Institute of Mathematics, Stockholm University, Stockholm, Sweden.
Department of Computer Science, Saarland University, Saarbrücken, Germany.
Math Biosci. 2018 Nov;305:170-177. doi: 10.1016/j.mbs.2018.09.009. Epub 2018 Sep 20.
A widely used approach to describe the dynamics of gene regulatory networks is based on the chemical master equation, which considers probability distributions over all possible combinations of molecular counts. The analysis of such models is extremely challenging due to their large discrete state space. We therefore propose a hybrid approximation approach based on a system of partial differential equations, where we assume a continuous-deterministic evolution for the protein counts. We discuss efficient analysis methods for both modeling approaches and compare their performance. We show that the hybrid approach yields accurate results for sufficiently large molecule counts, while reducing the computational effort from one ordinary differential equation for each state to one partial differential equation for each mode of the system. Furthermore, we give an analytical steady-state solution of the hybrid model for the case of a self-regulatory gene.
一种广泛用于描述基因调控网络动态的方法是基于化学主方程,该方程考虑了所有可能的分子计数组合的概率分布。由于其离散状态空间非常大,因此对这些模型的分析极具挑战性。因此,我们提出了一种基于偏微分方程系统的混合近似方法,其中我们假设蛋白质计数的连续确定性演化。我们讨论了这两种建模方法的有效分析方法,并比较了它们的性能。我们表明,对于足够大的分子计数,混合方法可以得到准确的结果,同时将每个状态的一个常微分方程的计算工作量减少到系统每个模式的一个偏微分方程。此外,我们给出了自调节基因情况下混合模型的解析稳态解。