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玉米(Zea mays L.)幼苗根长的基因组预测。

Genomic prediction of seedling root length in maize (Zea mays L.).

作者信息

Pace Jordon, Yu Xiaoqing, Lübberstedt Thomas

机构信息

Department of Agronomy, Iowa State University, Ames, IA, 50011, USA.

出版信息

Plant J. 2015 Sep;83(5):903-12. doi: 10.1111/tpj.12937.

Abstract

Genotypes with extreme phenotypes are valuable for studying 'difficult' quantitative traits. Genomic prediction (GP) might allow the identification of such extremes by phenotyping a training population of limited size and predicting genotypes with extreme phenotypes in large sequences of germplasm collections. We tested this approach employing seedling root traits in maize and the extensively genotyped Ames Panel. A training population made up of 384 inbred lines from the Ames Panel was phenotyped by extracting root traits from images using the software program aria. A ridge regression best linear unbiased prediction strategy was used to train a GP model. Genomic estimated breeding values for the trait 'total root length' (TRL) were predicted for 2431 inbred lines, which had previously been genotyped by sequencing. Selections were made for 100 extreme TRL lines and those with the predicted longest or shortest TRL were validated for TRL and other root traits. The two predicted extreme groups with regard to TRL were significantly different (P = 0.0001). The difference in predicted means for TRL between groups was 145.1 cm and 118.7 cm for observed means, which were significantly different (P = 0.001). The accuracy of predicting the rank between 1 and 200 of the validation population based on TRL (longest to shortest) was determined using a Spearman correlation to be ρ = 0.55. Taken together, our results support the idea that GP may be a useful approach for identifying the most informative genotypes in sequenced germplasm collections to facilitate experiments for quantitative inherited traits.

摘要

具有极端表型的基因型对于研究“复杂”数量性状很有价值。基因组预测(GP)或许可以通过对有限规模的训练群体进行表型分析,并预测种质资源库大样本中的极端表型基因型,从而识别出这些极端情况。我们利用玉米的幼苗根系性状和广泛基因分型的艾姆斯群体对该方法进行了测试。由艾姆斯群体中的384个自交系组成的训练群体,通过使用软件程序aria从图像中提取根系性状进行表型分析。采用岭回归最佳线性无偏预测策略训练GP模型。对2431个之前已进行测序基因分型的自交系预测了“总根长”(TRL)性状的基因组估计育种值。选择了100个极端TRL系,并对预测的最长或最短TRL系的TRL和其他根系性状进行了验证。在TRL方面,两个预测的极端组有显著差异(P = 0.0001)。两组之间TRL预测均值的差异为145.1厘米,观测均值的差异为118.7厘米,二者有显著差异(P = 0.001)。使用Spearman相关性确定基于TRL(从最长到最短)预测验证群体中1至200名排名的准确性为ρ = 0.55。综上所述,我们的结果支持这样一种观点,即GP可能是一种有用的方法,用于在测序的种质资源库中识别信息最丰富的基因型,以促进数量遗传性状的实验研究。

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