A structural biology community assessment of AlphaFold 2 applications

Mehmet Akdel(Wageningen University & Research), Douglas E. V. Pires(The University of Melbourne), Eduard Porta‐Pardo(Barcelona Supercomputing Center), Jürgen Jänes(European Bioinformatics Institute), Arthur O. Zalevsky(Institute of Bioorganic Chemistry), Bálint Mészáros(European Molecular Biology Laboratory), Patrick Bryant(Science for Life Laboratory), Lydia L. Good(University of Copenhagen), Roman A. Laskowski(European Bioinformatics Institute), Gabriele Pozzati(Science for Life Laboratory), Aditi Shenoy(Science for Life Laboratory), Wensi Zhu(Science for Life Laboratory), Petras J. Kundrotas(Science for Life Laboratory), Victoria Ruiz‐Serra(Barcelona Supercomputing Center), Carlos H. M. Rodrigues(The University of Melbourne), Alistair S. Dunham(European Bioinformatics Institute), David F. Burke(European Bioinformatics Institute), Neera Borkakoti(European Bioinformatics Institute), Sameer Velankar(European Bioinformatics Institute), Adam Frost(University of California, San Francisco), Kresten Lindorff‐Larsen(University of Copenhagen), Alfonso Valencia(Barcelona Supercomputing Center), Sergey Ovchinnikov(Harvard University), Janani Durairaj(University of Basel), David B. Ascher(The University of Melbourne), Janet M. Thornton(European Bioinformatics Institute), Norman E. Davey(Institute of Cancer Research), Amelie Stein(University of Copenhagen), Arne Elofsson(Science for Life Laboratory), Tristan I. Croll(University of Cambridge), Pedro Beltrão(European Bioinformatics Institute)
bioRxiv (Cold Spring Harbor Laboratory)
September 26, 2021
Cited by 143Open Access
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Abstract

Abstract Most proteins fold into 3D structures that determine how they function and orchestrate the biological processes of the cell. Recent developments in computational methods have led to protein structure predictions that have reached the accuracy of experimentally determined models. While this has been independently verified, the implementation of these methods across structural biology applications remains to be tested. Here, we evaluate the use of AlphaFold 2 (AF2) predictions in the study of characteristic structural elements; the impact of missense variants; function and ligand binding site predictions; modelling of interactions; and modelling of experimental structural data. For 11 proteomes, an average of 25% additional residues can be confidently modelled when compared to homology modelling, identifying structural features rarely seen in the PDB. AF2-based predictions of protein disorder and protein complexes surpass state-of-the-art tools and AF2 models can be used across diverse applications equally well compared to experimentally determined structures, when the confidence metrics are critically considered. In summary, we find that these advances are likely to have a transformative impact in structural biology and broader life science research.


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