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Sparse bayesian step-filtering for high-throughput analysis of molecular machine dynamics
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  • Published: 30 March 2010

Sparse bayesian step-filtering for high-throughput analysis of molecular machine dynamics

  • Max Little1 &
  • Nick Jones1 

Nature Precedings (2010)Cite this article

  • 412 Accesses

  • 2 Citations

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Abstract

Nature has evolved many molecular machines such as kinesin, myosin, and the rotary flagellar motor powered by an ion current from the mitochondria. Direct observation of the step-like motion of these machines with time series from novel experimental assays has recently become possible. These time series are corrupted by molecular and experimental noise that requires removal, but classical signal processing is of limited use for recovering such step-like dynamics. This paper reports simple, novel Bayesian filters that are robust to step-like dynamics in noise, and introduce an L1-regularized, global filter whose sparse solution can be rapidly obtained by standard convex optimization methods. We show these techniques outperforming classical filters on simulated time series in terms of their ability to accurately recover the underlying step dynamics. To show the techniques in action, we extract step-like speed transitions from Rhodobacter sphaeroides flagellar motor time series. Code implementing these algorithms available from http://www.eng.ox.ac.uk/samp/members/max/software/

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  1. Oxford Centre for Integrative Systems Biology, University of Oxford https://www.nature.com/nature

    Max Little & Nick Jones

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  1. Max Little
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  2. Nick Jones
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Correspondence to Max Little.

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Little, M., Jones, N. Sparse bayesian step-filtering for high-throughput analysis of molecular machine dynamics. Nat Prec (2010). https://doi.org/10.1038/npre.2010.4318.1

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  • Received: 29 March 2010

  • Accepted: 30 March 2010

  • Published: 30 March 2010

  • DOI: https://doi.org/10.1038/npre.2010.4318.1

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Keywords

  • Single molecule
  • molecular machines
  • signal processing
  • FRET
  • AFM

This article is cited by

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    Scientific Reports (2017)

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