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首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >Deconvoluting complex tissues for expression quantitative trait locus-based analyse
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Deconvoluting complex tissues for expression quantitative trait locus-based analyse

机译:解卷积复杂组织以表达基于定量特征位点的分析

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Breast cancer genome-wide association studies have pinpointed dozens of variants associated with breast cancer pathogenesis. The majority of risk variants, however, are located outside of known protein-coding regions. Therefore, identifying which genes the risk variants are acting through presents an important challenge. Variants that are associated with mRNA transcript levels are referred to as expression quantitative trait locieQTLs. Many studies have demonstrated that eQTL-based strategies provide a direct way to connect a trait-associated locus with its candidate target gene. Performing eQTL-based analyses in human samples is complicated because of the heterogeneous nature of human tissue. We addressed this issue by devising a method to computationally infer the fraction of cell types in normal human breast tissues. We then applied this method to 13 known breast cancer risk loci, which we hypothesized were eQTLs. For each risk locus, we took all known transcripts within a 2 Mb interval and performed an eQTL analysis in 100 reduction mammoplasty cases. A total of 18 significant associations were discovered eight in the epithelial compartment and 10 in the stromal compartment. This study highlights the ability to perform large-scale eQTL studies in heterogeneous tissue.
机译:乳腺癌全基因组关联研究已经查明了数十种与乳腺癌发病机理相关的变异。但是,大多数风险变体位于已知的蛋白质编码区域之外。因此,确定风险变异体通过哪些基因起作用是一个重要的挑战。与mRNA转录水平相关的变体称为表达定量性状locieQTL。许多研究表明,基于eQTL的策略提供了将特质相关基因座与其候选靶基因连接的直接方法。由于人体组织的异质性,在人体样品中执行基于eQTL的分析非常复杂。我们通过设计一种方法来计算推断正常人乳房组织中细胞类型的比例,从而解决了这个问题。然后,我们将这种方法应用于13个已知的乳腺癌风险基因座,我们假设这些基因座是eQTL。对于每个风险基因座,我们在2 Mb间隔内获取所有已知的转录本,并在100例复位乳腺成形术病例中进行了eQTL分析。在上皮区室发现了18个重要的关联,在基质区室发现了10个重要的关联。这项研究强调了在异质组织中进行大规模eQTL研究的能力。

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