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Dynamic biclustering of microarray data by multi-objective immune optimization

机译:通过多目标免疫优化动态分析微阵列数据

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BackgroundNewly microarray technologies yield large-scale datasets. The microarray datasets are usually presented in 2D matrices, where rows represent genes and columns represent experimental conditions. Systematic analysis of those datasets provides the increasing amount of information, which is urgently needed in the post-genomic era. Biclustering, which is a technique developed to allow simultaneous clustering of rows and columns of a dataset, might be useful to extract more accurate information from those datasets. Biclustering requires the optimization of two conflicting objectives (residue and volume), and a multi-objective artificial immune system capable of performing a multi-population search. As a heuristic search technique, artificial immune systems (AISs) can be considered a new computational paradigm inspired by the immunological system of vertebrates and designed to solve a wide range of optimization problems. During biclustering several objectives in conflict with each other have to be optimized simultaneously, so multi-objective optimization model is suitable for solving biclustering problem.ResultsBased on dynamic population, this paper proposes a novel dynamic multi-objective immune optimization biclustering (DMOIOB) algorithm to mine coherent patterns from microarray data. Experimental results on two common and public datasets of gene expression profiles show that our approach can effectively find significant localized structures related to sets of genes that show consistent expression patterns across subsets of experimental conditions. The mined patterns present a significant biological relevance in terms of related biological processes, components and molecular functions in a species-independent manner.ConclusionsThe proposed DMOIOB algorithm is an efficient tool to analyze large microarray datasets. It achieves a good diversity and rapid convergence.
机译:背景技术最新的微阵列技术可产生大规模数据集。微阵列数据集通常以2D矩阵表示,其中行代表基因,列代表实验条件。对这些数据集的系统分析提供了越来越多的信息,这在后基因组时代迫切需要。 Biclustering是一种可以同时对数据集的行和列进行聚类的技术,可能有助于从这些数据集中提取更准确的信息。混群化需要优化两个相互冲突的目标(残基和体积),以及能够执行多种群搜索的多目标人工免疫系统。作为一种启发式搜索技术,可以将人工免疫系统(AIS)视为受脊椎动物免疫系统启发而设计的新型计算范式,旨在解决广泛的优化问题。在二类聚类期间,必须同时优化相互冲突的多个目标,因此多目标优化模型适用于解决二类聚类问题。结果基于动态种群,本文提出了一种新颖的动态多目标免疫优化二类聚类算法从微阵列数据中挖掘相干模式。对两个公共和公共基因表达谱数据集的实验结果表明,我们的方法可以有效地找到与基因集相关的重要局部结构,这些基因在实验条件的子集之间显示出一致的表达模式。挖掘的模式以独立于物种的方式在相关的生物过程,组分和分子功能方面表现出显着的生物学相关性。结论提出的DMOIOB算法是分析大型微阵列数据集的有效工具。它实现了良好的多样性和快速收敛。

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