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How to connect time-lapse recorded trajectories of motile microorganisms with dynamical models in continuous time

机译:如何在连续时间内将动态微生物的延时记录轨迹与动力学模型联系起来

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摘要

We provide a tool for data-driven modeling of motility, data being time-lapse recorded trajectories. Several mathematical properties of a model to be found can be gleaned from appropriate model-independent experimental statistics, if one understands how such statistics are distorted by the finite sampling frequency of time-lapse recording, by experimental errors on recorded positions, and by conditional averaging. We give exact analytical expressions for these effects in the simplest possible model for persistent random motion, the Ornstein-Uhlenbeck process. Then we describe those aspects of these effects that are valid for any reasonable model for persistent random motion. Our findings are illustrated with experimental data and Monte Carlo simulations.
机译:我们提供了用于数据驱动的运动建模的工具,数据是随时间推移而记录的轨迹。如果可以理解适当的与模型无关的实验统计信息,则可以找到待找到模型的几种数学性质,只要他们能理解这种统计信息会因定时录制的有限采样频率,记录位置的实验误差以及条件平均而失真。我们在持久随机运动的最简单可能模型Ornstein-Uhlenbeck过程中给出了这些效应的精确解析表达式。然后,我们描述这些影响的那些方面对于任何适用于持久随机运动的合理模型都是有效的。我们的发现通过实验数据和蒙特卡洛模拟进行了说明。

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