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Identification and Correction of Sample Mix-Ups in Expression Genetic Data: A Case Study

机译:表达基因数据中样品混合的鉴定和纠正:一个案例研究

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摘要

In a mouse intercross with more than 500 animals and genome-wide gene expression data on six tissues, we identified a high proportion (18%) of sample mix-ups in the genotype data. Local expression quantitative trait loci (eQTL; genetic loci influencing gene expression) with extremely large effect were used to form a classifier to predict an individual’s eQTL genotype based on expression data alone. By considering multiple eQTL and their related transcripts, we identified numerous individuals whose predicted eQTL genotypes (based on their expression data) did not match their observed genotypes, and then went on to identify other individuals whose genotypes did match the predicted eQTL genotypes. The concordance of predictions across six tissues indicated that the problem was due to mix-ups in the genotypes (although we further identified a small number of sample mix-ups in each of the six panels of gene expression microarrays). Consideration of the plate positions of the DNA samples indicated a number of off-by-one and off-by-two errors, likely the result of pipetting errors. Such sample mix-ups can be a problem in any genetic study, but eQTL data allow us to identify, and even correct, such problems. Our methods have been implemented in an R package, R/lineup.
机译:在与500多种动物和六个组织的全基因组基因表达数据交叉的小鼠中,我们在基因型数据中确定了高比例(18%)的样本混合。具有极大影响的局部表达数量性状基因座(eQTL;影响基因表达的遗传基因座)被用来构成一个分类器,以仅基于表达数据来预测个体的eQTL基因型。通过考虑多个eQTL及其相关的转录本,我们鉴定了许多预测的eQTL基因型(基于他们的表达数据)与他们观察到的基因型不匹配的个体,然后继续鉴定其基因型与预测的eQTL基因型匹配的其他个体。横跨六个组织的预测一致表明该问题是由于基因型混合造成的(尽管我们进一步确定了基因表达微阵列的六个面板中每个样本的少量样本混合)。考虑到DNA样品的板位置表明存在许多一对一和一对二错误,这很可能是移液错误的结果。在任何遗传研究中,这样的样本混合都是一个问题,但是eQTL数据使我们能够识别甚至纠正此类问题。我们的方法已在R包R / lineup中实现。

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