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A robust gene clustering algorithm based on clonal selection in multiobjective optimization framework

机译:多目标优化框架中基于克隆选择的鲁棒基因聚类算法

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摘要

Gene clustering is a prerequisite in the analysis of microarray data where sets of co-expressed genes are clustered. In this paper, a multi-objective clonal selection optimization algorithm (MCSOA) is developed based on the immune system behavior for gene clustering purposes in which the number of clusters can vary in a predefined range. To achieve a reliable clustering outcome on various gene expression (GE) datasets, the most effective clustering validity indexes are incorporated and represented in terms of two conflicting objective functions. For the sake of fast convergence to the optimal solutions, a new population updating mechanism is iteratively applied to select the less-dominate solutions of the previous iteration. The proposed clustering technique is implemented on various publicly available microarray datasets. Comparing the results with those of the widely used gene clustering techniques confirms the superiority and efficacy of the proposed technique. (C) 2018 Elsevier Ltd. All rights reserved.
机译:基因聚类是微阵列数据分析的先决条件,其中共表达的基因集聚在一起。在本文中,基于基因簇的目的,基于免疫系统行为开发了一种多目标克隆选择优化算法(MCSOA),其中簇的数量可以在预定范围内变化。为了在各种基因表达(GE)数据集上获得可靠的聚类结果,结合了最有效的聚类有效性指标并以两个相互矛盾的目标函数表示。为了快速收敛到最优解,迭代地应用了一种新的种群更新机制,以选择先前迭代的次优解。所提出的聚类技术在各种公开可用的微阵列数据集上实现。将结果与广泛使用的基因聚类技术的结果进行比较,证实了所提出技术的优越性和有效性。 (C)2018 Elsevier Ltd.保留所有权利。

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