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首页> 外文期刊>Metabolomics >COVAIN: a toolbox for uni- and multivariate statistics, time-series and correlation network analysis and inverse estimation of the differential Jacobian from metabolomics covariance data
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COVAIN: a toolbox for uni- and multivariate statistics, time-series and correlation network analysis and inverse estimation of the differential Jacobian from metabolomics covariance data

机译:COVAIN:用于单变量和多元统计,时间序列和相关网络分析以及根据代谢组学协方差数据对差分雅可比矩阵进行逆估计的工具箱

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Metabolomics emerges as one of the cornerstones in systems biology by characterizing metabolic activities as the ultimate readout of physiological processes of biological systems thereby linking genotypes with the corresponding phenotypes. As metabolomics data are high-dimensional, statistical data analysis is complex. No single technique for statistical analysis and biological interpretation of these ultracomplex data is sufficient to reveal the full information content of the data. Therefore a combination of univariate and multivariate statistics, network topology and biochemical pathway mapping analysis is in all cases recommended. Therefore, we developed a toolbox with fully graphical user interface support in MATLAB© called covariance inverse (COVAIN). COVAIN provides a complete workflow including uploading data, data preprocessing, uni- and multivariate statistical analysis, Granger time-series analysis, pathway mapping, correlation network topology analysis and visualization, and finally saving results in a user-friendly way. It covers analysis of variance, principal components analysis, independent components analysis, clustering and correlation coefficient analysis and integrates new algorithms, such as Granger causality and permutation entropy analysis that are not implemented in other similar softwares. Furthermore, we provide a new algorithm to reconstruct a differential Jacobian matrix of two different metabolic conditions. The algorithm is based on the assumptions of stochastic fluctuations in the metabolic network as described by us recently. By integrating the metabolomics covariance matrix and the stoichiometric matrix N of the corresponding pathways this approach allows for a systematic investigation of perturbation sites in the biochemical network based on metabolomics data. COVAIN was primarily developed for metabolomics data but can also be used for other omics data analysis. A C language programming module was integrated to handle computational intensive work for large datasets, e.g., genome-level proteomics and transcriptomics data sets which usually contain several thousand or more variables. COVAIN can perform cross analysis and integration between several datasets, which might be useful to investigate responses on different hierarchies of cellular contexts and to reveal the systems response as an integrated molecular network. The source codes can be downloaded from http://www.univie.ac.at/mosys/software.html.
机译:代谢组学通过将代谢活动表征为生物系统生理过程的最终读数,从而将基因型与相应的表型联系起来,成为系统生物学的基石之一。由于代谢组学数据是高维的,因此统计数据分析非常复杂。对这些超复杂数据进行统计分析和生物学解释的任何单一技术都不足以揭示数据的全部信息内容。因此,在所有情况下都建议将单变量和多变量统计,网络拓扑和生化途径映射分析结合起来使用。因此,我们在MATLAB©中开发了具有完全图形用户界面支持的工具箱,称为协方差逆(COVAIN)。 COVAIN提供了完整的工作流程,包括上载数据,数据预处理,单变量和多变量统计分析,格兰杰时间序列分析,路径映射,相关网络拓扑分析和可视化,最后以用户友好的方式保存结果。它涵盖了方差分析,主成分分析,独立成分分析,聚类和相关系数分析,并集成了其他同类软件未实现的新算法,例如Granger因果关系和置换熵分析。此外,我们提供了一种新的算法来重建两个不同代谢条件的差分雅可比矩阵。该算法基于我们最近描述的代谢网络中随机波动的假设。通过整合代谢组学协方差矩阵和相应途径的化学计量矩阵N,该方法可以基于代谢组学数据对生化网络中的扰动位点进行系统研究。 COVAIN主要是为代谢组学数据开发的,但也可用于其他组学数据分析。集成了C语言编程模块来处理大型数据集的计算密集型工作,例如通常包含数千个或更多变量的基因组级蛋白质组学和转录组学数据集。 COVAIN可以在多个数据集之间执行交叉分析和集成,这可能对于研究细胞上下文不同层次上的响应以及将系统响应作为一个集成的分子网络进行揭示很有用。可以从http://www.univie.ac.at/mosys/software.html下载源代码。

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