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Research Article | Open Access

Genomic prediction using composite training sets is an effective method for exploiting germplasm conserved in rice gene banks

Sang Hea,1Hongyan Liud,1Junhui ZhanaYun MengaYamei WangaFeng Wangc( )Guoyou Yea,b( )
CAAS-IRRI Joint Laboratory for Genomics-Assisted Germplasm Enhancement, Agricultural Genomics Institute in Shenzhen, Chinese Academy of Agricultural Sciences, Shenzhen 518120, Guangdong, China
Rice Breeding Innovations Platform, International Rice Research Institute, DAPO Box 7777, Metro Manila, Philippines
Guangdong Provincial Key Laboratory of New Technology in Rice Breeding, Rice Research Institute, Guangdong Academy of Agricultural Sciences, Guangzhou 510640, Guangdong, China
Hainan Key Laboratory for Sustainable Utilization of Tropical Bioresource, College of Tropical Crops, Hainan University, Haikou 570228, Hainan, China

1 These authors contributed equally to this work.

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Abstract

Germplasm conserved in gene banks is underutilized, owing mainly to the cost of characterization. Genomic prediction can be applied to predict the genetic merit of germplasm. Germplasm utilization could be greatly accelerated if prediction accuracy were sufficiently high with a training population of practical size. Large-scale resequencing projects in rice have generated high quality genome-wide variation information for many diverse accessions, making it possible to investigate the potential of genomic prediction in rice germplasm management and exploitation. We phenotyped six traits in nearly 2000 indica (XI) and japonica (GJ) accessions from the Rice 3K project and investigated different scenarios for forming training populations. A composite core training set was considered in two levels which targets used for prediction of subpopulations within subspecies or prediction across subspecies. Composite training sets incorporating 400 or 200 accessions from either subpopulation of XI or GJ showed satisfactory prediction accuracy. A composite training set of 600 XI and GJ accessions showed sufficiently high prediction accuracy for both XI and GJ subspecies. Comparable or even higher prediction accuracy was observed for the composite training set than for the corresponding homogeneous training sets comprising accessions only of specific subpopulations of XI or GJ (within-subspecies level) or pure XI or GJ accessions (across-subspecies level) that were included in the composite training set. Validation using an independent population of 281 rice cultivars supported the predictive ability of the composite training set. Reliability, which reflects the robustness of a training set, was markedly higher for the composite training set than for the corresponding homogeneous training sets. A core training set formed from diverse accessions could accurately predict the genetic merit of rice germplasm.

The Crop Journal
Pages 1073-1082
Cite this article:
He S, Liu H, Zhan J, et al. Genomic prediction using composite training sets is an effective method for exploiting germplasm conserved in rice gene banks. The Crop Journal, 2022, 10(4): 1073-1082. https://doi.org/10.1016/j.cj.2021.11.011

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Received: 21 September 2021
Revised: 18 November 2021
Accepted: 11 December 2021
Published: 06 January 2022
© 2022 Crop Science Society of China and Institute of Crop Science, CAAS.

This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

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