Ability of Genomic Prediction to Bi-Parent-Derived Breeding Population Using Public Data for Soybean Oil and Protein Content
Chenhui Li, Qing Yang, Bingqiang Liu, Xiaolei Shi, Zhi Liu, Chunyan Yang, Tao Wang, Fuming Xiao, Mengchen Zhang, Ainong Shi, Long Yan

TL;DR
This study explores how public soybean data can be used to predict oil and protein content in breeding populations, aiming to improve breeding efficiency.
Contribution
The study evaluates the effectiveness of using public datasets for genomic prediction in soybean breeding.
Findings
The average prediction ability for oil and protein content was 0.55 and 0.50 within the bi-parent population.
Combining six USDA populations reduced prediction ability to 0.45 for oil and 0.39 for protein.
Using 800 or more accessions and minimizing genetic distance improved prediction accuracy.
Abstract
Genomic selection (GS) is a marker-based selection method used to improve the genetic gain of quantitative traits in plant breeding. A large number of breeding datasets are available in the soybean database, and the application of these public datasets in GS will improve breeding efficiency and reduce time and cost. However, the most important problem to be solved is how to improve the ability of across-population prediction. The objectives of this study were to perform genomic prediction (GP) and estimate the prediction ability (PA) for seed oil and protein contents in soybean using available public datasets to predict breeding populations in current, ongoing breeding programs. In this study, six public datasets of USDA GRIN soybean germplasm accessions with available phenotypic data of seed oil and protein contents from different experimental populations and their genotypic data of…
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Taxonomy
TopicsSoybean genetics and cultivation · Genetics and Plant Breeding · Genetic and phenotypic traits in livestock
