Li-Yeh Chuang, Ming-Cheng Lin, Hsueh-Wei Chang, Cheng-Hong Yang
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引用次数: 7
Abstract
Many association studies analyze the genotype frequencies of case and control data to predict susceptibility to diseases and cancers. An increasing number of studies has shown that the risk of getting diseases and cancers is associated with the co-occurrence of some contain single nucleotide polymorphisms (SNPs). Determining the disease-causing SNPs has become an important objective. In order to study the SNPSNP interaction in breast cancer, we used a particle swarm optimization (PSO) algorithm to compute the difference between the control and case data and performed a feature selection from different SNP combinations with their corresponding genotypes. The best combination of SNP-SNP interactions is the maximal difference of co-occurrences between the control and case groups. In this study, we explored the SNP interaction of 19 SNPs in 372 controls and 398 cases of breast cancer association using simulated SNP data of breast cancers. The odds ratio (OR) were used to evaluate the breast cancer risk in terms of the best combination of SNP-SNP interactions. Compared to their corresponding non-SNP combinations, the estimated OR of the best predicted SNP combination with genotypes for breast cancer is significantly greater than 1 (about 1.771 and 2.417, confidence interval (CI): 1.223-4.371, p
许多关联研究分析病例和对照数据的基因型频率,以预测对疾病和癌症的易感性。越来越多的研究表明,患疾病和癌症的风险与一些含有单核苷酸多态性(snp)的共同发生有关。确定致病snp已成为一个重要的目标。为了研究SNP - SNP在乳腺癌中的相互作用,我们使用粒子群优化(PSO)算法计算对照和病例数据之间的差异,并从不同的SNP组合及其相应的基因型中进行特征选择。SNP-SNP相互作用的最佳组合是对照组和病例组之间共现率的最大差异。在这项研究中,我们利用模拟的乳腺癌SNP数据,探索了372例对照和398例乳腺癌相关病例中19个SNP的SNP相互作用。比值比(OR)用于评估SNP-SNP相互作用的最佳组合的乳腺癌风险。与相应的非SNP组合相比,最佳预测SNP组合与基因型对乳腺癌的估计OR显著大于1(分别约为1.771和2.417,置信区间(CI): 1.223-4.371, p