Classification of genome-wide copy number variations and their associated SNP and gene networks analysis

Yang Liu, Yiu-Fai Lee, M. Ng
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Abstract

Detection of genomic DNA copy number variations (CNVs) can provide a complete and more comprehensive view of human disease. In this paper, we incorporate DNA copy number variation data derived from SNP arrays into a computational shrunken model and formalize the detection of copy number variations as a case-control classification problem. By shrinkage, the number of relevant CNVs to disease can be determined. In order to understand relevant CNVs, we study their corresponding SNPs in the genome and find out the unique genes that those SNPs are located in. A gene-gene similarity value is computed using GOSemSim and gene pairs that has a similarity value being greater than a threshold are selected to construct several groups of genes. For the SNPs that involved in these groups of genes, a statistical software PLINK is employed to compute the pair-wise SNP-SNP interactions, and identify SNP networks based on their p-values. By using two real genome-wide data sets, we further demonstrate SNP and gene networks play a role in the biological process. An analysis shows that such networks have relationships directly or indirectly to disease study.
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全基因组拷贝数变异的分类及其相关SNP和基因网络分析
基因组DNA拷贝数变异(CNVs)的检测可以提供一个完整和更全面的人类疾病视图。在本文中,我们将来自SNP阵列的DNA拷贝数变化数据纳入计算萎缩模型,并将拷贝数变化的检测形式化为病例对照分类问题。通过收缩,可以确定与疾病相关的CNVs数量。为了了解相关的CNVs,我们研究了它们在基因组中对应的SNPs,并找出这些SNPs所在的独特基因。使用GOSemSim计算基因-基因相似值,并选择相似值大于阈值的基因对构建多组基因。对于这些基因组中涉及的SNP,使用PLINK统计软件计算成对SNP-SNP相互作用,并根据其p值识别SNP网络。通过使用两个真实的全基因组数据集,我们进一步证明了SNP和基因网络在生物过程中发挥作用。一项分析表明,这种网络与疾病研究有直接或间接的关系。
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