Multi-omics resources for targeted agronomic improvement of pigmented rice

被引:0
|
作者
Khalid Sedeek
Andrea Zuccolo
Alice Fornasiero
Annika M. Weber
Krishnaveni Sanikommu
Sangeetha Sampathkumar
Luis F. Rivera
Haroon Butt
Saule Mussurova
Abdulrahman Alhabsi
Nurmansyah Nurmansyah
Elizabeth P. Ryan
Rod A. Wing
Magdy M. Mahfouz
机构
[1] King Abdullah University of Science and Technology,Laboratory for Genome Engineering and Synthetic Biology, Division of Biological Sciences
[2] King Abdullah University of Science and Technology,Center for Desert Agriculture, Biological and Environmental Sciences and Engineering Division
[3] Sant’Anna School of Advanced Studies,Crop Science Research Center
[4] Colorado State University,Department of Environmental and Radiological Health Sciences
[5] Universitas Gadjah Mada,Department of Agronomy, Faculty of Agriculture
[6] University of Arizona,Arizona Genomics Institute, School of Plant Sciences
[7] International Rice Research Institute,undefined
[8] Strategic Innovation,undefined
来源
Nature Food | 2023年 / 4卷
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摘要
Pigmented rice (Oryza sativa L.) is a rich source of nutrients, but pigmented lines typically have long life cycles and limited productivity. Here we generated genome assemblies of 5 pigmented rice varieties and evaluated the genetic variation among 51 pigmented rice varieties by resequencing an additional 46 varieties. Phylogenetic analyses divided the pigmented varieties into four varietal groups: Geng-japonica, Xian-indica, circum-Aus and circum-Basmati. Metabolomics and ionomics profiling revealed that black rice varieties are rich in aromatic secondary metabolites. We established a regeneration and transformation system and used CRISPR–Cas9 to knock out three flowering time repressors (Hd2, Hd4 and Hd5) in the black Indonesian rice Cempo Ireng, resulting in an early maturing variety with shorter stature. Our study thus provides a multi-omics resource for understanding and improving Asian pigmented rice.
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页码:366 / 371
页数:5
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