Using phenomic selection to predict hybrid values with NIR spectra measured on the parental lines: proof of concept on maize.

IF 4.4 1区 农林科学 Q1 AGRONOMY
Renaud Rincent, Junita Solin, Alizarine Lorenzi, Laura Nunes, Yves Griveau, Ludivine Pirus, Dominique Kermarrec, Cyril Bauland, Matthieu Reymond, Laurence Moreau
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引用次数: 0

Abstract

Key message: Phenomic selection based on parental spectra can be used to predict GCA and SCA in a sparse factorial design. Prediction approaches such as genomic selection can be game changers in hybrid breeding. They allow predicting the genetic values of hybrids without the need for their physical production. This leads to significant reductions in breeding cycle length, and so to the increase in genetic progress. However, these methods are often underutilized in breeding programs due to the substantial cost involved in genotyping thousands of candidate parental lines annually. To address this limitation, we propose a cost-effective alternative based on phenomic selection, where genotyping of parental lines is replaced by NIR spectroscopy. Standard prediction models are then applied for genomic and phenomic selection, using similarity matrices derived from either genotyping data (genomic selection) or NIR spectral data (phenomic selection). Our hypothesis is that the chemical composition of parental tissues captured by NIRS reflects the genetic similarity between parental lines. We evaluated both strategies using a sparse factorial design, whose hybrids have been phenotyped in a multi-environment trial network, and with NIR spectra acquired on the parental lines on two independent environments. Both genomic and phenomic prediction approaches demonstrated moderate-to-high predictive abilities across various cross-validation scenarios. Our results also showcase the capability of phenomic selection to predict Mendelian sampling. This study serves as a proof of concept that low-cost high-throughput phenomics of parental lines can effectively be used to predict maize hybrids in independent trials. This paves the way for widespread adoption of prediction approaches at the very first stages of hybrid breeding, benefiting both major and orphan species.

利用近红外光谱在亲本系上测量的现象选择预测杂交价值:在玉米上的概念证明。
关键信息:在稀疏因子设计中,基于亲本谱的表型选择可用于预测GCA和SCA。基因组选择等预测方法可以改变杂交育种的游戏规则。它们可以在不需要实际生产的情况下预测杂交品种的遗传价值。这导致育种周期长度的显著缩短,从而增加了遗传进展。然而,这些方法在育种计划中往往未得到充分利用,因为每年数千个候选亲本系的基因分型涉及大量成本。为了解决这一限制,我们提出了一种基于表型选择的经济有效的替代方法,其中亲本系的基因分型由近红外光谱代替。然后使用从基因分型数据(基因组选择)或近红外光谱数据(表型选择)导出的相似性矩阵,将标准预测模型应用于基因组和表型选择。我们的假设是,近红外光谱捕获的亲本组织的化学成分反映了亲本系之间的遗传相似性。我们使用稀疏因子设计评估了这两种策略,其杂交品种已在多环境试验网络中表型化,并在两个独立的环境中获得亲本系的近红外光谱。基因组和表型预测方法在各种交叉验证情景中都表现出中等到高的预测能力。我们的结果也展示了现象选择预测孟德尔抽样的能力。本研究证明了低成本、高通量的亲本表型组学可以在独立试验中有效地用于预测玉米杂交种。这为在杂交育种的最初阶段广泛采用预测方法铺平了道路,使主要物种和孤儿物种都受益。
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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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