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A New Gene Selection Method Based on Random Subspace Ensemble for Microarray Cancer Classification

机译:一种新的基于随机子空间合奏进行微阵列癌症分类的基因选择方法

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Gene expression microarray data provides simultaneous activity measurement of thousands of features facilitating a potential effective and reliable cancer diagnosis. An important and challenging task in microarray analysis refers to selecting the most relevant and significant genes for data (cancer) classification. A random subspace ensemble based method is proposed to address feature selection in gene expression cancer diagnosis. The introduced Diverse Accurate Feature Selection method relies on multiple individual classifiers built based on random feature subspaces. Each feature is assigned a score computed based on the pairwise diversity among individual classifiers and the ratio between individual and ensemble accuracies. This triggers the creation of a ranked list of features for which a final classifier is applied with an increased performance using minimum possible number of genes. Experimental results focus on the problem of gene expression cancer diagnosis based on microarray datasets publicly available. Numerical results show that the proposed method is competitive with related models from literature.
机译:基因表达微阵列数据提供了成千上万个特征的同时活性测量,促进潜在的有效和可靠的癌症诊断。微阵列分析中的一个重要和具有挑战性的任务是指选择数据(癌症)分类的最相关和重要的基因。基于基于随机子空间合奏的方法,以解决基因表达癌症诊断中的特征选择。引入的不同精确的特征选择方法依赖于基于随机特征子空间构建的多个单独分类器。每个特征被分配基于各个分类器之间的成对分集和个人和集合精度之间的比率计算的分数。这触发了创建最终分类器的排名列表,其中使用最小可能的基因数量增加了性能。实验结果侧重于基于微阵列数据集的基因表达癌诊断问题。数值结果表明,该方法与文献相关模型竞争。

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