2018
DOI: 10.1101/275107
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A Hidden Markov Model for Detecting Confinement in Single Particle Tracking Trajectories

Abstract: State-of-the-art single particle tracking (SPT) techniques can generate long trajectories with high temporal and spatial resolution. This offers the possibility of mechanistically interpreting particle movements and behaviour in membranes. To this end, a number of statistical techniques have been developed that partition SPT trajectories into states with distinct diffusion signatures, allowing a statistical analysis of diffusion state dynamics and switching behaviour. Here we develop a confinement model, withi… Show more

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Cited by 4 publications
(6 citation statements)
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“…Moreover, Slator et al [61] implemented the inference of localization noise to infer switches in diffusion coefficient within one trajectory. A similar approach was used to detect confinement [62].…”
Section: Hidden Markov Models (Hmms)mentioning
confidence: 99%
“…Moreover, Slator et al [61] implemented the inference of localization noise to infer switches in diffusion coefficient within one trajectory. A similar approach was used to detect confinement [62].…”
Section: Hidden Markov Models (Hmms)mentioning
confidence: 99%
“…However, one must be careful to either ensure that Dt is greater than the characteristic state transition times or to modify the displacement densities to include transient behavior. In this way, our method can provide an alternative to the hidden Markov model analysis methods (15)(16)(17)(18)(19), which capture diffusive state transitions and the corresponding transition state rates.…”
Section: Resultsmentioning
confidence: 99%
“…By necessity, these methods require long trajectories, which are not always accessible. More sophisticated methods include the hidden Markov models (15)(16)(17)(18)(19)(20), which determine the diffusion coefficients for distinct diffusive states and the transition rates between states but often only consider a predefined fixed number of states, and other advanced trajectory segmentation methods (21). Advanced Bayesian methods (22) and combined hidden Markov model-Bayesian methods (20) can learn both the number of diffusive states and the transition rates but require a high degree of computational proficiency on behalf of the user.…”
Section: Introductionmentioning
confidence: 99%
“…Quantitative iSCAT studies have also enabled clear discrimination of the varying mobility of a lipid diffusing between differently ordered phases within a membrane [176]. Furthermore, the extended duration over which measurement can be performed has inspired researchers to develop new statistical models to interpret the new generation of experimental results [177]. It has to be born in mind, however, that quantitative comparisons of diffusion performed by different methods remains a challenge since each labeling approach might introduce a certain systematic bias, and indeed, diffusion coefficients obtained from different techniques might vary [178].…”
Section: Lipid Membranesmentioning
confidence: 99%