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Network-based SNP meta-analysis identifies joint and disjoint genetic features across common human diseases

机译:基于网络的SNP荟萃分析可确定常见人类疾病的共同和不连续遗传特征

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Background Genome-wide association studies (GWAS) have provided a large set of genetic loci influencing the risk for many common diseases. Association studies typically analyze one specific trait in single populations in an isolated fashion without taking into account the potential phenotypic and genetic correlation between traits. However, GWA data can be efficiently used to identify overlapping loci with analogous or contrasting effects on different diseases. Results Here, we describe a new approach to systematically prioritize and interpret available GWA data. We focus on the analysis of joint and disjoint genetic determinants across diseases. Using network analysis, we show that variant-based approaches are superior to locus-based analyses. In addition, we provide a prioritization of disease loci based on network properties and discuss the roles of hub loci across several diseases. We demonstrate that, in general, agonistic associations appear to reflect current disease classifications, and present the potential use of effect sizes in refining and revising these agonistic signals. We further identify potential branching points in disease etiologies based on antagonistic variants and describe plausible small-scale models of the underlying molecular switches. Conclusions The observation that a surprisingly high fraction (>15%) of the SNPs considered in our study are associated both agonistically and antagonistically with related as well as unrelated disorders indicates that the molecular mechanisms influencing causes and progress of human diseases are in part interrelated. Genetic overlaps between two diseases also suggest the importance of the affected entities in the specific pathogenic pathways and should be investigated further.
机译:背景技术全基因组关联研究(GWAS)提供了大量影响许多常见疾病风险的遗传基因座。关联研究通常以孤立的方式分析单个群体中的一个特定性状,而不考虑性状之间的潜在表型和遗传相关性。但是,GWA数据可以有效地用于识别对不同疾病具有相似或相反作用的重叠基因座。结果在这里,我们描述了一种新的方法来系统地对可用的GWA数据进行优先级排序和解释。我们专注于跨疾病的联合和不联合遗传决定因素的分析。使用网络分析,我们表明基于变体的方法优于基于基因座的分析。此外,我们根据网络属性提供了疾病基因座的优先顺序,并讨论了中心基因座在多种疾病中的作用。我们证明,一般而言,激动剂关联似乎反映了当前的疾病分类,并提出了在改善和修订这些激动剂信号中潜在使用效应大小的方法。我们进一步确定基于对抗性变体的疾病病因中潜在的分支点,并描述潜在的分子开关的合理的小规模模型。结论我们的研究中令人惊讶的高比例(> 15%)的SNP与相关和无关疾病发生激动和拮抗作用,这一观察结果表明,影响人类疾病成因和进展的分子机制在某种程度上是相互关联的。两种疾病之间的遗传重叠也表明受影响实体在特定的致病途径中的重要性,应进一步研究。

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