Publication | Open Access
A Hidden Markov Model for Single Particle Tracks Quantifies Dynamic Interactions between LFA-1 and the Actin Cytoskeleton
138
Citations
41
References
2009
Year
Biophysical ModelingExperimental TrajectoriesMolecular BiologyCytoskeletonTrajectory AnalysisSingle Molecule BiophysicsProtein FoldingHidden Markov ModelBiophysicsActin CytoskeletonComplex TrajectoriesParticle TrajectoriesMacromolecular MachineNatural SciencesExperimental BiophysicsComputational BiologyCell MotilityCellular BiochemistrySystems BiologyMedicineComputational Biophysics
The extraction of hidden information from complex trajectories is a continuing problem in single-particle and single-molecule experiments. Particle trajectories are the result of multiple phenomena, and new methods for revealing changes in molecular processes are needed. We have developed a practical technique that is capable of identifying multiple states of diffusion within experimental trajectories. We model single particle tracks for a membrane-associated protein interacting with a homogeneously distributed binding partner and show that, with certain simplifying assumptions, particle trajectories can be regarded as the outcome of a two-state hidden Markov model. Using simulated trajectories, we demonstrate that this model can be used to identify the key biophysical parameters for such a system, namely the diffusion coefficients of the underlying states, and the rates of transition between them. We use a stochastic optimization scheme to compute maximum likelihood estimates of these parameters. We have applied this analysis to single-particle trajectories of the integrin receptor lymphocyte function-associated antigen-1 (LFA-1) on live T cells. Our analysis reveals that the diffusion of LFA-1 is indeed approximately two-state, and is characterized by large changes in cytoskeletal interactions upon cellular activation.
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