| Literature DB >> 28296913 |
Leonardo de Azevedo Peixoto1, Bruno Galvêas Laviola2, Alexandre Alonso Alves2, Tatiana Barbosa Rosado2, Leonardo Lopes Bhering1.
Abstract
Genomic wide selection is a promising approach for improving the selection accuracy in plant breeding, particularly in species with long life cycles, such as Jatropha. Therefore, the objectives of this study were to estimate the genetic parameters for grain yield (GY) and the weight of 100 seeds (W100S) using restricted maximum likelihood (REML); to compare the performance of GWS methods to predict GY and W100S; and to estimate how many markers are needed to train the GWS model to obtain the maximum accuracy. Eight GWS models were compared in terms of predictive ability. The impact that the marker density had on the predictive ability was investigated using a varying number of markers, from 2 to 1,248. Because the genetic variance between evaluated genotypes was significant, it was possible to obtain selection gain. All of the GWS methods tested in this study can be used to predict GY and W100S in Jatropha. A training model fitted using 1,000 and 800 markers is sufficient to capture the maximum genetic variance and, consequently, maximum prediction ability of GY and W100S, respectively. This study demonstrated the applicability of genome-wide prediction to identify useful genetic sources of GY and W100S for Jatropha breeding. Further research is needed to confirm the applicability of the proposed approach to other complex traits.Entities:
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Year: 2017 PMID: 28296913 PMCID: PMC5351973 DOI: 10.1371/journal.pone.0173368
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Genetic and environmental parameters estimated by REML analysis.
| Parameters | Experiment 1 | Experiment 2 | ||
|---|---|---|---|---|
| GY | W100S | GY | W100S | |
| 96,296.94 | 57.34 | 104162.66 | 18.85 | |
| - | - | 19279.05 | 26.17 | |
| 195,813.99 | 5.06 | 6192.58 | 0.33 | |
| 360420.77 | 30.11 | 108908.36 | 54.17 | |
| 0.27 | 1.90 | 0.96 | 0.35 | |
| 13.16 | 5.44 | - | - | |
| 40.76 | 3.86 | - | - | |
| 0.33 | 1.40 | - | - | |
GY–Grain Yield; W100S –Weight of 100 seeds; –additive variance; –family variance (diallel experiment); –variance between plots; –phenotypic variance; –additive heritability; CV–coefficient of variation genetic; CV–coefficient of variation residual; and CV–ratio between CV and CV.
Fig 1Multidimensional scaling analysis (MDS) showing the first two principal components based on 1,248 markers that were run on the 78 genotypes of Jatropha.
Fig 2Comparison between genomic selection methods to predict grain yield and weight of 100 seeds.
BA- Bayes A; BB–Bayes B; BC–Bayes Cπ; BR–Bayesian Ridge Regression; BL–Bayesian LASSO; GB–G-BLUP; RK–Reproducing kernel Hilbert Space; and RB–RR-BLUP.
Fig 3Effect of the number of markers in the prediction ability and estimated heritability (a and b); and genetic and residual variance (c and d) of Grain Yield (GY) and Weight of 100 Seeds (W100S).