Publication | Open Access
Classification and Segmentation of Nanoparticle Diffusion Trajectories in Cellular Micro Environments
141
Citations
34
References
2017
Year
NanoparticlesEngineeringMicroscopySegment Single TrajectoriesCell BiophysicsBiomedical EngineeringSingle TrajectoriesSynthetic TrajectoriesTrajectory AnalysisNanomedicineTransport PhenomenaAnomalous DiffusionBiophysicsNanoparticle Diffusion TrajectoriesActive MatterCell BiologyDiffusion ResistanceBioimage AnalysisBiomedical ImagingDiffusion ProcessCellular Micro EnvironmentsDiffusion-based ModelingMedicineCell ImagingCell Detection
Darkfield and confocal laser scanning microscopy both allow for a simultaneous observation of live cells and single nanoparticles. Accordingly, a characterization of nanoparticle uptake and intracellular mobility appears possible within living cells. Single particle tracking allows to measure the size of a diffusing particle close to a cell. However, within the more complex system of a cell's cytoplasm normal, confined or anomalous diffusion together with directed motion may occur. In this work we present a method to automatically classify and segment single trajectories into their respective motion types. Single trajectories were found to contain more than one motion type. We have trained a random forest with 9 different features. The average error over all motion types for synthetic trajectories was 7.2%. The software was successfully applied to trajectories of positive controls for normal- and constrained diffusion. Trajectories captured by nanoparticle tracking analysis served as positive control for normal diffusion. Nanoparticles inserted into a diblock copolymer membrane was used to generate constrained diffusion. Finally we segmented trajectories of diffusing (nano-)particles in V79 cells captured with both darkfield- and confocal laser scanning microscopy. The software called "TraJClassifier" is freely available as ImageJ/Fiji plugin via https://git.io/v6uz2.
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