期刊介绍: Theoretical and Applied Genetics publishes original research and review articles in all key areas of modern plant genetics, plant genomics and plant biotechnology. All work needs to have a clear genetic component and significant impact on plant breeding. Theoretical considerations are only accepted in combination with new experimental data and/or if they indicate a relevant application in plant genetics or breeding. Emphasizing the practical, the journal focuses on research into leading crop plants and articles presenting innovative approaches.
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