Literature DB >> 26592131

Distribution of Reciprocal of Interatomic Distances: A Fast Structural Metric.

Ting Zhou1, Amedeo Caflisch1.   

Abstract

We present a structural metric based on the Distribution of Reciprocal of Interatomic Distances (DRID) for evaluating geometrical similarity between two conformations of a molecule. A molecular conformation is described by a vector of 3N orientation-independent DRID descriptors where N is the number of molecular centroids, for example, the non-hydrogen atoms in all nonsymmetric groups of a peptide. For two real-world applications (pairwise comparison of snapshots from an explicit solvent simulation of a protease/peptide substrate complex and implicit solvent simulations of reversible folding of a 20-residue β-sheet peptide), the DRID-based metric is shown to be about 5 and 15 times faster than coordinate root-mean-square deviation (cRMSD) and distance root-mean-square deviation (dRMSD), respectively. A single core of a mainstream processor can perform about 10(8) DRID comparisons in one-half a minute. Importantly, the DRID metric has closer similarity to kinetic distance than does either cRMSD or dRMSD. Therefore, DRID is suitable for clustering molecular dynamics trajectories for kinetic analysis, for example, by Markov state models. Moreover, conformational space networks and free energy profiles derived by DRID-based clustering preserve the kinetic information.

Entities:  

Year:  2012        PMID: 26592131     DOI: 10.1021/ct3003145

Source DB:  PubMed          Journal:  J Chem Theory Comput        ISSN: 1549-9618            Impact factor:   6.006


  17 in total

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4.  Optimized parameter selection reveals trends in Markov state models for protein folding.

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5.  Perspective: Markov models for long-timescale biomolecular dynamics.

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8.  New insights into the folding of a β-sheet miniprotein in a reduced space of collective hydrogen bond variables: application to a hydrodynamic analysis of the folding flow.

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9.  The role of nucleobase interactions in RNA structure and dynamics.

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10.  Improvements in Markov State Model Construction Reveal Many Non-Native Interactions in the Folding of NTL9.

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Journal:  J Chem Theory Comput       Date:  2013-04-09       Impact factor: 6.006

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