Association Mapping of Plant Structure and Yield Traits in Faba Bean (vicia Faba L.)
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Abstract
Tens of thousands of faba bean accessions are available in germplasm collections throughout the world. Morphological characterization of these materials can enrich these collections and aid in the selection of genotypes for use in breeding programs. Results: In this study, 26 morphological characters were analyzed for 61 faba bean landraces and 53 cultivars over two seasons in Izmir, Turkey. The genotypes had high diversity for several yield traits including number of pods per plant, dry seed yield, and 100-seed weight. Association mapping was conducted for the morphological characters using 651 alleles from 100 simple sequence repeat (SSR) markers and a general linear model based on the Q matrix. A false discovery rate of 0.20 was used to test the significance of marker–trait associations resulting in 75 loci detected for 20 of the morphological characters (p ≤ 0.001). Conclusion: Overall, 44% of the quantitative trait loci (QTLs) were for seed traits, with 24%, 15%, and 17% of QTL identified for vegetative, inflorescence, and pod traits, respectively. The phenotypic data and marker–trait associations generated by this work can help breeding programs in the selection and improvement of faba bean. © 2023 Society of Chemical Industry.
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Keywords
Broad Bean (Vicia Faba L.), Diversity Analysis, Molecular Characterization, Qtl, Quantitative Trait Locus Mapping
Fields of Science
0301 basic medicine, 0303 health sciences, 03 medical and health sciences
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3
Issue
11
Start Page
536
End Page
548
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