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首页> 外文期刊>Journal of VLSI signal processing systems for signal, image, and video technology >Effective Gene Selection Method Using Bayesian Discriminant Based Criterion And Genetic Algorithms
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Effective Gene Selection Method Using Bayesian Discriminant Based Criterion And Genetic Algorithms

机译:基于贝叶斯判别准则和遗传算法的有效基因选择方法

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Microarray gene expression data usually consist of a large amount of genes. Among these genes, only a small fraction is informative for performing cancer diagnostic tests. This paper focuses on effective identification of informative genes. A newly developed gene selection criterion using the concept of Bayesian discriminant is used. The criterion measures the classification ability of a feature set. Excellent gene selection results are then made possible. Apart from the cost function, this paper addresses the drawback of conventional sequential forward search (SFS) method. New genetic algorithms based Bayesian discriminant criterion is designed. The proposed strategies have been thoroughly evaluated on three kinds of cancer diagnoses based on the classification results of three typical classifiers which are a multilayer perception model (MLP), a support vector machine model (SVM), and a 3-nearest neighbor rule classifier (3-NN). The obtained results show that the proposed strategies can improve the performance of gene selection substantially. The experimental results also indicate that the proposed methods are very robust under all the investigated cases.
机译:微阵列基因表达数据通常由大量基因组成。在这些基因中,只有一小部分可用于进行癌症诊断测试。本文着重于有效鉴定信息基因。使用了贝叶斯判别概念的新开发的基因选择标准。该标准衡量功能集的分类能力。这样就可以实现出色的基因选择结果。除了成本函数外,本文还解决了传统的顺序前向搜索(SFS)方法的缺点。设计了基于贝叶斯判别准则的新遗传算法。根据三种典型分类器的分类结果,对所提出的策略进行了三种癌症诊断的全面评估,这三种分类器分别是多层感知模型(MLP),支持向量机模型(SVM)和3最近邻规则分类器( 3-NN)。所得结果表明,所提出的策略可以显着提高基因选择的性能。实验结果还表明,所提出的方法在所有研究情况下都非常可靠。

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