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Using Class-Specific Feature Selection for Cancer Detection with Gene Expression Profile Data of Platelets

机译:使用特定类别的特征选择通过血小板的基因表达谱数据进行癌症检测

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摘要

A novel multi-classification method, which integrates the elastic net and probabilistic support vector machine, was proposed to solve this problem in cancer detection with gene expression profile data of platelets, whose problems mainly are a kind of multi-class classification problem with high dimension, small samples, and collinear data. The strategy of one-against-all (OVA) was employed to decompose the multi-classification problem into a series of binary classification problems. The elastic net was used to select class-specific features for the binary classification problems, and the probabilistic support vector machine was used to make the outputs of the binary classifiers with class-specific features comparable. Simulation data and gene expression profile data were intended to verify the effectiveness of the proposed method. Results indicate that the proposed method can automatically select class-specific features and obtain better performance of classification than that of the conventional multi-class classification methods, which are mainly based on global feature selection methods. This study indicates the proposed method is suitable for general multi-classification problems featured with high-dimension, small samples, and collinear data.
机译:提出了一种融合弹性网和概率支持向量机的新型多分类方法,利用血小板的基因表达谱数据解决了癌症检测中的这一问题,该问题主要是一种高维的多分类问题。 ,小样本和共线数据。采取了全民对策(OVA)策略,将多分类问题分解为一系列的二元分类问题。弹性网用于选择针对二元分类问题的特定类别特征,而概率支持向量机用于使具有特定类别特征的二进制分类器的输出具有可比性。仿真数据和基因表达谱数据旨在验证所提出方法的有效性。结果表明,与传统的基于全局特征选择方法的传统多类分类方法相比,该方法能够自动选择特定类别的特征,并获得更好的分类性能。这项研究表明,该方法适用于以高维,小样本和共线数据为特征的一般多分类问题。

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