Single-Particle Diffusion Characterization by Deep Learning

被引:125
作者
Granik, Naor [1 ,2 ]
Weiss, Lucien E. [1 ,2 ]
Nehme, Elias [1 ,2 ,3 ]
Levin, Maayan [4 ]
Chein, Michael [5 ,6 ]
Perlson, Eran [5 ,6 ]
Roichman, Yael [4 ,7 ]
Shechtman, Yoav [1 ,2 ]
机构
[1] Technion Israel Inst Technol, Dept Biomed Engn, Haifa, Israel
[2] Technion Israel Inst Technol, Lorry I Lokey Interdisciplinary Ctr Life Sci & En, Haifa, Israel
[3] Technion Israel Inst Technol, Dept Elect Engn, Haifa, Israel
[4] Tel Aviv Univ, Raymond & Beverly Sackler Sch Chem, Tel Aviv, Israel
[5] Tel Aviv Univ, Sackler Fac Med, Dept Physiol & Pharmacol, Tel Aviv, Israel
[6] Tel Aviv Univ, Sagol Sch Neurosci, Tel Aviv, Israel
[7] Tel Aviv Univ, Raymond & Beverly Sackler Sch Phys & Astron, Tel Aviv, Israel
基金
以色列科学基金会;
关键词
ANOMALOUS DIFFUSION; ACTIN NETWORKS; TRACKING; TRANSPORT; DYNAMICS; MODELS; STATES;
D O I
10.1016/j.bpj.2019.06.015
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
Diffusion plays a crucial role in many biological processes including signaling, cellular organization, transport mechanisms, and more. Direct observation of molecular movement by single-particle-tracking experiments has contributed to a growing body of evidence that many cellular systems do not exhibit classical Brownian motion but rather anomalous diffusion. Despite this evidence, characterization of the physical process underlying anomalous diffusion remains a challenging problem for several reasons. First, different physical processes can exist simultaneously in a system. Second, commonly used tools for distinguishing between these processes are based on asymptotic behavior, which is experimentally inaccessible in most cases. Finally, an accurate analysis of the diffusion model requires the calculation of many observables because different transport modes can result in the same diffusion power-law alpha, which is typically obtained from the mean-square displacements (MSDs). The outstanding challenge in the field is to develop a method to extract an accurate assessment of the diffusion process using many short trajectories with a simple scheme that is applicable at the nonexpert level. Here, we use deep learning to infer the underlying process resulting in anomalous diffusion. We implement a neural network to classify single-particle trajectories by diffusion type: Brownian motion, fractional Brownian motion and continuous time random walk. Further, we demonstrate the applicability of our network architecture for estimating the Hurst exponent for fractional Brownian motion and the diffusion coefficient for Brownian motion on both simulated and experimental data. These networks achieve greater accuracy than time-averaged MSD analysis on simulated trajectories while only requiring as few as 25 steps. When tested on experimental data, both net and ensemble MSD analysis converge to similar values; however, the net needs only half the number of trajectories required for ensemble MSD to achieve the same confidence interval. Finally, we extract diffusion parameters from multiple extremely short trajectories (10 steps) using our approach.
引用
收藏
页码:185 / 192
页数:8
相关论文
共 54 条
[1]  
[Anonymous], 2019, ARXIV190302850
[2]  
Bai Shaojie, 2018, Universal language model fine-tuning for text classification
[3]   Anomalous diffusion due to hindering by mobile obstacles undergoing Brownian motion or Orstein-Ulhenbeck processes [J].
Berry, Hugues ;
Chate, Hugues .
PHYSICAL REVIEW E, 2014, 89 (02)
[4]  
Bressloff P. C., 2014, STOCHASTIC PROCESSES, V41
[5]   AN ADAPTIVE STATISTICAL TEST TO DETECT NON BROWNIAN DIFFUSION FROM PARTICLE TRAJECTORIES [J].
Briane, V. ;
Vimond, M. ;
Kervrann, C. .
2016 IEEE 13TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING (ISBI), 2016, :972-975
[6]   Estimating the anomalous diffusion exponent for single particle tracking data with measurement errors - An alternative approach [J].
Burnecki, Krzysztof ;
Kepten, Eldad ;
Garini, Yuval ;
Sikora, Grzegorz ;
Weron, Aleksander .
SCIENTIFIC REPORTS, 2015, 5
[7]   Robust hypothesis tests for detecting statistical evidence of two-dimensional and three-dimensional interactions in single-molecule measurements [J].
Calderon, Christopher P. ;
Weiss, Lucien E. ;
Moerner, W. E. .
PHYSICAL REVIEW E, 2014, 89 (05)
[8]  
Chein M., 2019, BIORXIV, DOI [10.1101/575456, DOI 10.1101/575456]
[9]   Non-Gaussian, non-ergodic, and non-Fickian diffusion of tracers in mucin hydrogels [J].
Cherstvy, Andrey G. ;
Thapa, Samudrajit ;
Wagner, Caroline E. ;
Metzler, Ralf .
SOFT MATTER, 2019, 15 (12) :2526-2551
[10]   Anomalous diffusion in time-fluctuating non-stationary diffusivity landscapes [J].
Cherstvy, Andrey G. ;
Metzler, Ralf .
PHYSICAL CHEMISTRY CHEMICAL PHYSICS, 2016, 18 (34) :23840-23852