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首页> 外文期刊>Bioinformatics >Observing and interpreting correlations in metabolomic networks.
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Observing and interpreting correlations in metabolomic networks.

机译:观察和解释代谢组学网络中的相关性。

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Motivation: Metabolite profiling aims at an unbiased identification and quantification of all the metabolites present in a biological sample. Based on their pair-wise correlations, the data obtained from metabolomic experiments are organized into metabolic correlation networks and the key challenge is to deduce unknown pathways based on the observed correlations. However, the data generated is fundamentally different from traditional biological measurements and thus the analysis is often restricted to rather pragmatic approaches, such as data mining tools, to discriminate between different metabolic phenotypes. Methods and Results: We investigate to what extent the data generated networks reflect the structure of the underlying biochemical pathways. The purpose of this work is 2-fold: Based on the theory of stochastic systems, we first introduce a framework which shows that the emergent correlations can be interpreted as a 'fingerprint' of the underlying biophysical system. This result leads to a systematic relationship between observed correlation networks and the underlying biochemical pathways. In a second step, we investigate to what extent our result is applicable to the problem of reverse engineering, i.e. to recover the underlying enzymatic reaction network from data. The implications of our findings for other bioinformatics approaches are discussed. Contact: steuer@agnld.uni-potsdam.de
机译:动机:代谢物谱分析的目的是无偏见地鉴定和定量生物样品中存在的所有代谢物。基于它们之间的成对相关性,将从代谢组学实验中获得的数据组织到代谢相关性网络中,关键的挑战是根据观察到的相关性推断未知途径。但是,生成的数据与传统的生物学测量方法根本不同,因此,分析通常仅限于比较实用的方法,例如数据挖掘工具,以区分不同的代谢表型。方法和结果:我们调查数据生成的网络在多大程度上反映了基础生化途径的结构。这项工作的目的是两方面的:基于随机系统的理论,我们首先介绍一个框架,该框架表明出现的相关性可以解释为基础生物物理系统的“指纹”。该结果导致观察到的相关网络和潜在的生化途径之间的系统关系。在第二步中,我们研究了我们的结果在多大程度上适用于逆向工程问题,即从数据中恢复潜在的酶促反应网络。讨论了我们的发现对其他生物信息学方法的影响。联系人:steuer@agnld.uni-potsdam.de

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