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Extracting Dynamical Correlations and Identifying Key Residues for Allosteric Communication in Proteins by . | LitMetric

Extracting Dynamical Correlations and Identifying Key Residues for Allosteric Communication in Proteins by .

J Chem Inf Model

Unit of Architecture and Dynamics of Biological Macromolecules, Pasteur Institute, UMR 3528 CNRS, 25 Rue du Dr. Roux, 75015 Paris, France.

Published: October 2021

AI Article Synopsis

  • Extracting dynamical correlations and identifying key residues from protein models are crucial for understanding processes like ligand binding and protein interactions.* -
  • A new Python package has been developed to facilitate the calculation, visualization, and analysis of pairwise correlations in proteins, helping to pinpoint important residues and interactions.* -
  • The package (version 0.2.0) is openly available for installation via conda, pip, or as a Docker image, with its source code hosted on GitHub.*

Article Abstract

Extracting dynamical pairwise correlations and identifying key residues from large molecular dynamics trajectories or normal-mode analysis of coarse-grained models are important for explaining various processes like ligand binding, mutational effects, and long-distance interactions. Efficient and flexible tools to perform this task can provide new insights about residues involved in allosteric regulation and protein function. In addition, combining and comparing dynamical coupling information with sequence coevolution data can help to understand better protein function. To this aim, we developed a Python package called to calculate, visualize, and analyze pairwise correlations. In this way, the package aids to identify key residues and interactions in proteins. The source code of is available under LGPL version 3 at https://github.com/tekpinar/correlationplus. The current version of the package (0.2.0) can be installed with common installation methods like conda or pip in addition to source code installation. Moreover, docker images are also available for usage of the code without installation.

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Source
http://dx.doi.org/10.1021/acs.jcim.1c00742DOI Listing

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