Department of Chemical Engineering and Materials Science, University of Minnesota, Minneapolis, MN 55455, USA.
Proc Natl Acad Sci U S A. 2013 Aug 27;110(35):14261-5. doi: 10.1073/pnas.1306481110. Epub 2013 Aug 12.
Probability reigns in biology, with random molecular events dictating the fate of individual organisms, and propelling populations of species through evolution. In principle, the master probability equation provides the most complete model of probabilistic behavior in biomolecular networks. In practice, master equations describing complex reaction networks have remained unsolved for over 70 years. This practical challenge is a reason why master equations, for all their potential, have not inspired biological discovery. Herein, we present a closure scheme that solves the master probability equation of networks of chemical or biochemical reactions. We cast the master equation in terms of ordinary differential equations that describe the time evolution of probability distribution moments. We postulate that a finite number of moments capture all of the necessary information, and compute the probability distribution and higher-order moments by maximizing the information entropy of the system. An accurate order closure is selected, and the dynamic evolution of molecular populations is simulated. Comparison with kinetic Monte Carlo simulations, which merely sample the probability distribution, demonstrates this closure scheme is accurate for several small reaction networks. The importance of this result notwithstanding, a most striking finding is that the steady state of stochastic reaction networks can now be readily computed in a single-step calculation, without the need to simulate the evolution of the probability distribution in time.
概率论在生物学中占据主导地位,随机的分子事件决定了个体生物的命运,并推动物种群体进化。从原则上讲,主概率方程提供了生物分子网络中最完整的概率行为模型。但在实践中,描述复杂反应网络的主方程 70 多年来一直没有得到解决。这一实际挑战是主方程虽然具有很大的潜力,但并没有激发生物学发现的原因之一。在此,我们提出了一种封闭方案,可以解决化学或生物化学反应网络的主概率方程。我们将主方程表述为描述概率分布矩随时间演化的常微分方程。我们假设有限数量的矩可以捕获所有必要的信息,并通过最大化系统的信息熵来计算概率分布和更高阶矩。选择了一个精确的阶数封闭,模拟了分子群体的动态演化。与仅仅对概率分布进行采样的动力学蒙特卡罗模拟的比较表明,该封闭方案对于几个小的反应网络是准确的。尽管这一结果很重要,但一个最引人注目的发现是,现在可以在单次计算中轻松计算随机反应网络的稳态,而无需模拟概率分布在时间上的演化。