首页> 外文期刊>The Plant Genome >Genomic Selection Accuracy using Historical Data Generated in a Wheat Breeding Program
【24h】

Genomic Selection Accuracy using Historical Data Generated in a Wheat Breeding Program

机译:使用小麦育种程序中生成的历史数据进行基因组选择的准确性

获取原文
           

摘要

Cross-validation (CRV) methods were designed to simulate genomic selection (GS) for yield in a wheat (Triticum aestivum L.) breeding program with data of 318 genotypes grown over an 11-yr period at six locations in France. Two methods, CVSWO (cross-validation-specific without location as factor) and CVSW (cross-validation-specific with location as factor), included 11 folds, each comprising genotypes grown during a specific year and each representing target populations, while the remaining folds comprising genotypes grown during the other 10 yr represented training populations. These methods were compared with CVRWO (cross-validation-random without location as factor) and CVRW (cross-validation-random with location as factor), designed to simulate standard CRV while retaining the structure of the first two CRV methods; the same 318 genotypes were used to create 11 folds, each comprising randomly selected genotypes. Results suggest the accuracy of the CRV methods using specifically selected genotypes (correlation coefficient between (marker based) estimate of breeding value and observed phenotype [rM] = 0.20) based on years grown were significantly less than methods using randomly selected genotypes (rM = 0.40–0.50). These results imply wheat yield is more difficult to predict for unknown, futuristic years than standard CRV methods suggest. An alternative measure of accuracy based on predicted genotypic ranks, termed predicted rank conversion (PRC), was implemented for the purpose of improving accuracies and reducing the differences between CRV methods.
机译:设计了交叉验证(CRV)方法,以模拟在小麦(Triticum aestivum L.)育种计划中用于产量的基因组选择(GS),该数据包含在法国六个地方的11年期间生长的318个基因型的数据。两种方法分别是CVSWO(针对交叉验证的特异性,无以位置为因素)和CVSW(针对交叉验证的特异性,有以位置为因素),每一种均包含在特定年份生长的基因型,分别代表目标人群,而其余11种。包含在其他10年中生长的基因型的折叠代表了训练人群。将这些方法与CVRWO(以位置为因数的交叉验证随机数)和CVRW(以位置为因数的交叉验证随机数)进行了比较,这些方法旨在模拟标准CRV,同时保留前两种CRV方法的结构。使用相同的318个基因型创建11倍折叠,每个折叠包含随机选择的基因型。结果表明,基于生长年限的特定基因型的CRV方法的准确性(基于标记的育种值估计与观察到的表型[r ]的相关系数= 0.20)显着低于方法使用随机选择的基因型(r M = 0.40–0.50)。这些结果表明,相对于标准CRV方法而言,在未知的,未来的年份中很难预测小麦的产量。为了提高准确性并减少CRV方法之间的差异,已实施了一种基于预测基因型等级的准确度的替代方法,称为预测等级转换(PRC)。

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