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首页> 外文期刊>Animal Genetics >Predicting allele frequencies in DNA pools using high density SNP genotyping data.
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Predicting allele frequencies in DNA pools using high density SNP genotyping data.

机译:使用高密度SNP基因分型数据预测DNA库中的等位基因频率。

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摘要

To evaluate the ability to use DNA pools with the Illumina Infinium genotyping platform, two sets of gradient pools were created using two pairs of highly inbred chicken lines. Replicate pools containing 0%, 10%, 20%, 40%, 60%, 80%, 90% and 100% of DNA from line A vs. B or line C vs. D were created, for a total of 28 pools. All pools were genotyped for 12 046 SNPs. Three frequency estimation methods proposed in the literature (standard, heterozygote-corrected and normalized) were compared with three alternate methods proposed herein based on mean square error (MSE), bias and variance of estimated vs. true allele frequencies and the fit of regression of estimated on true frequencies. The three new methods had average square root MSE of 4.6%, 4.6% and 4.7% compared to 5.2%, 5.5% and 11.2% for the three literature methods. Average absolute biases of the literature methods were 2.4%, 2.7% and 8.2% compared to 2.4% for all new methods. Standard deviations of estimates were also smaller for the new methods, at 3.1%, 3.2% and 3.2% compared to 3.5%, 4.0% and 5.0% for previously reported methods. In conclusion, intensity data from the Illumina Infinium Assay can be efficiently used to estimate allele frequencies in pools, in particular using any of the new methods proposed herein.
机译:为了评估使用Illumina Infinium基因分型平台使用DNA池的能力,使用两对高度近交的鸡系创建了两组梯度池。创建了包含0%,10%,20%,40%,60%,80%,90%和100%DNA的A,B或C,D线的复制池,总共28个池。对所有库进行12 046个SNP的基因分型。根据均方误差(MSE),估计对等位基因频率与真实等位基因频率的偏倚和方差以及回归拟合的拟合度,比较了文献中提出的三种频率估计方法(标准,杂合体校正和归一化)与本文提出的三种替代方法以真实频率估算。三种新方法的平均平方根MSE为4.6%,4.6%和4.7%,而三种文献方法的平均平方根MSE为5.2%,5.5%和11.2%。文献方法的平均绝对偏差为2.4%,2.7%和8.2%,而所有新方法的平均绝对偏差为2.4%。新方法的估计标准偏差也较小,分别为3.1%,3.2%和3.2%,而以前报告的方法为3.5%,4.0%和5.0%。总之,来自Illumina Infinium分析的强度数据可以有效地用于估计库中的等位基因频率,特别是使用本文提出的任何新方法。

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