Litcius/Paper detail

Visualizing the superfamily of metallo-β-lactamases through sequence similarity network neighborhood connectivity analysis

Javier González

2021Heliyon43 citationsDOIOpen Access PDF

Abstract

Protein sequence similarity networks (SSNs) constitute a convenient approach to analyze large polypeptide sequence datasets, and have been successfully applied to study a number of protein families over the past decade. SSN analysis is herein combined with traditional cladistic and phenetic phylogenetic analysis (respectively based on multiple sequence alignments and all-against-all three-dimensional protein structure comparisons) in order to assist the ancestral reconstruction and integrative revision of the superfamily of metallo-β-lactamases (MBLs). It is shown that only 198 out of 15,292 representative nodes contain at least one experimentally obtained protein structure in the Protein Data Bank or a manually annotated SwissProt entry, that is to say, only 1.3 % of the superfamily has been functionally and/or structurally characterized. Besides, neighborhood connectivity coloring, which measures local network interconnectivity, is introduced for detection of protein families within SSN clusters. This approach provides a clear picture of how many families remain unexplored in the superfamily, while most MBL research is heavily biased towards a few families. Further research is suggested in order to determine the SSN topological properties, which will be instrumental for the improvement of automated sequence annotation methods.

Topics & Concepts

SUPERFAMILYSimilarity (geometry)Phylogenetic treeSequence (biology)Computational biologyAnnotationInterconnectivityBiologyProtein familySequence alignmentProtein sequencingSequence analysisNetwork analysisEvolutionary biologyBioinformaticsGeneticsComputer sciencePeptide sequenceArtificial intelligenceGeneImage (mathematics)EngineeringElectrical engineeringMachine Learning in BioinformaticsProtein Structure and DynamicsGenomics and Phylogenetic Studies