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An Experimental Comparison of Feature-Selection and Classification Methods for Microarray Datasets

机译:芯片数据集特征选择和分类方法的实验比较

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In the last decade, there has been a growing scientific interest in the analysis of DNA microarray datasets, which have been widely used in basic and translational cancer research. The application fields include both the identification of oncological subjects, separating them from the healthy ones, and the classification of different types of cancer. Since DNA microarray experiments typically generate a very large number of features for a limited number of patients, the classification task is very complex and typically requires the application of a feature-selection process to reduce the complexity of the feature space and to identify a subset of distinctive features. In this framework, there are no standard state-of-the-art results generally accepted by the scientific community and, therefore, it is difficult to decide which approach to use for obtaining satisfactory results in the general case. Based on these considerations, the aim of the present work is to provide a large experimental comparison for evaluating the effect of the feature-selection process applied to different classification schemes. For comparison purposes, we considered both ranking-based feature-selection techniques and state-of-the-art feature-selection methods. The experiments provide a broad overview of the results obtainable on standard microarray datasets with different characteristics in terms of both the number of features and the number of patients.
机译:在过去的十年中,人们对DNA微阵列数据集的分析越来越感兴趣,这已广泛用于基础和转化癌症研究。应用领域包括确定肿瘤科目,将其与健康科目区分开以及对不同类型的癌症进行分类。由于DNA微阵列实验通常会为有限数量的患者生成大量特征,因此分类任务非常复杂,并且通常需要应用特征选择过程来降低特征空间的复杂性并识别其中的一个子集。特色鲜明。在这种框架下,没有科学界普遍接受的标准最新技术成果,因此,很难决定在一般情况下采用哪种方法来获得令人满意的结果。基于这些考虑,本工作的目的是提供大型实验比较,以评估应用于不同分类方案的特征选择过程的效果。为了进行比较,我们考虑了基于排名的特征选择技术和最新的特征选择方法。实验提供了在特征数量和患者数量方面具有不同特征的标准微阵列数据集上可获得的结果的广泛概述。

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