Quantile regression in genomic selection for oligogenic traits in autogamous plants: a simulation study
Authors/Creators
- 1. Department of Statistics, Federal University of Viçosa, Viçosa, Minas Gerais, Brazil
- 2. Rubber Tree and Agroforestry Systems Research Center, Campinas Agronomy Institute (IAC), Votuporanga, São Paulo, Brazil
- 3. AGROSAVIA, The Colombian Agricultural Research Corporation, Mosquera, Colômbia
- 4. Department of General Biology, Federal University of Viçosa, Viçosa, Minas Gerais, Brazil
- 5. 5Brazilian Agricultural Research Corporation, Embrapa Coffee, Brasília, DF- Brazil
Description
This study assessed the efficiency of Genomic selection (GS) or genome‐wide selection (GWS), based on Regularized Quantile Regression (RQR), in the selection of genotypes to breed autogamous plant populations with oligogenic traits. To this end, simulated data of an F2 population were used, with traits with different heritability levels (0.10, 0.20 and 0.40), controlled by four genes. The generations were advanced (up to F6) at two selection intensities (10% and 20%). The genomic genetic value was computed by RQR for different quantiles (0.10,0.50 and 0.90), and by the traditional GWS methods, specifically RR-BLUP and BLASSO. A second objective was to find the statistical methodology that allows the fastest fixation of favorable alleles. In general, the results of the RQR model were better than or equal to those of traditional GWS methodologies, achieving the fixation of favorable alleles in most of the evaluated scenarios. At a heritability level of 0.40 and a selection intensity of 10%, RQR (0.50) was the only methodology that fixed the alleles quickly, i.e., in the fourth generation. Thus, it was concluded that the application of RQR in plant breeding, to simulated autogamous plant populations with oligogenic traits, could reduce time and consequently costs, due to the reduction of selfing generations to fix alleles in the evaluated scenarios.
Files
F2_Base_10_20.csv
Files
(3.0 MB)
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