...
首页> 外文期刊>G3: Genes, Genomes, Genetics >Evaluating Methods of Updating Training Data in Long-Term Genomewide Selection
【24h】

Evaluating Methods of Updating Training Data in Long-Term Genomewide Selection

机译:全基因组长期选择中更新训练数据的评估方法

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Genomewide selection is hailed for its ability to facilitate greater genetic gains per unit time. Over breeding cycles, the requisite linkage disequilibrium (LD) between quantitative trait loci and markers is expected to change as a result of recombination, selection, and drift, leading to a decay in prediction accuracy. Previous research has identified the need to update the training population using data that may capture new LD generated over breeding cycles; however, optimal methods of updating have not been explored. In a barley ( Hordeum vulgare L.) breeding simulation experiment, we examined prediction accuracy and response to selection when updating the training population each cycle with the best predicted lines, the worst predicted lines, both the best and worst predicted lines, random lines, criterion-selected lines, or no lines. In the short term, we found that updating with the best predicted lines or the best and worst predicted lines resulted in high prediction accuracy and genetic gain, but in the long term, all methods (besides not updating) performed similarly. We also examined the impact of including all data in the training population or only the most recent data. Though patterns among update methods were similar, using a smaller but more recent training population provided a slight advantage in prediction accuracy and genetic gain. In an actual breeding program, a breeder might desire to gather phenotypic data on lines predicted to be the best, perhaps to evaluate possible cultivars. Therefore, our results suggest that an optimal method of updating the training population is also very practical.
机译:全基因组选择因其促进单位时间内获得更大遗传增益的能力而广受赞誉。在繁殖周期中,由于重组,选择和漂移的结果,预期数量性状基因座与标记之间的必要连锁不平衡(LD)会发生变化,从而导致预测准确性下降。先前的研究已经确定了需要使用可捕获整个育种周期中产生的新LD的数据来更新训练种群的需求。但是,尚未探索最佳的更新方法。在大麦(Hordeum vulgare L.)繁殖模拟实验中,我们在以最佳预测线,最差预测线,最佳和最差预测线,随机线,每个周期更新训练种群时,检查了预测准确性和对选择的反应。按条件选择的行,或无行。在短期内,我们发现使用最佳预测谱系或最佳和最差预测谱系进行更新可提高预测准确性和遗传增益,但从长远来看,所有方法(除未更新之外)均以类似方式执行。我们还研究了将所有数据包括在培训人群中或仅包括最新数据的影响。尽管更新方法之间的模式相似,但是使用较小但较新的训练种群在预测准确性和遗传增益方面提供了些微优势。在实际的育种程序中,育种者可能希望在预测为最佳的品系上收集表型数据,也许是为了评估可能的品种。因此,我们的结果表明,更新训练人口的最佳方法也是非常实用的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号