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Microarray data analysis for cancer classification

机译:用于癌症分类的微阵列数据分析

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摘要

Cancer diagnosis is one of the most important emerging clinical applications of gene expression microarray data. In this work, we aim to develop an automated system for robust and reliable cancer diagnoses based on gene microarray data. Support vector machine classifiers outperform other popular classifiers, such as K nearest neighbours, naive Bayes, neural networks and decision tree, often to a remarkable degree. We choose a set of 9 publicly available benchmark microarray datasets that encompass both binary and multi-class cancer problems. Results of comparative studies are provided, demonstrating that effective feature selection is essential to the development of classifiers intended for use in gene-based cancer classification. In particular, amongst various systematic experiments carried out, best classification model is achieved using a subset of features chosen via information gain feature ranking for support vector machine classifier.
机译:癌症诊断是基因表达微阵列数据最重要的新兴临床应用之一。在这项工作中,我们旨在基于基因芯片数据开发一种用于健壮可靠的癌症诊断的自动化系统。支持向量机分类器通常在相当程度上优于其他流行的分类器,例如K最近邻,朴素贝叶斯,神经网络和决策树。我们选择了9个可公开获得的基准微阵列数据集,这些数据集涵盖了二进制和多类癌症问题。提供了比较研究的结果,表明有效的特征选择对于旨在用于基于基因的癌症分类的分类器的开发至关重要。特别地,在进行的各种系统实验中,使用通过信息增益特征等级选择的特征子集为支持向量机分类器获得最佳分类模型。

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