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首页> 外文期刊>Crop science >Prediction of Genetic Variance in Biparental Maize Populations: Genomewide Marker Effects versus Mean Genetic Variance in Prior Populations
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Prediction of Genetic Variance in Biparental Maize Populations: Genomewide Marker Effects versus Mean Genetic Variance in Prior Populations

机译:双亲玉米种群遗传变异的预测:全基因组标记效应与先前种群的平均遗传变异

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Good methods are lacking for predicting the genetic variance (VG) in biparental populations. Our objective was to determine whether genomewide marker effects and related populations could be used to predict the VG when two parents (A and B) are crossed to form a segregating population. For each of 85 A/B populations, 2 to 23 maize (Zea mays L.) populations with A and B as one of the parents were used as the training population. In the genomewide selection model, the testcross VG in A/B was predicted as the variance among the predicted genotypic values of progeny from a simulated A/B population. In the mean variance model, VG in A/B was predicted as the mean of VG in a series of A/* populations and */B populations, where * denotes a random parent. The correlations between observed and predicted VG were significant (P = 0.05) for both the genomewide selection model (0.18 for yield, 0.49 for moisture, and 0.52 for test weight) and the mean variance model (0.26 for yield, 0.46 for moisture, and 0.50 for test weight). The percentages of bias in estimates of VG were a?’28 to a?’60% for the genomewide selection model, but were only a?’1 to 5% for the mean variance model. Our results indicated that the VG in an A/B population could be predicted as the mean variance among populations with A and B as one of the parents. The mean variance model should be practical in breeding programs because it simply uses phenotypic data from prior, related populations.
机译:缺乏预测双亲群体遗传变异(VG)的好的方法。我们的目标是确定当两个亲本(A和B)杂交形成隔离种群时,是否可以使用全基因组标记物效应和相关种群来预测VG。对于85个A / B种群,将2至23个以A和B为亲本的玉米种群(Zea mays L.)作为训练种群。在全基因组选择模型中,将A / B中的VGS交配体预测为来自模拟A / B群体的后代的预测基因型值之间的差异。在平均方差模型中,将A / B中的VG预测为一系列A / *群体和* / B群体中VG的平均值,其中*表示随机父代。对于全基因组选择模型(产量为0.18,水分为0.49,测试重量为0.52)和平均方差模型(产量为0.26,水分为0.46,以及测试重量为0.50)。对于全基因组选择模型,VG估计值的偏差百分比为28至60%,而平均方差模型仅为1至5%。我们的结果表明,A / B人口中的VG可预测为以A和B为父母之一的人口之间的平均方差。平均方差模型应在育种程序中实用,因为它仅使用来自先前相关种群的表型数据。

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