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首页> 外文期刊>Journal of Mathematical Biology >Two-boundary first exit time of Gauss-Markov processes for stochastic modeling of acto-myosin dynamics
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Two-boundary first exit time of Gauss-Markov processes for stochastic modeling of acto-myosin dynamics

机译:动力学 - 肌球蛋白动力学随机建模的高斯 - 马尔可夫工艺的双边界第一出口时间

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摘要

We consider a stochastic differential equation in a strip, with coefficients suitably chosen to describe the acto-myosin interaction subject to time-varying forces. By simulating trajectories of the stochastic dynamics via an Euler discretization-based algorithm, we fit experimental data and determine the values of involved parameters. The steps of the myosin are represented by the exit events from the strip. Motivated by these results, we propose a specific stochastic model based on the corresponding time-inhomogeneous Gauss-Markov and diffusion process evolving between two absorbing boundaries. We specify the mean and covariance functions of the stochastic modeling process taking into account time-dependent forces including the effect of an external load. We accurately determine the probability density function (pdf) of the first exit time (FET) from the strip by solving a system of two non singular second-type Volterra integral equations via a numerical quadrature. We provide numerical estimations of the mean of FET as approximations of the dwell-time of the proteins dynamics. The percentage of backward steps is given in agreement to experimental data. Numerical and simulation results are compared and discussed.
机译:我们考虑条带中的随机微分方程,系数适当地选择,以描述经受时变力的acto-myosin相互作用。通过基于欧拉离散化的算法模拟随机动力学的轨迹,我们适合实验数据并确定涉及参数的值。肌球蛋白的步骤由条带的出口事件表示。通过这些结果激励,我们提出了一种基于相应的时源性高斯 - 马尔可夫的特定随机模型和在两个吸收边界之间演化的扩散过程。我们指定了随机建模过程的平均值和协方差,以考虑到包括外部负荷效果的时间依赖性力量。我们通过数值正交求解两个非奇异第二型Volterra积分方程的系统,精确地确定第一出口时间(FET)的概率密度(PDF)。我们提供了FET的平均值的数值估计,作为蛋白质动态的停留时间的近似。向后步骤的百分比以实验数据一致地给出。比较和讨论数值和仿真结果。

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