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1.
Nature ; 630(8016): 493-500, 2024 Jun.
Article in English | MEDLINE | ID: mdl-38718835

ABSTRACT

The introduction of AlphaFold 21 has spurred a revolution in modelling the structure of proteins and their interactions, enabling a huge range of applications in protein modelling and design2-6. Here we describe our AlphaFold 3 model with a substantially updated diffusion-based architecture that is capable of predicting the joint structure of complexes including proteins, nucleic acids, small molecules, ions and modified residues. The new AlphaFold model demonstrates substantially improved accuracy over many previous specialized tools: far greater accuracy for protein-ligand interactions compared with state-of-the-art docking tools, much higher accuracy for protein-nucleic acid interactions compared with nucleic-acid-specific predictors and substantially higher antibody-antigen prediction accuracy compared with AlphaFold-Multimer v.2.37,8. Together, these results show that high-accuracy modelling across biomolecular space is possible within a single unified deep-learning framework.


Subject(s)
Deep Learning , Ligands , Models, Molecular , Proteins , Software , Humans , Antibodies/chemistry , Antibodies/metabolism , Antigens/metabolism , Antigens/chemistry , Deep Learning/standards , Ions/chemistry , Ions/metabolism , Molecular Docking Simulation , Nucleic Acids/chemistry , Nucleic Acids/metabolism , Protein Binding , Protein Conformation , Proteins/chemistry , Proteins/metabolism , Reproducibility of Results , Software/standards
2.
Nat Commun ; 15(1): 1906, 2024 Mar 19.
Article in English | MEDLINE | ID: mdl-38503774

ABSTRACT

Identifying key patterns of tactics implemented by rival teams, and developing effective responses, lies at the heart of modern football. However, doing so algorithmically remains an open research challenge. To address this unmet need, we propose TacticAI, an AI football tactics assistant developed and evaluated in close collaboration with domain experts from Liverpool FC. We focus on analysing corner kicks, as they offer coaches the most direct opportunities for interventions and improvements. TacticAI incorporates both a predictive and a generative component, allowing the coaches to effectively sample and explore alternative player setups for each corner kick routine and to select those with the highest predicted likelihood of success. We validate TacticAI on a number of relevant benchmark tasks: predicting receivers and shot attempts and recommending player position adjustments. The utility of TacticAI is validated by a qualitative study conducted with football domain experts at Liverpool FC. We show that TacticAI's model suggestions are not only indistinguishable from real tactics, but also favoured over existing tactics 90% of the time, and that TacticAI offers an effective corner kick retrieval system. TacticAI achieves these results despite the limited availability of gold-standard data, achieving data efficiency through geometric deep learning.


Subject(s)
Athletic Performance , Athletic Performance/physiology , Qualitative Research , Soccer
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