基于邻域粗糙集的基因表达谱基因选择

Shulin Wang, Huowang Chen, Shutao Li
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引用次数: 13

摘要

虽然采用经典粗糙集理论中的特征约简来选择信息基因是一种有效的方法,但与其他肿瘤相关基因选择和肿瘤分类方法相比,其分类准确率通常并不高;由于基因表达值在进行基因还原前必须进行离散化处理,导致了肿瘤分类信息的丢失。因此,将胡庆华提出的邻域粗糙集模型引入到肿瘤分类中,该模型省略了离散化过程,在基因约简之前不会发生信息丢失。在两个知名肿瘤数据集上的实验表明,邻域粗糙集模型的基因选择效果明显优于经典粗糙集理论,实验结果也证明了所选择的大部分基因子集不仅具有较高的准确率,而且与肿瘤相关。
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Gene Selection Using Neighborhood Rough Set from Gene Expression Profiles
Although adopting feature reduction in classic rough set theory to select informative genes is an effective method, its classification accuracy rate is usually not higher compared with other tumor-related gene selection and tumor classification approaches; for gene expression values must be discretized before gene reduction, which leads to information loss in tumor classification. Therefore, the neighborhood rough set model proposed by Hu Qing-Hua is introduced to tumor classification, which omits the discretization procedure, so no information loss occurs before gene reduction. Experiments on two well-known tumor datasets show that gene selection using neighborhood rough set model obviously outperforms using classic rough set theory and experiment results also prove that the most of the selected gene subset not only has higher accuracy rate but also are related to tumor.
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