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A method for analysis and design of metabolism using metabolomics data and kinetic models: Application on lipidomics using a novel kinetic model of sphingolipid metabolism

机译:使用代谢组织数据和动力学模型的代谢分析和设计方法:使用新型鞘磷脂代谢的新动力学模型在脂质体中的应用

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We present a model-based method, designated Inverse Metabolic Control Analysis (IMCA), which can be used in conjunction with classical Metabolic Control Analysis for the analysis and design of cellular metabolism. We demonstrate the capabilities of the method by first developing a comprehensively cu rated kinetic model of sphingolipid biosynthesis in the yeast Saccharomyces cerevisiae. Next we apply IMCA using the model and integrating lipidomics data. The combinatorial complexity of the synthesis of sphingolipid molecules, along with the operational complexity of the participating enzymes of the pathway, presents an excellent case study for testing the capabilities of the IMCA. The exceptional agreement of the predictions of the method with genome-wide data highlights the importance and value of a comprehensive and consistent engineering approach for the development of such methods and models. Based on the analysis, we identified the class of enzymes regulating the distribution of sphin-golipids among species and hydroxylation states, with the D-phospholipase SP014 being one of the most prominent. The method and the applications presented here can be used for a broader, model-based inverse metabolic engineering approach. (C) 2016 The Authors. Published by Elsevier Inc. On behalf of International Metabolic Engineering Society. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nci/4.0/).
机译:我们提出了一种基于模型的方法,指定了逆代谢控制分析(IMCA),其可以与经典代谢控制分析结合使用,用于分析和设计细胞新陈代谢。我们通过首先在酵母酿酒酵母中首次开发鞘脂生物合成的全面Cu额定动力学模型来证明该方法的能力。接下来我们使用模型应用IMCA并集成脂质谱系数据。鞘脂分子合成的组合复杂性,以及途径的参与酶的操作复杂性,具有用于测试IMCA的能力的优异案例研究。关于基因组数据方法的预测的特殊协议突出了综合和一致的工程方法的重要性和价值,以便开发此类方法和模型。基于分析,我们鉴定了调节物种和羟基化态中瞳孔 - 高油脂分布的酶类别,D-磷脂酶SP014是最突出的。此处提供的方法和应用程序可用于更广泛的模型的逆代谢工程方法。 (c)2016年作者。由elsevier公司发布代表国际代谢工程学会。这是CC By-Nc-ND许可下的开放式访问文章(http://creativecommons.org/licenses/by-nc-nci/4.0/)。

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