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首页> 外文期刊>Journal of Mechanics in Medicine and Biology >GENE EXPRESSION DATA ANALYSIS USING PSEUDO STANDARD DEVIATION MINIMIZATION FEATURE FUSION METHOD FOR CANCER DIAGNOSIS
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GENE EXPRESSION DATA ANALYSIS USING PSEUDO STANDARD DEVIATION MINIMIZATION FEATURE FUSION METHOD FOR CANCER DIAGNOSIS

机译:基于伪标准偏差最小化特征融合方法的癌基因表达数据分析

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摘要

Over the past years applications of fusion technique have been growing rapidly. However, very few applications of the technique to microarray data have been reported. In this paper, we propose a new fusion method based on pseudo standard deviation minimization (PSDM) for the feature selection of microarray. This new method provides a more accurate set of features. Therefore the classification can be performed and functional meaning from the features can also be revealed. The new method is actually obtained through a combination of two different feature selection methods (FSMs). It is shown that it can explore nonperfect correlation between gene expression profile and cancer classes or feature detection algorithms. To evaluate its effectiveness, it is tested on lymphoma and leukemia microarray expression datasets and then compared with the existing methods. Self-organizing map (SOM) is used for feature classification. It can be seen through the comparison that the classification accuracy of the newfusion method is at least 2% ~ 3% higher than others.
机译:在过去的几年中,融合技术的应用迅速增长。然而,已经报道了该技术在微阵列数据上的很少应用。在本文中,我们提出了一种基于伪标准偏差最小化(PSDM)的融合方法,用于芯片的特征选择。此新方法提供了一组更准确的功能。因此,可以进行分类并且还可以揭示特征的功能含义。新方法实际上是通过结合两种不同的特征选择方法(FSM)获得的。结果表明,它可以探索基因表达谱与癌症类别或特征检测算法之间的非完美关联。为了评估其有效性,在淋巴瘤和白血病微阵列表达数据集上对其进行了测试,然后与现有方法进行了比较。自组织图(SOM)用于特征分类。通过比较可以看出,新融合方法的分类精度比其他方法高至少2%〜3%。

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