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Optimal approach for classification of acute leukemia subtypes based on gene expression data

机译:基于基因表达数据的急性白血病亚型分类的最佳方法

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The classification of cancer subtypes, which is critical for successful treatment, has been studied extensively with the use of gene expression profiles from oligonucleotide chips or cDNA microarrays. Various pattern recognition methods have been successfully applied to gene expression data. However, these methods are not optimal, rather they are high-performance classifiers that emphasize only classification accuracy. In this paper, we propose an approach for the construction of the optimal linear classifier using gene expression data. Two linear classification methods, linear discriminant analysis (LDA) and discriminant partial least-squares (DPLS), are applied to distinguish acute leukemia subtypes. These methods are shown to give satisfactory accuracy. Moreover, we determined optimally the number of genes participating in the classification (a remarkably small number compared to previous results) on the basis of the statistical significance test. Thus, the proposed method constructs the optimal classifier that is composed of a small size predictor and provides high accuracy.
机译:对于成功治疗至关重要的癌症亚型的分类,已通过使用寡核苷酸芯片或cDNA微阵列的基因表达谱进行了广泛研究。各种模式识别方法已成功应用于基因表达数据。但是,这些方法不是最佳方法,而是仅强调分类准确性的高性能分类器。在本文中,我们提出了一种使用基因表达数据构建最佳线性分类器的方法。两种线性分类方法,线性判别分析(LDA)和判别偏最小二乘(DPLS),用于区分急性白血病亚型。这些方法显示出令人满意的精度。此外,我们根据统计显着性检验确定了参与分类的基因数量(与以前的结果相比,显着减少)。因此,所提出的方法构造了由小尺寸预测器组成的最优分类器,并且提供了高精度。

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