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噪音会减缓米氏反应的速率。

Noise slows the rate of Michaelis-Menten reactions.

作者信息

Van Dyken J David

机构信息

University of Miami, Department of Biology, Coral Gables, FL 33146, USA.

出版信息

J Theor Biol. 2017 Oct 7;430:21-31. doi: 10.1016/j.jtbi.2017.06.039. Epub 2017 Jul 1.

Abstract

Microscopic randomness and the small volumes of living cells combine to generate random fluctuations in molecule concentrations called "noise". Here I investigate the effect of noise on biochemical reactions obeying Michaelis-Menten kinetics, concluding that substrate noise causes these reactions to slow. I derive a general expression for the time evolution of the joint probability density of chemical species in arbitrarily connected networks of non-linear chemical reactions in small volumes. This equation is a generalization of the chemical master equation (CME), a common tool for investigating stochastic chemical kinetics, extended to reaction networks occurring in small volumes, such as living cells. I apply this equation to a generalized Michaelis-Menten reaction in an open system, deriving the following general result: 〈p〉≤p¯ and 〈s〉≥s¯, where s¯ and p¯ denote the deterministic steady-state concentration of reactant and product species, respectively, and 〈s〉 and 〈p〉 denote the steady-state ensemble average over independent realizations of a stochastic reaction. Under biologically realistic conditions, namely when substrate is degraded or diluted by cell division, 〈p〉≤p¯. Consequently, noise slows the rate of in vivo Michaelis-Menten reactions. These predictions are validated by extensive stochastic simulations using Gillespie's exact stochastic simulation algorithm. I specify the conditions under which these effects occur and when they vanish, therefore reconciling discrepancies among previous theoretical investigations of stochastic biochemical reactions. Stochastic slowdown of reaction flux caused by molecular noise in living cells may have functional consequences, which the present theory may be used to quantify.

摘要

微观随机性与活细胞的小体积相结合,产生了分子浓度的随机波动,即所谓的“噪声”。在此,我研究了噪声对服从米氏动力学的生化反应的影响,得出底物噪声会导致这些反应变慢的结论。我推导了小体积中任意连接的非线性化学反应网络中化学物种联合概率密度随时间演化的一般表达式。这个方程是化学主方程(CME)的推广,CME是研究随机化学动力学的常用工具,扩展到了小体积中发生的反应网络,如活细胞中的反应网络。我将这个方程应用于开放系统中的广义米氏反应,得出以下一般结果:〈p〉≤p¯ 且〈s〉≥s¯,其中s¯ 和p¯ 分别表示反应物和产物物种的确定性稳态浓度,〈s〉和〈p〉表示随机反应独立实现的稳态系综平均值。在生物学现实条件下,即当底物因细胞分裂而降解或稀释时,〈p〉≤p¯。因此,噪声会减缓体内米氏反应的速率。这些预测通过使用 Gillespie 精确随机模拟算法进行的广泛随机模拟得到了验证。我明确了这些效应出现和消失的条件,从而调和了先前随机生化反应理论研究之间的差异。活细胞中分子噪声引起的反应通量的随机减缓可能具有功能后果,本理论可用于量化这些后果。

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