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ggComp enables dissection of germplasm resources and construction of a multiscale germplasm network in wheat

Authors :
Zhengzhao Yang
Zihao Wang
Wenxi Wang
Xiaoming Xie
Lingling Chai
Xiaobo Wang
Xibo Feng
Jinghui Li
Huiru Peng
Zhenqi Su
Mingshan You
Yingyin Yao
Mingming Xin
Zhaorong Hu
Jie Liu
Rongqi Liang
Zhongfu Ni
Qixin Sun
Weilong Guo
Source :
Plant Physiology. 188:1950-1965
Publication Year :
2022
Publisher :
Oxford University Press (OUP), 2022.

Abstract

Accurate germplasm characterization is a vital step for accelerating crop genetic improvement, which remains largely infeasible for crops such as bread wheat (Triticum aestivum L.), which has a complex genome that undergoes frequent introgression and contains many structural variations. Here, we propose a genomic strategy called ggComp, which integrates resequencing data with copy number variations and stratified single-nucleotide polymorphism densities to enable unsupervised identification of pairwise germplasm resource-based Identity-By-Descent (gIBD) blocks. The reliability of ggComp was verified in wheat cultivar Nongda5181 by dissecting parental-descent patterns represented by inherited genomic blocks. With gIBD blocks identified among 212 wheat accessions, we constructed a multi-scale genomic-based germplasm network. At the whole-genome level, the network helps to clarify pedigree relationship, demonstrate genetic flow, and identify key founder lines. At the chromosome level, we were able to trace the utilization of 1RS introgression in modern wheat breeding by hitchhiked segments. At the single block scale, the dissected germplasm-based haplotypes nicely matched with previously identified alleles of “Green Revolution” genes and can guide allele mining and dissect the trajectory of beneficial alleles in wheat breeding. Our work presents a model-based framework for precisely evaluating germplasm resources with genomic data. A database, WheatCompDB (http://wheat.cau.edu.cn/WheatCompDB/), is available for researchers to exploit the identified gIBDs with a multi-scale network.

Details

ISSN :
15322548 and 00320889
Volume :
188
Database :
OpenAIRE
Journal :
Plant Physiology
Accession number :
edsair.doi.dedup.....ddac7182a408f7f1a200b2f0d5581c1e