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Detecting gene-gene interactions using support vector machines with L1 penalty

机译:用L 1 罚款检测使用载体载体机的基因 - 基因相互作用

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Interactions among multiple genetic variants are likely to affect risk for human complex disease. It is increasingly recognized that the identification of interactions will not only increase the power to detect disease-associated variants, but will also help elucidate biological pathways that underlie diseases. In this article, we propose a two-stage method for detecting gene-gene interactions. In the first stage, using a model selection method, that is, support vector machines (SVM) with L1 penalty, we identify the most promising single-nucleotide polymorphisms (SNPs) and interactions. In the second stage, we apply logistic regression and ensure a valid type I error by excluding non-significant candidates after Bonferroni correction. We analyze a published case-control dataset where our method successfully identified an interaction term which was not discovered in previous studies
机译:多种遗传变异之间的相互作用可能影响人类复杂疾病的风险。越来越认识到,相互作用的鉴定不仅会增加检测疾病相关变体的能力,而且还可以帮助阐明疾病的生物途径。在本文中,我们提出了一种检测基因 - 基因相互作用的两级方法。在第一阶段,使用模型选择方法,即支持向量机(SVM)(SVM),L 1 罚球,我们鉴定最有前途的单核苷酸多态性(SNP)和相互作用。在第二阶段,我们通过在Bonferroni校正之后排除非重要候选,从而应用Logistic回归并确保有效的I错误。我们分析了发布的案例控制数据集,我们的方法成功地确定了以前研究中未发现的互动项

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