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A Comparative Study on Feature Selection and Classification Methods Using Gene Expression Profiles and Proteomic Patterns

机译:基因表达谱与蛋白质组学模式的特征选择和分类方法的比较研究

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摘要

Feature selection plays an important role in classification. We present a comparative study on six feature selection heuristics by applying them to two sets of data. The first set of data are gene expression profiles from Acute Lymphoblastic Leukemia(ALL) patients. The second set of data are proteomic patterns from ovarian cancer patients. Based on features chosen by these methods, error rates of several classification algorithms were obtained for analysis. Our results demonstrate the importance offeature selection in accurately classifying new samples.
机译:特征选择在分类中发挥着重要作用。我们通过将它们应用于两组数据来提出六种特征选择启发式的比较研究。第一组数据是来自急性淋巴细胞白血病(全部)患者的基因表达谱。第二组数据是来自卵巢癌患者的蛋白质组学模式。基于这些方法选择的特征,获得了几种分类算法的错误率进行了分析。我们的结果展示了准确分类新样品的重要选择。

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