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Convergent downstream candidate mechanisms of independent intergenic polymorphisms between co-classified diseases implicate epistasis among noncoding elements

机译:共同分类疾病与非分区元素之间的独立非基质多态性的收敛下游候选机制暗示了非编码元素的超越

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Eighty percent of DNA outside protein coding regions was shown biochemically functional by the ENCODE project, enabling studies of their interactions. Studies have since explored how convergent downstream mechanisms arise from independent genetic risks of one complex disease. However, the cross-talk and epistasis between intergenic risks associated with distinct complex diseases have not been comprehensively characterized. Our recent integrative genomic analysis unveiled downstream biological effectors of disease-specific polymorphisms buried in intergenic regions, and we then validated their genetic synergy and antagonism in distinct GWAS. We extend this approach to characterize convergent downstream candidate mechanisms of distinct intergenic SNPs across distinct diseases within the same clinical classification. We construct a multipartite network consisting of 467 diseases organized in 15 classes, 2,358 disease-associated SNPs, 6,301 SNPassociated mRNAs by eQTL, and mRNA annotations to 4,538 Gene Ontology mechanisms. Functional similarity between two SNPs (similar SNP pairs) is imputed using a nested information theoretic distance model for which p-values are assigned by conservative scale-free permutation of network edges without replacement (node degrees constant). At FDR<5%, we prioritized 3,870 intergenic SNP pairs associated, among which 755 are associated with distinct diseases sharing the same disease class, implicating 167 intergenic SNPs, 14 classes, 230 mRNAs, and 134 GO terms. Co-classified SNP pairs were more likely to be prioritized as compared to those of distinct classes confirming a noncoding genetic underpinning to clinical classification (odds ratio~3. 8;p≤10~(-25)). The prioritized pairs were also enriched in regions bound to the same/interacting transcription factors and/or interacting in long-range chromatin interactions suggestive of epistasis (odds ratio~ 2,500; p≤10~(-25)). This prioritized network implicates complex epistasis between in
机译:通过编码项目显示蛋白质编码区外的百分之八十的DNA,使其相互作用的研究能够进行生物化学功能。自从探索从一个复杂疾病的独立遗传风险产生会聚下游机制的研究。然而,与不同复杂疾病相关的跨谈话和外观尚未全面表征。我们最近的综合基因组分析揭开了埋藏在非基因区域的疾病特异性多态性的下游生物效应,然后我们在不同的GWAs中验证了他们的遗传协同和拮抗作用。我们扩展了这种方法,以表征不同临床分类中不同疾病的不同患者的收敛下游候选机制。我们构建由在15级,2,358个病情相关的SNP,6,301个SNPassociated MRNA中组织的467个疾病组成的多胞胎网络,并通过EQTL和MRNA注释为4,538个基因本体机制。使用嵌套信息理论距离模型累积两个SNP(类似SNP对)之间的功能相似性,其通过网络边缘的保守无尺度置换来分配P值(节点度常数)。在FDR <5%时,我们优先考虑3,870个与非基因SNP对相关,其中755与共享相同疾病类别的不同疾病相关,含有167个基因SNP,14级,230 mRNA和134级。与临床分类的非编码遗传学的不同类别相比,更有可能优先考虑共同分类的SNP对(差距〜3。8;P≤10〜(25))。优先化对也富集在绑定到同一/相互作用的转录因子和/或在远距离的染色质相互作用的相互作用区域暗示上位(比值比〜2500;p≤10〜(-25))。该优先级网络含义介绍了复杂的超声

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