论文标题

强烈驱动网络中的新兴记忆和动力学滞后

Emergent memory and kinetic hysteresis in strongly driven networks

论文作者

Hartich, David, Godec, Aljaž

论文摘要

通常认为随机网络动力学是不记忆的。涉及长时间的住所,被节点之间的瞬时过渡中断,Markov网络是化学反应,基因表达,分子机器,疾病的扩散,蛋白质动力学,能量景观景观,表观遗传学和许多其他许多的粗粒范式。但是,一旦过渡不止可以忽略不足,正如在实验中经常观察到的那样,动力学会发展出记忆。也就是说,状态变化不仅取决于当前状态,还取决于过去。在这里,我们建立了第一个热力学一致的 - 耗散性动力学映射到网络上,该映射揭示了根深蒂固的动态对称性和不可预见的动力学滞后。这些对称性在国家到州动力学中施加了三个独立的波动来源,这些来源决定了“记忆的风味”。连续轨迹的时间粗粒度的前向/向后之间的滞后意味着在存在记忆存在下的活性分子过程热力学的新范式,即超出局部详细平衡的假设。我们的结果提供了对分子机器运行以及与细胞粘附有关的接管键的新理解。

Stochastic network-dynamics are typically assumed to be memory-less. Involving prolonged dwells interrupted by instantaneous transitions between nodes such Markov networks stand as a coarse-graining paradigm for chemical reactions, gene expression, molecular machines, spreading of diseases, protein dynamics, diffusion in energy landscapes, epigenetics and many others. However, as soon as transitions cease to be negligibly short, as often observed in experiments, the dynamics develops a memory. That is, state-changes depend not only on the present state but also on the past. Here, we establish the first thermodynamically consistent -- dissipation-preserving -- mapping of continuous dynamics onto a network, which reveals ingrained dynamical symmetries and an unforeseen kinetic hysteresis. These symmetries impose three independent sources of fluctuations in state-to state kinetics that determine the `flavor of memory'. The hysteresis between the forward/backward in time coarse-graining of continuous trajectories implies a new paradigm for the thermodynamics of active molecular processes in the presence of memory, that is, beyond the assumption of local detailed balance. Our results provide a new understanding of fluctuations in the operation of molecular machines as well as catch-bonds involved in cellular adhesion.

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