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Machine Learning for the Identification of Viral Attachment Machinery from Respiratory Virus Sequences

Stepan Demidkin, Maïa Shwarts, View ORCID ProfileArijit Chakravarty, View ORCID ProfileDiane Joseph-McCarthy
doi: https://doi.org/10.1101/2022.01.25.477734
Stepan Demidkin
1Department of Biomedical Engineering, Boston University, Boston, MA USA
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Maïa Shwarts
1Department of Biomedical Engineering, Boston University, Boston, MA USA
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Arijit Chakravarty
2Fractal Therapeutics, Cambridge, MA USA
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Diane Joseph-McCarthy
1Department of Biomedical Engineering, Boston University, Boston, MA USA
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  • For correspondence: djosephm@bu.edu
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Abstract

At the outset of an emergent viral respiratory pandemic, sequence data is among the first molecular information available. As viral attachment machinery is a key target for therapeutic and prophylactic interventions, rapid identification of viral “spike” proteins from sequence can significantly accelerate the development of medical countermeasures. For five families of respiratory viruses, covering the vast majority of airborne and droplet-transmitted diseases, host cell entry is mediated by the binding of viral surface glycoproteins that interact with a host cell receptor. In this report it is shown that sequence data for an unknown virus belonging to one of the five families above provides sufficient information to identify the protein(s) responsible for viral attachment and to permit an assignment of viral family. Random forest models that take as input a set of respiratory viral sequences can classify the protein as “spike” vs. non-spike based on predicted secondary structure elements alone (with 97.8 % correctly classified) or in combination with N-glycosylation related features (with 98.1 % correctly classified). In addition, a Random Forest model developed using the same dataset and only secondary structural elements was able to predict the respiratory virus family of each protein sequence correctly 89.0 % of the time. Models were validated through 10-fold cross-validation as well as bootstrapping. Surprisingly, we showed that secondary structural element and N-glycosylation features were sufficient for model generation. The ability to rapidly identify viral attachment machinery directly from sequence data holds the potential to accelerate the design of medical countermeasures for future pandemics.

Competing Interest Statement

The authors have declared no competing interest.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. All rights reserved. No reuse allowed without permission.
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Posted January 27, 2022.
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Machine Learning for the Identification of Viral Attachment Machinery from Respiratory Virus Sequences
Stepan Demidkin, Maïa Shwarts, Arijit Chakravarty, Diane Joseph-McCarthy
bioRxiv 2022.01.25.477734; doi: https://doi.org/10.1101/2022.01.25.477734
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Machine Learning for the Identification of Viral Attachment Machinery from Respiratory Virus Sequences
Stepan Demidkin, Maïa Shwarts, Arijit Chakravarty, Diane Joseph-McCarthy
bioRxiv 2022.01.25.477734; doi: https://doi.org/10.1101/2022.01.25.477734

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