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首页> 外文期刊>Journal of Statistical Physics >Density-Profile Processes Describing Biological Signaling Networks: Almost Sure Convergence to Deterministic Trajectories
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Density-Profile Processes Describing Biological Signaling Networks: Almost Sure Convergence to Deterministic Trajectories

机译:描述生物信号网络的密度分布过程:几乎确定地收敛到确定性轨迹

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摘要

We introduce jump processes in ℝ k , called density-profile processes, to model biological signaling networks. Our modeling setup describes the macroscopic evolution of a finite-size spin-flip model with k types of spins with arbitrary number of internal states interacting through a non-reversible stochastic dynamics. We are mostly interested on the multi-dimensional empirical-magnetization vector in the thermodynamic limit, and prove that, within arbitrary finite time-intervals, its path converges almost surely to a deterministic trajectory determined by a first-order (non-linear) differential equation with explicit bounds on the distance between the stochastic and deterministic trajectories. As parameters of the spin-flip dynamics change, the associated dynamical system may go through bifurcations, associated to phase transitions in the statistical mechanical setting. We present a simple example of spin-flip stochastic model, associated to a synthetic biology model known as repressilator, which leads to a dynamical system with Hopf and pitchfork bifurcations. Depending on the parameter values, the magnetization random path can either converge to a unique stable fixed point, converge to one of a pair of stable fixed points, or asymptotically evolve close to a deterministic orbit in ℝ k . We also discuss a simple signaling pathway related to cancer research, called p53 module. Keywords Density-profile processes - Biological signaling networks - Spin-flip dynamics - Non-reversible stochastic dynamics - Thermodynamic limit - Dynamical system - Mean field
机译:我们在ℝ k 中引入称为密度分布过程的跳跃过程,以对生物信号网络进行建模。我们的建模设置描述了具有k个自旋类型的有限大小自旋翻转模型的宏观演化,该自旋翻转模型具有通过不可逆的随机动力学相互作用的任意数量的内部状态。我们对热力学极限中的多维经验磁化矢量最感兴趣,并证明在任意有限的时间间隔内,其路径几乎可以肯定地收敛到由一阶(非线性)微分确定的确定性轨迹在随机轨迹和确定轨迹之间的距离上具有明确界限的方程。随着自旋翻转动力学参数的变化,相关的动力学系统可能会经历分叉,这与统计机械设置中的相变相关。我们提供了一个自旋翻转随机模型的简单示例,该模型与一个称为repressilator的合成生物学模型相关联,这导致了带有Hopf和干草叉分叉的动力学系统。取决于参数值,磁化随机路径可以收敛到唯一的稳定固定点,收敛到一对稳定固定点之一,或者渐近地发展到ℝ k 中的确定性轨道。我们还讨论了与癌症研究相关的简单信号通路,称为p53模块。关键词密度分布过程-生物信号网络-自旋翻转动力学-不可逆随机动力学-热力学极限-动力学系统-平均场

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