National Key Laboratory of Crop Genetic Improvement, Huazhong Agricultural University, Wuhan, China.
Aquatic and Crop Resource Development, National Research Council Canada, Saskatoon, Saskatchewan, Canada.
Plant Biotechnol J. 2023 Oct;21(10):1966-1977. doi: 10.1111/pbi.14104. Epub 2023 Jun 30.
Dissecting the genetic basis of complex traits such as dynamic growth and yield potential is a major challenge in crops. Monitoring the growth throughout growing season in a large wheat population to uncover the temporal genetic controls for plant growth and yield-related traits has so far not been explored. In this study, a diverse wheat panel composed of 288 lines was monitored by a non-invasive and high-throughput phenotyping platform to collect growth traits from seedling to grain filling stage and their relationship with yield-related traits was further explored. Whole genome re-sequencing of the panel provided 12.64 million markers for a high-resolution genome-wide association analysis using 190 image-based traits and 17 agronomic traits. A total of 8327 marker-trait associations were detected and clustered into 1605 quantitative trait loci (QTLs) including a number of known genes or QTLs. We identified 277 pleiotropic QTLs controlling multiple traits at different growth stages which revealed temporal dynamics of QTLs action on plant development and yield production in wheat. A candidate gene related to plant growth that was detected by image traits was further validated. Particularly, our study demonstrated that the yield-related traits are largely predictable using models developed based on i-traits and provide possibility for high-throughput early selection, thus to accelerate breeding process. Our study explored the genetic architecture of growth and yield-related traits by combining high-throughput phenotyping and genotyping, which further unravelled the complex and stage-specific contributions of genetic loci to optimize growth and yield in wheat.
解析动态生长和产量潜力等复杂性状的遗传基础是作物研究中的主要挑战。迄今为止,尚未探索在大群体小麦中监测整个生长季节的生长情况,以揭示植物生长和与产量相关的性状的时间遗传控制。在这项研究中,通过非侵入性和高通量表型平台监测了由 288 个系组成的多样化小麦群体,以收集从幼苗到灌浆阶段的生长性状,并进一步探讨了它们与与产量相关的性状的关系。该群体的全基因组重测序为使用基于 190 个图像的性状和 17 个农艺性状的全基因组关联分析提供了 1264 万个标记。总共检测到 8327 个标记-性状关联,并将其聚类为 1605 个数量性状位点(QTL),包括一些已知的基因或 QTL。我们鉴定了 277 个控制不同生长阶段多个性状的多效性 QTL,揭示了 QTL 在小麦发育和产量形成中的时间动态。通过图像性状检测到的一个与植物生长有关的候选基因进一步得到了验证。特别是,我们的研究表明,使用基于 i-性状开发的模型可以很好地预测与产量相关的性状,从而为高通量早期选择提供了可能性,进而加速了育种过程。我们的研究通过结合高通量表型和基因型解析了生长和与产量相关的性状的遗传结构,进一步揭示了遗传位点对优化小麦生长和产量的复杂和特定阶段的贡献。