生化网络的降阶建模:应用于gtpase周期信号模块。

M R Maurya, S J Bornheimer, V Venkatasubramanian, S Subramaniam
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引用次数: 43

摘要

生化系统嵌入复杂的网络,因此开发和分析其详细模型对计算提出了挑战。粗粒度生化模型,称为降阶模型(ROMs),由基本生化机制组成,对于计算分析和研究生化网络的重要特征更有用。作者提出了一种利用多维灵敏度分析识别潜在重要参数的模型简化新方法。从48个反应的详细模型开始,生成了m1毒蕈碱乙酰胆碱受体Gq和g蛋白信号传导4 (gtpase激活蛋白或GAP)的GTPase-cycle模块的ROM。生成的ROM只有17个反应。ROM表明,需要g蛋白偶联受体(GPCR)和GAP的复合物(在详细模型中作为假设提出)来拟合实验数据。我们还模拟了先前在文献中发表的模型,并与ROM进行了比较。通过这种比较,我们生成了一个最小的ROM,它也需要GPCR和GAP的复合物,只有15个参数。提出的降阶建模方法可扩展到更大的网络,并为生化系统模型的简化提供了一个通用框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reduced-order modelling of biochemical networks: application to the GTPase-cycle signalling module.

Biochemical systems embed complex networks and hence development and analysis of their detailed models pose a challenge for computation. Coarse-grained biochemical models, called reduced-order models (ROMs), consisting of essential biochemical mechanisms are more useful for computational analysis and for studying important features of a biochemical network. The authors present a novel method to model-reduction by identifying potentially important parameters using multidimensional sensitivity analysis. A ROM is generated for the GTPase-cycle module of m1 muscarinic acetylcholine receptor, Gq, and regulator of G-protein signalling 4 (a GTPase-activating protein or GAP) starting from a detailed model of 48 reactions. The resulting ROM has only 17 reactions. The ROM suggested that complexes of G-protein coupled receptor (GPCR) and GAP--which were proposed in the detailed model as a hypothesis--are required to fit the experimental data. Models previously published in the literature are also simulated and compared with the ROM. Through this comparison, a minimal ROM, that also requires complexes of GPCR and GAP, with just 15 parameters is generated. The proposed reduced-order modelling methodology is scalable to larger networks and provides a general framework for the reduction of models of biochemical systems.

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