Data-Driven Techniques for Detecting Dynamical State Changes in Noisily Measured 3D Single-Molecule Trajectories

Optical microscopes and nanoscale probes (AFM, optical tweezers, etc.) afford researchers tools capable of quantitatively exploring how molecules interact with one another in live cells. The analysis of in vivo single-molecule experimental data faces numerous challenges due to the complex, crowded,...

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Main Author: Christopher P. Calderon
Format: Article
Language:English
Published: MDPI AG 2014-11-01
Series:Molecules
Subjects:
Online Access:http://www.mdpi.com/1420-3049/19/11/18381
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spelling doaj-a0d77cbe27254896a9980b2426edc3292020-11-24T22:36:06ZengMDPI AGMolecules1420-30492014-11-011911183811839810.3390/molecules191118381molecules191118381Data-Driven Techniques for Detecting Dynamical State Changes in Noisily Measured 3D Single-Molecule TrajectoriesChristopher P. Calderon0Ursa Analytics, Denver, CO 80212, USAOptical microscopes and nanoscale probes (AFM, optical tweezers, etc.) afford researchers tools capable of quantitatively exploring how molecules interact with one another in live cells. The analysis of in vivo single-molecule experimental data faces numerous challenges due to the complex, crowded, and time changing environments associated with live cells. Fluctuations and spatially varying systematic forces experienced by molecules change over time; these changes are obscured by “measurement noise” introduced by the experimental probe monitoring the system. In this article, we demonstrate how the Hierarchical Dirichlet Process Switching Linear Dynamical System (HDP-SLDS) of Fox et al. [IEEE Transactions on Signal Processing 59] can be used to detect both subtle and abrupt state changes in time series containing “thermal” and “measurement” noise. The approach accounts for temporal dependencies induced by random and “systematic overdamped” forces. The technique does not require one to subjectively select the number of “hidden states” underlying a trajectory in an a priori fashion. The number of hidden states is simultaneously inferred along with change points and parameters characterizing molecular motion in a data-driven fashion. We use large scale simulations to study and compare the new approach to state-of-the-art Hidden Markov Modeling techniques. Simulations mimicking single particle tracking (SPT) experiments are the focus of this study.http://www.mdpi.com/1420-3049/19/11/18381single particle trackinghierarchical Dirichlet processesswitching linear dynamical systemsmeasurement/localization noise effectsnonparametric Bayesian techniquesprior sensitivity
collection DOAJ
language English
format Article
sources DOAJ
author Christopher P. Calderon
spellingShingle Christopher P. Calderon
Data-Driven Techniques for Detecting Dynamical State Changes in Noisily Measured 3D Single-Molecule Trajectories
Molecules
single particle tracking
hierarchical Dirichlet processes
switching linear dynamical systems
measurement/localization noise effects
nonparametric Bayesian techniques
prior sensitivity
author_facet Christopher P. Calderon
author_sort Christopher P. Calderon
title Data-Driven Techniques for Detecting Dynamical State Changes in Noisily Measured 3D Single-Molecule Trajectories
title_short Data-Driven Techniques for Detecting Dynamical State Changes in Noisily Measured 3D Single-Molecule Trajectories
title_full Data-Driven Techniques for Detecting Dynamical State Changes in Noisily Measured 3D Single-Molecule Trajectories
title_fullStr Data-Driven Techniques for Detecting Dynamical State Changes in Noisily Measured 3D Single-Molecule Trajectories
title_full_unstemmed Data-Driven Techniques for Detecting Dynamical State Changes in Noisily Measured 3D Single-Molecule Trajectories
title_sort data-driven techniques for detecting dynamical state changes in noisily measured 3d single-molecule trajectories
publisher MDPI AG
series Molecules
issn 1420-3049
publishDate 2014-11-01
description Optical microscopes and nanoscale probes (AFM, optical tweezers, etc.) afford researchers tools capable of quantitatively exploring how molecules interact with one another in live cells. The analysis of in vivo single-molecule experimental data faces numerous challenges due to the complex, crowded, and time changing environments associated with live cells. Fluctuations and spatially varying systematic forces experienced by molecules change over time; these changes are obscured by “measurement noise” introduced by the experimental probe monitoring the system. In this article, we demonstrate how the Hierarchical Dirichlet Process Switching Linear Dynamical System (HDP-SLDS) of Fox et al. [IEEE Transactions on Signal Processing 59] can be used to detect both subtle and abrupt state changes in time series containing “thermal” and “measurement” noise. The approach accounts for temporal dependencies induced by random and “systematic overdamped” forces. The technique does not require one to subjectively select the number of “hidden states” underlying a trajectory in an a priori fashion. The number of hidden states is simultaneously inferred along with change points and parameters characterizing molecular motion in a data-driven fashion. We use large scale simulations to study and compare the new approach to state-of-the-art Hidden Markov Modeling techniques. Simulations mimicking single particle tracking (SPT) experiments are the focus of this study.
topic single particle tracking
hierarchical Dirichlet processes
switching linear dynamical systems
measurement/localization noise effects
nonparametric Bayesian techniques
prior sensitivity
url http://www.mdpi.com/1420-3049/19/11/18381
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