Information fusion of CNVs and SNPs on gene-gene interactions for molecular subtypes of lymphoma

Tse-Yi Wang, Yen-Ho Chen, Kuang-Chi Chen
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Abstract

Although genome-wide association studies report many disease-associated loci involved in pathogenesis, current identified variants only explain a little part of the heritability underlying complex diseases. To explore the other missing part of heritability, data-mining methods are proposed and developed to detect disease-associated interactions between variants. Recently, some studies have revealed the linkage disequilibrium between chromosome structure variations and disease-associated loci. We are motivated to employ a fusion approach that incorporates the information of copy number variations (CNVs) for identifying interactions between single nucleotide polymorphisms (SNPs). The CNV profiles are first used for clustering analysis of disease subtypes, and then the SNP-SNP interactions are examined by the multifactor dimensionality reduction (MDR) method. We applied the fusion approach in analyzing 214 lymphoma cases. The results showed that the interactions identified by the fusion approach were more significantly associated with lymphoma than those identified only by MDR without incorporating CNV information. Therefore, we conclude that information fusion of CNVs and SNPs provides a proper strategy for detecting gene-gene interactions in disease association studies.
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淋巴瘤分子亚型基因-基因相互作用的CNVs和SNPs信息融合
尽管全基因组关联研究报告了许多与发病机制相关的疾病相关位点,但目前已确定的变异仅解释了复杂疾病遗传能力的一小部分。为了探索遗传力的其他缺失部分,提出并开发了数据挖掘方法来检测变异之间与疾病相关的相互作用。近年来,一些研究揭示了染色体结构变异与疾病相关位点之间的连锁不平衡。我们的动机是采用融合方法,结合拷贝数变异(CNVs)的信息来识别单核苷酸多态性(SNPs)之间的相互作用。CNV谱首先用于疾病亚型的聚类分析,然后通过多因素降维(MDR)方法检测SNP-SNP相互作用。我们应用融合入路分析了214例淋巴瘤病例。结果表明,通过融合方法鉴定的相互作用与淋巴瘤的相关性比仅通过MDR鉴定的相互作用更显著,而不纳入CNV信息。因此,我们得出结论,CNVs和snp的信息融合为疾病关联研究中检测基因-基因相互作用提供了一种合适的策略。
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