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Kernel canonical correlation analysis for assessing gene-gene interactions and application to ovarian cancer

机译:基因基因相互作用评估和卵巢癌应用的核典型相关分析

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摘要

Although single-locus approaches have been widely applied to identify disease-associated single-nucleotide polymorphisms (SNPs), complex diseases are thought to be the product of multiple interactions between loci. This has led to the recent development of statistical methods for detecting statistical interactions between two loci. Canonical correlation analysis (CCA) has previously been proposed to detect gene-gene coassociation. However, this approach is limited to detecting linear relations and can only be applied when the number of observations exceeds the number of SNPs in a gene. This limitation is particularly important for next-generation sequencing, which could yield a large number of novel variants on a limited number of subjects. To overcome these limitations, we propose an approach to detect gene-gene interactions on the basis of a kernelized version of CCA (KCCA). Our simulation studies showed that KCCA controls the Type-I error, and is more powerful than leading gene-based approaches under a disease model with negligible marginal effects. To demonstrate the utility of our approach, we also applied KCCA to assess interactions between 200 genes in the NF-κB pathway in relation to ovarian cancer risk in 3869 cases and 3276 controls. We identified 13 significant gene pairs relevant to ovarian cancer risk (local false discovery rate <0.05). Finally, we discuss the advantages of KCCA in gene-gene interaction analysis and its future role in genetic association studies.
机译:虽然已被广泛应用单向轨道方法以鉴定疾病相关的单核苷酸多态性(SNP),但是复杂的疾病被认为是基因座之间多个相互作用的产物。这导致最近开发用于检测两个基因座之间的统计相互作用的统计方法。先前已经提出了规范相关分析(CCA)以检测基因基因同锰。然而,这种方法仅限于检测线性关系,并且只有在观察的数量超过基因中的SNP的数量时才可以应用。这种限制对于下一代测序尤其重要,其可以在有限数量的受试者上产生大量新型变体。为了克服这些限制,我们提出了一种在CCA(KCCA)的核化版本的基础上检测基因基因相互作用的方法。我们的仿真研究表明,KCCA控制I型误差,而且比在疾病模型下的主要基因方法更强大,边际效应可忽略不计。为了证明我们方法的效用,我们还将KCCA应用于3869例和3276个控制中,在卵巢癌风险中评估NF-κB途径的200个基因之间的相互作用。我们鉴定了13对相关的与卵巢癌症风险相关的基因对(局部假发现率<0.05)。最后,我们探讨了KCCA在基因基因相互作用分析中的优势及其在遗传结社研究中的未来作用。

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  • 作者单位

    Department of Health Sciences Research Mayo Clinic Rochester MN United States;

    Department of Health Sciences Research Mayo Clinic Rochester MN United States;

    Department of Health Sciences Research Mayo Clinic Rochester MN United States;

    Department of Health Sciences Research Mayo Clinic Rochester MN United States;

    Department of Cancer Epidemiology Moffitt Cancer Center Tampa FL United States;

    Department of Cancer Epidemiology Moffitt Cancer Center Tampa FL United States;

    Duke Comprehensive Cancer Center Duke University Durham NC United States;

    Department of Pediatrics Universty of South Florida College of Medicine Tampa FL United States;

    Department of Oncology University of Cambridge Cambridge United Kingdom;

    Department of Preventative Medicine University of Southern California Los Angeles CA United;

    Division of Cancer Epidemiology and Genetics National Cancer Institute Bethesda MD United States;

    Department of Health Sciences Research Mayo Clinic Rochester MN United States;

    Department of Health Sciences Research Mayo Clinic Rochester MN United States Department of;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 医学遗传学;
  • 关键词

    association studies; canonical correlation; gene-gene interaction; kernel methods;

    机译:协会研究;规范相关;基因基因相互作用;核方法;

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