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Research about feature genes selection for cancer type identification based on gene expression profiles

机译:基于基因表达谱的特征基因选择用于癌症类型识别的研究

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The identification and classification of different cancer type and feature gene subset selection are of great importance in cancer diagnosis and have recently received a great deal of attention in the field of bioinformatics. On the basis of comparing cancer with normal samples by SVM and verifying the disease group and normal group can be classified by the feature gene vectors, we selected the feature gene module of different cancer types in the training set with improved Relief algorithm, then put the feature gene module to the test set including 4 kinds of cancer samples. The results of series experiments in different conditions proved that the identification accuracy of selected feature genes can reach more than 95%. The SVM and improved Relief algorithm show excellent performance of selecting feature genes to identify and classify cancer types.
机译:不同癌症类型和特征基因亚组选择的鉴定和分类在癌症诊断中具有重要意义,最近在生物信息学领域引起了广泛关注。在通过支持向量机比较癌症与正常样本的基础上,并通过特征基因载体对疾病组和正常组进行分类,我们采用改进的Relief算法在训练集中选择了不同癌症类型的特征基因模块,然后将特征基因模块的测试集包括4种癌症样品。在不同条件下进行系列实验的结果证明,所选特征基因的识别准确率可达到95%以上。 SVM和改进的Relief算法显示出在选择特征基因以识别和分类癌症类型方面的出色性能。

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