Department of Electrical and Computer Engineering, Rice University, Houston, Texas 77005, United States.
Department of Chemistry, Rice University, Houston, Texas 77005, United States.
J Phys Chem A. 2021 Oct 7;125(39):8723-8733. doi: 10.1021/acs.jpca.1c06100. Epub 2021 Sep 24.
Achieving mechanistic understanding of transport in complex environments such as inside cells or at polymer interfaces is challenging. We need better ways to image transport in 3-D and better single particle tracking algorithms to determine transport that are not systemically biased toward any classical motion model. Here we present an unbiased single particle tracking algorithm: Knowing Nothing Outside Tracking (KNOT). KNOT uses point clouds provided by iterative deconvolution to educate individual particle localizations and link particle positions between frames to achieve 2-D and 3-D tracking. Information from prior point clouds fuels an independent adaptive motion model for each particle to avoid global models that could introduce biases. KNOT competes with or surpasses other 2-D methods from the 2012 particle tracking challenge while accurately tracking adsorption dynamics of proteins on polymer surfaces and early endosome transport in live cells in 3-D. We apply KNOT to study 3-D endosome transport to reveal new physical insight into locally directed and diffusive transport in live cells. Our analysis demonstrates better accuracy in classifying local motion and its direction compared to previous methods, revealing intricate intracellular transport heterogeneities.
在细胞内或聚合物界面等复杂环境中实现对传输的机理理解具有挑战性。我们需要更好的方法来对 3D 中的传输进行成像,以及更好的、不会系统地偏向任何经典运动模型的单颗粒跟踪算法来确定传输。在这里,我们提出了一种无偏的单颗粒跟踪算法:一无所知的跟踪(KNOT)。KNOT 使用迭代反卷积提供的点云来教育单个颗粒的定位,并在帧之间链接颗粒位置,以实现 2D 和 3D 跟踪。来自先前点云的信息为每个颗粒提供独立的自适应运动模型,以避免可能引入偏差的全局模型。KNOT 与 2012 年粒子跟踪挑战赛中的其他 2D 方法竞争或超越,同时准确地跟踪蛋白质在聚合物表面上的吸附动力学以及活细胞中早期内体的 3D 运输。我们应用 KNOT 来研究 3D 内体运输,以揭示活细胞中局部定向和扩散运输的新物理见解。我们的分析表明,与以前的方法相比,在分类局部运动及其方向方面具有更高的准确性,揭示了复杂的细胞内运输异质性。