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Gene expression profiling of breast cancer survivability by pooled cDNA microarray analysis using logistic regression artificial neural networks and decision trees

机译:使用逻辑回归人工神经网络和决策树的汇集cDNA微阵列分析对乳腺癌生存能力进行基因表达谱分析

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摘要

BackgroundMicroarray technology can acquire information about thousands of genes simultaneously. We analyzed published breast cancer microarray databases to predict five-year recurrence and compared the performance of three data mining algorithms of artificial neural networks (ANN), decision trees (DT) and logistic regression (LR) and two composite models of DT-ANN and DT-LR. The collection of microarray datasets from the Gene Expression Omnibus, four breast cancer datasets were pooled for predicting five-year breast cancer relapse. After data compilation, 757 subjects, 5 clinical variables and 13,452 genetic variables were aggregated. The bootstrap method, Mann–Whitney U test and 20-fold cross-validation were performed to investigate candidate genes with 100 most-significant p-values. The predictive powers of DT, LR and ANN models were assessed using accuracy and the area under ROC curve. The associated genes were evaluated using Cox regression.
机译:背景技术微阵列技术可以同时获取有关数千个基因的信息。我们分析了已发布的乳腺癌微阵列数据库,以预测五年复发率,并比较了三种人工神经网络(ANN),决策树(DT)和逻辑回归(LR)数据挖掘算法的性能以及DT-ANN和DT-ANN的两种复合模型的性能DT-LR。从Gene Expression Omnibus收集微阵列数据集,合并四个乳腺癌数据集,以预测五年乳腺癌复发。数据汇总后,汇总了757名受试者,5个临床变量和13452个遗传变量。进行了bootstrap方法,Mann-Whitney U检验和20倍交叉验证,以研究具有100个最重要p值的候选基因。使用准确性和ROC曲线下的面积评估DT,LR和ANN模型的预测能力。使用Cox回归评估相关基因。

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