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Neighborhood Rough Set Model Based Gene Selection for Multi-subtype Tumor Classification

机译:基于邻域粗糙集模型的多亚型肿瘤分类基因选择

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Multi-subtype tumor diagnosis based on gene expression profiles is promising in clinical medicine application. Therefore, a great deal of research on tumor classification based on gene expression profiles has been developed, where various machine learning approaches were applied to constructing the best tumor classification model to improve the classification performance as much as possible. To achieve this goal, extracting features or finding informative genes that have good classification ability is crucial. We propose a novel gene selection approach, which adopts Kruskal-Wallis rank sum test to rank all genes and then apply an algorithm based on neighborhood rough set model to gene reduction to obtain gene subsets with fewer genes and more classification ability. Experiments on a small round blue cell tumor (SRBCT) dataset show that our approach can achieve very high classification accuracy with only three or four genes as evaluated by three classifiers: support vector machines, K-nearest neighbor and neighborhood classifier, respectively.
机译:基于基因表达型谱的多亚型肿瘤诊断在临床医学应用中具有很有希望。因此,已经开发了基于基因表达型材的肿瘤分类的大量研究,其中应用了各种机器学习方法来构建最佳肿瘤分类模型,以提高分类性能。为了实现这一目标,提取特征或发现具有良好分类能力的信息基因至关重要。我们提出了一种新的基因选择方法,它采用Kruskal-Wallis等级和测量对所有基因进行排序,然后基于邻域粗糙集模型施加算法,以获得具有更少基因和更分类能力的基因子集。在一个小圆形蓝色细胞瘤(SRBCT)数据集的实验表明我们的方法可以只用三个或四个基因达到很高的分类精度由三个分类评价:-K最近邻分别和邻里分类器,支持向量机。

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