An agnostic analysis of the human AlphaFold2 proteome using local protein conformations
- PMID: 36417962
- DOI: 10.1016/j.biochi.2022.11.009
An agnostic analysis of the human AlphaFold2 proteome using local protein conformations
Abstract
Knowledge of the 3D structure of proteins is a valuable asset for understanding their precise biological mechanisms. However, the cost of production of 3D structures and experimental difficulties limit their obtaining. The proposal of 3D structural models is consequently an appealing alternative. The release of the AlphaFold Deep Learning approach has revolutionized the field. The recent near-complete human proteome proposal makes it possible to analyse large amounts of data and evaluate the results of the approach in greater depth. The 3D human proteome was thus analysed in light of the classic secondary structures, and many less-used protein local conformations (PolyProline II helices, type of γ-turns, of β-turns and of β-bulges, curvature of the helices, and a structural alphabet). Without questioning the global quality of the approach, this analysis highlights certain local conformations, which maybe poorly predicted and they could therefore be better addressed.
Keywords: Deep learning; Helix; Secondary structure; Sheet: turn; Structural alphabet: protein structure; polyproline II.
Copyright © 2022 Elsevier B.V. and Société Française de Biochimie et Biologie Moléculaire (SFBBM). All rights reserved.
Conflict of interest statement
Declaration of competing interest The author has no conflict of interest to declare.
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