首页> 美国卫生研究院文献>G3: GenesGenomesGenetics >Multi-trait Genomic Prediction Model Increased the Predictive Ability for Agronomic and Malting Quality Traits in Barley (Hordeum vulgare L.)
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Multi-trait Genomic Prediction Model Increased the Predictive Ability for Agronomic and Malting Quality Traits in Barley (Hordeum vulgare L.)

机译:多性状基因组预测模型提高了大麦(Hordeum vulgare L.)的农艺和制麦品质性状的预测能力

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摘要

Plant breeders regularly evaluate multiple traits across multiple environments, which opens an avenue for using multiple traits in genomic prediction models. We assessed the potential of multi-trait (MT) genomic prediction model through evaluating several strategies of incorporating multiple traits (eight agronomic and malting quality traits) into the prediction models with two cross-validation schemes (CV1, predicting new lines with genotypic information only and CV2, predicting partially phenotyped lines using both genotypic and phenotypic information from correlated traits) in barley. The predictive ability was similar for single (ST-CV1) and multi-trait (MT-CV1) models to predict new lines. However, the predictive ability for agronomic traits was considerably increased when partially phenotyped lines (MT-CV2) were used. The predictive ability for grain yield using the MT-CV2 model with other agronomic traits resulted in 57% and 61% higher predictive ability than ST-CV1 and MT-CV1 models, respectively. Therefore, complex traits such as grain yield are better predicted when correlated traits are used. Similarly, a considerable increase in the predictive ability of malting quality traits was observed when correlated traits were used. The predictive ability for grain protein content using the MT-CV2 model with both agronomic and malting traits resulted in a 76% higher predictive ability than ST-CV1 and MT-CV1 models. Additionally, the higher predictive ability for new environments was obtained for all traits using the MT-CV2 model compared to the MT-CV1 model. This study showed the potential of improving the genomic prediction of complex traits by incorporating the information from multiple traits (cost-friendly and easy to measure traits) collected throughout breeding programs which could assist in speeding up breeding cycles.
机译:植物育种者定期在多个环境中评估多个性状,这为在基因组预测模型中使用多个性状开辟了道路。我们通过评估将多个性状(八个农艺和麦芽品质性状)纳入两个预测方案(CV1,仅使用基因型信息预测新品系)的策略,评估了多性状(MT)基因组预测模型的潜力和CV2,使用大麦的相关性状的基因型和表型信息预测部分表型系。单(ST-CV1)和多特征(MT-CV1)模型对新品系的预测能力相似。然而,当使用部分表型系(MT-CV2)时,对农艺性状的预测能力大大提高。使用具有其他农艺性状的MT-CV2模型对谷物产量的预测能力分别比ST-CV1和MT-CV1模型高出57%和61%。因此,当使用相关性状时,可以更好地预测诸如谷物产量等复杂性状。类似地,当使用相关性状时,观察到发芽品质性状的预测能力显着提高。使用具有农艺和麦芽特性的MT-CV2模型对谷物蛋白质含量的预测能力导致的预测能力比ST-CV1和MT-CV1模型高76%。此外,与MT-CV1模型相比,使用MT-CV2模型对所有性状获得的新环境具有更高的预测能力。这项研究表明,通过整合在整个育种计划中收集的多种性状(成本友好且易于测量的性状)信息,可以改善复杂性状的基因组预测,从而有助于加快育种周期。

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