基于分段静止多运动模型卡尔曼平滑的显微延时图像多微管跟踪

Samira Masoudi, C. Wright, N. Rahnavard, J. Gatlin, J. Oakey
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引用次数: 3

摘要

微管本质上是动态的亚细胞丝状聚合物,在细胞内由交联和移动微管的运动蛋白在空间上组织。体外微管运动测定,即附着在表面上的马达沿着表面移动微管,传统上用于研究运动功能。然而,微管-微管相互作用影响微管运动的方式在很大程度上仍未被探索。为了解决这个问题,使用全内反射荧光(TIRF)显微镜获得了体外微管运动测定的延时图像系列。归类为多目标跟踪(MOT)的一般问题,该项目中出现的特殊挑战包括低特征多样性,动态不稳定性,微管运动模式的突然变化以及它们的瞬时出现/消失。本文描述了分段平稳多运动模型卡尔曼平滑(PMMS)在单个微管运动趋势建模中的新应用。为了评估该方法的性能并优化其超参数,首先使用了一个模拟延时图像序列的大型数据集。接下来,我们将其应用于来自真实数据的帧序列。我们的分析结果提供了微管速度的定量描述,反过来,列举了每帧微管-微管相互作用的发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Microtubule Tracking in Microscopy Time-Lapse Images Using Piecewise-stationary Multiple Motion Model Kalman Smoother
Microtubules are inherently dynamic sub-cellular filamentuous polymers that are spatially organized within the cell by motor proteins which cross-link and move microtubules. In-vitro microtubule motility assays, in which motors attached to a surface move microtubules along it, have been used traditionally to study motor function. However, the way in which microtubule-microtubule interactions affect microtubule movement remains largely unexplored. To address this question, time-lapse image series of in-vitro microtubule motility assays were obtained using total internal reflection fluorescence (TIRF) microscopy. Categorized as a general problem of multiple object tracking (MOT), particular challenges arising in this project include low feature diversity, dynamic instability, sudden changes in microtubules motility patterns, as well as their instantaneous appearance/disappearance. This work describes a new application of piecewise-stationary multiple motion model Kalman smoother (PMMS) for modeling individual microtubules motility trends. To both evaluate the capability of this procedure and optimize its hyper-parameters, a large dataset simulating the series of time-lapse images was used first. Next, we applied it to the sequence of frames from the real data. Results of our analyses provide a quantitative description of microtubule velocity which, in turn, enumerates the occurrence of microtubule-microtubule interactions per frame.
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