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An Efficient Feature Selection Strategy Based on Multiple Support Vector Machine Technology with Gene Expression Data

机译:基于多支持向量机技术的基因表达数据有效特征选择策略

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摘要

The application of gene expression data to the diagnosis and classification of cancer has become a hot issue in the field of cancer classification. Gene expression data usually contains a large number of tumor-free data and has the characteristics of high dimensions. In order to select determinant genes related to breast cancer from the initial gene expression data, we propose a new feature selection method, namely, support vector machine based on recursive feature elimination and parameter optimization (SVM-RFE-PO). The grid search (GS) algorithm, the particle swarm optimization (PSO) algorithm, and the genetic algorithm (GA) are applied to search the optimal parameters in the feature selection process. Herein, the new feature selection method contains three kinds of algorithms: support vector machine based on recursive feature elimination and grid search (SVM-RFE-GS), support vector machine based on recursive feature elimination and particle swarm optimization (SVM-RFE-PSO), and support vector machine based on recursive feature elimination and genetic algorithm (SVM-RFE-GA). Then the selected optimal feature subsets are used to train the SVM classifier for cancer classification. We also use random forest feature selection (RFFS), random forest feature selection and grid search (RFFS-GS), and minimal redundancy maximal relevance (mRMR) algorithm as feature selection methods to compare the effects of the SVM-RFE-PO algorithm. The results showed that the feature subset obtained by feature selection using SVM-RFE-PSO algorithm results has a better prediction performance of Area Under Curve (AUC) in the testing data set. This algorithm not only is time-saving, but also is capable of extracting more representative and useful genes.
机译:基因表达数据在癌症的诊断和分类中的应用已成为癌症分类领域的热点问题。基因表达数据通常包含大量无肿瘤数据,并具有高维特征。为了从初始基因表达数据中选择与乳腺癌相关的决定性基因,我们提出了一种新的特征选择方法,即基于递归特征消除和参数优化的支持向量机(SVM-RFE-PO)。应用网格搜索算法,粒子群优化算法和遗传算法在特征选择过程中搜索最优参数。在此,新的特征选择方法包括三种算法:基于递归特征消除和网格搜索的支持向量机(SVM-RFE-GS),基于递归特征消除和粒子群优化的支持向量机(SVM-RFE-PSO) ),并基于递归特征消除和遗传算法(SVM-RFE-GA)支持向量机。然后,选择的最佳特征子集用于训练SVM分类器进行癌症分类。我们还使用随机森林特征选择(RFFS),随机森林特征选择和网格搜索(RFFS-GS)以及最小冗余最大相关性(mRMR)算法作为特征选择方法,以比较SVM-RFE-PO算法的效果。结果表明,通过SVM-RFE-PSO算法结果进行特征选择得到的特征子集在测试数据集中具有较好的曲线下面积(AUC)预测性能。该算法不仅节省时间,而且能够提取出更具代表性和有用的基因。

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