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Interpretable detection of novel human viruses from genome sequencing data

View ORCID ProfileJakub M. Bartoszewicz, View ORCID ProfileAnja Seidel, View ORCID ProfileBernhard Y. Renard
doi: https://doi.org/10.1101/2020.01.29.925354
Jakub M. Bartoszewicz
1Bioinformatics (MF1), Department of Methodology and Research Infrastructure, Robert Koch Institute, Berlin, Germany
2Department of Mathematics and Computer Science, Free University of Berlin, Berlin, Germany
3Data Analytics and Computation Statistics, Hasso Plattner Institute for Digital Engineering, Potsdam, Brandenburg, Germany
4Digital Engineering Faculty, University of Postdam, Potsdam, Brandenburg, Germany
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  • For correspondence: jakub.bartoszewicz@hpi.de bernhard.renard@hpi.de
Anja Seidel
1Bioinformatics (MF1), Department of Methodology and Research Infrastructure, Robert Koch Institute, Berlin, Germany
2Department of Mathematics and Computer Science, Free University of Berlin, Berlin, Germany
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Bernhard Y. Renard
1Bioinformatics (MF1), Department of Methodology and Research Infrastructure, Robert Koch Institute, Berlin, Germany
3Data Analytics and Computation Statistics, Hasso Plattner Institute for Digital Engineering, Potsdam, Brandenburg, Germany
4Digital Engineering Faculty, University of Postdam, Potsdam, Brandenburg, Germany
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  • For correspondence: jakub.bartoszewicz@hpi.de bernhard.renard@hpi.de
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ABSTRACT

Viruses evolve extremely quickly, so reliable methods for viral host prediction are necessary to safeguard biosecurity and biosafety alike. Novel human-infecting viruses are difficult to detect with standard bioinformatics workflows. Here, we predict whether a virus can infect humans directly from next-generation sequencing reads. We show that deep neural architectures significantly outperform both shallow machine learning and standard, homology-based algorithms, cutting the error rates in half and generalizing to taxonomic units distant from those presented during training. Further, we develop a suite of interpretability tools and show that it can be applied also to other models beyond the host prediction task. We propose a new approach for convolutional filter visualization to disentangle the information content of each nucleotide from its contribution to the final classification decision. Nucleotide-resolution maps of the learned associations between pathogen genomes and the infectious phenotype can be used to detect regions of interest in novel agents, for example the SARS-CoV-2 coronavirus, unknown before it caused a COVID-19 pandemic in 2020. All methods presented here are implemented as easy-to-install packages enabling analysis of NGS datasets without requiring any deep learning skills, but also allowing advanced users to easily train and explain new models for genomics.

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. It is made available under a CC-BY-ND 4.0 International license.
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Posted October 12, 2020.
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Interpretable detection of novel human viruses from genome sequencing data
Jakub M. Bartoszewicz, Anja Seidel, Bernhard Y. Renard
bioRxiv 2020.01.29.925354; doi: https://doi.org/10.1101/2020.01.29.925354
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Interpretable detection of novel human viruses from genome sequencing data
Jakub M. Bartoszewicz, Anja Seidel, Bernhard Y. Renard
bioRxiv 2020.01.29.925354; doi: https://doi.org/10.1101/2020.01.29.925354

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