Literature DB >> 33421415

Generalizing HMMs to Continuous Time for Fast Kinetics: Hidden Markov Jump Processes.

Zeliha Kilic1, Ioannis Sgouralis2, Steve Pressé3.   

Abstract

The hidden Markov model (HMM) is a framework for time series analysis widely applied to single-molecule experiments. Although initially developed for applications outside the natural sciences, the HMM has traditionally been used to interpret signals generated by physical systems, such as single molecules, evolving in a discrete state space observed at discrete time levels dictated by the data acquisition rate. Within the HMM framework, transitions between states are modeled as occurring at the end of each data acquisition period and are described using transition probabilities. Yet, whereas measurements are often performed at discrete time levels in the natural sciences, physical systems evolve in continuous time according to transition rates. It then follows that the modeling assumptions underlying the HMM are justified if the transition rates of a physical process from state to state are small as compared to the data acquisition rate. In other words, HMMs apply to slow kinetics. The problem is, because the transition rates are unknown in principle, it is unclear, a priori, whether the HMM applies to a particular system. For this reason, we must generalize HMMs for physical systems, such as single molecules, because these switch between discrete states in "continuous time". We do so by exploiting recent mathematical tools developed in the context of inferring Markov jump processes and propose the hidden Markov jump process. We explicitly show in what limit the hidden Markov jump process reduces to the HMM. Resolving the discrete time discrepancy of the HMM has clear implications: we no longer need to assume that processes, such as molecular events, must occur on timescales slower than data acquisition and can learn transition rates even if these are on the same timescale or otherwise exceed data acquisition rates. Published by Elsevier Inc.

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Year:  2021        PMID: 33421415      PMCID: PMC7896036          DOI: 10.1016/j.bpj.2020.12.022

Source DB:  PubMed          Journal:  Biophys J        ISSN: 0006-3495            Impact factor:   3.699


  65 in total

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Journal:  J Chem Phys       Date:  2019-03-21       Impact factor: 3.488

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4.  Real-time observation of RecA filament dynamics with single monomer resolution.

Authors:  Chirlmin Joo; Sean A McKinney; Muneaki Nakamura; Ivan Rasnik; Sua Myong; Taekjip Ha
Journal:  Cell       Date:  2006-08-11       Impact factor: 41.582

5.  Single-molecule four-color FRET.

Authors:  Jinwoo Lee; Sanghwa Lee; Kaushik Ragunathan; Chirlmin Joo; Taekjip Ha; Sungchul Hohng
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6.  Hidden-Markov methods for the analysis of single-molecule actomyosin displacement data: the variance-Hidden-Markov method.

Authors:  D A Smith; W Steffen; R M Simmons; J Sleep
Journal:  Biophys J       Date:  2001-11       Impact factor: 4.033

7.  A stroboscopic approach for fast photoactivation-localization microscopy with Dronpa mutants.

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Journal:  J Am Chem Soc       Date:  2007-10-23       Impact factor: 15.419

8.  A new method for inferring hidden markov models from noisy time sequences.

Authors:  David Kelly; Mark Dillingham; Andrew Hudson; Karoline Wiesner
Journal:  PLoS One       Date:  2012-01-11       Impact factor: 3.240

9.  Single-molecule FRET studies of HIV TAR-DNA hairpin unfolding dynamics.

Authors:  Jixin Chen; Nitesh K Poddar; Lawrence J Tauzin; David Cooper; Anatoly B Kolomeisky; Christy F Landes
Journal:  J Phys Chem B       Date:  2014-10-14       Impact factor: 2.991

10.  Unbiased Bayesian inference for population Markov jump processes via random truncations.

Authors:  Anastasis Georgoulas; Jane Hillston; Guido Sanguinetti
Journal:  Stat Comput       Date:  2016-06-02       Impact factor: 2.559

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  3 in total

1.  Residence time analysis of RNA polymerase transcription dynamics: A Bayesian sticky HMM approach.

Authors:  Zeliha Kilic; Ioannis Sgouralis; Steve Pressé
Journal:  Biophys J       Date:  2021-03-09       Impact factor: 4.033

2.  A blind benchmark of analysis tools to infer kinetic rate constants from single-molecule FRET trajectories.

Authors:  Markus Götz; Anders Barth; Søren S-R Bohr; Richard Börner; Jixin Chen; Thorben Cordes; Dorothy A Erie; Christian Gebhardt; Mélodie C A S Hadzic; George L Hamilton; Nikos S Hatzakis; Thorsten Hugel; Lydia Kisley; Don C Lamb; Carlos de Lannoy; Chelsea Mahn; Dushani Dunukara; Dick de Ridder; Hugo Sanabria; Julia Schimpf; Claus A M Seidel; Roland K O Sigel; Magnus Berg Sletfjerding; Johannes Thomsen; Leonie Vollmar; Simon Wanninger; Keith R Weninger; Pengning Xu; Sonja Schmid
Journal:  Nat Commun       Date:  2022-09-14       Impact factor: 17.694

3.  Extraction of rapid kinetics from smFRET measurements using integrative detectors.

Authors:  Zeliha Kilic; Ioannis Sgouralis; Wooseok Heo; Kunihiko Ishii; Tahei Tahara; Steve Pressé
Journal:  Cell Rep Phys Sci       Date:  2021-04-22
  3 in total

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