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首页> 外文期刊>Theoretical and Applied Genetics: International Journal of Breeding Research and Cell Genetics >Integrating genomic-enabled prediction and high-throughput phenotyping in breeding for climate-resilient bread wheat
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Integrating genomic-enabled prediction and high-throughput phenotyping in breeding for climate-resilient bread wheat

机译:在气候弹性面包小麦育种中集成基因组的预测和高通量表型

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Genomic selection and high-throughput phenotyping (HTP) are promising tools to accelerate breeding gains for high-yielding and climate-resilient wheat varieties. Hence, our objective was to evaluate them for predicting grain yield (GY) in drought-stressed (DS) and late-sown heat-stressed (HS) environments of the International maize and wheat improvement center's elite yield trial nurseries. We observed that the average genomic prediction accuracies using fivefold cross-validations were 0.50 and 0.51 in the DS and HS environments, respectively. However, when a different nursery/year was used to predict another nursery/year, the average genomic prediction accuracies in the DS and HS environments decreased to 0.18 and 0.23, respectively. While genomic predictions clearly outperformed pedigree-based predictions across nurseries, they were similar to pedigree-based predictions within nurseries due to small family sizes. In populations with some full-sibs in the training population, the genomic and pedigree-based prediction accuracies were on average 0.27 and 0.35 higher than the accuracies in populations with only one progeny per cross, indicating the importance of genetic relatedness between the training and validation populations for good predictions. We also evaluated the item-based collaborative filtering approach for multivariate prediction of GY using the green normalized difference vegetation index from HTP. This approach proved to be the best strategy for across-nursery predictions, with average accuracies of 0.56 and 0.62 in the DS and HS environments, respectively. We conclude that GY is a challenging trait for across-year predictions, but GS and HTP can be integrated in increasing the size of populations screened and evaluating unphenotyped large nurseries for stress-resilience within years.
机译:基因组选择和高通量表型(HTP)是有助于加速高产和气候弹性小麦品种的育种增益的工具。因此,我们的目标是评估他们在国际玉米和小麦改善中心精英产量审判苗圃中预测干旱胁迫(DS)和晚播种热应力(HS)环境中的谷物产量(GY)。我们观察到,DS和HS环境中使用五倍交叉验证的平均基因组预测精度为0.50和0.51。然而,当使用不同的幼儿园/年来预测另一个幼儿园/年时,DS和HS环境中的平均基因组预测精度分别降至0.18和0.23。虽然基因组预测明确表现出基于苗圃的基于血库的预测,但由于小家庭尺寸,它们与托儿所内的基于族基的预测类似。在培训人口中具有一些全均线的人群中,基因组和基于血统的预测精度平均比每十时只有一个后代的群体的精度高0.27和0.35,表明培训和验证之间的遗传相关性的重要性人口良好的预测。我们还评估了使用HTP的绿色归一化差异植被指数对GY多变量预测的基于项目的协同滤波方法。这种方法证明是DS和HS环境中平均精度为0.56和0.62的跨护理预测的最佳策略。我们得出结论,GY是一个挑战性的特质,持续跨越预测,但GS和HTP可以集成在增加筛查和评估不在年内强调的不停型大苗圃的人群的大小。

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