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Risk assessment models for genetic risk predictors of lung cancer using two-stage replication for Asian and European populations

机译:使用亚洲和欧洲人群的两阶段复制进行肺癌遗传风险预测因子的风险评估模型

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摘要

In the past ten years, great successes have been accumulated by taking advantage of both candidate-gene studies and genome-wide association studies. However, limited studies were available to systematically evaluate the genetic effects for lung cancer risk with large-scale and different ethnic populations. We systematically reviewed relevant literatures and filtered out 241 important genetic variants identified in 124 articles. A two-stage case-control study within specific subgroups was performed to assess the effects [Training set: 2,331 cases vs. 3,077 controls (Chinese population); testing set: 1,937 cases vs. 1,984 controls (European population)]. Variable selection and model development were used LASSO penalized regression and genetic risk score (GRS) system. Further change in area under the receiver operator characteristic curves (AUC) made by the epidemiologic model with and without GRS was used to compare predictions. It kept 38 genetic variants in our study and the ratios of lung cancer risk for subjects in the upper quartile GRS was three times higher compared to that in the low quartile (odds ratio: 4.64, 95% CI: 3.87–5.56). In addition, we found that adding genetic predictors to smoking risk factor-only model improved lung cancer predictive value greatly: AUC, 0.610 versus 0.697 (P < 0.001). Similar performance was derived in European population and the combined two data sets. Our findings suggested that genetic predictors could improve the predictive ability of risk model for lung cancer and highlighted the application among different populations, indicating that the lung cancer risk assessment model will be a promising tool for high risk population screening and prediction.
机译:在过去的十年中,通过利用候选基因研究和全基因组关联研究获得了巨大的成功。然而,有限的研究可用于系统地评估大规模和不同种族人群对肺癌风险的遗传效应。我们系统地回顾了相关文献,并筛选出了124篇文章中确定的241个重要的遗传变异。在特定亚组内进行了两阶段的病例对照研究,以评估疗效[培训组:2,331例患者与3,077例对照(中国人口);测试集:1,937例病例与1,984例对照(欧洲人口)]。变量选择和模型开发均采用LASSO罚分回归和遗传风险评分(GRS)系统。使用和不使用GRS的流行病学模型在接收者操作员特征曲线(AUC)下面积的进一步变化用于比较预测。它在我们的研究中保留了38个遗传变异,上四分位GRS患者的患肺癌风险的比率是低四分位患者的三倍(赔率:4.64、95%CI:3.87–5.56)。此外,我们发现在仅吸烟危险因素模型中添加遗传预测因子可大大改善肺癌的预测价值:AUC分别为0.610和0.697(P <0.001)。在欧洲人口以及两个数据集的组合中得出了类似的性能。我们的发现表明,遗传预测因子可以提高肺癌风险模型的预测能力,并强调了在不同人群中的应用,表明肺癌风险评估模型将成为高风险人群筛查和预测的有前途的工具。

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