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1.
Protein Sci ; 33(8): e5112, 2024 Aug.
Article in English | MEDLINE | ID: mdl-39031445

ABSTRACT

The missense tolerance ratio (MTR) was developed as a novel approach to assess the deleteriousness of variants. Its three-dimensional successor, MTR3D, was demonstrated powerful at discriminating pathogenic from benign variants. However, its reliance on experimental structures and homologs limited its coverage of the proteome. We have now utilized AlphaFold2 models to develop MTR3D-AF2, which covers 89.31% of proteins and 85.39% of residues across the human proteome. This work has improved MTR3D's ability to distinguish clinically established pathogenic from benign variants. MTR3D-AF2 is freely available as an interactive web server at https://biosig.lab.uq.edu.au/mtr3daf2/.


Subject(s)
Mutation, Missense , Proteome , Humans , Proteome/chemistry , Proteome/genetics , Proteome/analysis , Proteome/metabolism , Software , Models, Molecular , Proteins/chemistry , Proteins/genetics , Proteins/metabolism , Databases, Protein
2.
Biomolecules ; 14(4)2024 Apr 19.
Article in English | MEDLINE | ID: mdl-38672513

ABSTRACT

Glycosylation, a crucial and the most common post-translational modification, coordinates a multitude of biological functions through the attachment of glycans to proteins and lipids. This process, predominantly governed by glycosyltransferases (GTs) and glycoside hydrolases (GHs), decides not only biomolecular functionality but also protein stability and solubility. Mutations in these enzymes have been implicated in a spectrum of diseases, prompting critical research into the structural and functional consequences of such genetic variations. This study compiles an extensive dataset from ClinVar and UniProt, providing a nuanced analysis of 2603 variants within 343 GT and GH genes. We conduct thorough MTR score analyses for the proteins with the most documented variants using MTR3D-AF2 via AlphaFold2 (AlphaFold v2.2.4) predicted protein structure, with the analyses indicating that pathogenic mutations frequently correlate with Beta Bridge secondary structures. Further, the calculation of the solvent accessibility score and variant visualisation show that pathogenic mutations exhibit reduced solvent accessibility, suggesting the mutated residues are likely buried and their localisation is within protein cores. We also find that pathogenic variants are often found proximal to active and binding sites, which may interfere with substrate interactions. We also incorporate computational predictions to assess the impact of these mutations on protein function, utilising tools such as mCSM to predict the destabilisation effect of variants. By identifying these critical regions that are prone to disease-associated mutations, our study opens avenues for designing small molecules or biologics that can modulate enzyme function or compensate for the loss of stability due to these mutations.


Subject(s)
Glycoside Hydrolases , Glycosyltransferases , Mutation , Humans , Glycoside Hydrolases/genetics , Glycoside Hydrolases/chemistry , Glycoside Hydrolases/metabolism , Glycosyltransferases/genetics , Glycosyltransferases/chemistry , Glycosyltransferases/metabolism , Glycosylation
3.
Curr Opin Pharmacol ; 74: 102427, 2024 02.
Article in English | MEDLINE | ID: mdl-38219398

ABSTRACT

This article investigates the role of recent advances in Artificial Intelligence (AI) to revolutionise the study of G protein-coupled receptors (GPCRs). AI has been applied to many areas of GPCR research, including the application of machine learning (ML) in GPCR classification, prediction of GPCR activation levels, modelling GPCR 3D structures and interactions, understanding G-protein selectivity, aiding elucidation of GPCRs structures, and drug design. Despite progress, challenges in predicting GPCR structures and addressing the complex nature of GPCRs remain, providing avenues for future research and development.


Subject(s)
Artificial Intelligence , Receptors, G-Protein-Coupled , Humans , Receptors, G-Protein-Coupled/chemistry , Machine Learning
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