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 abs...
Quantitative analysis of microscopy images is ideally suited for understanding the functional biolog...
Single molecule tracking of membrane proteins by fluorescence microscopy is a promising method to in...
International audienceWe present a Bayesian framework for inferring spatio-temporal maps of diffusiv...
Single-particle tracking (SPT) directly measures the dynamics of proteins in living cells and is a p...
Single-particle tracking (SPT) has become an important method to bridge biochemistry and cell biolog...
Single particle tracking (SPT) enables the investigation of biomolecular dynamics at a high temporal...
The single-particle tracking technique, where individual molecules are fluorescently labelled and re...
Quantitative tracking of particle motion using live-cell imaging is a powerful approach to understan...
Fluorescence microscopy is a powerful technique for understanding the organization, structure and dy...
AbstractQuantitative tracking of particle motion using live-cell imaging is a powerful approach to u...
The dependence on model-fitting to evaluate particle trajectories makes it difficult for single part...
Single-particle tracking (SPT) has been extensively used to obtain information about diffusion and d...
The advent of single molecule microscopy has rev- olutionized biological investigations by providing...
International audienceTracking single molecules in living cells provides invaluable information on t...
Single molecule tracking of membrane proteins by fluorescence microscopy is a promising method to in...
Quantitative analysis of microscopy images is ideally suited for understanding the functional biolog...
Single molecule tracking of membrane proteins by fluorescence microscopy is a promising method to in...
International audienceWe present a Bayesian framework for inferring spatio-temporal maps of diffusiv...
Single-particle tracking (SPT) directly measures the dynamics of proteins in living cells and is a p...
Single-particle tracking (SPT) has become an important method to bridge biochemistry and cell biolog...
Single particle tracking (SPT) enables the investigation of biomolecular dynamics at a high temporal...
The single-particle tracking technique, where individual molecules are fluorescently labelled and re...
Quantitative tracking of particle motion using live-cell imaging is a powerful approach to understan...
Fluorescence microscopy is a powerful technique for understanding the organization, structure and dy...
AbstractQuantitative tracking of particle motion using live-cell imaging is a powerful approach to u...
The dependence on model-fitting to evaluate particle trajectories makes it difficult for single part...
Single-particle tracking (SPT) has been extensively used to obtain information about diffusion and d...
The advent of single molecule microscopy has rev- olutionized biological investigations by providing...
International audienceTracking single molecules in living cells provides invaluable information on t...
Single molecule tracking of membrane proteins by fluorescence microscopy is a promising method to in...
Quantitative analysis of microscopy images is ideally suited for understanding the functional biolog...
Single molecule tracking of membrane proteins by fluorescence microscopy is a promising method to in...
International audienceWe present a Bayesian framework for inferring spatio-temporal maps of diffusiv...