Literature DB >> 26025225

Identifying localized changes in large systems: Change-point detection for biomolecular simulations.

Zhou Fan1, Ron O Dror2, Thomas J Mildorf1, Stefano Piana1, David E Shaw3.   

Abstract

Research on change-point detection, the classical problem of detecting abrupt changes in sequential data, has focused predominantly on datasets with a single observable. A growing number of time series datasets, however, involve many observables, often with the property that a given change typically affects only a few of the observables. We introduce a general statistical method that, given many noisy observables, detects points in time at which various subsets of the observables exhibit simultaneous changes in data distribution and explicitly identifies those subsets. Our work is motivated by the problem of identifying the nature and timing of biologically interesting conformational changes that occur during atomic-level simulations of biomolecules such as proteins. This problem has proved challenging both because each such conformational change might involve only a small region of the molecule and because these changes are often subtle relative to the ever-present background of faster structural fluctuations. We show that our method is effective in detecting biologically interesting conformational changes in molecular dynamics simulations of both folded and unfolded proteins, even in cases where these changes are difficult to detect using alternative techniques. This method may also facilitate the detection of change points in other types of sequential data involving large numbers of observables--a problem likely to become increasingly important as such data continue to proliferate in a variety of application domains.

Keywords:  SIMPLE; conformational change; molecular dynamics; multivariate; penalized maximum likelihood

Mesh:

Substances:

Year:  2015        PMID: 26025225      PMCID: PMC4475967          DOI: 10.1073/pnas.1415846112

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  17 in total

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6.  Detecting simultaneous changepoints in multiple sequences.

Authors:  Nancy R Zhang; David O Siegmund; Hanlee Ji; Jun Z Li
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8.  Event detection and sub-state discovery from biomolecular simulations using higher-order statistics: application to enzyme adenylate kinase.

Authors:  Arvind Ramanathan; Andrej J Savol; Pratul K Agarwal; Chakra S Chennubhotla
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10.  Simultaneous Discovery of Rare and Common Segment Variants.

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  9 in total

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5.  Detecting Multiple Change Points Using Adaptive Regression Splines With Application to Neural Recordings.

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Journal:  Front Neuroinform       Date:  2018-10-04       Impact factor: 4.081

6.  Detection of Side Chain Rearrangements Mediating the Motions of Transmembrane Helices in Molecular Dynamics Simulations of G Protein-Coupled Receptors.

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7.  How does a small molecule bind at a cryptic binding site?

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Review 8.  Decoding an Amino Acid Sequence to Extract Information on Protein Folding.

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Review 9.  Revealing Atomic-Level Mechanisms of Protein Allostery with Molecular Dynamics Simulations.

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  9 in total

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