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Accelerating Tomato Breeding by Exploiting Genomic Selection Approaches

机译:通过利用基因组选择方法加速番茄育种

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摘要

Genomic selection (GS) is a predictive approach that was built up to increase the rate of genetic gain per unit of time and reduce the generation interval by utilizing genome-wide markers in breeding programs. It has emerged as a valuable method for improving complex traits that are controlled by many genes with small effects. GS enables the prediction of the breeding value of candidate genotypes for selection. In this work, we address important issues related to GS and its implementation in the plant context with special emphasis on tomato breeding. Genomic constraints and critical parameters affecting the accuracy of prediction such as the number of markers, statistical model, phenotyping and complexity of trait, training population size and composition should be carefully evaluated. The comparison of GS approaches for facilitating the selection of tomato superior genotypes during breeding programs is also discussed. GS applied to tomato breeding has already been shown to be feasible. We illustrated how GS can improve the rate of gain in elite line selection, and descendent and backcross schemes. The GS schemes have begun to be delineated and computer science can provide support for future selection strategies. A new promising breeding framework is beginning to emerge for optimizing tomato improvement procedures.
机译:基因组选择(GS)是一种预测方法,该预测方法建立起来,以增加每单位时间的遗传利益率,并通过利用育种计划中的基因组标记来降低生成间隔。它被出现为改善受许多基因控制的复杂性状的有价值的方法。 GS能够预测候选基因型的育种值进行选择。在这项工作中,我们解决了与GS及其在植物背景下的实施相关的重要问题,特别强调番茄育种。基因组约束和影响预测准确性的临界参数,如标记数,统计模型,表型和特征的复杂性,应仔细评估培训人口大小和组成。还讨论了GS方法,以促进育种计划期间番茄卓越基因型的选择。应用于番茄育种的GS已被证明是可行的。我们说明了GS如何提高Elite Line选择的增益率,以及后代和回复方案。 GS方案已经开始划定,计算机科学可以为未来的选择策略提供支持。一个新的有前途的养殖框架开始出现优化番茄改善程序。

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