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Knowledge-based analysis of genetic associations of rheumatoid arthritis to inform studies searching for pleiotropic genes: a literature review and network analysis

机译:基于知识的类风湿关节炎遗传关联分析,为研究多效性基因提供信息:文献综述和网络分析

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Introduction Pleiotropy describes the genetic effect of a single gene on multiple phenotypic traits. Gene variants directly affect the normal processes of a series of physiological and biochemical reactions, and therefore cause a variety of diseases traits to be changed accordingly. Moreover, a shared genetic susceptibility mechanism may exist between different diseases. Therefore, shared genes, with pleiotropic effects, are important to understand the sharing pathogenesis and hence the mechanisms underlying comorbidity. Methods In this study, we proposed combining genome-wide association studies (GWAS) and public knowledge databases to search for potential pleiotropic genes associated with rheumatoid arthritis (RA) and eight other related diseases. Here, a GWAS-based network analysis is used to recognize risk genes significantly associated with RA. These RA risk genes are re-extracted as potential pleiotropic genes if they have been proved to be susceptible genes for at least one of eight other diseases in the OMIM or PubMed databases. Results In total, we extracted 116 potential functional pleiotropic genes for RA and eight other diseases, including five hub pleiotropic genes, BTNL2 , HLA-DRA , NOTCH4 , TNXB , and C6orf10 , where BTNL2 , NOTCH4 , and C6orf10 are novel pleiotropic genes identified by our analysis. Conclusions This study demonstrates that pleiotropy is a common property of genes associated with disease traits. Our results ascertained the shared genetic risk profiles that predisposed individuals to RA and other diseases, which could have implications for identification of molecular targets for drug development, and classification of diseases. Electronic supplementary material The online version of this article (doi:10.1186/s13075-015-0715-1) contains supplementary material, which is available to authorized users.
机译:简介多效性描述了单个基因对多种表型性状的遗传效应。基因变异直接影响一系列生理和生化反应的正常过程,因此会导致多种疾病的性状发生相应的变化。此外,不同疾病之间可能存在共享的遗传易感性机制。因此,具有多效作用的共享基因对于了解共享发病机理以及因此而引起的合并症很重要。方法在本研究中,我们提议结合全基因组关联研究(GWAS)和公共知识数据库来搜索与类风湿关节炎(RA)和其他八种相关疾病相关的潜在多效性基因。在这里,基于GWAS的网络分析用于识别与RA显着相关的风险基因。如果已在OMIM或PubMed数据库中证明这些RA风险基因是其他八种疾病中至少一种的易感基因,则将这些RA风险基因重新提取为潜在的多效性基因。结果我们共提取了116种潜在的RA和8种其他疾病的功能性多效性基因,包括5种中枢多效性基因BTNL2,HLA-DRA,NOTCH4,TNXB和C6orf10,其中BTNL2,NOTCH4和C6orf10是通过我们的分析。结论这项研究表明,多效性是与疾病性状相关的基因的共同特征。我们的研究结果确定了共有的遗传风险图谱,这些图谱使个体易患RA和其他疾病,这可能对鉴定药物开发的分子靶标和疾病分类具有影响。电子补充材料本文的在线版本(doi:10.1186 / s13075-015-0715-1)包含补充材料,授权用户可以使用。

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