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Pattern-Based Biclustering with Constraints for Gene Expression Data Analysis

机译:基于模式的BICLUSTING,具有基因表达数据分析的约束

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Biclustering has been largely applied for gene expression data analysis. In recent years, a clearer understanding of the synergies between pattern mining and biclustering gave rise to a new class of biclustering algorithms, referred as pattern-based biclustering. These algorithms are able to discover exhaustive structures of biclusters with flexible coherency and quality. Background knowledge has also been increasingly applied for biological data analysis to guarantee relevant results. In this context, despite numerous contributions from domain-driven pattern mining, there is not yet a solid view on whether and how background knowledge can be applied to guide pattern-based biclustering tasks. In this work, we extend pattern-based biclustering algorithms to effectively seize efficiency gains in the presence of constraints. Furthermore, we illustrate how constraints with succinct, (anti-)monotone and convertible properties can be derived from knowledge repositories and user expectations. Experimental results show the importance of incorporating background knowledge within pattern-based biclustering to foster efficiency and guarantee non-trivial yet biologically relevant solutions.
机译:BICLUSTING已在很大程度上申请基因表达数据分析。近年来,更清楚地了解模式挖掘和双板之间的协同作用,从而提高了一类新的Biclesting算法,称为基于模式的双板。这些算法能够发现具有灵活的相干性和质量的平板器的详尽结构。背景知识也越来越普及生物数据分析以保证相关结果。在这种情况下,尽管来自域驱动模式挖掘的许多贡献,但是对于是否可以应用背景知识以及如何应用于引导基于模式的双板任务的贡献。在这项工作中,我们扩展了基于模式的双板算法,以有效地抓取存在限制的情况下的效率。此外,我们说明了如何从知识存储库和用户期望中派生法官的限制(反)单调和可转换属性。实验结果表明,将背景知识纳入基于模式的BICLUSTING中的背景知识,以促进效率并保证非琐碎的尚未生物学相关的解决方案。

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