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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Markov blanket-embedded genetic algorithm for gene selection
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Markov blanket-embedded genetic algorithm for gene selection

机译:马尔可夫毯式嵌入遗传算法进行基因选择

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摘要

Microarray technologies enable quantitative simultaneous monitoring of expression levels for thousands of genes under various experimental conditions. This new technology has provided a new way of biological classification on a genome-wide scale. However, predictive accuracy is affected by the presence of thousands of genes many of which are unnecessary from the classification point of view. So, a key issue of microarray data classification is to identify the smallest possible set of genes that can achieve good predictive accuracy. In this study, we propose a novel Markov blanket-embedded genetic algorithm (MBEGA) for gene selection problem. In particular, the embedded Markov blanket-based memetic operators add or delete features (or genes) from a genetic algorithm (GA) solution so as to quickly improve the solution and fine-tune the search. Empirical results on synthetic and microarray benchmark datasets suggest that MBEGA is effective and efficient in eliminating irrelevant and redundant features based on both Markov blanket and predictive power in classifier model. A detailed comparative study with other methods from each of filter, wrapper, and standard GA shows that MBEGA gives a best compromise among all four evaluation criteria, i.e., classification accuracy, number of selected genes, computational cost, and robustness. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:微阵列技术可在各种实验条件下定量同时监测数千种基因的表达水平。这项新技术提供了在全基因组范围内进行生物分类的新方法。但是,预测准确性受成千上万个基因的存在的影响,从分类的角度来看,其中许多是不必要的。因此,微阵列数据分类的关键问题是确定可以实现良好预测准确性的最小基因集。在这项研究中,我们提出了一种新的马尔可夫毯式嵌入遗传算法(MBEGA)来解决基因选择问题。特别地,基于嵌入式Markov毯的模因运算符从遗传算法(GA)解决方案中添加或删除特征(或基因),以便快速改进解决方案并微调搜索。基于合成和微阵列基准数据集的经验结果表明,MBEGA在分类器模型中基于马尔可夫覆盖和预测能力,在消除不相关和冗余的特征方面是有效且高效的。通过对过滤器,包装器和标准GA中每种方法的其他方法进行的详细比较研究表明,MBEGA在所有四个评估标准(即分类准确性,所选基因的数量,计算成本和鲁棒性)之间取得了最佳折衷。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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