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A simple, cost-effective high-throughput image analysis pipeline improves genomic prediction accuracy for days to maturity in wheat

机译:一种简单,经济高效的高吞吐量图像分析管道可以提高小麦成熟的基因组预测精度

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摘要

High-throughput phenotyping and genomic selection accelerate genetic gain in breeding programs by advances in phenotyping and genotyping methods. This study developed a simple, cost-effective high-throughput image analysis pipeline to quantify digital images taken in a panel of 286 Iran bread wheat accessions under terminal drought stress and well-watered conditions. The color proportion of green to yellow (tolerance ratio) and the color proportion of yellow to green (stress ratio) was assessed for each canopy using the pipeline. The estimated tolerance and stress ratios were used as covariates in the genomic prediction models to evaluate the effect of change in canopy color on the improvement of the genomic prediction accuracy of different agronomic traits in wheat. The reliability of the high-throughput image analysis pipeline was proved by three to four times of improvement in the accuracy of genomic predictions for days to maturity with the use of tolerance and stress ratios as covariates in the univariate genomic selection models. The higher prediction accuracies were attained for days to maturity when both tolerance and stress ratios were used as fixed effects in the univariate models. The results of this study indicated that the Bayesian ridge regression and ridge regression-best linear unbiased prediction methods were superior to other genomic prediction methods which were used in this study under terminal drought stress and well-watered conditions, respectively. This study provided a robust, quick, and cost-effective machine learning-enabled image-phenotyping pipeline to improve the genomic prediction accuracy for days to maturity in wheat. The results encouraged the integration of phenomics and genomics in breeding programs.
机译:高吞吐量表型和基因组选择通过表型和基因分型方法的进步加速育种计划的遗传增益。本研究开发了一种简单,经济高效的高吞吐量图像分析管道,以量化在末端干旱胁迫下的286伊朗面包小麦涂层面板中拍摄的数字图像。使用管道对每个树冠评估绿色至黄色(容差比)和黄色至绿色(应力比)的颜色比例的颜色比例。估计的耐受性和应力比用作基因组预测模型中的协调因子,以评估树冠颜色变化对小麦不同农艺性状的改进的改善。通过使用耐受性和应力比在单变量基因组选择模型中的协变量中,从而提高了基因组预测的准确度的三到四次改善了高通量图像分析管道的可靠性。当两种耐受性和应力比用作单变量模型中的固定效应时,达到更高的预测准确性。本研究的结果表明,贝叶斯脊回归和脊回归最佳的线性无偏析预测方法优于其他基因组预测方法,其在该研究下分别用于终端干旱胁迫和浇水条件下。本研究提供了一种强大,快速,经济高效的机器学习的图像表型管道,以提高小麦成熟的基因组预测精度。结果鼓励了表达和基因组学的整合在育种计划中。

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