多环境木薯育种试验中资源优化配置的稀疏试验设计。

IF 3.9 2区 生物学 Q1 GENETICS & HEREDITY
Plant Genome Pub Date : 2025-03-01 DOI:10.1002/tpg2.20558
Nelson Lubanga, Beatrice E Ifie, Reyna Persa, Ibnou Dieng, Ismail Yusuf Rabbi, Diego Jarquin
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引用次数: 0

摘要

改良品种的开发需要建立多环境试验(METs),以评估其在各种环境条件下的表现。然而,高表型成本往往限制了在所有目标环境中评估基因型的能力。我们的主要目标是探索在木薯育种计划中实施稀疏测试的潜力,以降低METs表型分析的成本。本研究使用的群体包括435个木薯基因型,在尼日利亚的5种环境中对干物质(dm)和鲜根产量(田间)进行了评估。稀疏测试设计基于无重叠(NOL)、完全重叠(OL)以及介于NOL和OL基因型之间的中间基因型。评估了三种预测模型(一种仅基于表型,而两种具有基因组数据)。当使用大训练集时,三种模型均具有较高的预测能力和较低的均方误差(MSE)。对于相同的训练集大小和分配,采用基因型-环境相互作用(gxe)模型时,预测能力增加,MSE降低。在不同的环境中,随着OL基因型的增加,预测能力下降,而MSE增加,这表明只需要少数OL基因型就可以建立用于模型训练的METs。使用包含gxe的模型进行稀疏测试可以降低木薯METs表型的成本。如果数据可用,将作物生长模型(cgm)与基因组预测相结合将有可能提高预测能力。在固定预算的情况下,通过优化用于稀疏检验的训练种群,确定最优的基因型大小和分布,提高预测能力,降低成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse testing designs for optimizing resource allocation in multi-environment cassava breeding trials.

The development of improved cultivars requires establishing multi-environment trials (METs) to evaluate their performance under a wide range of environmental conditions. However, the high phenotyping costs often limit the capacity to evaluate genotypes in all the target environments. Our main objective was to explore the potential of implementing sparse testing in cassava breeding programs to reduce the cost of phenotyping in METs. The population used in this study consisted of 435 cassava genotypes evaluated in five environments in Nigeria for dry matter (dm) and fresh root yield (fyld). Sparse testing designs were developed based on non-overlapping (NOL), completely overlapping (OL), and intermediates between NOL and OL genotypes. Three prediction models were assessed (one based on phenotypes only, while two had genomic data). All the three models had a higher predictive ability and a lower mean square error (MSE) when a large training set was used. Predictive ability increased and MSE reduced when genotype-by-environment interaction (G × E) was modeled for the same training set sizes and allocations. Predictive ability decreased while MSE increased with the increasing OL genotypes across the environments, suggesting that only a few OL genotypes may be required to set up METs for model training. Sparse testing using a model incorporating G × E could be implemented to reduce cost of phenotyping in cassava METs. If data were available, integrating crop growth models (CGMs) with genomic prediction holds the potential to improve predictive ability. The training population used for sparse testing could be optimized to determine the optimal size and distribution of genotypes to increase the predictive ability and reduce cost under a fixed budget.

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来源期刊
Plant Genome
Plant Genome PLANT SCIENCES-GENETICS & HEREDITY
CiteScore
6.00
自引率
4.80%
发文量
93
审稿时长
>12 weeks
期刊介绍: The Plant Genome publishes original research investigating all aspects of plant genomics. Technical breakthroughs reporting improvements in the efficiency and speed of acquiring and interpreting plant genomics data are welcome. The editorial board gives preference to novel reports that use innovative genomic applications that advance our understanding of plant biology that may have applications to crop improvement. The journal also publishes invited review articles and perspectives that offer insight and commentary on recent advances in genomics and their potential for agronomic improvement.
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