4.5 Article

Connected Component Analysis of Dynamical Perturbation Contact Networks

Journal

JOURNAL OF PHYSICAL CHEMISTRY B
Volume 127, Issue 35, Pages 7571-7580

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jpcb.3c04592

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This paper proposes a connected component analysis (CCA) approach for analyzing protein dynamical perturbation contact networks (DPCNs). The study demonstrates that CCA outperforms clustering methods in capturing allosteric signal propagation in protein graphs, and reduces the size of DPCNs while providing connected components that describe the propagation of the signal from the effector to the active sites of the protein.
Describing protein dynamical networks through amino acid contacts is a powerful way to analyze complex biomolecular systems. However, due to the size of the systems, identifying the relevant features of protein-weighted graphs can be a difficult task. To address this issue, we present the connected component analysis (CCA) approach that allows for fast, robust, and unbiased analysis of dynamical perturbation contact networks (DPCNs). We first illustrate the CCA method as applied to a prototypical allosteric enzyme, the imidazoleglycerol phosphate synthase (IGPS) enzyme from Thermotoga maritima bacteria. This approach was shown to outperform the clustering methods applied to DPCNs, which could not capture the propagation of the allosteric signal within the protein graph. On the other hand, CCA reduced the DPCN size, providing connected components that nicely describe the allosteric propagation of the signal from the effector to the active sites of the protein. By applying the CCA to the IGPS enzyme in different conditions, i.e., at high temperature and from another organism (yeast IGPS), and to a different enzyme, i.e., a protein kinase, we demonstrated how CCA of DPCNs is an effective and transferable tool that facilitates the analysis of protein-weighted networks.

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