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Genomic prediction of sugar content and cane yield in sugar cane clones in different stages of selection in a breeding program, with and without pedigree information

机译:在育种计划中不同阶段的甘蔗克隆中糖含量和甘蔗产量的基因组预测,有和没有血统信息

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High cane yield and commercially extractable sucrose (CCS) content are two of the key sugarcane commercial traits selected in sugarcane breeding programs. Advancements in genomic prediction may provide opportunities to speed up gains for these traits in breeding programs by combining accurate prediction of breeding values in candidate parent clones shortening generation intervals. Selection trials in commercial breeding programs may provide training populations for developing genomic predictions. In this study, three different populations of clones in early and advanced stage selection trials in an established commercial sugarcane breeding program were used to assess genomic prediction accuracy. The clones (genotypes) were evaluated for cane yield and sugar content in field trials and genotyped using a SNP array developed for sugarcane cultivars and parents. Five models (Bayes A, Bayes B, Bayesian LASSO, Bayesian GBLUP and RKHS) were tested using pedigree and/or marker data. Prediction models that included marker information had higher prediction accuracies than models with pedigree data only. For CCS, the prediction accuracies for genotypes in advanced stage trials using DNA markers were superior compared with prediction accuracies for early-stage trials, suggesting that prior intensive selection for CCS did not diminish accuracy of genomic prediction. However, by contrast, for cane yield, the prediction accuracies were much less for the population in the advanced stages of selection. The levels of prediction accuracy obtained in most datasets (0.25-0.45) are encouraging for developing applications of genomic prediction to predict breeding values of yield and sugar content in sugarcane breeding programs.
机译:高甘蔗产量和可商购的蔗糖(CCS)含量是甘蔗育种计划中选择的关键甘蔗商业特征的两种。基因组预测的进步可以通过组合候选父克隆缩短生成间隔中的准确预测来加速育种计划中这些特征的增加的机会。商业育种计划中的选择试验可以为发展基因组预测提供培训群体。在这项研究中,在建立的商业甘蔗育种计划中早期和晚期阶段选择试验中的三种不同克隆群体用于评估基因组预测准确性。克隆(基因型)在现场试验中进行甘蔗产量和糖含量,并使用为甘蔗品种和父母开发的SNP阵列进行基因分型。使用谱系和/或标记数据测试五种型号(贝叶斯A,Bayes B,Bayesian套索,贝叶斯GBLUP和RKHS)。包括标记信息的预测模型与仅具有谱系数据的模型具有更高的预测精度。对于CCS,与早期试验的预测准确性相比,使用DNA标记的先进阶段试验中基因型的预测精度优异,表明CCS的先前密集选择并未降低基因组预测的准确性。然而,通过对比,对于甘蔗产量,在选择的高级阶段的人口中,预测精度要少得多。在大多数数据集(0.25-0.45)中获得的预测精度水平令人促进基因组预测的应用,以预测甘蔗育种计划中产率和糖含量的育种值。

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