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首页> 外文期刊>Saudi Journal of Biological Sciences >Co-ABC: Correlation artificial bee colony algorithm for biomarker gene discovery using gene expression profile
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Co-ABC: Correlation artificial bee colony algorithm for biomarker gene discovery using gene expression profile

机译:Co-ABC:使用基因表达谱进行生物标记基因发现的相关人工蜂群算法

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In this paper, we propose a new hybrid method based on Correlation-based feature selection method and Artificial Bee Colony algorithm,namely Co-ABC to select a small number of relevant genes for accurate classification of gene expression profile. The Co-ABC consists of three stages which are fully cooperated: The first stage aims to filter noisy and redundant genes in high dimensionality domains by applying Correlation-based feature Selection (CFS) filter method. In the second stage, Artificial Bee Colony (ABC) algorithm is used to select the informative and meaningful genes. In the third stage, we adopt a Support Vector Machine (SVM) algorithm as classifier using the preselected genes form second stage. The overall performance of our proposed Co-ABC algorithm was evaluated using six gene expression profile for binary and multi-class cancer datasets. In addition, in order to proof the efficiency of our proposed Co-ABC algorithm, we compare it with previously known related methods. Two of these methods was re-implemented for the sake of a fair comparison using the same parameters. These two methods are: Co-GA, which is CFS combined with a genetic algorithm GA. The second one named Co-PSO, which is CFS combined with a particle swarm optimization algorithm PSO. The experimental results shows that the proposed Co-ABC algorithm acquire the accurate classification performance using small number of predictive genes. This proofs that Co-ABC is a efficient approach for biomarker gene discovery using cancer gene expression profile.
机译:在本文中,我们提出了一种基于基于相关性的特征选择方法和人工蜂群算法的混合算法,即Co-ABC,以选择少量相关基因来准确分类基因表达谱。 Co-ABC由三个阶段组成,这三个阶段是完全协作的:第一阶段旨在通过应用基于相关的特征选择(CFS)过滤方法来过滤高维域中的嘈杂基因和冗余基因。在第二阶段,使用人工蜂群(ABC)算法选择信息丰富且有意义的基因。在第三阶段,我们使用支持向量机(SVM)算法作为分类器,使用第二阶段中的预选基因。我们提出的Co-ABC算法的整体性能是使用六种针对二元和多分类癌症数据集的基因表达谱进行评估的。此外,为了证明我们提出的Co-ABC算法的效率,我们将其与先前已知的相关方法进行了比较。为了公平地比较使用相同参数的这些方法中的两种,已重新实现。这两种方法是:Co-GA,它是CFS与遗传算法GA相结合的方法。第二个名为Co-PSO,是将CFS与粒子群优化算法PSO相结合。实验结果表明,所提出的Co-ABC算法使用少量预测基因即可获得准确的分类性能。这证明了Co-ABC是使用癌症基因表达谱进行生物标记基因发现的有效方法。

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