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Dryad

A public mid-density genotyping platform for alfalfa (Medicago sativa L.)

Cite this dataset

Zhao, Dongyan et al. (2024). A public mid-density genotyping platform for alfalfa (Medicago sativa L.) [Dataset]. Dryad. https://doi.org/10.5061/dryad.pc866t1vd

Abstract

Small public breeding programs have many barriers to adopting technology, particularly creating, and using genetic marker panels for genomic-based decisions in selection.  Here we report the creation of a DArTag panel of 3,000 loci distributed across the alfalfa genome for use in molecular breeding and genomic prediction. The creation of this marker panel brings cost-effective and rapid genotyping capabilities to public breeding programs.  The open access provided by this platform will allow genetic data sets generated on the marker panel to be compared and joined across projects, institutions, and countries. This genotyping resource has the power to bring genotyping equity to breeders in alfalfa.  This is the first installment of a series of papers on creating affordable public genotyping resources for underserved agricultural plant and animal species.

Methods

The haplotype fasta file was created by aggregating microhaplotypes discovered in various alfalfa populations, germplasms, and its wild relatives using a 3K DArTag genotyping marker panel. This alfalfa 3K DArTag panel was developed from a diversity panel of 40 alfalfa genotypes, focusing on elite breeding and stress-resistant genotypes used in North America. This panel consisted of 17 elite parents with various fall dormancy levels, six samples of diploid-cultivated alfalfa, 13 genotypes with abiotic stress resistance, one genotype with Aphanomyces root rot disease resistance, and three other genotypes.

Usage notes

The haplotype FASTA file can be opened with any text editor or linux command line. The readme file can be opened with any text editor.

Funding

United States Department of Agriculture, Award: 8062-21000-043-004-A, ARS

United States Department of Agriculture, Award: 2022-67013-36269, NIFA