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Expression QTL-based analyses reveal candidate causal genes and loci across five tumor types

机译:基于表达QTL的分析揭示了五种肿瘤类型的候选病因基因和基因座

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The majority of trait-associated loci discovered through genome-wide association studies are located outside of known protein coding regions. Consequently, it is difficult to ascertain the mechanism underlying these variants and to pinpoint the causal alleles. Expression quantitative trait loci (eQTLs) provide an organizing principle to address both of these issues. eQTLs are genetic loci that correlate with RNA transcript levels. Large-scale data sets such as the Cancer Genome Atlas (TCGA) provide an ideal opportunity to systematically evaluate eQTLs as they have generated multiple data types on hundreds of samples. We evaluated the determinants of gene expression (germline variants and somatic copy number and methylation) and performed c/s-eQTL analyses for mRNA expression and miRNA expression in five tumor types (breast, colon, kidney, lung and prostate). We next tested 149 known cancer risk loci for eQTL effects, and observed that 42 (28.2%) were significantly associated with at least one transcript. Lastly, we described a fine-mapping strategy for these 42 eQTL target-gene associations based on an integrated strategy that combines the eQTL level of significance and the regulatory potential as measured by DNasel hypersensitivity. For each of the risk loci, our analyses suggested 1 to 81 candidate causal variants that may be prioritized for downstream functional analysis. In summary, our study provided a comprehensive landscape of the genetic determinants of gene expression in different tumor types and ranked the genes and loci for further functional assessment of known cancer risk loci.
机译:通过全基因组关联研究发现的大多数与性状相关的基因座都位于已知的蛋白质编码区之外。因此,很难确定这些变异的基础机制并查明原因等位基因。表达数量性状基因座(eQTL)提供了解决这两个问题的组织原则。 eQTL是与RNA转录水平相关的遗传基因座。诸如癌基因组图谱(TCGA)之类的大规模数据集为系统评估eQTL提供了理想的机会,因为它们已经在数百个样本上生成了多种数据类型。我们评估了基因表达的决定因素(生殖系变体,体细胞拷贝数和甲基化),并进行了c / s-eQTL分析,分析了五种肿瘤类型(乳腺癌,结肠癌,肾癌,肺癌和前列腺癌)中的mRNA表达和miRNA表达。接下来,我们测试了149个已知的癌症风险基因座的eQTL效应,并观察到42个(28.2%)与至少一个转录本显着相关。最后,我们基于整合了策略的综合策略描述了这42个eQTL目标基因关联的精细映射策略,该策略结合了eQTL的显着性水平和DNasel超敏性所测得的调控潜力。对于每个风险基因座,我们的分析均提出了1至81个候选因果变体,可以优先考虑进行下游功能分析。总而言之,我们的研究提供了不同肿瘤类型中基因表达的遗传决定因素的全面概况,并对基因和基因座进行了排名,以进一步进行已知癌症风险基因座的功能评估。

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