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Ultrafast end-to-end protein structure prediction enables high-throughput exploration of uncharacterised proteins

View ORCID ProfileShaun M Kandathil, View ORCID ProfileJoe G Greener, View ORCID ProfileAndy M Lau, View ORCID ProfileDavid T Jones
doi: https://doi.org/10.1101/2020.11.27.401232
Shaun M Kandathil
Department of Computer Science, University College London, Gower Street, London, WC1E 6BT, United Kingdom
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Joe G Greener
Department of Computer Science, University College London, Gower Street, London, WC1E 6BT, United Kingdom
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Andy M Lau
Department of Computer Science, University College London, Gower Street, London, WC1E 6BT, United Kingdom
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David T Jones
Department of Computer Science, University College London, Gower Street, London, WC1E 6BT, United Kingdom
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  • ORCID record for David T Jones
  • For correspondence: d.t.jones{at}ucl.ac.uk
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Abstract

Deep learning-based prediction of protein structure usually begins by constructing a multiple sequence alignment (MSA) containing homologues of the target protein. The most successful approaches combine large feature sets derived from MSAs, and considerable computational effort is spent deriving these input features. We present a method that greatly reduces the amount of preprocessing required for a target MSA, while producing main chain coordinates as a direct output of a deep neural network. The network makes use of just three recurrent networks and a stack of residual convolutional layers, making the predictor very fast to run, and easy to install and use. Our approach constructs a directly learned representation of the sequences in an MSA, starting from a one-hot encoding of the sequences. When supplemented with an approximate precision matrix, the learned representation can be used to produce structural models of comparable or greater accuracy as compared to our original DMPfold method, while requiring less than a second to produce a typical model. This level of accuracy and speed allows very large-scale 3-D modelling of proteins on minimal hardware, and we demonstrate that by producing models for over 1.3 million uncharacterized regions of proteins extracted from the BFD sequence clusters. After constructing an initial set of approximate models, we select a confident subset of over 30,000 models for further refinement and analysis, revealing putative novel protein folds. We also provide updated models for over 5,000 Pfam families studied in the original DMPfold paper.

Significance Statement We present a deep learning-based predictor of protein tertiary structure that uses only a multiple sequence alignment (MSA) as input. To date, most emphasis has been on the accuracy of such deep learning methods, but here we show that accurate structure prediction is also possible in very short timeframes (a few hundred milliseconds). In our method, the backbone coordinates of the target protein are output directly from the neural network, which makes the predictor extremely fast. As a demonstration, we generated over 1.3 million models of uncharacterised proteins in the BFD, a large sequence database including many metagenomic sequences. Our results showcase the utility of ultrafast and accurate tertiary structure prediction in rapidly exploring the “dark space” of proteins.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • Updated to focus on end-to-end version of DMPfold2. The method adds iterative updates to the output coordinates. Applied DMPfold2 to uncharacterised regions of the BFD, and Pfam families.

  • https://dx.doi.org/10.5522/04/14979990

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 July 20, 2021.
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Ultrafast end-to-end protein structure prediction enables high-throughput exploration of uncharacterised proteins
Shaun M Kandathil, Joe G Greener, Andy M Lau, David T Jones
bioRxiv 2020.11.27.401232; doi: https://doi.org/10.1101/2020.11.27.401232
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Ultrafast end-to-end protein structure prediction enables high-throughput exploration of uncharacterised proteins
Shaun M Kandathil, Joe G Greener, Andy M Lau, David T Jones
bioRxiv 2020.11.27.401232; doi: https://doi.org/10.1101/2020.11.27.401232

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