首页> 外文期刊>Theoretical and Applied Genetics: International Journal of Breeding Research and Cell Genetics >Across-years prediction of hybrid performance in maize using genomics
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Across-years prediction of hybrid performance in maize using genomics

机译:跨越多年来使用基因组学的玉米混合性能预测

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Key messageInclusion of historical training data improved the genomics-based prediction of performance of maize hybrids, the extent depending on the phenotypic trait and genotype-by-year interaction.AbstractPrediction of hybrid performance using existing phenotypic data on previous hybrids combined with molecular data collected on the parent lines allows to identify the most promising candidates from a huge number of possible hybrids at an early stage. Phenotypic data on yield and dry matter of 1970 grain maize hybrids from 19years of a public breeding program were aggregated considering the underlying structure of factorial sets of hybrids. Pedigree records and 50K SNP data were collected on their 170 Dent and 127 Flint parent lines. The performance of untested hybrids was predicted by best linear unbiased predictors (BLUP) on basis of pedigree or genomic data. For composition of training sets (TRN) and test sets (TST), three schemes for collecting factorials from specific years were employed which resulted in 490 scenarios. For each scenario, the predictive ability and genomic relationship between TRN and TST hybrids were determined. For extended TRNs, where earlier years were successively added to the TRN, the maximum relationship increased and the predictive ability improved, with the extent of the latter depending on the phenotypic trait and its genotype-by-year interaction. Genomic BLUP outperformed pedigree BLUP and better utilized the early years' data, especially for prediction of hybrids from factorials in a more distant future. This study on hybrid prediction in grain maize illustrated that including historical phenotypic data for training, although consisting of less related genotypes, can improve genomic prediction and enables optimization of hybrid variety development.
机译:历史训练数据的关键消息综合征改善了基于玉米杂交种的性能的基因组学的预测,这取决于表型性状和基因型逐年相互作用。使用先前的杂种上的现有表型数据的混合性能的抑制与收集的分子数据相结合父行允许在早期阶段识别来自大量可能的混合动力车的最有希望的候选人。考虑到1970年1970年粮食玉米杂种的产量和干物质的表型数据汇总了杂交种子的底层结构。谱系记录和50k SNP数据收集在170个凹痕和127个燧石父线上。通过基于谱系或基因组数据,通过最佳线性无偏见的预测器(Blup)预测未测试的混合动力车的性能。对于培训集(TRN)和测试集(TST)的组成,采用来自特定年份的阶乘的三个方案,导致490个情景。对于每种情况,确定TRN和TST杂种之间的预测能力和基因组关系。对于延长TRN,在先后增加到TRN的情况下,最大关系增加,预测能力改善,后者根据表型特征及其基因型相互作用而改善。基因组结肠表现优于血统结节,并且更好地利用了早年的数据,特别是在更遥远的未来预测因因子中的杂交种。本研究了谷物玉米杂交预测的研究表明,包括用于训练的历史表型数据,尽管由较少的相关基因型组成,可以改善基因组预测并实现杂种品种发展的优化。

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