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结合化学生物信息学和生物信息学:通过化学系统生物学方法“反向途径工程”对细菌风味形成途径进行计算预测。

Combining chemoinformatics with bioinformatics: in silico prediction of bacterial flavor-forming pathways by a chemical systems biology approach "reverse pathway engineering".

机构信息

Department of Nutritional Sciences, FrieslandCampina, Amersfoort, The Netherlands ; Centre for Molecular and Biomolecular Informatics, Radboud University, Nijmegen, The Netherlands.

Molecular Networks GmbH, Erlangen, Germany.

出版信息

PLoS One. 2014 Jan 8;9(1):e84769. doi: 10.1371/journal.pone.0084769. eCollection 2014.

Abstract

The incompleteness of genome-scale metabolic models is a major bottleneck for systems biology approaches, which are based on large numbers of metabolites as identified and quantified by metabolomics. Many of the revealed secondary metabolites and/or their derivatives, such as flavor compounds, are non-essential in metabolism, and many of their synthesis pathways are unknown. In this study, we describe a novel approach, Reverse Pathway Engineering (RPE), which combines chemoinformatics and bioinformatics analyses, to predict the "missing links" between compounds of interest and their possible metabolic precursors by providing plausible chemical and/or enzymatic reactions. We demonstrate the added-value of the approach by using flavor-forming pathways in lactic acid bacteria (LAB) as an example. Established metabolic routes leading to the formation of flavor compounds from leucine were successfully replicated. Novel reactions involved in flavor formation, i.e. the conversion of alpha-hydroxy-isocaproate to 3-methylbutanoic acid and the synthesis of dimethyl sulfide, as well as the involved enzymes were successfully predicted. These new insights into the flavor-formation mechanisms in LAB can have a significant impact on improving the control of aroma formation in fermented food products. Since the input reaction databases and compounds are highly flexible, the RPE approach can be easily extended to a broad spectrum of applications, amongst others health/disease biomarker discovery as well as synthetic biology.

摘要

基因组规模代谢模型的不完整性是系统生物学方法的主要瓶颈,这些方法基于大量的代谢物,这些代谢物是通过代谢组学鉴定和量化的。许多被揭示的次生代谢物和/或它们的衍生物,如风味化合物,在代谢中是非必需的,它们的许多合成途径是未知的。在本研究中,我们描述了一种新的方法,反向途径工程(RPE),它结合了化学信息学和生物信息学分析,通过提供合理的化学和/或酶反应,预测感兴趣的化合物与其可能的代谢前体之间的“缺失环节”。我们以乳酸菌(LAB)中的风味形成途径为例,展示了该方法的附加价值。成功复制了从亮氨酸形成风味化合物的既定代谢途径。成功预测了涉及风味形成的新反应,即α-羟基异己酸转化为 3-甲基丁酸和二甲基硫的合成,以及涉及的酶。这些关于 LAB 中风味形成机制的新见解可以对改善发酵食品中香气形成的控制产生重大影响。由于输入反应数据库和化合物具有高度的灵活性,RPE 方法可以很容易地扩展到广泛的应用领域,包括健康/疾病生物标志物的发现以及合成生物学。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef86/3885609/98d2e82c8bfb/pone.0084769.g001.jpg

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