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Graph pangenome captures missing heritability and empowers tomato breeding

Author

Listed:
  • Yao Zhou

    (Chinese Academy of Agricultural Sciences)

  • Zhiyang Zhang

    (Chinese Academy of Agricultural Sciences)

  • Zhigui Bao

    (Chinese Academy of Agricultural Sciences)

  • Hongbo Li

    (Chinese Academy of Agricultural Sciences)

  • Yaqing Lyu

    (Chinese Academy of Agricultural Sciences)

  • Yanjun Zan

    (Chinese Academy of Agricultural Sciences
    Swedish University of Agricultural Sciences)

  • Yaoyao Wu

    (Chinese Academy of Agricultural Sciences)

  • Lin Cheng

    (Chinese Academy of Agricultural Sciences)

  • Yuhan Fang

    (Chinese Academy of Agricultural Sciences)

  • Kun Wu

    (Chinese Academy of Agricultural Sciences)

  • Jinzhe Zhang

    (Sino-Dutch Joint Laboratory of Horticultural Genomics, and Institute of Vegetables and Flowers, Chinese Academy of Agricultural Sciences)

  • Hongjun Lyu

    (Chinese Academy of Agricultural Sciences
    Ministry of Agriculture and Rural Affairs)

  • Tao Lin

    (China Agricultural University)

  • Qiang Gao

    (Boke Biotech)

  • Surya Saha

    (Cornell University)

  • Lukas Mueller

    (Cornell University)

  • Zhangjun Fei

    (Cornell University
    US Department of Agriculture, Agricultural Research Service)

  • Thomas Städler

    (ETH Zurich)

  • Shizhong Xu

    (University of California)

  • Zhiwu Zhang

    (Washington State University)

  • Doug Speed

    (Aarhus University)

  • Sanwen Huang

    (Chinese Academy of Agricultural Sciences)

Abstract

Missing heritability in genome-wide association studies defines a major problem in genetic analyses of complex biological traits1,2. The solution to this problem is to identify all causal genetic variants and to measure their individual contributions3,4. Here we report a graph pangenome of tomato constructed by precisely cataloguing more than 19 million variants from 838 genomes, including 32 new reference-level genome assemblies. This graph pangenome was used for genome-wide association study analyses and heritability estimation of 20,323 gene-expression and metabolite traits. The average estimated trait heritability is 0.41 compared with 0.33 when using the single linear reference genome. This 24% increase in estimated heritability is largely due to resolving incomplete linkage disequilibrium through the inclusion of additional causal structural variants identified using the graph pangenome. Moreover, by resolving allelic and locus heterogeneity, structural variants improve the power to identify genetic factors underlying agronomically important traits leading to, for example, the identification of two new genes potentially contributing to soluble solid content. The newly identified structural variants will facilitate genetic improvement of tomato through both marker-assisted selection and genomic selection. Our study advances the understanding of the heritability of complex traits and demonstrates the power of the graph pangenome in crop breeding.

Suggested Citation

  • Yao Zhou & Zhiyang Zhang & Zhigui Bao & Hongbo Li & Yaqing Lyu & Yanjun Zan & Yaoyao Wu & Lin Cheng & Yuhan Fang & Kun Wu & Jinzhe Zhang & Hongjun Lyu & Tao Lin & Qiang Gao & Surya Saha & Lukas Muelle, 2022. "Graph pangenome captures missing heritability and empowers tomato breeding," Nature, Nature, vol. 606(7914), pages 527-534, June.
  • Handle: RePEc:nat:nature:v:606:y:2022:i:7914:d:10.1038_s41586-022-04808-9
    DOI: 10.1038/s41586-022-04808-9
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    Citations

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    Cited by:

    1. Mingxin Guo & Qun Lian & Ye Mei & Wangwang Yang & Suna Zhao & Siyuan Zhang & Xinfeng Xing & Haixiang Zhang & Keying Gao & Wentong He & Zhitong Wang & Huan Wang & Jun Zhou & Lin Cheng & Zhigui Bao & Sa, 2024. "Analyzes of pan-genome and resequencing atlas unveil the genetic basis of jujube domestication," Nature Communications, Nature, vol. 15(1), pages 1-13, December.
    2. Xinfeng Liu & Wenyu Liu & Johannes A. Lenstra & Zeyu Zheng & Xiaoyun Wu & Jiao Yang & Bowen Li & Yongzhi Yang & Qiang Qiu & Hongyu Liu & Kexin Li & Chunnian Liang & Xian Guo & Xiaoming Ma & Richard J., 2023. "Evolutionary origin of genomic structural variations in domestic yaks," Nature Communications, Nature, vol. 14(1), pages 1-14, December.
    3. Justin N. Vaughn & Sandra E. Branham & Brian Abernathy & Amanda M. Hulse-Kemp & Adam R. Rivers & Amnon Levi & William P. Wechter, 2022. "Graph-based pangenomics maximizes genotyping density and reveals structural impacts on fungal resistance in melon," Nature Communications, Nature, vol. 13(1), pages 1-14, December.
    4. Feng Bai & Peng Shu & Heng Deng & Yi Wu & Yao Chen & Mengbo Wu & Tao Ma & Yang Zhang & Julien Pirrello & Zhengguo Li & Yiguo Hong & Mondher Bouzayen & Mingchun Liu, 2024. "A distal enhancer guides the negative selection of toxic glycoalkaloids during tomato domestication," Nature Communications, Nature, vol. 15(1), pages 1-13, December.
    5. Minghui Kang & Haolin Wu & Huanhuan Liu & Wenyu Liu & Mingjia Zhu & Yu Han & Wei Liu & Chunlin Chen & Yan Song & Luna Tan & Kangqun Yin & Yusen Zhao & Zhen Yan & Shangling Lou & Yanjun Zan & Jianquan , 2023. "The pan-genome and local adaptation of Arabidopsis thaliana," Nature Communications, Nature, vol. 14(1), pages 1-14, December.

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