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首页> 外文期刊>International journal of data mining and bioinformatics >Feature selection and classification of metabolomics data using artificial bee colony programming (ABCP)
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Feature selection and classification of metabolomics data using artificial bee colony programming (ABCP)

机译:使用人工蜂殖民地编程(ABCP)的代谢组合数据的选择和分类

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摘要

One area of metabolic data analysis is processes that involve the detection and discovery of biomarkers used in the early diagnosis of diseases and development of alternative treatments. Classification and feature selection are frequently used in the statistical analysis of metabolomics data for the detection and discovery of biomarkers. Recently, automatic programming methods have begun to be used instead of conventional methods. In this paper, three conventional classification and feature selection methods (PLS-DA, RF, SVM) and two automatic programming methods (ABCP and GP) are applied to classification problems where they are evaluated on synthetic and real data sets. The selection performances on the biomarker discovery of the algorithms have been compared. It has been found that automatic programming methods are more successful in classifying metabolic data and ABCP is superior to GP in biomarker discovery.
机译:一种代谢数据分析领域是涉及在早期诊断疾病和替代治疗的发展中使用的生物标志物的检测和发现。 分类和特征选择经常用于对生物标志物检测和发现的代谢组数据数据的统计分析。 最近,已经开始使用自动编程方法而不是传统方法。 在本文中,三种传统分类和特征选择方法(PLS-DA,RF,SVM)和两个自动编程方法(ABCP和GP)应用于在合成和实数据集上进行评估的分类问题。 已经比较了生物标志物发现的选择性能。 已经发现,在分类代谢数据和ABCP中,自动编程方法更成功,并且ABCP优于BIOMarker发现中的GP。

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