Department of Mathematics, University of Manchester, Manchester, United Kingdom.
School of Biological Sciences, University of Manchester, Manchester, United Kingdom.
Elife. 2020 Mar 24;9:e52224. doi: 10.7554/eLife.52224.
Intracellular transport is predominantly heterogeneous in both time and space, exhibiting varying non-Brownian behavior. Characterization of this movement through averaging methods over an ensemble of trajectories or over the course of a single trajectory often fails to capture this heterogeneity. Here, we developed a deep learning feedforward neural network trained on fractional Brownian motion, providing a novel, accurate and efficient method for resolving heterogeneous behavior of intracellular transport in space and time. The neural network requires significantly fewer data points compared to established methods. This enables robust estimation of Hurst exponents for very short time series data, making possible direct, dynamic segmentation and analysis of experimental tracks of rapidly moving cellular structures such as endosomes and lysosomes. By using this analysis, fractional Brownian motion with a stochastic Hurst exponent was used to interpret, for the first time, anomalous intracellular dynamics, revealing unexpected differences in behavior between closely related endocytic organelles.
细胞内运输在时间和空间上主要是不均匀的,表现出不同的非布朗运动行为。通过在轨迹的集合或单个轨迹的过程中进行平均方法来描述这种运动,往往无法捕捉到这种不均匀性。在这里,我们开发了一种基于分数布朗运动的深度学习前馈神经网络,为解决细胞内运输在空间和时间上的不均匀行为提供了一种新颖、准确和高效的方法。与已建立的方法相比,神经网络需要的数据集点要少得多。这使得非常短的时间序列数据的赫斯特指数的稳健估计成为可能,从而可以直接、动态地分割和分析快速运动的细胞结构(如内体和溶酶体)的实验轨迹。通过使用这种分析,首次使用具有随机赫斯特指数的分数布朗运动来解释异常的细胞内动力学,揭示了密切相关的内吞细胞器之间出人意料的行为差异。