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Network-based multiple sclerosis pathway analysis with GWAS data from 15,000 cases and 30,000 controls

机译:基于网络的多发性硬化途径分析,结合来自15,000例病例和30,000例对照的GWAS数据

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摘要

Multiple sclerosis (MS) is an inflammatory CNS disease with a substantial genetic component, originally mapped to only the human leukocyte antigen (HLA) region. In the last 5 years, a total of seven genome-wide association studies and one meta-analysis successfully identified 57 non-HLA susceptibility loci. Here, we merged nominal statistical evidence of association and physical evidence of interaction to conduct a protein-interaction-network-based pathway analysis (PINBPA) on two large genetic MS studies comprising a total of 15,317 cases and 29,529 controls. The distribution of nominally significant loci at the gene level matched the patterns of extended linkage disequilibrium in regions of interest. We found that products of genome-wide significantly associated genes are more likely to interact physically and belong to the same or related pathways. We next searched for subnetworks (modules) of genes (and their encoded proteins) enriched with nominally associated loci within each study and identified those modules in common between the two studies. We demonstrate that these modules are more likely to contain genes with bona fide susceptibility variants and, in addition, identify several high-confidence candidates (including BCL10, CD48, REL, TRAF3, and TEC). PINBPA is a powerful approach to gaining further insights into the biology of associated genes and to prioritizing candidates for subsequent genetic studies of complex traits.
机译:多发性硬化症(MS)是具有实质性遗传成分的炎性CNS疾病,最初仅定位于人白细胞抗原(HLA)区。在过去的五年中,总共进行了七项全基因组关联研究和一项荟萃分析,成功鉴定出57个非HLA易感性基因座。在这里,我们合并了名义上的关联性统计证据和相互作用的物理证据,以对包括15317例病例和29529例对照的两项大型遗传MS研究进行基于蛋白质相互作用网络的通路分析(PINBPA)。基因水平上名义上显着的基因座的分布与感兴趣区域中延伸连锁不平衡的模式匹配。我们发现全基因组显着相关基因的产物更可能发生物理相互作用,并属于相同或相关的途径。接下来,我们在每个研究中搜索富集了名义上相关位点的基因(及其编码的蛋白质)的子网络(模块),并确定了这两个研究之间共有的模块。我们证明,这些模块更有可能包含具有真实易感性变异的基因,此外,还可以识别出几种高可信度候选物(包括BCL10,CD48,REL,TRAF3和TEC)。 PINBPA是一种强大的方法,可以使您深入了解相关基因的生物学,并为随后进行复杂性状的遗传研究确定优先顺序。

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