2018
DOI: 10.1007/s00122-018-3121-7
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Exploitation of data from breeding programs supports rapid implementation of genomic selection for key agronomic traits in perennial ryegrass

Abstract: Key messageExploitation of data from a ryegrass breeding program has enabled rapid development and implementation of genomic selection for sward-based biomass yield with a twofold-to-threefold increase in genetic gain.AbstractGenomic selection, which uses genome-wide sequence polymorphism data and quantitative genetics techniques to predict plant performance, has large potential for the improvement in pasture plants. Major factors influencing the accuracy of genomic selection include the size of reference popu… Show more

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Cited by 34 publications
(42 citation statements)
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“…However, the implementation of GS implies cross-validation on the evaluation of the genetic and phenotypic breeding values of individuals for accurate selection of superior genotypes [41,42]. GS, in perennial ryegrass, has currently followed the trend of evaluating the HY of sward plots of cultivars and breeding lines [43,44]. The phenotypic selection at individual plants level is required to explore the full potential of GS programs.…”
Section: Discussionmentioning
confidence: 99%
“…However, the implementation of GS implies cross-validation on the evaluation of the genetic and phenotypic breeding values of individuals for accurate selection of superior genotypes [41,42]. GS, in perennial ryegrass, has currently followed the trend of evaluating the HY of sward plots of cultivars and breeding lines [43,44]. The phenotypic selection at individual plants level is required to explore the full potential of GS programs.…”
Section: Discussionmentioning
confidence: 99%
“…The biggest obstacle for improvement of NV is the expense and time required for analysis, which currently entails destructive harvesting and preparation for lab-based methods, demanding high human labour [13][14][15]. This presents a problem considering large amounts of analysis are required for breeding programs due to the quantitative genetics of the traits and several aspects of perennial ryegrass biology [16]. Perennial ryegrass is prone to inbreeding depression; therefore, a large breeding pool is needed to maintain the necessary genetic diversity while at the same time increasing desired alleles [17,18].…”
Section: Introductionmentioning
confidence: 99%
“…In perennial ryegrass, the implementation of GP resulted in a range of predictive ability values depending on different factors such as the heritability of the trait, the size of the calibration set, the marker density and the relatedness between the calibration set and the evaluated genetic material (Fè et al 2015a;Grinberg et al 2016;Faville et al 2018;Pembleton et al 2018;Cericola et al 2018). GP has been used in this species to predict i) the phenotypes of individuals evaluated as spaced plants (Grinberg et al 2016), ii) the sward performances of progeny families, including half sib families (Faville et al 2018) and full sib families (Fè et al 2015a) and iii) the sward performances of synthetic cultivars (Pembleton et al 2018). All these studies only addressed elite genetic material from breeding programs.…”
mentioning
confidence: 99%