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GENOME-WIDE GENETIC INTERACTION ANALYSIS OF GLAUCOMA USING EXPERT KNOWLEDGE DERIVED FROM HUMAN PHENOTYPE NETWORKS

机译:利用人类表型网络的专业知识基因组族遗传互动分析

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The large volume of GWAS data poses great computational challenges for analyzing genetic interactions associated with common human diseases. We propose a computational framework for characterizing epistatic interactions among large sets of genetic attributes in GWAS data. We build the human phenotype network (HPN) and focus around a disease of interest. In this study, we use the GLAUGEN glaucoma GWAS dataset and apply the HPN as a biological knowledge-based filter to prioritize genetic variants. Then, we use the statistical epistasis network (SEN) to identify a significant connected network of pairwise epistatic interactions among the prioritized SNPs. These clearly highlight the complex genetic basis of glaucoma. Furthermore, we identify key SNPs by quantifying structural network characteristics. Through functional annotation of these key SNPs using Biofilter, a software accessing multiple publicly available human genetic data sources, we find supporting biomedical evidences linking glaucoma to an array of genetic diseases, proving our concept. We conclude by suggesting hypotheses for a better understanding of the disease.
机译:大量的GWAS数据对分析与普通人疾病相关的遗传相互作用构成了很大的计算挑战。我们提出了一种计算框架,用于表征GWAS数据中的大组遗传属性之间的认证相互作用。我们建立人类表型网络(HPN)并侧重于感兴趣的疾病。在这项研究中,我们使用Glaugen Glaucoma Gwas DataSet并将HPN作为基于生物知识的滤波器应用,以优先考虑遗传变体。然后,我们使用统计的简介网络(SEN)来识别优先SNP中的配对背景相互作用的重要连接网络。这些清楚地突出了青光眼的复杂遗传基础。此外,我们通过量化结构网络特性来识别密钥SNP。通过使用生物过滤器的这些关键SNP的功能注释,一种访问多个公开的人类遗传数据来源的软件,我们发现支持将青光眼与一系列遗传疾病联系起来的生物医学证据,证明我们的概念。我们通过建议更好地了解疾病的假设来得出结论。

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