Entropy production constrains information throughput in gene regulation

Maximilian Gehri, Lukas Stelzl, Heinz Koeppl
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Abstract

Biological signal processing typically requires energy, leading us to hypothesize that a cell's information processing capacity is constrained by its energy dissipation. Signals and their processing mechanisms are often modeled using Markovian chemical reaction networks (CRNs). To enable rigorous analysis, we review and reformulate stochastic thermodynamics for open CRNs, utilizing Kurtz's process-based formulation. In particular, we revisit the identification of the energy dissipation rate with the entropy production rate (EPR) at the non-equilibrium steady state (NESS). We also highlight potential inconsistencies in traditional formulations for generic Markov processes when applied to open CRNs, which may lead to erroneous conclusions about equilibrium, reversibility, and the EPR. Additionally, we review the concepts of mutual information (MI) and directed information (DI) between continuous-time trajectories of CRNs, which capture the transmission of spatiotemporal patterns. We generalize existing expressions for the MI, originally accounting for transmission between two species, to now include transmission between arbitrary subnetworks. A rigorous derivation of the DI between subnetworks is presented. Based on channel coding theorems for continuous-time channels with feedback, we argue that directed information is the appropriate metric for quantifying information throughput in cellular signal processing. To support our initial hypothesis within the context of gene regulation, we present two case studies involving small promoter models: a two-state nonequilibrium promoter and a three-state promoter featuring two activation levels. We provide analytical expressions of the directed information rate (DIR) and maximize them subject to an upper bound on the EPR. The maximum is shown to increase with the EPR.
熵的产生制约着基因调控的信息吞吐量
生物信号处理通常需要能量,因此我们假设细胞的信息处理能力受制于其能量消耗。信号及其处理机制通常使用马尔可夫化学反应网络(CRN)建模。为了进行严谨的分析,我们利用库尔茨基于过程的表述方法,对开放式 CRN 的随机热力学进行了回顾和重新表述。特别是,我们重新审视了非平衡稳态(NESS)下能量耗散率与熵产生率(EPR)的识别问题。我们还强调了一般马尔可夫过程的传统公式在应用于开放式 CRN 时可能存在的不一致性,这可能会导致关于平衡、可逆性和 EPR 的错误结论。此外,我们回顾了 CRN 连续时间轨迹之间的互信息(MI)和定向信息(DI)概念,它们捕捉了时空模式的传递。我们概括了现有的互信息表达式,从最初的两个物种之间的传播,到现在包括任意子网络之间的传播。我们对子网络之间的 DI 进行了严格推导。基于具有反馈的连续时间信道的信道编码定理,我们认为有向信息是量化细胞信号处理中信息吞吐量的适当指标。为了在基因调控的背景下支持我们最初的假设,我们介绍了两个涉及小型启动子模型的案例研究:一个双状态非平衡启动子和一个具有两个激活水平的三状态启动子。我们提供了定向信息率(DIR)的分析表达式,并根据 EPR 的上限使其最大化。结果表明,最大值随 EPR 的增加而增加。
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