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首页> 外文期刊>Journal of chromatography, B. Analytical technologies in the biomedical and life sciences >A support vector machine-recursive feature elimination feature selection method based on artificial contrast variables and mutual information
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A support vector machine-recursive feature elimination feature selection method based on artificial contrast variables and mutual information

机译:基于人工对比变量和互信息的支持向量机递归特征消除特征选择方法

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摘要

Filtering the discriminative metabolites from high dimension metabolome data is very important in metabolomics study. Support vector machine-recursive feature elimination (SVM-RFE) is an efficient feature selection technique and has shown promising applications in the analysis of the metabolome data. SVM-RFE measures the weights of the features according to the support vectors, noise and non-informative variables in the high dimension data may affect the hyper-plane of the SVM learning model. Hence we proposed a mutual information (MI)-SVM-RFE method which filters out noise and non-informative variables by means of artificial variables and MI, then conducts SVM-RFE to select the most discriminative features. A serum metabolomics data set from patients with chronic hepatitis B, cirrhosis and hepatocellular carcinoma analyzed by liquid chromatography-mass spectrometry (LC-MS) was used to demonstrate the validation of our method. An accuracy of 74.33 ± 2.98% to distinguish among three liver diseases was obtained, better than 72.00 ± 4.15% from the original SVM-RFE. Thirty-four ion features were defined to distinguish among the control and 3 liver diseases, 17 of them were identified.
机译:在代谢组学研究中,从高维代谢组数据中筛选可区分的代谢物非常重要。支持向量机递归特征消除(SVM-RFE)是一种有效的特征选择技术,在代谢组数据的分析中显示出有希望的应用。 SVM-RFE根据支持向量测量特征的权重,高维数据中的噪声和非信息变量可能会影响SVM学习模型的超平面。因此,我们提出了一种互信息(MI)-SVM-RFE方法,该方法通过人工变量和MI滤除噪声和非信息性变量,然后进行SVM-RFE选择最具区别性的特征。通过液相色谱-质谱法(LC-MS)分析的慢性乙型肝炎,肝硬化和肝细胞癌患者的血清代谢组学数据用于证明我们方法的有效性。区分三种肝病的准确度为74.33±2.98%,比原始SVM-RFE的72.00±4.15%好。定义了34种离子特征以区分对照和3种肝脏疾病,其中17种被确定。

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