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Hybrid particle swarm optimization and tabu search approach for selecting genes for tumor classification using gene expression data

机译:利用基因表达数据选择用于肿瘤分类的基因的混合粒子群优化和禁忌搜索方法

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摘要

Gene expression data are characterized by thousands even tens of thousands of measured genes on only a few tissue samples. This can lead either to possible overfitting and dimensional curse or even to a complete failure in analysis of microarray data. Gene selection is an important component for gene expression-based tumor classification systems. In this paper, we develop a hybrid particle swarm optimization (PSO) and tabu search (HPSOTS) approach for gene selection for tumor classification. The incorporation of tabu search (TS) as a local improvement procedure enables the algorithm HPSOTS to overleap local optima and show satisfactory performance. The proposed approach is applied to three different microarray data sets. Moreover, we compare the performance of HPSOTS on these datasets to that of stepwise selection, the pure TS and PSO algorithm. It has been demonstrated that the HPSOTS is a useful tool for gene selection and mining high dimension data.
机译:基因表达数据的特征是仅在几个组织样本上有成千上万的测量基因。这可能导致可能的过度拟合和尺寸诅咒,甚至导致微阵列数据分析的完全失败。基因选择是基于基因表达的肿瘤分类系统的重要组成部分。在本文中,我们开发了一种混合粒子群优化(PSO)和禁忌搜索(HPSOTS)方法用于肿瘤分类的基因选择。禁忌搜索(TS)作为局部改进程序的结合使算法HPSOTS可以覆盖局部最优并显示令人满意的性能。所提出的方法被应用于三个不同的微阵列数据集。此外,我们将HPSOTS在这些数据集上的性能与逐步选择,纯TS和PSO算法的性能进行了比较。已经证明,HPSOTS是用于基因选择和挖掘高维数据的有用工具。

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