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Epithelial-Mesenchymal Transition Regulatory Network-Based Feature Selection in Lung Cancer Prognosis Prediction

机译:基于上皮-间质转化调控网络的肺癌预后预测特征选择

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Feature selection technique is often applied in identifying cancer prognosis biomarkers. However, many feature selection methods are prone to over-fitting or poor biological interpretation when applied on biological high-dimensional data. Network-based feature selection and data integration approaches are proposed to identify more robust biomarkers. We conducted experiments to investigate the advantages of the two approaches using epithelial mesenchymal transition regulatory network, which is demonstrated as highly relevant to cancer prognosis. We obtained data from The Cancer Genome Atlas. Prognosis prediction was made using Support Vector Machine. Under our experimental settings, the results showed that network-based features gave significantly more accurate predictions than individual molecular features, and features selected from integrated data (RNA-Seq and micro-RNA data) gave significantly more accurate predictions than features selected from single source data (RNA-Seq data). Our study indicated that biological network-based feature transformation and data integration axe two useful approaches to identify robust cancer biomaxkers.
机译:特征选择技术通常用于识别癌症预后的生物标志物。但是,将许多特征选择方法应用于生物学高维数据时,容易出现过度拟合或生物学解释较差的情况。提出了基于网络的特征选择和数据集成方法以识别更健壮的生物标记。我们进行了实验,以研究使用上皮间质转化调控网络的两种方法的优势,这被证明与癌症的预后高度相关。我们从The Cancer Genome Atlas获得了数据。使用支持向量机进行预后预测。在我们的实验设置下,结果表明基于网络的特征提供的预测要比单个分子特征要准确得多,并且从集成数据(RNA-Seq和micro-RNA数据)中选择的特征要比从单个来源中选择的特征要准确得多数据(RNA-Seq数据)。我们的研究表明,基于生物网络的特征转换和数据集成是确定健壮的癌症生物分子的两种有用方法。

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