Genomic prediction for rust resistance in pea

被引:0
|
作者
Osuna-Caballero, Salvador [1 ]
Rubiales, Diego [1 ]
Annicchiarico, Paolo [2 ]
Nazzicari, Nelson [2 ]
Rispail, Nicolas [1 ]
机构
[1] Spanish Natl Res Council, CSIC, Inst Sustainable Agr, Cordoba, Spain
[2] Spanish Natl Res Council CREA, Res Ctr Anim Prod & Aquaculture, Lodi, Italy
来源
基金
欧盟地平线“2020”;
关键词
DArTseq; Genotype x Environment Interaction; genomic selection; Pisum spp; Uromyces pisi; X ENVIRONMENT INTERACTION; POPULATION-STRUCTURE; SELECTION; YIELD; ACCURACY; TRIALS; AMMI; PEDIGREE; MODELS; IMPACT;
D O I
10.3389/fpls.2024.1429802
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Genomic selection (GS) has become an indispensable tool in modern plant breeding, particularly for complex traits. This study aimed to assess the efficacy of GS in predicting rust (Uromyces pisi) resistance in pea (Pisum sativum), using a panel of 320 pea accessions and a set of 26,045 Silico-Diversity Arrays Technology (Silico-DArT) markers. We compared the prediction abilities of different GS models and explored the impact of incorporating marker x environment (MxE) interaction as a covariate in the GBLUP (genomic best linear unbiased prediction) model. The analysis included phenotyping data from both field and controlled conditions. We assessed the predictive accuracies of different cross-validation strategies and compared the efficiency of using single traits versus a multi-trait index, based on factor analysis and ideotype-design (FAI-BLUP), which combines traits from controlled conditions. The GBLUP model, particularly when modified to include MxE interactions, consistently outperformed other models, demonstrating its suitability for traits affected by complex genotype-environment interactions (GEI). The best predictive ability (0.635) was achieved using the FAI-BLUP approach within the Bayesian Lasso (BL) model. The inclusion of MxE interactions significantly enhanced prediction accuracy across diverse environments in GBLUP models, although it did not markedly improve predictions for non-phenotyped lines. These findings underscore the variability of predictive abilities due to GEI and the effectiveness of multi-trait approaches in addressing complex traits. Overall, our study illustrates the potential of GS, especially when employing a multi-trait index like FAI-BLUP and accounting for MxE interactions, in pea breeding programs focused on rust resistance.
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页数:13
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