作者
Zhongjie Liu,Nan Wang,Ying Su,Qiming Long,Yanling Peng,Lingfei Shangguan,Fan Zhang,Shuo Cao,Xu Wang,Mengqing Ge,Hui Xue,Zhi‐Yao Ma,Wénwén Liú,Xiaodong Xu,Chaochao Li,Xuejing Cao,Bilal Ahmad,Xiangnian Su,Yuting Liu,Guizhou Huang,Mengrui Du,Zhenya Liu,Yu Gan,Lei Sun,Xiucai Fan,Chuan Zhang,Zhong Haixia,Xiangpeng Leng,Yanhua Ren,Tianyu Dong,Dan Pei,Xinyu Wu,Zhongxin Jin,Yiwen Wang,Chonghuai Liu,Jinfeng Chen,Brandon S. Gaut,Sanwen Huang,Jinggui Fang,Hua Xiao,Yongfeng Zhou
摘要
Grapevine breeding is hindered by a limited understanding of the genetic basis of complex agronomic traits. This study constructs a graph-based pangenome reference (Grapepan v.1.0) from 18 newly generated phased telomere-to-telomere assemblies and 11 published assemblies. Using Grapepan v.1.0, we build a variation map with 9,105,787 short variations and 236,449 structural variations (SVs) from the resequencing data of 466 grapevine cultivars. Integrating SVs into a genome-wide association study, we map 148 quantitative trait loci for 29 agronomic traits (50.7% newly identified), with 12 traits significantly contributed by SVs. The estimated heritability improves by 22.78% on average when including SVs. We discovered quantitative trait locus regions under divergent artificial selection in metabolism and berry development between wine and table grapes, respectively. Moreover, significant genetic correlations were detected among the 29 traits. Under a polygenic model, we conducted genomic predictions for each trait. In general, our study facilitates the breeding of superior cultivars via the genomic selection of multiple traits. By constructing a graph-based grapevine pangenome reference (Grapepan v.1.0) and incorporating structural variations and phenotypic maps, the study investigates the genetic basis of agronomic traits, empowering grapevine genomic breeding.