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An Estimation Algorithm for General Linear Single Particle Tracking Models with Time-Varying Parameters

机译:具有时变参数的一般线性单粒子跟踪模型的估计算法

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摘要

Single Particle Tracking (SPT) is a powerful class of methods for studying the dynamics of biomolecules inside living cells. The techniques reveal the trajectories of individual particles, with a resolution well below the diffraction limit of light, and from them the parameters defining the motion model, such as diffusion coefficients and confinement lengths. Most existing algorithms assume these parameters are constant throughout an experiment. However, it has been demonstrated that they often vary with time as the tracked particles move through different regions in the cell or as conditions inside the cell change in response to stimuli. In this work, we propose an estimation algorithm to determine time-varying parameters of systems that discretely switch between different linear models of motion with Gaussian noise statistics, covering dynamics such as diffusion, directed motion, and Ornstein–Uhlenbeck dynamics. Our algorithm consists of three stages. In the first stage, we use a sliding window approach, combined with Expectation Maximization (EM) to determine maximum likelihood estimates of the parameters as a function of time. These results are only used to roughly estimate the number of model switches that occur in the data to guide the selection of algorithm parameters in the second stage. In the second stage, we use Change Detection (CD) techniques to identify where the models switch, taking advantage of the off-line nature of the analysis of SPT data to create non-causal algorithms with better precision than a purely causal approach. Finally, we apply EM to each set of data between the change points to determine final parameter estimates. We demonstrate our approach using experimental data generated in the lab under controlled conditions.
机译:单粒子跟踪(SPT)是研究活细胞内生物分子动态的强大方法。该技术揭示了个体颗粒的轨迹,其分辨率远低于光的衍射极限,以及限定运动模型的参数,例如扩散系数和限制长度。大多数现有算法假设在整个实验中都是恒定的。然而,已经证明它们通常随着时间的推移而变化,随着跟踪的颗粒通过细胞中的不同区域或作为细胞内部的条件响应于刺激而变化。在这项工作中,我们提出了一种估计算法,用于确定与高斯噪声统计的不同线性模型之间的分隔切换的系统的时变参数,覆盖诸如扩散,定向运动和奥恩斯坦 - uhlenbeck动态的动态。我们的算法由三个阶段组成。在第一阶段,我们使用滑动窗口方法,结合期望最大化(EM)以确定参数的最大似然估计作为时间的函数。这些结果仅用于大致估计数据中发生的模型交换机的数量,以指导第二阶段中的算法参数的选择。在第二阶段,我们使用更改检测(CD)技术来识别模型切换的位置,利用SPT数据分析的离线性质来创建具有比纯粹因果方法更好的精度的非因果算法。最后,我们将EM应用于变更点之间的每组数据以确定最终参数估计。我们在受控条件下使用实验室生成的实验数据展示了我们的方法。

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