Single-Particle Diffusion Characterization by Deep Learning.
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Yoav Shechtman | Elias Nehme | Eran Perlson | Naor Granik | Michael Chein | Lucien E Weiss | Maayan Levin | Yael Roichman
[1] Sarah Webb. Deep learning for biology , 2018, Nature.
[2] J. B. Segur,et al. Viscosity of Glycerol and Its Aqueous Solutions , 1951 .
[3] Igor M. Sokolov,et al. A toolbox for determining subdiffusive mechanisms , 2015 .
[4] Igor M. Sokolov,et al. Models of anomalous diffusion in crowded environments , 2012 .
[5] Christina Cruickshank Miller. The Stokes-Einstein Law for Diffusion in Solution , 1924 .
[6] D. Reichman,et al. Anomalous diffusion probes microstructure dynamics of entangled F-actin networks. , 2004, Physical review letters.
[7] Lucien E. Weiss,et al. Robust hypothesis tests for detecting statistical evidence of two-dimensional and three-dimensional interactions in single-molecule measurements. , 2013, Physical review. E, Statistical, nonlinear, and soft matter physics.
[8] Ralf Jungmann,et al. Quantitative analysis of single particle trajectories: mean maximal excursion method. , 2010, Biophysical journal.
[9] Patrice Dosset,et al. Automatic detection of diffusion modes within biological membranes using back-propagation neural network , 2016, BMC Bioinformatics.
[10] Patrycja Kowalek,et al. Classification of diffusion modes in single-particle tracking data: Feature-based versus deep-learning approach. , 2019, Physical review. E.
[11] Wen Chen,et al. Continuous time random walk model with asymptotical probability density of waiting times via inverse Mittag-Leffler function , 2018, Commun. Nonlinear Sci. Numer. Simul..
[12] J. Klafter,et al. Fractional brownian motion versus the continuous-time random walk: a simple test for subdiffusive dynamics. , 2009, Physical review letters.
[13] A. Kuznetsov,et al. Intracellular transport of insulin granules is a subordinated random walk , 2013, Proceedings of the National Academy of Sciences.
[14] G. Oshanin,et al. Spectral Content of a Single Non-Brownian Trajectory , 2019, Physical Review X.
[15] Sung Chul Bae,et al. Anomalous yet Brownian , 2009, Proceedings of the National Academy of Sciences.
[16] Ralf Metzler,et al. Non-Gaussian, non-ergodic, and non-Fickian diffusion of tracers in mucin hydrogels. , 2019, Soft matter.
[17] Lucien E. Weiss,et al. Motional dynamics of single Patched1 molecules in cilia are controlled by Hedgehog and cholesterol , 2019, Proceedings of the National Academy of Sciences.
[18] Andrey G. Cherstvy,et al. Non-Brownian diffusion in lipid membranes: Experiments and simulations. , 2016, Biochimica et biophysica acta.
[19] J. Elf,et al. Extracting intracellular diffusive states and transition rates from single-molecule tracking data , 2013, Nature Methods.
[20] Vladlen Koltun,et al. An Empirical Evaluation of Generic Convolutional and Recurrent Networks for Sequence Modeling , 2018, ArXiv.
[21] Germain Forestier,et al. Deep learning for time series classification: a review , 2018, Data Mining and Knowledge Discovery.
[22] M. Clausen,et al. The probe rules in single particle tracking. , 2011, Current protein & peptide science.
[23] P. Koumoutsakos,et al. Feature point tracking and trajectory analysis for video imaging in cell biology. , 2005, Journal of structural biology.
[24] Christoph F. Schmidt,et al. Chain dynamics, mesh size, and diffusive transport in networks of polymerized actin. A quasielastic light scattering and microfluorescence study , 1989 .
[25] Paul C. Bressloff,et al. Stochastic Processes in Cell Biology , 2014, Interdisciplinary Applied Mathematics.
[26] Johannes E. Schindelin,et al. Fiji: an open-source platform for biological-image analysis , 2012, Nature Methods.
[27] B. Mandelbrot,et al. Fractional Brownian Motions, Fractional Noises and Applications , 1968 .
[28] Maciej Lewenstein,et al. Single trajectory characterization via machine learning , 2020, New Journal of Physics.
[29] Andrey G. Cherstvy,et al. Anomalous diffusion in time-fluctuating non-stationary diffusivity landscapes. , 2016, Physical chemistry chemical physics : PCCP.
[30] R. Metzler,et al. Aging renewal theory and application to random walks , 2013, 1310.1058.
[31] Hiroki Yamaguchi,et al. Estimation of diffusive states from single-particle trajectory in heterogeneous medium using machine-learning methods. , 2018, Physical chemistry chemical physics : PCCP.
[32] Eran Perlson,et al. Flow arrest in the plasma membrane , 2019, bioRxiv.
[33] Krzysztof Burnecki,et al. Guidelines for the Fitting of Anomalous Diffusion Mean Square Displacement Graphs from Single Particle Tracking Experiments , 2015, PloS one.
[34] Ralf Metzler,et al. Noisy continuous time random walks. , 2013, The Journal of chemical physics.
[35] Yael Roichman,et al. Extracting the dynamic correlation length of actin networks from microrheology experiments. , 2014, Soft matter.
[36] Krzysztof Burnecki,et al. Estimating the anomalous diffusion exponent for single particle tracking data with measurement errors - An alternative approach , 2015, Scientific Reports.
[37] M. Garcia-Parajo,et al. A review of progress in single particle tracking: from methods to biophysical insights , 2015, Reports on progress in physics. Physical Society.
[38] Yael Roichman,et al. Viscoelastic Response of a Complex Fluid at Intermediate Distances , 2013, 1307.4278.
[39] Nicholas A Moringo,et al. Single Particle Tracking: From Theory to Biophysical Applications. , 2017, Chemical reviews.
[40] Ali Farhadi,et al. You Only Look Once: Unified, Real-Time Object Detection , 2015, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[41] Aubrey V. Weigel,et al. Ergodic and nonergodic processes coexist in the plasma membrane as observed by single-molecule tracking , 2011, Proceedings of the National Academy of Sciences.
[42] Guillermo Sapiro,et al. Deep Neural Networks with Random Gaussian Weights: A Universal Classification Strategy? , 2015, IEEE Transactions on Signal Processing.
[43] Andrey G. Cherstvy,et al. Anomalous diffusion models and their properties: non-stationarity, non-ergodicity, and ageing at the centenary of single particle tracking. , 2014, Physical chemistry chemical physics : PCCP.
[44] Trevor Darrell,et al. Rich Feature Hierarchies for Accurate Object Detection and Semantic Segmentation , 2013, 2014 IEEE Conference on Computer Vision and Pattern Recognition.
[45] E. Scalas,et al. Monte Carlo simulation of uncoupled continuous-time random walks yielding a stochastic solution of the space-time fractional diffusion equation. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.
[46] E. Cox,et al. Physical nature of bacterial cytoplasm. , 2006, Physical review letters.
[47] Johan Elf,et al. Single-Molecule Kinetics in Living Cells. , 2018, Annual review of biochemistry.
[48] Maxime Woringer,et al. Robust model-based analysis of single-particle tracking experiments with Spot-On , 2018, eLife.
[49] X. Michalet,et al. Optimal diffusion coefficient estimation in single-particle tracking. , 2012 .
[50] Tomer Michaeli,et al. Multicolor localization microscopy and point-spread-function engineering by deep learning. , 2019, Optics express.
[51] Hugues Berry,et al. Anomalous diffusion due to hindering by mobile obstacles undergoing Brownian motion or Orstein-Ulhenbeck processes. , 2011, Physical review. E, Statistical, nonlinear, and soft matter physics.
[52] Andrey G. Cherstvy,et al. Bayesian analysis of single-particle tracking data using the nested-sampling algorithm: maximum-likelihood model selection applied to stochastic-diffusivity data. , 2018, Physical chemistry chemical physics : PCCP.