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Risk of GWAS-identified genetic variants for breast cancer in a Chinese population: A multiple interaction analysis

机译:GWAS鉴定的中国人群乳腺癌遗传变异的风险:多重相互作用分析

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Genome-wide association studies (GWASs) of breast cancer (BC) have identified multiple risk variants. However, the multiple interactions among these variants are still not well established. In this study, we utilized the multi-analytic strategy combing random forest (RF), multifactor dimensionality reduction (MDR), and logistic regression approaches to investigate the high-order interactions among ten genetic variants recently identified by GWAS in 477 BC patients and 534 healthy controls. Expectedly, six variants, rs1219648, rs3757318, rs1926657, rs6556756, rs2046210, and rs4973768, were significantly associated with BC risk under independent analysis. In RF analysis, rs3757318, rs2046210, and rs4973768 were ranked as the top three important risk factors and were selected as the best set which taking interactions into consideration. Subsequently, the MDR analysis of the ten variants found that the three-factor model including rs3757318, rs2046210, and rs4973768 interpret the best interaction model with the maximized testing accuracy of 0.6183 and cross-validation consistency of 10/10. Intriguingly, cumulative effect was observed in the manner of dose-dependent with increasing numbers of risk alleles (P trend = 9.80 × 10-5), and the individuals carrying 4-6 risk alleles had a threefold higher risk of BC than carrying 0 risk alleles (OR 3.27, 95 % CI 1.96-5.48). Our findings emphasized the proof of principle that multiple interactions of genetic variants, including rs3757318, rs2046210, and rs4973768 may play important roles in the susceptibility of BC though the biological mechanisms underlying the observed associations need to be elucidated.
机译:乳腺癌(BC)的全基因组关联研究(GWAS)已确定多种风险变异。然而,这些变体之间的多重相互作用仍然没有很好地建立。在这项研究中,我们利用随机森林(RF),多因素降维(MDR)和logistic回归方法相结合的多分析策略,研究了GWAS最近在477 BC患者和534患者中通过GWAS确定的十个遗传变异之间的高阶相互作用。健康对照。可以预期,在独立分析下,六个变体rs1219648,rs3757318,rs1926657,rs6556756,rs2046210和rs4973768与BC风险显着相关。在RF分析中,将rs3757318,rs2046210和rs4973768列为最重要的三个重要风险因素,并在考虑相互作用的情况下将它们选为最佳集合。随后,对十个变体的MDR分析发现,包括rs3757318,rs2046210和rs4973768在内的三因素模型以最大的测试精度0.6183和交叉验证一致性10/10解释了最佳的交互模型。有趣的是,随着风险等位基因数量的增加,观察到累积效应呈剂量依赖性(P趋势= 9.80×10-5),携带4-6个风险等位基因的个体患BC的风险是携带0个风险的三倍。等位基因(OR 3.27,95%CI 1.96-5.48)。我们的发现强调了原理上的证明,尽管需要阐明所观察到的关联的潜在生物学机制,但包括rs3757318,rs2046210和rs4973768在内的遗传变异的多重相互作用可能在BC的易感性中起重要作用。

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