Department of Molecular and Cell Biology, Li Ka Shing Center for Biomedical and Health Sciences, University of California, Berkeley, Berkeley, United States.
CIRM Center of Excellence, University of California, Berkeley, Berkeley, United States.
Elife. 2022 Sep 6;11:e70169. doi: 10.7554/eLife.70169.
Single-particle tracking (SPT) directly measures the dynamics of proteins in living cells and is a powerful tool to dissect molecular mechanisms of cellular regulation. Interpretation of SPT with fast-diffusing proteins in mammalian cells, however, is complicated by technical limitations imposed by fast image acquisition. These limitations include short trajectory length due to photobleaching and shallow depth of field, high localization error due to the low photon budget imposed by short integration times, and cell-to-cell variability. To address these issues, we investigated methods inspired by Bayesian nonparametrics to infer distributions of state parameters from SPT data with short trajectories, variable localization precision, and absence of prior knowledge about the number of underlying states. We discuss the advantages and disadvantages of these approaches relative to other frameworks for SPT analysis.
单粒子追踪(SPT)直接测量活细胞中蛋白质的动力学,是解析细胞调控分子机制的有力工具。然而,在哺乳动物细胞中用扩散速度较快的蛋白质进行 SPT 时,由于快速图像采集造成的技术限制,使得对其的解读变得复杂。这些限制包括由于光漂白导致的短轨迹长度和较浅的景深,由于短积分时间导致的低光子预算引起的高定位误差,以及细胞间的可变性。为了解决这些问题,我们研究了受贝叶斯非参数学启发的方法,以便从具有短轨迹、可变定位精度和缺乏关于潜在状态数量的先验知识的 SPT 数据中推断状态参数的分布。我们讨论了这些方法相对于其他 SPT 分析框架的优缺点。