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Cancer classification through feature selection and transductive SVM using gene microarray data

机译:通过使用基因芯片数据进行特征选择和转导SVM进行癌症分类

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With the advancement of microarray technology, gene expression profiling has shown great potential in outcome prediction for different types of cancers. They are also useful for identifying potential gene markers for each cancer subtype, which helps in successful diagnosis of particular cancer types. Traditional supervised classifiers can only work with labeled data. Consequently, a large number of microarray data that do not have adequate follow-up information are disregarded. A Novel approach to combine feature (gene) selection and transductive SVM (TSVM) has been proposed. The selected genes of the microarray data are then exploited to design the transductive SVM. Experimental results confirm the effectiveness of the proposed method in the area of semisupervised cancer classification as well as gene marker identification.
机译:随着微阵列技术的发展,基因表达谱分析在预测不同类型癌症的预后方面显示出巨大潜力。它们还可用于识别每种癌症亚型的潜在基因标记,这有助于成功诊断特定癌症类型。传统的监督分类器只能处理带标签的数据。因此,没有足够的后续信息的大量微阵列数据被忽略。提出了一种结合特征(基因)选择和转导支持向量机(TSVM)的新方法。然后,利用微阵列数据的选定基因设计转导SVM。实验结果证实了该方法在半监督癌症分类和基因标记识别领域的有效性。

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