4.8 Article

Pan-genome analysis of 33 genetically diverse rice accessions reveals hidden genomic variations

期刊

CELL
卷 184, 期 13, 页码 3542-+

出版社

CELL PRESS
DOI: 10.1016/j.cell.2021.04.046

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资金

  1. National Key Research and Development Program of China [2016YFD0100400]
  2. Chinese Academy of Sciences ``Strategic Priority Research Program'' [XDA24040201]
  3. National Natural Science Foundation of China [92035301]
  4. State Key Laboratory of Plant Genomics

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The study assembled high-quality genomes of genetically diverse rice accessions, discovering a large number of structural variations and gene copy number variations. By using a graph-based genome, the research explored the impact of these variations on rice domestication and environmental adaptation.
Structural variations (SVs) and gene copy number variations (gCNVs) have contributed to crop evolution, domestication, and improvement. Here, we assembled 31 high-quality genomes of genetically diverse rice accessions. Coupling with two existing assemblies, we developed pan-genome-scale genomic resources including a graph-based genome, providing access to rice genomic variations. Specifically, we discovered 171,072 SVs and 25,549 gCNVs and used an Oryza glaberrima assembly to infer the derived states of SVs in the Oryza sativa population. Our analyses of SV formation mechanisms, impacts on gene expression, and distributions among subpopulations illustrate the utility of these resources for understanding how SVs and gCNVs shaped rice environmental adaptation and domestication. Our graph-based genome enabled genome-wide association study (GWAS)-based identification of phenotype-associated genetic variations undetectable when using only SNPs and a single reference assembly. Our work provides rich population-scale resources paired with easy-to-access tools to facilitate rice breeding as well as plant functional genomics and evolutionary biology research.

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