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首页> 外文期刊>The International journal of biological markers >Establishment of Two Data Mining Models of Lung Cancer Screening Based on Three Gene Promoter Methylations Combined with Telomere Damage
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Establishment of Two Data Mining Models of Lung Cancer Screening Based on Three Gene Promoter Methylations Combined with Telomere Damage

机译:基于三种基因启动子甲基化结合端粒损伤的两种肺癌筛查数据挖掘模型的建立

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To identify the significance of a support vector machine (SVM) model and a decision tree (DT) model for the diagnosis of lung cancer combined with the detection of fragile histidine triad (FHIT), RAS association domain family 1 (RASSF1A) and cyclin-dependent kinase inhibitor 2A (p16) promoter methylation levels and relative telomere length (RTL) of white blood cells from peripheral blood DNA. The levels of p16, RASSF1A and FHIT promoter methylation and the RTL of white blood cells in peripheral blood DNA of 200 healthy individuals and 200 lung cancer patients were analyzed by SYBR Green-based quantitative methylation-specific PCR and quantitative PCR. Based on the 4 biomarkers, SVM and DT models were developed. The levels of FHIT, RASSF1A and p16 promoter methylation were 3.33 (1.86-6.40) and 2.85 (1.39-5.44) (p = 0.002); 27.62 (9.09-52.86) and 17.17 (3.86-50.87) (p = 0.038); and 0.59 (0.16-4.50) and 0.36 (0.06-4.00) (p = 0.008) in cases and controls, respectively. RTL was 0.93 ± 0.32 and 1.16 ± 0.57 (p0.001). The areas under the receiver operating characteristic (ROC) curves of the Fisher discriminant analysis, SVM and DT models were 0.670 (0.569-0.761), 0.810 (0.719-0.882) and 0.810 (0.719-0.882), respectively. The SVM and DT models for diagnosing lung cancer were successfully developed through the combined detection of p16, RASSF1A and FHIT promoter methylation and RTL, which provided useful tools for screening lung cancer.
机译:要确定支持向量机(SVM)模型和决策树(DT)模型对肺癌的诊断以及对脆性组氨酸三联体(FHIT),RAS关联域家族1(RASSF1A)和细胞周期蛋白-依赖性激酶抑制剂2A(p16)启动子甲基化水平和外周血DNA中白细胞的相对端粒长度(RTL)。通过基于SYBR Green的定量甲基化特异性PCR和定量PCR分析了200名健康个体和200名肺癌患者外周血DNA中p16,RASSF1A和FHIT启动子的甲基化水平以及白细胞的RTL。基于4种生物标记,开发了SVM和DT模型。 FHIT,RASSF1A和p16启动子甲基化水平分别为3.33(1.86-6.40)和2.85(1.39-5.44)(p = 0.002); 27.62(9.09-52.86)和17.17(3.86-50.87)(p = 0.038);病例和对照组分别为0.59(0.16-4.50)和0.36(0.06-4.00)(p = 0.008)。 RTL为0.93±0.32和1.16±0.57(p <0.001)。 Fisher判别分析,SVM和DT模型的接收器工作特性(ROC)曲线下的面积分别为0.670(0.569-0.761),0.810(0.719-0.882)和0.810(0.719-0.882)。通过联合检测p16,RASSF1A和FHIT启动子甲基化以及RTL,成功开发了用于诊断肺癌的SVM和DT模型,为筛查肺癌提供了有用的工具。

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