| Literature DB >> 32702458 |
Yunlong Pang1, Chunxia Liu1, Danfeng Wang1, Paul St Amand2, Amy Bernardo3, Wenhui Li1, Fang He4, Linzhi Li5, Liming Wang6, Xiufang Yuan1, Lei Dong1, Yu Su1, Huirui Zhang1, Meng Zhao1, Yunlong Liang1, Hongze Jia1, Xitong Shen1, Yue Lu1, Hongming Jiang5, Yuye Wu1, Anfei Li1, Honggang Wang1, Lingrang Kong1, Guihua Bai7, Shubing Liu8.
Abstract
Wheat (Triticum aestivum) is a major staple food crop worldwide. Genetic dissection of important agronomic traits is essential for continuous improvement of wheat yield to meet the demand of the world's growing population. We conducted a large-scale genome-wide association study (GWAS) using a panel of 768 wheat cultivars that were genotyped with 327 609 single-nucleotide polymorphisms generated by genotyping-by-sequencing and detected 395 quantitative trait loci (QTLs) for 12 traits under 7 environments. Among them, 273 QTLs were delimited to ≤1.0-Mb intervals and 7 of them are either known genes (Rht-D, Vrn-B1, and Vrn-D1) that have been cloned or known QTLs (TaGA2ox8, APO1, TaSus1-7B, and Rht12) that were previously mapped. Eight putative candidate genes were identified for three QTLs that enhance spike seed setting and grain size using gene expression data and were validated in three bi-parental populations. Protein sequence analysis identified 33 putative wheat orthologs that have high identity with rice genes in QTLs affecting similar traits. Large r2 values for additive effects observed among the QTLs for most traits indicated that the phenotypes of these identified QTLs were highly predictable. Results from this study demonstrated that significantly increasing GWAS population size and marker density greatly improves detection and identification of candidate genes underlying a QTL, solidifying the foundation for large-scale QTL fine mapping, candidate gene validation, and developing functional markers for genomics-based breeding in wheat.Entities:
Keywords: agronomic traits; candidate genes; genome-wide association; wheat
Mesh:
Year: 2020 PMID: 32702458 DOI: 10.1016/j.molp.2020.07.008
Source DB: PubMed Journal: Mol Plant ISSN: 1674-2052 Impact factor: 13.164