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Predictive model for risk of gastric cancer using genetic variants from genome‐wide association studies and high‐evidence meta‐analysis

机译:基因组关联研究的遗传变异胃癌风险预测模型及高证据荟萃分析

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摘要

Genome‐wide association studies (GWAS) have identified some single nucleotide polymorphisms (SNPs) associated with the risk of gastric cancer (GCa). However, currently, there is no published predictive model to assess the risk of GCa. In the present study, risk‐associated SNPs derived from GWAS and large meta‐analyses were selected to construct a predictive model to assess the risk of GCa. A total of 1115 GCa cases and 1172 controls from the eastern Chinese population were included. Logistic regression models were used to identify SNPs that correlated with the risk of GCa. A predictive model to assess the risk of GCa was established by receiver operating characteristic curve analysis. Multifactor dimensionality reduction (MDR) and classification and regression tree (CART) were applied to calculate the effect of high‐order gene‐environment interactions on risk of the cancer. A total of 42 SNPs were selected for further analysis. The results revealed that ASH1L rs80142782, PKLR rs3762272, PRKAA1 rs13361707, MUC1 rs4072037, PSCA rs2294008, and PLCE1 rs2274223 polymorphisms were associated with a risk of GCa. The area under curve considering both genetic factors and BMI was 3.10% higher than that of BMI alone. MDR analysis revealed that rs13361707 and rs4072307 variants and BMI had interaction effects on susceptibility to GCa, with the highest predictive accuracy (61.23%) and cross‐validation consistency (100/100). CART analysis also supported this interaction model that non‐overweight status and a six SNP panel could synergistically increase the susceptibility to GCa. The six SNP panel for predicting the risk of GCa may provide new tools for prevention of the cancer based on GWAS and large meta‐analyses derived genetic variants.
机译:基因组 - 宽协会研究(GWAs)鉴定了与胃癌(GCA)风险相关的一些单一核苷酸多态性(SNP)。但是,目前,没有公布的预测模型来评估GCA的风险。在本研究中,选择源自GWA和大型荟萃分析的风险相关的SNP以构建预测模型以评估GCA的风险。共有1115例GCA病例和来自东方人口的1172个控制。 Logistic回归模型用于识别与GCA风险相关的SNP。通过接收器操作特征曲线分析建立了评估GCA风险的预测模型。应用多因素维数减少(MDR)和分类和回归树(推车)以计算高阶基因环境相互作用对癌症风险的影响。选择共42个SNP进行进一步分析。结果表明,ASH1L RS80142782,PKLR RS3762272,PKLR RS3762272,PRKAA1 RS13361707,MUC1 RS4072037,PSCA RS2294008和PLCE1 RS227423多态性与GCA的风险有关。考虑到遗传因素和BMI的曲线下的区域比单独的BMI高3.10%。 MDR分析显示,RS13361707和RS4072307变体和BMI对GCA的易感性具有相互作用影响,具有最高的预测精度(61.23%)和交叉验证一致性(100/100)。推车分析还支持这种交互模型,即非超重状态和六个SNP面板可以协同增加对GCA的易感性。用于预测GCA风险的六个SNP面板可以为基于GWAS和大型META分析衍生的遗传变异性提供新的预防癌症的新工具。

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