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首页> 外文期刊>BMC Medical Genomics >A towards-multidimensional screening approach to predict candidate genes of rheumatoid arthritis based on SNP, structural and functional annotations
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A towards-multidimensional screening approach to predict candidate genes of rheumatoid arthritis based on SNP, structural and functional annotations

机译:一种基于单核苷酸多态性,结构和功能注释来预测类风湿关节炎候选基因的多维筛选方法

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Background According to the Genetic Analysis Workshops (GAW), hundreds of thousands of SNPs have been tested for association with rheumatoid arthritis. Traditional genome-wide association studies (GWAS) have been developed to identify susceptibility genes using a "most significant SNPs/genes" model. However, many minor- or modest-risk genes are likely to be missed after adjustment of multiple testing. This screening process uses a strict selection of statistical thresholds that aim to identify susceptibility genes based only on statistical model, without considering multi-dimensional biological similarities in sequence arrangement, crystal structure, or functional categories/biological pathways between candidate and known disease genes. Methods Multidimensional screening approaches combined with traditional statistical genetics methods can consider multiple biological backgrounds of genetic mutation, structural, and functional annotations. Here we introduce a newly developed multidimensional screening approach for rheumatoid arthritis candidate genes that considers all SNPs with nominal evidence of Bayesian association ( BFLn > 0 ), and structural and functional similarities of corresponding genes or proteins. Results Our multidimensional screening approach extracted all risk genes ( BFLn > 0 ) by odd ratios of hypothesis H1 to H0, and determined whether a particular group of genes shared underlying biological similarities with known disease genes. Using this method, we found 6614 risk SNPs in our Bayesian screen result set. Finally, we identified 146 likely causal genes for rheumatoid arthritis, including CD4, FGFR1, and KDR, which have been reported as high risk factors by recent studies. We must denote that 790 (96.1%) of genes identified by GWAS could not easily be classified into related functional categories or biological processes associated with the disease, while our candidate genes shared underlying biological similarities ( e.g . were in the same pathway or GO term) and contributed to disease etiology, but where common variations in each of these genes make modest contributions to disease risk. We also found 6141 risk SNPs that were too minor to be detected by conventional approaches, and associations between 58 candidate genes and rheumatoid arthritis were verified by literature retrieved from the NCBI PubMed module. Conclusions Our proposed approach to the analysis of GAW16 data for rheumatoid arthritis was based on an underlying biological similarities-based method applied to candidate and known disease genes. Application of our method could identify likely causal candidate disease genes of rheumatoid arthritis, and could yield biological insights that not detected when focusing only on genes that give the strongest evidence by multiple testing. We hope that our proposed method complements the "most significant SNPs/genes" model, and provides additional insights into the pathogenesis of rheumatoid arthritis and other diseases, when searching datasets for hundreds of genetic variances.
机译:背景技术根据遗传分析研讨会(GAW)的研究,已经测试了成千上万的SNP与类风湿性关节炎相关。已开发出传统的全基因组关联研究(GWAS),以使用“最重要的SNP /基因”模型鉴定易感基因。但是,在多次测试调整后,许多低风险或中等风险的基因很可能会丢失。此筛选过程使用严格的统计阈值选择,这些阈值旨在仅基于统计模型来识别易感基因,而不考虑候选基因和已知疾病基因之间的序列排列,晶体结构或功能类别/生物学途径的多维生物学相似性。方法多维筛选方法与传统的统计遗传学方法相结合,可以考虑遗传突变,结构和功能注释的多种生物学背景。在这里,我们介绍一种针对类风湿关节炎候选基因的新开发的多维筛选方法,该方法考虑了所有具有贝叶斯关联(BFLn> 0)标称证据的SNP,以及相应基因或蛋白质的结构和功能相似性。结果我们的多维筛选方法以假设H 1 与H 0 的奇数比提取了所有风险基因(BFLn> 0),并确定了特定的基因组是否共享潜在的生物学与已知疾病基因的相似性。使用这种方法,我们在贝叶斯筛选结果集中发现了6614个风险SNP。最后,我们确定了146种类风湿关节炎的可能病因基因,包括CD4,FGFR1和KDR,这些基因已被最新研究报道为高风险因素。我们必须指出,由GWAS鉴定的790个基因(96.1%)不能轻易地归类为与疾病相关的功能类别或生物学过程,而我们的候选基因具有潜在的生物学相似性(例如,处于相同的途径或GO术语中) ),并助长了疾病的病因学,但其中每个基因的共同变异对疾病风险的贡献不大。我们还发现了6141个风险SNP,它们太小而无法通过常规方法检测到,并且58种候选基因与类风湿关节炎之间的关联已通过从NCBI PubMed模块中检索到的文献进行了验证。结论我们提议的类风湿性关节炎GAW16数据分析方法基于一种基于生物学相似性的基础方法,该方法适用于候选和已知疾病基因。我们方法的应用可以识别类风湿关节炎的可能病因候选疾病基因,并且可以产生生物学见识,而这些生物学见识仅在集中于通过多次测试提供最有力证据的基因时才被发现。我们希望我们提出的方法能够补充“最重要的SNP /基因”模型,并在搜索数百种遗传变异的数据集时,对类风湿性关节炎和其他疾病的发病机理提供更多见解。

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