Minas Giorgos, Rand David A
Zeeman Institute for Systems Biology & Infectious Disease Epidemiology Research, University of Warwick, Coventry, United Kingdom.
Mathematics Institute, University of Warwick, Coventry, United Kingdom.
PLoS Comput Biol. 2017 Jul 24;13(7):e1005676. doi: 10.1371/journal.pcbi.1005676. eCollection 2017 Jul.
In order to analyse large complex stochastic dynamical models such as those studied in systems biology there is currently a great need for both analytical tools and also algorithms for accurate and fast simulation and estimation. We present a new stochastic approximation of biological oscillators that addresses these needs. Our method, called phase-corrected LNA (pcLNA) overcomes the main limitations of the standard Linear Noise Approximation (LNA) to remain uniformly accurate for long times, still maintaining the speed and analytically tractability of the LNA. As part of this, we develop analytical expressions for key probability distributions and associated quantities, such as the Fisher Information Matrix and Kullback-Leibler divergence and we introduce a new approach to system-global sensitivity analysis. We also present algorithms for statistical inference and for long-term simulation of oscillating systems that are shown to be as accurate but much faster than leaping algorithms and algorithms for integration of diffusion equations. Stochastic versions of published models of the circadian clock and NF-κB system are used to illustrate our results.
为了分析大型复杂的随机动力学模型,例如系统生物学中所研究的那些模型,目前对于分析工具以及用于准确快速模拟和估计的算法都有巨大需求。我们提出了一种新的生物振荡器随机近似方法来满足这些需求。我们的方法称为相位校正线性噪声近似(pcLNA),它克服了标准线性噪声近似(LNA)的主要局限性,能够长时间保持一致的准确性,同时仍保留LNA的速度和解析易处理性。作为其中一部分,我们推导了关键概率分布和相关量(如费希尔信息矩阵和库尔贝克 - 莱布勒散度)的解析表达式,并引入了一种系统全局灵敏度分析的新方法。我们还给出了用于振荡系统统计推断和长期模拟的算法,这些算法被证明与跳跃算法以及扩散方程积分算法一样准确,但速度要快得多。已发表的生物钟和NF - κB系统模型的随机版本用于阐明我们的结果。