Literature DB >> 24862950

De novo inference of protein function from coarse-grained dynamics.

Pratiti Bhadra1, Debnath Pal.   

Abstract

Inference of molecular function of proteins is the fundamental task in the quest for understanding cellular processes. The task is getting increasingly difficult with thousands of new proteins discovered each day. The difficulty arises primarily due to lack of high-throughput experimental technique for assessing protein molecular function, a lacunae that computational approaches are trying hard to fill. The latter too faces a major bottleneck in absence of clear evidence based on evolutionary information. Here we propose a de novo approach to annotate protein molecular function through structural dynamics match for a pair of segments from two dissimilar proteins, which may share even <10% sequence identity. To screen these matches, corresponding 1 µs coarse-grained (CG) molecular dynamics trajectories were used to compute normalized root-mean-square-fluctuation graphs and select mobile segments, which were, thereafter, matched for all pairs using unweighted three-dimensional autocorrelation vectors. Our in-house custom-built forcefield (FF), extensively validated against dynamics information obtained from experimental nuclear magnetic resonance data, was specifically used to generate the CG dynamics trajectories. The test for correspondence of dynamics-signature of protein segments and function revealed 87% true positive rate and 93.5% true negative rate, on a dataset of 60 experimentally validated proteins, including moonlighting proteins and those with novel functional motifs. A random test against 315 unique fold/function proteins for a negative test gave >99% true recall. A blind prediction on a novel protein appears consistent with additional evidences retrieved therein. This is the first proof-of-principle of generalized use of structural dynamics for inferring protein molecular function leveraging our custom-made CG FF, useful to all.
© 2014 Wiley Periodicals, Inc.

Keywords:  algorithm; autocorrelation vector; forcefield; function annotation; molecular dynamics

Mesh:

Substances:

Year:  2014        PMID: 24862950     DOI: 10.1002/prot.24609

Source DB:  PubMed          Journal:  Proteins        ISSN: 0887-3585


  2 in total

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Authors:  Alin Voskanian; Panagiotis Katsonis; Olivier Lichtarge; Vikas Pejaver; Predrag Radivojac; Sean D Mooney; Emidio Capriotti; Yana Bromberg; Yanran Wang; Max Miller; Pier Luigi Martelli; Castrense Savojardo; Giulia Babbi; Rita Casadio; Yue Cao; Yuanfei Sun; Yang Shen; Aditi Garg; Debnath Pal; Yao Yu; Chad D Huff; Sean V Tavtigian; Erin Young; Susan L Neuhausen; Elad Ziv; Lipika R Pal; Gaia Andreoletti; Steven E Brenner; Maricel G Kann
Journal:  Hum Mutat       Date:  2019-08-17       Impact factor: 4.700

  2 in total

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