Applying and improving <scp>AlphaFold</scp> at <scp>CASP14</scp>

John Jumper(Google DeepMind (United Kingdom)), Richard Evans(Google DeepMind (United Kingdom)), Alexander Pritzel(Google DeepMind (United Kingdom)), Tim Green(Google DeepMind (United Kingdom)), Michael Figurnov(Google DeepMind (United Kingdom)), Olaf Ronneberger(Google DeepMind (United Kingdom)), Kathryn Tunyasuvunakool(Google DeepMind (United Kingdom)), Russ Bates(Google DeepMind (United Kingdom)), Augustin Žídek(Google DeepMind (United Kingdom)), Anna Potapenko(Google DeepMind (United Kingdom)), Alex Bridgland(Google DeepMind (United Kingdom)), Clemens Meyer(Google DeepMind (United Kingdom)), Simon Köhl(Google DeepMind (United Kingdom)), Andrew J. Ballard(Google DeepMind (United Kingdom)), Andrew Cowie(Google DeepMind (United Kingdom)), Bernardino Romera‐Paredes(Google DeepMind (United Kingdom)), Stanislav Nikolov(Google DeepMind (United Kingdom)), Rishub Jain(Google DeepMind (United Kingdom)), Jonas Adler(Google DeepMind (United Kingdom)), Trevor Back(Google DeepMind (United Kingdom)), Stig Petersen(Google DeepMind (United Kingdom)), David Reiman(Google DeepMind (United Kingdom)), Ellen Clancy(Google DeepMind (United Kingdom)), Michał Zieliński(Google DeepMind (United Kingdom)), Martin Steinegger(Seoul National University), Michalina Pacholska(Google DeepMind (United Kingdom)), Tamas Berghammer(Google DeepMind (United Kingdom)), David Silver(Google DeepMind (United Kingdom)), Oriol Vinyals(Google DeepMind (United Kingdom)), Andrew Senior(Google DeepMind (United Kingdom)), Koray Kavukcuoglu(Google DeepMind (United Kingdom)), Pushmeet Kohli(Google DeepMind (United Kingdom)), Demis Hassabis(Google DeepMind (United Kingdom))
Proteins Structure Function and Bioinformatics
October 4, 2021
Cited by 419Open Access
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Abstract

Abstract We describe the operation and improvement of AlphaFold, the system that was entered by the team AlphaFold2 to the “human” category in the 14th Critical Assessment of Protein Structure Prediction (CASP14). The AlphaFold system entered in CASP14 is entirely different to the one entered in CASP13. It used a novel end‐to‐end deep neural network trained to produce protein structures from amino acid sequence, multiple sequence alignments, and homologous proteins. In the assessors' ranking by summed z scores (&gt;2.0), AlphaFold scored 244.0 compared to 90.8 by the next best group. The predictions made by AlphaFold had a median domain GDT_TS of 92.4; this is the first time that this level of average accuracy has been achieved during CASP, especially on the more difficult Free Modeling targets, and represents a significant improvement in the state of the art in protein structure prediction. We reported how AlphaFold was run as a human team during CASP14 and improved such that it now achieves an equivalent level of performance without intervention, opening the door to highly accurate large‐scale structure prediction.


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