Genomic and GWAS analyses demonstrate phylogenomic relationships of Gossypium barbadense in China and selection for fibre length, lint percentage and Fusarium wilt resistance

基因组学和全基因组关联分析揭示了中国海岛棉的系统发育基因组关系,以及纤维长度、棉绒率和枯萎病抗性的选择。

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作者:Nan Zhao,Weiran Wang,Corrinne E Grover,Kaiyun Jiang,Zhuanxia Pan,Baosheng Guo,Jiahui Zhu,Ying Su,Meng Wang,Hushuai Nie,Li Xiao,Anhui Guo,Jing Yang,Cheng Cheng,Xinmin Ning,Bin Li,Haijiang Xu,Daniel Adjibolosoo,Alifu Aierxi,Pengbo Li,Junyi Geng,Jonathan F Wendel,Jie Kong,Jinping Hua

Abstract

Sea Island cotton (Gossypium barbadense) is the source of the world's finest fibre quality cotton, yet relatively little is understood about genetic variations among diverse germplasms, genes underlying important traits and the effects of pedigree selection. Here, we resequenced 336 G. barbadense accessions and identified 16 million SNPs. Phylogenetic and population structure analyses revealed two major gene pools and a third admixed subgroup derived from geographical dissemination and interbreeding. We conducted a genome-wide association study (GWAS) of 15 traits including fibre quality, yield, disease resistance, maturity and plant architecture. The highest number of associated loci was for fibre quality, followed by disease resistance and yield. Using gene expression analyses and VIGS transgenic experiments, we confirmed the roles of five candidate genes regulating four key traits, that is disease resistance, fibre length, fibre strength and lint percentage. Geographical and temporal considerations demonstrated selection for the superior fibre quality (fibre length and fibre strength), and high lint percentage in improving G. barbadense in China. Pedigree selection breeding increased Fusarium wilt disease resistance and separately improved fibre quality and yield. Our work provides a foundation for understanding genomic variation and selective breeding of Sea Island cotton.

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