Department of Chemistry and The James Franck Institute, University of Chicago, Chicago, Illinois 60637, USA.
J Chem Phys. 2020 Feb 7;152(5):055101. doi: 10.1063/1.5143259.
Organisms often use cyclic changes in the concentrations of chemical species to precisely time biological functions. Underlying these biochemical clocks are chemical reactions and transport processes, which are inherently stochastic. Understanding the physical basis for robust biochemical oscillations in the presence of fluctuations has thus emerged as an important problem. In a previous paper [C. del Junco and S. Vaikuntanathan, Phys. Rev. E 101, 012410 (2020)], we explored this question using the non-equilibrium statistical mechanics of single-ring Markov state models of biochemical networks that support oscillations. Our finding was that they can exploit non-equilibrium driving to robustly maintain the period and coherence of oscillations in the presence of randomness in the rates. Here, we extend our work to Markov state models consisting of a large cycle decorated with multiple small cycles. These additional cycles are intended to represent alternate pathways that the oscillator may take as it fluctuates about its average path. Combining a mapping to single-cycle networks based on first passage time distributions with our previously developed theory, we are able to make analytical predictions for the period and coherence of oscillations in these networks. One implication of our predictions is that a high energy budget can make different network topologies and arrangements of rates degenerate as far as the period and coherence of oscillations are concerned. Excellent agreement between analytical and numerical results confirms that this is the case. Our results suggest that biochemical oscillators can be more robust to fluctuations in the path of the oscillator when they have a high energy budget.
生物体会经常利用化学物质浓度的循环变化来精确地控制生物功能的时间。这些生化钟的基础是化学反应和输运过程,它们本质上是随机的。因此,理解在存在波动的情况下稳健的生化振荡的物理基础已成为一个重要问题。在之前的一篇论文中[C. del Junco 和 S. Vaikuntanathan, Phys. Rev. E 101, 012410 (2020)],我们使用支持振荡的单环马尔可夫状态模型的非平衡统计力学来探讨了这个问题。我们的发现是,它们可以利用非平衡驱动来稳健地维持振荡的周期和相干性,即使在速率的随机性存在的情况下。在这里,我们将我们的工作扩展到由一个带有多个小环的大环组成的马尔可夫状态模型。这些额外的环旨在代表振荡器在其平均路径周围波动时可能采取的替代途径。我们结合基于首次通过时间分布的单环网络映射和我们之前开发的理论,能够对这些网络中振荡的周期和相干性做出分析预测。我们预测的一个含义是,当能量预算较高时,不同的网络拓扑结构和速率排列在振荡的周期和相干性方面可能会变得相同。分析和数值结果之间的极好一致性证实了这一点。我们的结果表明,当生化振荡器的能量预算较高时,它们可以对振荡器路径中的波动更具鲁棒性。