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Odds Ratio-Based Genetic Algorithm for Prediction of SNP-SNP Interactions in Breast Cancer Association Study

机译:基于比值比的遗传算法预测乳腺癌关联研究中的SNP-SNP相互作用

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Accumulating evidence has shown that individual commonly occurring single nucleotide polymorphisms (SNPs) are associated with the cancer risks. Hence, determining the disease-causing SNPs have become an important issue. In order to explore SNP-SNP interactions in breast cancer, we used a genetic algorithm (GA) to simultaneously analyze multiple independent SNPs, and to compute the difference between the case and control groups of different SNP combinations with their corresponding genotypes. The best combination of SNP-SNP interactions is the maximal difference of co-occurrences between the case and control groups. We also used the odds ratio (OR) to further evaluate the impact of each SNP combination. In this study, we explored the SNP-SNP interactions for the simulated breast cancers SNP dataset including 19 SNPs in 372 control group and 398 cases of breast cancer group. Compared to their corresponding non-SNP combinations, the estimated OR of the best predicted SNP combination with genotypes for breast cancer is about 1.771 and 5.904 (confidence interval (CI): 1.223-20.275; p <; 0.05) for specific SNP combinations of two to six SNPs. The SNP-SNP interactions with a high risk of breast cancer could be successfully predicted by the GA method. The proposed algorithm may potentially be applied to SNP-SNP interaction combinations in other diseases and cancers.
机译:越来越多的证据表明,个别普遍存在的单核苷酸多态性(SNP)与癌症风险有关。因此,确定引起疾病的SNP已经成为重要的问题。为了探讨乳腺癌中SNP-SNP的相互作用,我们使用遗传算法(GA)同时分析多个独立的SNP,并计算不同SNP组合的病例组和对照组及其相应基因型之间的差异。 SNP-SNP相互作用的最佳组合是病例组和对照组之间同时出现的最大差异。我们还使用了优势比(OR)来进一步评估每个SNP组合的影响。在这项研究中,我们探索了模拟乳腺癌SNP数据集的SNP-SNP相互作用,包括372个对照组和398例乳腺癌组中的19个SNP。与它们相应的非SNP组合相比,两种特​​定SNP组合的最佳预测SNP组合与基因型的估计OR分别为1.771和5.904(置信区间(CI):1.223-20.275; p <; 0.05)六个SNP。遗传算法可以成功预测具有高乳腺癌风险的SNP-SNP相互作用。所提出的算法可以潜在地应用于其他疾病和癌症中的SNP-SNP相互作用组合。

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