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基于粒子的模拟揭示了大分子拥挤效应对米氏机制的影响。

Particle-Based Simulation Reveals Macromolecular Crowding Effects on the Michaelis-Menten Mechanism.

机构信息

Laboratory of Computational Systems Biotechnology, Ecole Polytechnique Federale de Lausanne, Lausanne, Switzerland.

Laboratory of Computational Systems Biotechnology, Ecole Polytechnique Federale de Lausanne, Lausanne, Switzerland.

出版信息

Biophys J. 2019 Jul 23;117(2):355-368. doi: 10.1016/j.bpj.2019.06.017. Epub 2019 Jun 25.

Abstract

Many computational models for analyzing and predicting cell physiology rely on in vitro data collected in dilute and controlled buffer solutions. However, this can mislead models because up to 40% of the intracellular volume-depending on the organism, the physiology, and the cellular compartment-is occupied by a dense mixture of proteins, lipids, polysaccharides, RNA, and DNA. These intracellular macromolecules interfere with the interactions of enzymes and their reactants and thus affect the kinetics of biochemical reactions, making in vivo reactions considerably more complex than the in vitro data indicates. In this work, we present a new, to our knowledge, type of kinetics that captures and quantifies the effect of volume exclusion and other spatial phenomena on the kinetics of elementary reactions. We further developed a framework that allows for the efficient parameterization of these kinetics using particle simulations. Our formulation, entitled generalized elementary kinetics, can be used to analyze and predict the effect of intracellular crowding on enzymatic reactions and was herein applied to investigate the influence of crowding on phosphoglycerate mutase in Escherichia coli, which exhibits prototypical reversible Michaelis-Menten kinetics. Current research indicates that many enzymes are reaction limited and not diffusion limited, and our results suggest that the influence of fractal diffusion is minimal for these reaction-limited enzymes. Instead, increased association rates and decreased dissociation rates lead to a strong decrease in the effective maximal velocities V and the effective Michaelis-Menten constants K under physiologically relevant volume occupancies. Finally, the effects of crowding were explored in the context of a linear pathway, with the finding that crowding can have a redistributing effect on the effective flux responses in the case of twofold enzyme overexpression. We suggest that this framework, in combination with detailed kinetics models, will improve our understanding of enzyme reaction networks under nonideal conditions.

摘要

许多用于分析和预测细胞生理学的计算模型都依赖于在稀溶液和控制缓冲液中收集的体外数据。然而,这可能会误导模型,因为多达 40%的细胞内体积(取决于生物体、生理学和细胞隔室)被蛋白质、脂质、多糖、RNA 和 DNA 的密集混合物占据。这些细胞内大分子会干扰酶与其反应物的相互作用,从而影响生化反应的动力学,使体内反应比体外数据所表明的要复杂得多。在这项工作中,我们提出了一种新的动力学类型,据我们所知,这种动力学类型捕捉并量化了体积排除和其他空间现象对基本反应动力学的影响。我们进一步开发了一个框架,允许使用粒子模拟来有效地参数化这些动力学。我们的公式,称为广义基本动力学,可以用于分析和预测细胞拥挤对酶反应的影响,并在此应用于研究拥挤对大肠杆菌磷酸甘油酸变位酶的影响,该酶表现出典型的可逆米氏动力学。目前的研究表明,许多酶是反应限制的,而不是扩散限制的,我们的结果表明,分形扩散对这些反应限制的酶的影响最小。相反,增加的缔合速率和降低的解离速率导致在生理相关的体积占据下有效最大速度 V 和有效米氏常数 K 强烈降低。最后,在线性途径的背景下探索了拥挤的影响,发现在两倍酶过表达的情况下,拥挤会对有效通量响应产生重新分布的影响。我们认为,这种框架与详细的动力学模型相结合,将提高我们对非理想条件下酶反应网络的理解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3e36/6701012/b12108c7ab40/gr1.jpg

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