Institute of Crop Sciences, Chinese Academy of Agricultural Sciences, Beijing, China.
International Maize and Wheat Improvement Center (CIMMYT), Texcoco, Mexico.
Theor Appl Genet. 2020 Oct;133(10):2869-2879. doi: 10.1007/s00122-020-03638-5. Epub 2020 Jun 30.
Genomic selection with a multiple-year training population dataset could accelerate early-stage testcross testing by skipping the first-stage yield testing, which significantly saves the time and cost of early-stage testcross testing. With the development of doubled haploid (DH) technology, the main task for a maize breeder is to estimate the breeding values of thousands of DH lines annually. In early-stage testcross testing, genomic selection (GS) offers the opportunity of replacing expensive multiple-environment phenotyping and phenotypic selection with lower-cost genotyping and genomic estimated breeding value (GEBV)-based selection. In the present study, a total of 1528 maize DH lines, phenotyped in multiple-environment trials in three consecutive years and genotyped with a low-cost per-sample genotyping platform of rAmpSeq, were used to explore how to implement GS to accelerate early-stage testcross testing. Results showed that the average prediction accuracy estimated from the cross-validation schemes was above 0.60 across all the scenarios. The average prediction accuracies estimated from the independent validation schemes ranged from 0.23 to 0.32 across all the scenarios, when the one-year datasets were used as training population (TRN) to predict the other year data as testing population (TST). The average prediction accuracies increased to a range from 0.31 to 0.42 across all the scenarios, when the two-years datasets were used as TRN. The prediction accuracies increased to a range from 0.50 to 0.56, when the TRN consisted of two-years of breeding data and 50% of third year's data converted from TST to TRN. This information showed that GS with a multiple-year TRN set offers the opportunity to accelerate early-stage testcross testing by skipping the first-stage yield testing, which significantly saves the time and cost of early-stage testcross testing.
利用多年的训练群体数据集进行基因组选择可以通过跳过第一阶段的产量测试来加速早期测验交测试,这显著节省了早期测验交测试的时间和成本。随着双单倍体 (DH) 技术的发展,玉米育种者的主要任务是每年估计数千个 DH 系的育种值。在早期测验交测试中,基因组选择 (GS) 为用低成本的基因分型和基于基因组估计育种值 (GEBV) 的选择代替昂贵的多环境表型和表型选择提供了机会。在本研究中,利用在三年连续多环境试验中表型的 1528 个玉米 DH 系,以及使用低成本的 rAmpSeq 样本基因分型平台进行基因分型,探讨了如何实施 GS 以加速早期测验交测试。结果表明,在所有情景下,交叉验证方案估计的平均预测准确性均高于 0.60。当一年的数据用作训练群体 (TRN) 来预测另一年的数据作为测试群体 (TST) 时,独立验证方案估计的平均预测准确性在所有情景下从 0.23 到 0.32 不等。当两年的数据用作 TRN 时,平均预测准确性提高到 0.31 到 0.42 之间的范围。当 TRN 由两年的育种数据和从 TST 转换为 TRN 的第三年数据的 50%组成时,预测准确性提高到 0.50 到 0.56 之间的范围。这些信息表明,利用多年的 TRN 集进行 GS 为通过跳过第一阶段的产量测试来加速早期测验交测试提供了机会,这显著节省了早期测验交测试的时间和成本。