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Bi-clustering of metabolic data using matrix factorization tools

机译:使用矩阵分解工具对代谢数据进行双聚类

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摘要

Metabolic phenotyping technologies based on Nuclear Magnetic Spectroscopy (NMR) and Mass Spectrometry (MS) generate vast amounts of unrefined data from biological samples. Clustering strategies are frequently employed to provide insight into patterns of relationships between samples and metabolites. Here, we propose the use of a non-negative matrix factorization driven bi-clustering strategy for metabolic phenotyping data in order to discover subsets of interrelated metabolites that exhibit similar behaviour across subsets of samples. The proposed strategy incorporates bi-cross validation and statistical segmentation techniques to automatically determine the number and structure of bi-clusters. This alternative approach is in contrast to the widely used conventional clustering approaches that incorporate all molecular peaks for clustering in metabolic studies and require a priori specification of the number of clusters. We perform the comparative analysis of the proposed strategy with other bi-clustering approaches, which were developed in the context of genomics and transcriptomics research. We demonstrate the superior performance of the proposed bi-clustering strategy on both simulated (NMR) and real (MS) bacterial metabolic data.
机译:基于核磁共振波谱(NMR)和质谱(MS)的代谢表型技术从生物样品中产生了大量未精炼的数据。聚类策略通常用于提供对样品与代谢物之间关系模式的了解。在这里,我们建议使用非负矩阵分解驱动的双聚类策略来代谢表型数据,以发现相互关联的代谢物的子集,这些子集在样品的子集之间表现出相似的行为。所提出的策略结合了双交叉验证和统计分割技术,以自动确定双集群的数量和结构。该替代方法与广泛使用的常规聚类方法相反,常规聚类方法并入了代谢研究中用于聚类的所有分子峰,并且需要对聚类数进行先验说明。我们对提出的策略与其他双聚类方法进行了比较分析,这些双聚类方法是在基因组学和转录组学研究的背景下开发的。我们在模拟(NMR)和实际(MS)细菌代谢数据上证明了所提出的双聚类策略的优越性能。

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