| Literature DB >> 27826661 |
Sebastian Michel1, Christian Ametz2, Huseyin Gungor3,4, Batuhan Akgöl3, Doru Epure5, Heinrich Grausgruber6, Franziska Löschenberger2, Hermann Buerstmayr7.
Abstract
KEY MESSAGE: Early generation genomic selection is superior to conventional phenotypic selection in line breeding and can be strongly improved by including additional information from preliminary yield trials. The selection of lines that enter resource-demanding multi-environment trials is a crucial decision in every line breeding program as a large amount of resources are allocated for thoroughly testing these potential varietal candidates. We compared conventional phenotypic selection with various genomic selection approaches across multiple years as well as the merit of integrating phenotypic information from preliminary yield trials into the genomic selection framework. The prediction accuracy using only phenotypic data was rather low (r = 0.21) for grain yield but could be improved by modeling genetic relationships in unreplicated preliminary yield trials (r = 0.33). Genomic selection models were nevertheless found to be superior to conventional phenotypic selection for predicting grain yield performance of lines across years (r = 0.39). We subsequently simplified the problem of predicting untested lines in untested years to predicting tested lines in untested years by combining breeding values from preliminary yield trials and predictions from genomic selection models by a heritability index. This genomic assisted selection led to a 20% increase in prediction accuracy, which could be further enhanced by an appropriate marker selection for both grain yield (r = 0.48) and protein content (r = 0.63). The easy to implement and robust genomic assisted selection gave thus a higher prediction accuracy than either conventional phenotypic or genomic selection alone. The proposed method took the complex inheritance of both low and high heritable traits into account and appears capable to support breeders in their selection decisions to develop enhanced varieties more efficiently.Entities:
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Year: 2016 PMID: 27826661 PMCID: PMC5263211 DOI: 10.1007/s00122-016-2818-8
Source DB: PubMed Journal: Theor Appl Genet ISSN: 0040-5752 Impact factor: 5.699
Fig. 1Effect of the training population design on the prediction accuracy for grain yield and protein content. The lines in the training population were either randomly sampled or taken from the tails of the distribution, while the selection population was the same set of randomly sampled lines in both designs using a 6-fold cross-validation in which the years constituted the folds (a). Leaving all lines from 1 year out as validation population sampling 20–90% of the lines from each year in the training population either randomly or with half of the lines coming again from the tails of the distribution, where the dotted horizontal line designates the average accuracy when training with the entire set of lines of the remaining 5 years (b)
Comparison between different selection methods by the prediction accuracy for grain yield and protein content across years, using multi-environment trials (MET), preliminary yield trials (PYT) and the genomic relationship matrix (GRM) as complementing information sources
| Selection method | Model | Information source | Prediction accuracy | |||
|---|---|---|---|---|---|---|
| MET | PYT | GRM | Grain yield | Protein content | ||
| Phenotypic | BLUP | x | 0.21 ± 0.09 | 0.45 ± 0.08 | ||
| Phenotypic† | KBLUP | x | x | 0.33 ± 0.27 | 0.52 ± 0.14 | |
| Genomic | GBLUP | x | x | 0.39 ± 0.07 | 0.50 ± 0.06 | |
| Genomic assisted‡ | GBLUP + KBLUP | x | x | x | 0.46 ± 0.07 | 0.61 ± 0.04 |
| Genomic assisted§ | GBLUP + KBLUP | x | x | x | 0.48 ± 0.05 | 0.63 ± 0.04 |
†Breeding values based on genetic relationships among lines in unreplicated preliminary yield trials
‡Genomic and phenotypic predictions were merged by a heritability index
§Markers were pre-selected before fitting the prediction models
Fig. 2Marker effect estimates before (grey) and after (red) pre-selection of markers. Marker effects were scaled and centered to allow a comparison between different training by selection population combinations
Fig. 3Comparison between the prediction accuracy of genomic and genomic assisted selection for every training by selection population combination to predict grain yield and protein content across years
Fig. 4Proportion of correctly selected best and worst performing lines with respect to grain yield by conventional phenotypic selection (BLUP), genomic selection (GBLUP) and genomic assisted selection with pre-selected markers (FULL) at varying selection intensity
Fig. 5Performance of lines chosen by different selection methods in the selection experiment during the vegetation period 2014