Optimization of sparse phenotyping strategy in multi-environmental trials in maize.

IF 4.4 1区 农林科学 Q1 AGRONOMY
S R Mothukuri, Y Beyene, M Gültas, J Burgueño, S Griebel
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引用次数: 0

Abstract

Key message: The relatedness between the genotypes of the training and the testing set using sparse phenotyping experiments helps optimize the line allocation by utilizing the relationship measurements to reduce cost without compromising the genetic gain. The phenotyping needs to be optimized and aims to achieve desired precision at low costs because selection decisions are mainly based on multi-environmental trials. Optimization of sparse phenotyping is possible in plant breeding by applying relationship measurements and genomic prediction. Our research utilized genomic data and relationship measurements between the training (full testing genotypes) and testing sets (sparse testing genotypes) to optimize the allocation of genotypes to subsets in sparse testing. Different sparse phenotyping designs were mimicked based on the percentage (%) of lines in the full set, the number of partially tested lines, the number of tested environments, and balanced and unbalanced methods for allocating the lines among the environments. The eight relationship measurements were utilized to calculate the relatedness between full and sparse set genotypes. The results demonstrate that balanced and allocating 50% of lines to the full set designs have shown a higher Pearson correlation in terms of accuracy measurements than assigning the 30% of lines to the full set and balanced sparse methods. By reducing untested environments per sparse set, results enhance the accuracy of measurements. The relationship measurements exhibit a low significant Pearson correlation ranging from 0.20 to 0.31 using the accuracy measurements in sparse phenotyping experiments. The positive Pearson correlation shows that the maximization of the accuracy measurements can be helpful to the optimization of the line allocation on sparse phenotyping designs.

玉米多环境试验中稀疏表型策略的优化
关键信息:使用稀疏表型实验的训练和测试集的基因型之间的相关性有助于通过利用关系测量来优化品系分配,从而在不影响遗传增益的情况下降低成本。由于选择决策主要基于多环境试验,表型需要优化并以低成本达到所需的精度。在植物育种中,利用关系测量和基因组预测来优化稀疏表型是可能的。本研究利用基因组数据和训练(完整测试基因型)和测试集(稀疏测试基因型)之间的关系测量来优化稀疏测试中基因型到子集的分配。不同的稀疏表型设计基于株系在全套中的百分比(%)、部分测试株系的数量、测试环境的数量以及在环境中分配株系的平衡和不平衡方法进行模拟。利用8个相关测量值来计算全集和稀疏集基因型之间的相关性。结果表明,在精度测量方面,平衡和分配50%的线比分配30%的线给完整集和平衡稀疏方法显示出更高的Pearson相关性。通过减少每个稀疏集的未测试环境,结果提高了测量的准确性。在稀疏表型实验中,使用精度测量,关系测量显示出低显著的Pearson相关,范围为0.20至0.31。Pearson正相关表明,在稀疏表型设计中,精度测量的最大化有助于优化株系分配。
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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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