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Selecting a minimal number of relevant genes from microarray data to design accurate tissue classifiers

机译:从微阵列数据中选择最少数量的相关基因以设计准确的组织分类器

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摘要

It is essential to select a minimal number of relevant genes from microarray data while maximizing classification accuracy for the development of inexpensive diagnostic tests. However, it is intractable to simultaneously optimize gene selection and classification accuracy that is a large parameter optimization problem. We propose an efficient evolutionary approach to gene selection from microarray data which can be combined with the optimal design of various multiclass classifiers. The proposed method (named GeneSelect) consists of three parts which are fully cooperated: an efficient encoding scheme of candidate solutions, a generalized fitness function, and an intelligent genetic algorithm (IGA). An existing hybrid approach based on genetic algorithm and maximum likelihood classification (GA/MLHD) is proposed to select a small number of relevant genes for accurate classification of samples. To evaluate the performance of GeneSelect, the gene selection is combined with the same maximum likelihood classification (named IGA/MLHD) for convenient comparisons. The performance of IGA/MLHD is applied to 11 cancer-related human gene expression datasets. The simulation results show that IGA/MLHD is superior to GA/MLHD in terms of the number of selected genes, classification accuracy, and robustness of selected genes and accuracy.
机译:从微阵列数据中选择最少数量的相关基因,同时最大化分类准确度对于开发廉价的诊断测试至关重要。然而,同时优化基因选择和分类精度是一个大参数优化问题,这是棘手的。我们提出了一种从微阵列数据中选择基因的有效进化方法,该方法可以与各种多分类器的优化设计结合起来。所提出的方法(名为GeneSelect)由三部分组成,这些部分完全相互配合:候选解决方案的有效编码方案,广义适应度函数和智能遗传算法(IGA)。提出了一种基于遗传算法和最大似然分类(GA / MLHD)的混合方法,以选择少量相关基因进行样品的准确分类。为了评估GeneSelect的性能,将基因选择与相同的最大似然分类(称为IGA / MLHD)结合使用,以便进行比较。 IGA / MLHD的性能已应用于11种与癌症相关的人类基因表达数据集。仿真结果表明,IGA / MLHD在选择基因的数量,分类准确性,选择基因的鲁棒性和准确性方面优于GA / MLHD。

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