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A Systematic Method Based on Haplotype Analysis: Application to Risk Alleles and Genes Mining for RA

机译:基于单倍型分析的系统方法:在RA风险等位基因和基因挖掘中的应用

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In this study, we developed a systematic method to find risk alleles and relative gene for Rheumatoid Arthritis (RA). The method consists of three steps: 1) genome-wide case-control association studying based on haplotypes; 2) genome-wide association mapping based on directly mining haplotypes produced from caseȁ3;control data via a density-based clustering algorithm; 3) candidate genes within 1Mb of the interesting haplotype blocks prioritizing underlying biological processes or diseases, based on their similarity to known genes involved in these phenomena. By analyzing the dataset of 5393 informative single-nucleotide polymorphisms (SNPs) markers containing 822 uncorrelated individuals which obtained from the North American Rheumatoid Arthritis Consortium (NARAC), we found 25 haplotypes in 18 haplotype blocks and 33  genes will be  increase the risk of RA. 9 of the genes have been identified by previous studies, while novel genes may be risk genes for RA.   The genes PTPRC (p =1.15E-04) and F12 (1.36E-02) have the highest risk of RA. In summary, the results of our analysis will provide fundamental new insights into the pathogenesis of RA, and the systematic analysis method combining the genome-wide association study based on haplotype and the prioritizing study of candidate genes based on their similarity to known genes will help to comprehend the genetic architecture underlying other complex human diseases.
机译:在这项研究中,我们开发了一种系统的方法来查找类风湿关节炎(RA)的风险等位基因和相关基因。该方法包括三个步骤:1)基于单倍型的全基因组病例对照关联研究; 2)基于直接挖掘案例3产生的单倍型的全基因组关联映射;通过基于密度的聚类算法控制数据; 3)有趣的单倍型中1Mb内的候选基因,基于与这些现象中涉及的已知基因的相似性,优先考虑潜在的生物学过程或疾病。通过分析5822个信息丰富的单核苷酸多态性(SNPs)标记的数据集,这些标记包含从北美类风湿关节炎协会(NARAC)获得的822个不相关个体,我们发现18个单倍型区块中有25个单倍型,而33个基因将增加RA的风险。先前的研究已经鉴定出9个基因,而新基因可能是RA的危险基因。 PTPRC基因(p = 1.15E-04)和F12基因(1.36E-02)患RA的风险最高。总而言之,我们的分析结果将为RA的发病机理提供基础性的新见解,将基于单倍型的全基因组关联研究与基于与已知基因相似性的候选基因优先研究相结合的系统分析方法将有所帮助了解其他人类复杂疾病的遗传结构。

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