Using data complexity measures and an evolutionary cultural algorithm for gene selection in microarray data

Saeed Sarbazi-Azad, Mohammad Saniee Abadeh, Mohammad Erfan Mowlaei
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引用次数: 9

Abstract

Cancer detection using gene expression data has been a major trend of research for the last decade. Microarray gene expression data is one of the most challenging types of data due to high dimensionality and rarity of available samples. Feature redundancy greatly contributes to the difficulty of prediction task. Therefore, it is essential to apply feature selection to datasets to reduce the number of features selected for the classification task. In this paper, a novel two-staged framework is proposed to confront curse of dimensionality in microarray data using data complexity measures and a customized cultural algorithm, incorporating a static belief space into the genetic algorithm in order to reduce the search space and prioritize important genes. Experimental results indicate highly improved accuracy and reduction in number of selected genes compared to the state-of-the-art methods on Gli85, Colon, DLBCL, SMK and CNS datasets.

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利用数据复杂性度量和进化文化算法在微阵列数据中进行基因选择
利用基因表达数据进行癌症检测是近十年来研究的一个主要趋势。微阵列基因表达数据是最具挑战性的数据类型之一,由于高维度和可用样本的稀缺性。特征冗余极大地增加了预测任务的难度。因此,将特征选择应用于数据集以减少为分类任务选择的特征数量是至关重要的。本文提出了一种新的两阶段框架,利用数据复杂性度量和定制的文化算法来应对微阵列数据中的维数问题,并在遗传算法中加入静态信念空间,以减少搜索空间并优先考虑重要基因。实验结果表明,与Gli85、Colon、DLBCL、SMK和CNS数据集上最先进的方法相比,该方法的准确性大大提高,选择的基因数量也减少了。
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