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A network based covariance test for ^ 0 detecting multivariate eQTL in saccharomyces cerevisiae

机译:^ 0检测酿酒酵母中的多变量EQTL基于网络的协方差测试

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Background: Expression quantitative trait locus (eQTL) analysis has been widely used to understand how genetic variations affect gene expressions in the biological systems. Traditional eQTL is investigated in a pair-wise manner in which one SNP affects the expression of one gene. In this way, some associated markers found in GWAS have been related to disease mechanism by eQTL study. However, in real life, biological process is usually performed by a group of genes. Although some methods have been proposed to identify a group of SNPs that affect the mean of gene expressions in the network, the change of co-expression pattern has not been considered. So we propose a process and algorithm to identify the marker which affects the co-expression pattern of a pathway. Considering two genes may have different correlations under different isoforms which is hard to detect by the linear test, we also consider the nonlinear test.Results: When we applied our method to yeast eQTL dataset profiled under both the glucose and ethanol conditions, we identified a total of 166 modules, with each module consisting of a group of genes and one eQTL where the eQTL regulate the co-expressionpatterns of the group of genes. We found that many of these modules have biological significance.Conclusions: We propose a network based covariance test to identify the SNP which affects the structure of a pathway. We also consider the nonlinear test as considering two genes may have different correlations under different isoforms which is hard to detect by linear test.
机译:背景:表达式数量性状座位(eQTL)分析已被广泛用于理解各种变形如何影响基因在生物系统基因表达。传统eQTL在其中一个SNP影响一个基因的表达的成对的方式进行了研究。通过这种方式,一些相关的标志物GWAS发现eQTL研究已涉及到疾病的机制。然而,在现实生活中,生物处理通常是由一组基因进行。虽然有些方法已经被提出,以确定一组影响网络中的基因表达的平均单核苷酸多态性,共表达模式的变化还没有被考虑。所以,我们提出了一个过程和算法来识别影响途径的共同表达模式的标志。考虑两个基因可以具有在不同的同种型不同的相关性,这是很难通过线性测试来检测,我们还考虑了非线性检验。结果:当我们将我们的方法中的葡萄糖和乙醇的条件下都异形酵母eQTL数据集,我们确定了共有166个模块,每个模块包括一组基因和一个eQTL的其中eQTL调节所述基因的组的共expressionpatterns。我们发现,许多模块具有生物学意义。结论:我们提出了一个基于网络的协方差检验,以确定其影响途径的结构SNP。我们也考虑非线性试验,考虑到两个基因可能在不同的亚型,这是很难用线性测试来检测不同的相关性。

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