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Genomic Selection in Winter Wheat Breeding Using a Recommender Approach

机译:使用推荐方法在冬小麦繁殖中的基因组选择

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摘要

Achieving optimal predictive ability is key to increasing the relevance of implementing genomic selection (GS) approaches in plant breeding programs. The potential of an item-based collaborative filtering (IBCF) recommender system in the context of multi-trait, multi-environment GS has been explored. Different GS scenarios for IBCF were evaluated for a diverse population of winter wheat lines adapted to the Pacific Northwest region of the US. Predictions across years through cross-validations resulted in improved predictive ability when there is a high correlation between environments. Using multiple spectral traits collected from high-throughput phenotyping resulted in better GS accuracies for grain yield (GY) compared to using only single traits for predictions. Trait adjustments through various Bayesian regression models using genomic information from SNP markers was the most effective in achieving improved accuracies for GY, heading date, and plant height among the GS scenarios evaluated. Bayesian LASSO had the highest predictive ability compared to other models for phenotypic trait adjustments. IBCF gave competitive accuracies compared to a genomic best linear unbiased predictor (GBLUP) model for predicting different traits. Overall, an IBCF approach could be used as an alternative to traditional prediction models for important target traits in wheat breeding programs.
机译:实现最佳的预测能力是提高在植物育种计划中实施基因组选择(GS)方法的相关性的关键。探讨了基于项目的协作滤波(IBCF)推荐系统的潜力,在多种特征上,已经探讨了多环境GS。对IBCF的不同GS情景是针对适应于美国太平洋西北地区的不同冬小麦系列人口。当环境之间存在高相关时,通过交叉验证的多年来的预测导致了改善的预测能力。使用从高通量表型收集的多谱特征,与仅使用单个性状以进行预测,导致谷物产量(GY)的更好的GS精度。通过SNP标记的基因组信息通过各种贝叶斯回归模型进行特征调整是评估GS场景中GY,航向日期和植物高度的提高精度最有效的。与其他模型相比,贝叶斯套索具有最高的预测能力,可表型特性调整。与用于预测不同特征的基因组最佳线性非偏见预测器(GBLUP)模型相比,IBCF对竞争性精度提供了竞争力的准确性。总的来说,IBCF方法可以用作传统预测模型的替代方案,用于小麦育种计划中的重要目标性状。

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