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Biology-Driven Gene-Gene Interaction Analysis of Age-Related Cataract in the eMERGE Network

机译:eMERGE网络中与年龄相关的白内障的生物学驱动的基因-基因相互作用分析

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Bioinformatics approaches to examine gene-gene models provide a means to discover interactions between multiple genes that underlie complex disease. Extensive computational demands and adjusting for multiple testing make uncovering genetic interactions a challenge. Here, we address these issues using our knowledge-driven filtering method, Biofilter, to identify putative single nucleotide polymorphism (SNP) interaction models for cataract susceptibility, thereby reducing the number of models for analysis. Models were evaluated in 3,377 European Americans (1,185 controls, 2,192 cases) from the Marshfield Clinic, a study site of the Electronic Medical Records and Genomics (eMERGE) Network, using logistic regression. All statistically significant models from the Marshfield Clinic were then evaluated in an independent dataset of 4,311 individuals (742 controls, 3,569 cases), using independent samples from additional study sites in the eMERGE Network: Mayo Clinic, Group Health/University of Washington, Vanderbilt University Medical Center, and Geisinger Health System. Eighty-three SNP-SNP models replicated in the independent dataset at likelihood ratio test P < 0.05. Among the most significant replicating models was rs12597188 (intron of CDH1)-rs11564445 (intron of CTNNB1). These genes are known to be involved in processes that include: cell-to-cell adhesion signaling, cell-cell junction organization, and cell-cell communication. Further Biofilter analysis of all replicating models revealed a number of common functions among the genes harboring the 83 replicating SNP-SNP models, which included signal transduction and PI3K-Akt signaling pathway. These findings demonstrate the utility of Biofilter as a biology-driven method, applicable for any genome-wide association study dataset. Published 2015 Wiley Periodicals, Inc.
机译:用于检查基因-基因模型的生物信息学方法提供了一种发现复杂疾病基础的多个基因之间相互作用的方法。大量的计算需求和对多种测试的调整使得发现遗传相互作用成为一个挑战。在这里,我们使用知识驱动的过滤方法Biofilter解决这些问题,以识别白内障易感性的推定单核苷酸多态性(SNP)相互作用模型,从而减少分析模型的数量。使用Logistic回归方法,从电子病历和基因组学(eMERGE)网络的研究地点Marshfield诊所对3,377名欧洲裔美国人(1,185名对照者,2,192例)进行了模型评估。然后,使用来自eMERGE网络中其他研究地点的独立样本,在来自4,311个个体的独立数据集中评估了所有Marshfield诊所具有统计学意义的模型(742名对照,3,569例):梅奥诊所,集团健康/华盛顿大学,范德比尔特大学医疗中心和盖辛格卫生系统。在似然比检验P <0.05的情况下,在独立数据集中复制了83个SNP-SNP模型。在最重要的复制模型中,有rs12597188(CDH1的内含子)-rs11564445(CTNNB1的内含子)。已知这些基因参与的过程包括:细胞间粘附信号,细胞间连接组织和细胞间通讯。所有复制模型的进一步生物过滤器分析揭示了在包含83个复制SNP-SNP模型的基因之间的许多共同功能,包括信号转导和PI3K-Akt信号通路。这些发现证明了生物过滤器作为生物驱动方法的实用性,适用于任何全基因组关联研究数据集。 2015年出版的Wiley Periodicals,Inc.

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