Knowledge Center Catalog

Local cover image
Local cover image

Mapping novel yellow and leaf rust loci and predicting resistance in cross derived Canadian durum wheat

By: Contributor(s): Material type: ArticleLanguage: English Publication details: United States of America : Wiley Periodicals LLC, 2025.ISSN:
  • 1940-3372 (Online)
Subject(s): Online resources: In: Plant Genome United States of America : Wiley Periodicals LLC, 2025 v. 18, no. 4, e70124Summary: Durum wheat (Triticum turgidum ssp. durum) suffers substantial yield losses from yellow rust (Puccinia striiformis) and leaf rust (Puccinia triticina). In this study, we employed genome-wide association studies (GWAS) to identify loci associated with rust resistance and used genomic selection (GS) to evaluate the predictive accuracy of different statistical models and phenotyping metrics (AUDPC_GDD, Angle, GDD50, and maxVar) in a Canadian durum wheat panel. The panel was evaluated in Mexico for yellow rust across three seasons near Toluca, and for leaf rust over two seasons at El Bat & aacute;n. Our GWAS identified 36 significant marker-trait associations (MTAs), including known loci (Yr30, Yr57, Yr82, YrU1, Lr16, Lr17, Lr18, and Lr65) and previously unreported regions. Yellow rust resistance was linked to loci on chromosomes 3A (602.7 Mbp) and 3B (243.4 Mbp), while leaf rust MTAs appeared on chromosomes 5A (552.8 Mbp) and 7A (570 Mbp). Candidate genes near novel MTAs encode defense-related proteins such as serine/threonine kinases and NB-ARC (nucleotide binding-Apaf-1, R proteins, and CED-4), F-box, and RIN4 (RPM1-interacting protein 4)-domain proteins. Among four scoring metrics tested, AUDPC_GDD consistently outperformed others for yellow rust, whereas maxVar was most effective for leaf rust, reflecting differences in phenotypic distribution and trait variance. Bayesian GS models (BayesB) achieved the highest prediction accuracy, but including GWAS-derived fixed effects did not improve predictions, likely due to complexities in modeling major-effect loci. These results underscore the importance of rust-specific phenotyping strategies and illustrate the difficulty of integrating GWAS into GS models to dissect complex resistance traits.
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Status
Article CIMMYT Knowledge Center: John Woolston Library CIMMYT Staff Publications Collection Available
Total holds: 0

Peer review

Open Access

Durum wheat (Triticum turgidum ssp. durum) suffers substantial yield losses from yellow rust (Puccinia striiformis) and leaf rust (Puccinia triticina). In this study, we employed genome-wide association studies (GWAS) to identify loci associated with rust resistance and used genomic selection (GS) to evaluate the predictive accuracy of different statistical models and phenotyping metrics (AUDPC_GDD, Angle, GDD50, and maxVar) in a Canadian durum wheat panel. The panel was evaluated in Mexico for yellow rust across three seasons near Toluca, and for leaf rust over two seasons at El Bat & aacute;n. Our GWAS identified 36 significant marker-trait associations (MTAs), including known loci (Yr30, Yr57, Yr82, YrU1, Lr16, Lr17, Lr18, and Lr65) and previously unreported regions. Yellow rust resistance was linked to loci on chromosomes 3A (602.7 Mbp) and 3B (243.4 Mbp), while leaf rust MTAs appeared on chromosomes 5A (552.8 Mbp) and 7A (570 Mbp). Candidate genes near novel MTAs encode defense-related proteins such as serine/threonine kinases and NB-ARC (nucleotide binding-Apaf-1, R proteins, and CED-4), F-box, and RIN4 (RPM1-interacting protein 4)-domain proteins. Among four scoring metrics tested, AUDPC_GDD consistently outperformed others for yellow rust, whereas maxVar was most effective for leaf rust, reflecting differences in phenotypic distribution and trait variance. Bayesian GS models (BayesB) achieved the highest prediction accuracy, but including GWAS-derived fixed effects did not improve predictions, likely due to complexities in modeling major-effect loci. These results underscore the importance of rust-specific phenotyping strategies and illustrate the difficulty of integrating GWAS into GS models to dissect complex resistance traits.

Text in English

Agriculture Development Fund (ADF) Saskatchewan Wheat Development Commission (Sask Wheat) Canadian National Wheat Cluster Canadian Wheat Research Coalition (CWRC) Agriculture and Agri-Food Canada (AAFC) European Regional Development Fund (ERDF) Breeding for Tomorrow

https://hdl.handle.net/10568/179138

Click on an image to view it in the image viewer

Local cover image
Share

International Maize and Wheat Improvement Center (CIMMYT) © Copyright 2021.
Carretera México-Veracruz. Km. 45, El Batán, Texcoco, México, C.P. 56237.
If you have any question, please contact us at
CIMMYT-Knowledge-Center@cgiar.org