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首页> 外文期刊>Human Molecular Genetics >Finding lost genes in GWAS via integrative—omics analysis reveals novel sub-networks associated with preterm birth
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Finding lost genes in GWAS via integrative—omics analysis reveals novel sub-networks associated with preterm birth

机译:通过整合 - OMICS分析发现GWAS中的丢失基因揭示了与早产相关的新型子网

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摘要

Maternal genome influences associate with up to 40% of spontaneous preterm births (PTB). Multiple genome wide association studies (GWAS) have been completed to identify genetic variants associated with PTB. Disappointingly, no highly significant SNPs have replicated in independent cohorts so far. We developed an approach combining protein-protein interaction (PPI) network data with tissue specific gene expression data to “find” SNPs of modest significance to identify candidate genes of functional importance that would otherwise be overlooked. This approach is based on the assumption that “high-ranking” SNPs falling short of genome wide significance may nevertheless indicate genes that have substantial biological value in understanding PTB. We mapped highly-ranked candidate SNPs from a meta-analysis of PTB-GWAS to coding genes and developed a PPI network enriched with PTB-SNP carrying genes. This network was scored with gene expression data from term and preterm myometrium to identify subnetworks of PTB-SNP associated genes coordinately expressed with labour onset in myometrial tissue. Our analysis consistently identified significant sub-networks associated with the interacting transcription factors MEF2C and TWIST1, genes not previously associated with PTB, both of which regulate processes clearly relevant to birth timing. Other genes in the significant sub-networks were also associated with inflammatory pathways, as well as muscle function and ion channels. Gene expression level dysregulation was confirmed for eight of these networks by qRT-PCR in an independent set of term and pre-term subjects. Our method identifies novel genes dysregulated in PTB and provides a generalized framework to identify GWAS SNPs that would otherwise be overlooked.
机译:母体基因组影响伴有高达40%的自发早产(PTB)。已经完成了多种基因组宽协会研究(GWAs)以鉴定与PTB相关的遗传变体。令人失望的是,到目前为止,没有高度重要的SNP已经复制在独立的队列中。我们开发了一种将蛋白质 - 蛋白质相互作用(PPI)网络数据与组织特异性基因表达数据相结合的方法,以“找到”SNP的适度意义,以确定否则将被忽视的功能重要性的候选基因。这种方法基于假设“高级”SNP缺少基因组的宽度较小的意义,但可能表明在理解PTB中具有实质性生物价值的基因。我们将高度排名的候选SNP从PTB-GWA的META分析中映射到编码基因,并开发了富含PTB-SNP携带基因的PPI网络。该网络与来自术语和早产的基因表达数据进行评分,以鉴定与肌肉组织中的劳动力发作的劳动发作的PTB-SNP相关基因的子网。我们的分析一致地识别与互动转录因子MEF2C和TWICK1相关的重要子网,先前未与PTB相关联的基因,两者都调节与出生时间明显相关的过程。重要的子网中的其他基因也与炎症途径以及肌肉功能和离子通道有关。通过QRT-PCR在独立的术语和预期受试者中通过QRT-PCR确认基因表达水平蒸发剂。我们的方法识别在PTB中进行了多重测定的新基因,并提供了识别否则将被忽视的GWAS SNP的广义框架。

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