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Accurate prediction of transition metal ion location via deep learning

View ORCID ProfileSimon L. Dürr, View ORCID ProfileAndrea Levy, View ORCID ProfileUrsula Rothlisberger
doi: https://doi.org/10.1101/2022.08.22.504853
Simon L. Dürr
1Laboratory of Computational Chemistry and Biochemistry, Institute of Chemical Sciences and Engineering, Swiss Federal Institute of Technology (EPFL) CH-1015 Lausanne, Switzerland
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Andrea Levy
1Laboratory of Computational Chemistry and Biochemistry, Institute of Chemical Sciences and Engineering, Swiss Federal Institute of Technology (EPFL) CH-1015 Lausanne, Switzerland
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Ursula Rothlisberger
1Laboratory of Computational Chemistry and Biochemistry, Institute of Chemical Sciences and Engineering, Swiss Federal Institute of Technology (EPFL) CH-1015 Lausanne, Switzerland
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Abstract

Metal ions are essential cofactors for many proteins. In fact, currently, about half of the structurally characterized proteins contain a metal ion. Metal ions play a crucial role for many applications such as enzyme design or design of protein-protein interactions because they are biologically abundant, tether to the protein using strong interactions, and have favorable catalytic properties e.g. as Lewis acid. Computational design of metalloproteins is however hampered by the complex electronic structure of many biologically relevant metals such as zinc that can often not be accurately described using a classical force field. In this work, we develop two tools - Metal3D (based on 3D convolutional neural networks) and Metal1D (solely based on geometric criteria) to improve the identification and localization of zinc and other metal ions in experimental and computationally predicted protein structures. Comparison with other currently available tools shows that Metal3D is the most accurate metal ion location predictor to date outperforming geometric predictors including Metal1D by a wide margin using a single structure as input. Metal3D outputs a confidence metric for each predicted site and works on proteins with few homologes in the protein data bank. The predicted metal ion locations for Metal3D are within 0.70 ± 0.64 Å of the experimental locations with half of the sites below 0.5 Å. Metal3D predicts a global metal density that can be used for annotation of structures predicted using e.g. AlphaFold2 and a per residue metal density that can be used in protein design workflows for the location of suitable metal binding sites and rotamer sampling to create novel metalloproteins. Metal3D is available as easy to use webapp, notebook or commandline interface.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • Github: lcbc-epfl/metal-site-prediction

    Webapp: hf.space/simonduerr/metal3d

    Interactive manuscript: lcbc-epfl.github.io/metal-site-prediction

  • https://lcbc-epfl.github.io/metal-site-prediction/

  • https://github.com/lcbc-epfl/metal-site-prediction

  • https://huggingface.co/spaces/simonduerr/metal3d

  • https://zenodo.org/record/7015850

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted August 22, 2022.
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Accurate prediction of transition metal ion location via deep learning
Simon L. Dürr, Andrea Levy, Ursula Rothlisberger
bioRxiv 2022.08.22.504853; doi: https://doi.org/10.1101/2022.08.22.504853
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Accurate prediction of transition metal ion location via deep learning
Simon L. Dürr, Andrea Levy, Ursula Rothlisberger
bioRxiv 2022.08.22.504853; doi: https://doi.org/10.1101/2022.08.22.504853

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