A hidden Markov model for single particle tracks quantifies dynamic interactions between LFA-1 and the actin cytoskeleton
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Inferring diffusion in single live cells at the single-molecule levelNovel methods for analysing bacterial tracks reveal persistence in Rhodobacter sphaeroidesEffects of amino acid starvation on RelA diffusive behavior in live Escherichia coliExtracting Diffusive States of Rho GTPase in Live Cells: Towards In Vivo BiochemistryA two-state model for the diffusion of the A2A adenosine receptor in hippocampal neurons: agonist-induced switch to slow mobility is modified by synapse-associated protein 102 (SAP102)Heterogeneous CD8+ T cell migration in the lymph node in the absence of inflammation revealed by quantitative migration analysis.Dynamic regulation of CD45 lateral mobility by the spectrin-ankyrin cytoskeleton of T cells.Single-molecule tracking of small GTPase Rac1 uncovers spatial regulation of membrane translocation and mechanism for polarized signalingToll-like receptor ligands sensitize B-cell receptor signalling by reducing actin-dependent spatial confinement of the receptor.Spatial Distribution and Ribosome-Binding Dynamics of EF-P in Live Escherichia coli.Analysis of molecular diffusion by first-passage time variance identifies the size of confinement zonesImaging and quantification of trans-membrane protein diffusion in living bacteria.Detection of Diffusion Heterogeneity in Single Particle Tracking Trajectories Using a Hidden Markov Model with Measurement Noise Propagation.Improving z-tracking accuracy in the two-photon single-particle tracking microscope.Quantifying Multistate Cytoplasmic Molecular Diffusion in Bacterial Cells via Inverse Transform of Confined Displacement DistributionInferring transient particle transport dynamics in live cells.Subdiffractional tracking of internalized molecules reveals heterogeneous motion states of synaptic vesicles.Bioimage informatics for understanding spatiotemporal dynamics of cellular processes.Reduction of Confinement Error in Single-Molecule Tracking in Live Bacterial Cells Using SPICER.Systems-level approach to uncovering diffusive states and their transitions from single-particle trajectories.An Intermittent Model for Intracellular Motions of Gold Nanostars by k-Space Scattering Image Correlation.Limitations of Qdot labelling compared to directly-conjugated probes for single particle tracking of B cell receptor mobility.Monte Carlo investigation of diffusion of receptors and ligands that bind across opposing surfaces.Bayesian approach to MSD-based analysis of particle motion in live cells.Actin cytoskeleton reorganization by Syk regulates Fcγ receptor responsiveness by increasing its lateral mobility and clustering.Galectin-3 alters the lateral mobility and clustering of β1-integrin receptors.Segmentation of 3D Trajectories Acquired by TSUNAMI Microscope: An Application to EGFR Trafficking.Detection of Velocity and Diffusion Coefficient Change Points in Single-Particle Trajectories.Bayesian inference with information content model check for Langevin equations.Hybrid colored noise process with space-dependent switching rates.How to compare diffusion processes assessed by single-particle tracking and pulsed field gradient nuclear magnetic resonance.
P2860
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P2860
A hidden Markov model for single particle tracks quantifies dynamic interactions between LFA-1 and the actin cytoskeleton
description
2009 nî lūn-bûn
@nan
2009 թուականի Նոյեմբերին հրատարակուած գիտական յօդուած
@hyw
2009 թվականի նոյեմբերին հրատարակված գիտական հոդված
@hy
2009年の論文
@ja
2009年論文
@yue
2009年論文
@zh-hant
2009年論文
@zh-hk
2009年論文
@zh-mo
2009年論文
@zh-tw
2009年论文
@wuu
name
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@ast
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@en
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@nl
type
label
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@ast
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@en
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@nl
prefLabel
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@ast
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@en
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@nl
P2860
P1476
A hidden Markov model for sing ...... A-1 and the actin cytoskeleton
@en
P2093
Raibatak Das
P2860
P304
P356
10.1371/JOURNAL.PCBI.1000556
P407
P577
2009-11-01T00:00:00Z