AI Article Synopsis

  • China's and Europe's reliance on imported protein threatens their food self-sufficiency, with a potential solution being the cultivation of more legumes like alfalfa, which produces high protein under temperate conditions.
  • A study involving 395 alfalfa accessions from various regions utilized Genotyping-by-Sequencing (GBS) to analyze genetic diversity and identify distinct genetic groups based on geographical origins, revealing that European and American accessions differ genetically from Chinese ones.
  • The research identified several Quantitative Trait Loci (QTL) linked to fall dormancy, demonstrating effective genomic prediction abilities, especially using infinitesimal methods, which indicate promising advancements in alfalfa breeding.

Article Abstract

China's and Europe's dependence on imported protein is a threat to the food self-sufficiency of these regions. It could be solved by growing more legumes, including alfalfa that is the highest protein producer under temperate climate. To create productive and high-value varieties, the use of large genetic diversity combined with genomic evaluation could improve current breeding programs. To study alfalfa diversity, we have used a set of 395 alfalfa accessions (i.e. populations), mainly from Europe, North and South America and China, with fall dormancy ranging from 3 to 7 on a scale of 11. Five breeders provided materials (617 accessions) that were compared to the 400 accessions. All accessions were genotyped using Genotyping-by-Sequencing (GBS) to obtain SNP allele frequency. These genomic data were used to describe genetic diversity and identify genetic groups. The accessions were phenotyped for phenology traits (fall dormancy and flowering date) at two locations (Lusignan in France, Novi Sad in Serbia) from 2018 to 2021. The QTL were detected by a Multi-Locus Mixed Model (mlmm). Subsequently, the quality of the genomic prediction for each trait was assessed. Cross-validation was used to assess the quality of prediction by testing GBLUP, Bayesian Ridge Regression (BRR), and Bayesian Lasso methods. A genetic structure with seven groups was found. Most of these groups were related to the geographical origin of the accessions and showed that European and American material is genetically distinct from Chinese material. Several QTL associated with fall dormancy were found and most of these were linked to genes. In our study, the infinitesimal methods showed a higher prediction quality than the Bayesian Lasso, and the genomic prediction achieved high (>0.75) predicting abilities in some cases. Our results are encouraging for alfalfa breeding by showing that it is possible to achieve high genomic prediction quality.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10354441PMC
http://dx.doi.org/10.3389/fpls.2023.1196134DOI Listing

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