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Evaluation of Genomic Selection Training Population Designs and Genotyping Strategies in Plant Breeding Programs Using Simulation

机译:利用模拟对植物育种计划中的基因组选择训练种群设计和基因分型策略进行评估

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Genomic selection offers great potential for increasing the rate of genetic improvement in plant breeding programs. This research used simulation to evaluate the effectiveness of different strategies for genotyping and phenotyping to enable genomic selection in early generation individuals (e.g., F2) in breeding programs involving biparental or similar (e.g., backcross or top cross) populations. By using phenotypes that were previously collected in other biparental populations, selection decisions could be made without waiting for phenotypes that pertain directly to the selection candidate to be collected, a process that would take at least three growing seasons. If these phenotypes were collected in biparental populations that were closely related to the selection candidates, only a small number of markers (e.g., 200a€“500) and a small number of phenotypes (e.g., 1000) were needed to achieve effective accuracy of estimated breeding values. If these phenotypes were collected in biparental populations that were not closely related to the selection candidates, as many as 10,000 markers and 5000 to 20,000 phenotypes were needed. Increasing marker density beyond 10,000 markers did not show benefit and in some scenarios reduced the accuracy of prediction. This study provides a guide, enabling resource allocation to be optimized between genotyping and phenotyping investment dependent on the population under development.
机译:基因组选择为提高植物育种计划的遗传改良率提供了巨大潜力。这项研究使用模拟来评估基因分型和表型化的不同策略的有效性,从而能够在涉及双亲或相似(例如回交或顶交)种群的育种计划中对早期个体(例如F2)进行基因组选择。通过使用以前在其他双亲种群中收集的表型,可以做出选择决定,而无需等待与要收集的选择候选者直接相关的表型,这一过程至少需要三个生长季节。如果这些表型是在与选择候选者密切相关的双亲群体中收集的,则仅需要少量的标记(例如200至500)和少量的表型(例如1000)即可达到估算的有效准确性。育种价值。如果这些表型是在与选择候选者没有密切关系的双亲群体中收集的,则需要多达10,000个标记和5000至20,000个表型。将标记密度增加到超过10,000个标记不会显示出任何好处,并且在某些情况下会降低预测的准确性。这项研究提供了一个指南,可以根据正在开发的人口,在基因分型和表型投资之间优化资源分配。

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