Identification of genetic loci associated with five agronomic traits in alfalfa using multi-environment trials.

Theor Appl Genet

USA Department of Agriculture - Agricultural Research Service, Plant Germplasm Introduction and Testing Research, Prosser, WA, USA.

Published: April 2023

AI Article Synopsis

  • The study utilized multi-environment trials to evaluate yield-related traits in 200 diverse alfalfa accessions, identifying key molecular markers linked to yield characteristics.
  • Through extensive data collection across three states from 2018 to 2020, several phenotypic traits, including maturity stage, dry matter content, plant height, biomass yield, and fall dormancy, were analyzed.
  • Genome-wide association studies revealed 84 significant markers, with insights into specific genes that can aid in breeding programs aimed at enhancing alfalfa yield and overall performance.

Article Abstract

The use of multi-environment trials to test yield-related traits in a diverse alfalfa panel allowed to find multiple molecular markers associated with complex agronomic traits. Yield is one of the most important target traits in alfalfa breeding; however, yield is a complex trait affected by genetic and environmental factors. In this study, we used multi-environment trials to test yield-related traits in a diverse panel composed of 200 alfalfa accessions and varieties. Phenotypic data of maturity stage measured as mean stage by count (MSC), dry matter content, plant height (PH), biomass yield (Yi), and fall dormancy (FD) were collected in three locations in Idaho, Oregon, and Washington from 2018 to 2020. Single-trial and stagewise analyses were used to obtain estimated trait means of entries by environment. The plants were genotyped using a genotyping by sequencing approach and obtained a genotypic matrix with 97,345 single nucleotide polymorphisms. Genome-wide association studies identified a total of 84 markers associated with the traits analyzed. Of those, 29 markers were in noncoding regions and 55 markers were in coding regions. Ten significant SNPs at the same locus were associated with FD and they were linked to a gene annotated as a nuclear fusion defective 4-like (NFD4). Additional SNPs associated with MSC, PH, and Yi were annotated as transcription factors such as Cysteine3Histidine (C3H), Hap3/NF-YB family, and serine/threonine-protein phosphatase 7 proteins, respectively. Our results provide insight into the genetic factors that influence alfalfa maturity, yield, and dormancy, which is helpful to speed up the genetic gain toward alfalfa yield improvement.

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http://dx.doi.org/10.1007/s00122-023-04364-4DOI Listing

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