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Embeddings from deep learning transfer GO annotations beyond homology

View ORCID ProfileMaria Littmann, View ORCID ProfileMichael Heinzinger, View ORCID ProfileChristian Dallago, Tobias Olenyi, View ORCID ProfileBurkhard Rost
doi: https://doi.org/10.1101/2020.09.04.282814
Maria Littmann
1TUM (Technical University of Munich) Department of Informatics, Bioinformatics & Computational Biology - i12, Boltzmannstr. 3, 85748 Garching/Munich, Germany
2TUM Graduate School, Center of Doctoral Studies in Informatics and its Applications (CeDoSIA), Boltzmannstr. 11, 85748 Garching, Germany
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  • For correspondence: littmann{at}rostlab.org assistant{at}rostlab.org
Michael Heinzinger
1TUM (Technical University of Munich) Department of Informatics, Bioinformatics & Computational Biology - i12, Boltzmannstr. 3, 85748 Garching/Munich, Germany
2TUM Graduate School, Center of Doctoral Studies in Informatics and its Applications (CeDoSIA), Boltzmannstr. 11, 85748 Garching, Germany
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Christian Dallago
1TUM (Technical University of Munich) Department of Informatics, Bioinformatics & Computational Biology - i12, Boltzmannstr. 3, 85748 Garching/Munich, Germany
2TUM Graduate School, Center of Doctoral Studies in Informatics and its Applications (CeDoSIA), Boltzmannstr. 11, 85748 Garching, Germany
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Tobias Olenyi
1TUM (Technical University of Munich) Department of Informatics, Bioinformatics & Computational Biology - i12, Boltzmannstr. 3, 85748 Garching/Munich, Germany
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Burkhard Rost
1TUM (Technical University of Munich) Department of Informatics, Bioinformatics & Computational Biology - i12, Boltzmannstr. 3, 85748 Garching/Munich, Germany
3Institute for Advanced Study (TUM-IAS), Lichtenbergstr. 2a, 85748 Garching/Munich, Germany & TUM School of Life Sciences Weihenstephan (TUM-WZW), Alte Akademie 8, Freising, Germany; Department of Biochemistry and Molecular Biophysics, Columbia University, 701 West, 168th Street, New York, NY 10032, USA
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Abstract

Knowing protein function is crucial to advance molecular and medical biology, yet experimental function annotations through the Gene Ontology (GO) exist for fewer than 0.5% of all known proteins. Computational methods bridge this sequence-annotation gap typically through homology-based annotation transfer by identifying sequence-similar proteins with known function or through prediction methods using evolutionary information. Here, we propose predicting GO terms through annotation transfer based on proximity of proteins in the SeqVec embedding rather than in sequence space. These embeddings originate from deep learned language models (LMs) for protein sequences (SeqVec) transferring the knowledge gained from predicting the next amino acid in 33 million protein sequences. Replicating the conditions of CAFA3, our method reaches an Fmax of 37±2%, 50±3%, and 57±2% for BPO, MFO, and CCO, respectively. Numerically, this appears close to the top ten CAFA3 methods. When restricting the annotation transfer to proteins with <20% pairwise sequence identity to the query, performance drops (Fmax BPO 33±2%, MFO 43±3%, CCO 53±2%); this still outperforms naïve sequence-based transfer. Preliminary results from CAFA4 appear to confirm these findings. Overall, this new concept is likely to change the annotation of proteins, in particular for proteins from smaller families or proteins with intrinsically disordered regions.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • https://github.com/Rostlab/goPredSim

  • https://embed.protein.properties/

  • Abbreviations used

    BERT
    Bidirectional Encoder Representations from Transformers (particular deep learning language model)
    BP(O)
    biological process (ontology) from GO
    CAFA
    Critical Assessment of protein Function Annotation algorithms
    CC(O)
    cellular component (ontology) from GO
    ELMo
    Embeddings from Language Models
    GO
    gene ontology
    GOA
    Gene Ontology Annotation
    k-NN
    k-nearest neighbor
    LK
    limited-knowledge
    LM
    language model
    LSTMs
    Long-Short-Term-Memory cells
    M
    million
    MF(O)
    molecular function (ontology) from GO
    NK
    no-knowledge
    PIDE
    percentage pairwise sequence identity
    RI
    reliability index
    RMSD
    Root-mean-square deviation
  • 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-NC-ND 4.0 International license.
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    Embeddings from deep learning transfer GO annotations beyond homology
    Maria Littmann, Michael Heinzinger, Christian Dallago, Tobias Olenyi, Burkhard Rost
    bioRxiv 2020.09.04.282814; doi: https://doi.org/10.1101/2020.09.04.282814
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    Embeddings from deep learning transfer GO annotations beyond homology
    Maria Littmann, Michael Heinzinger, Christian Dallago, Tobias Olenyi, Burkhard Rost
    bioRxiv 2020.09.04.282814; doi: https://doi.org/10.1101/2020.09.04.282814

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