The regime-conversion method: a hybrid technique for simulating well-mixed chemical reaction networks

IF 1.3 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Joshua C. Kynaston, Christian A. Yates, Anna V. F. Hekkink, Chris Guiver
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Abstract

There exist several methods for simulating biological and physical systems as represented by chemical reaction networks. Systems with low numbers of particles are frequently modeled as discrete-state Markov jump processes and are typically simulated via a stochastic simulation algorithm (SSA). An SSA, while accurate, is often unsuitable for systems with large numbers of individuals, and can become prohibitively expensive with increasing reaction frequency. Large systems are often modeled deterministically using ordinary differential equations, sacrificing accuracy and stochasticity for computational efficiency and analytical tractability. In this paper, we present a novel hybrid technique for the accurate and efficient simulation of large chemical reaction networks. This technique, which we name the regime-conversion method, couples a discrete-state Markov jump process to a system of ordinary differential equations by simulating a reaction network using both techniques simultaneously. Individual molecules in the network are represented by exactly one regime at any given time, and may switch their governing regime depending on particle density. In this manner, we model high copy-number species using the cheaper continuum method and low copy-number species using the more expensive, discrete-state stochastic method to preserve the impact of stochastic fluctuations at low copy number. The motivation, as with similar methods, is to retain the advantages while mitigating the shortfalls of each method. We demonstrate the performance and accuracy of our method for several test problems that exhibit varying degrees of inter-connectivity and complexity by comparing averaged trajectories obtained from both our method and from exact stochastic simulation.
状态转换法:一种模拟混合良好的化学反应网络的混合技术
存在几种用于模拟以化学反应网络为代表的生物和物理系统的方法。具有低粒子数的系统通常被建模为离散状态马尔可夫跳跃过程,并且通常通过随机模拟算法(SSA)来模拟。SSA虽然准确,但通常不适用于具有大量个体的系统,并且随着反应频率的增加,其成本可能会高得令人望而却步。大型系统通常使用常微分方程进行确定性建模,为了计算效率和分析的可处理性,牺牲了精度和随机性。在本文中,我们提出了一种新的混合技术,用于精确有效地模拟大型化学反应网络。这种技术,我们称之为状态转换方法,通过同时使用这两种技术模拟反应网络,将离散状态马尔可夫跳跃过程耦合到常微分方程组。网络中的单个分子在任何给定时间都由一个区域表示,并且可以根据粒子密度切换其控制区域。通过这种方式,我们使用更便宜的连续体方法对高拷贝数物种进行建模,使用更昂贵的离散状态随机方法对低拷贝数物种建模,以保持低拷贝数下随机波动的影响。与类似方法一样,动机是保留每种方法的优势,同时减少不足。我们通过比较从我们的方法和精确随机模拟中获得的平均轨迹,证明了我们的方法对几个测试问题的性能和准确性,这些测试问题表现出不同程度的相互连通性和复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Frontiers in Applied Mathematics and Statistics
Frontiers in Applied Mathematics and Statistics Mathematics-Statistics and Probability
CiteScore
1.90
自引率
7.10%
发文量
117
审稿时长
14 weeks
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