Modular decomposition of protein structure using community detection
William P. Grant, Sebastian E. Ahnert

TL;DR
This paper introduces a novel method for automatically decomposing protein structures into functional subunits using community detection on amino acid networks, enabling better analysis and classification of proteins.
Contribution
The authors develop a network-based modular decomposition approach using Infomap, applied systematically to thousands of proteins, revealing new insights into protein topology and function.
Findings
Decomposition correlates with PFAM classifications
Identifies potential novel protein domains
Enables topology-based protein classification
Abstract
As the number of solved protein structures increases, the opportunities for meta-analysis of this dataset increase too. Protein structures are known to be formed of domains; structural and functional subunits that are often repeated across sets of proteins. These domains generally form compact, globular regions, and are therefore often easily identifiable by inspection, yet the problem of automatically fragmenting the protein into these compact substructures remains computationally challenging. Existing domain classification methods focus on finding subregions of protein structure that are conserved, rather than finding a decomposition which spans the full protein structure. However, such a decomposition would find ready application in coarse-graining molecular dynamics, analysing the protein's topology, in de novo protein design and in fitting electron microscopy maps. Here, we present…
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