Plant Breeding and Genetics Section, School of Integrative Plant Science, Cornell University, Ithaca, NY, 14853, USA.
Department of Plant Pathology and Department of Agronomy, Kansas State University, Manhattan, KS, 66506, USA.
Theor Appl Genet. 2019 Jun;132(6):1705-1720. doi: 10.1007/s00122-019-03309-0. Epub 2019 Feb 18.
Genomic selection (GS) models have been validated for many quantitative traits in wheat (Triticum aestivum L.) breeding. However, those models are mostly constrained within the same growing cycle and the extension of GS to the case of across cycles has been a challenge, mainly due to the low predictive accuracy resulting from two factors: reduced genetic relationships between different families and augmented environmental variances between cycles. Using the data collected from diverse field conditions at the International Wheat and Maize Improvement Center, we evaluated GS for grain yield in three elite yield trials across three wheat growing cycles. The objective of this project was to employ the secondary traits, canopy temperature, and green normalized difference vegetation index, which are closely associated with grain yield from high-throughput phenotyping platforms, to improve prediction accuracy for grain yield. The ability to predict grain yield was evaluated reciprocally across three cycles with or without secondary traits. Our results indicate that prediction accuracy increased by an average of 146% for grain yield across cycles with secondary traits. In addition, our results suggest that secondary traits phenotyped during wheat heading and early grain filling stages were optimal for enhancing the prediction accuracy for grain yield.
基因组选择 (GS) 模型已在小麦 (Triticum aestivum L.) 育种的许多数量性状中得到验证。然而,这些模型大多局限于同一生长周期内,将 GS 扩展到跨周期的情况一直是一个挑战,主要原因是两个因素导致预测准确性降低:不同家系之间的遗传关系减少和周期之间的环境方差增加。本研究利用国际小麦玉米改良中心在不同田间条件下收集的数据,评估了三个小麦生长周期中三个优秀产量试验中的籽粒产量的 GS。该项目的目的是利用与高通量表型平台上的籽粒产量密切相关的次要性状(冠层温度和归一化差异植被指数)来提高籽粒产量的预测准确性。通过有无次要性状的方式在三个周期内相互评估预测籽粒产量的能力。结果表明,加入次要性状后,跨周期的籽粒产量预测准确性平均提高了 146%。此外,研究结果表明,在小麦抽穗和早期灌浆阶段表型的次要性状最有利于提高籽粒产量的预测准确性。