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Classification and Regression Analysis of Lung Tumors from Multi-level Gene Expression Data

机译:基于多水平基因表达数据的肺肿瘤分类与回归分析

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We study classification and regression problems in lung tumors where high throughput gene expression is measured at multiple levels: epi-genetics, transcription and protein. We uncover the correlates of smoking and gender-specificity in lung tumors. Different genes are indicative of smoking levels, gender and survival rates at these different levels. We also carry out an integrative anaysis, by feature selection from the pool of all three levels of features. Our results show that the epigenetic information in DNA methylation is a better marker for smoking status than gene expression either at the transcript or protein levels. Further, surprisingly, integrative anlysis using multi-level gene expression offers no significant advantage over the individual levels in the classification and survival prediction problems considered.
机译:我们研究了肺肿瘤的分类和回归问题,在肺肿瘤中高通量基因表达在多个水平上进行了测量:表观遗传学,转录和蛋白质。我们发现吸烟与肺肿瘤中性别特异性的相关性。不同的基因指示在这些不同水平上的吸烟水平,性别和生存率。我们还通过从所有三个级别的特征池中进行特征选择来进行综合分析。我们的结果表明,在转录水平或蛋白质水平上,DNA甲基化中的表观遗传信息比基因表达是吸烟状态的更好标志。此外,令人惊讶的是,在考虑的分类和生存预测问题上,使用多级基因表达的综合分析在个体水平上没有提供明显优势。

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