MArVD2: a machine learning enhanced tool to discriminate between archaeal and bacterial viruses in viral datasets

Author:

Vik Dean12ORCID,Bolduc Benjamin12ORCID,Roux Simon3,Sun Christine L12,Pratama Akbar Adjie12ORCID,Krupovic Mart4ORCID,Sullivan Matthew B125

Affiliation:

1. Department of Microbiology, The Ohio State University , Columbus, OH 43210, USA

2. Center of Microbiome Science, The Ohio State University , Columbus, OH, USA

3. DOE Joint Genome Institute, Lawrence Berkeley National Laboratory , Berkeley, CA, USA

4. Archaeal Virology Unit, Institut Pasteur, Université Paris Cité, CNRS UMR6047 , Paris, France

5. Department of Civil, Environmental and Geodetic Engineering, The Ohio State University , Columbus, OH, USA

Abstract

Abstract Our knowledge of viral sequence space has exploded with advancing sequencing technologies and large-scale sampling and analytical efforts. Though archaea are important and abundant prokaryotes in many systems, our knowledge of archaeal viruses outside of extreme environments is limited. This largely stems from the lack of a robust, high-throughput, and systematic way to distinguish between bacterial and archaeal viruses in datasets of curated viruses. Here we upgrade our prior text-based tool (MArVD) via training and testing a random forest machine learning algorithm against a newly curated dataset of archaeal viruses. After optimization, MArVD2 presented a significant improvement over its predecessor in terms of scalability, usability, and flexibility, and will allow user-defined custom training datasets as archaeal virus discovery progresses. Benchmarking showed that a model trained with viral sequences from the hypersaline, marine, and hot spring environments correctly classified 85% of the archaeal viruses with a false detection rate below 2% using a random forest prediction threshold of 80% in a separate benchmarking dataset from the same habitats.

Funder

NSF | GEO | Division of Ocean Sciences

NSF | BIO | Division of Biological Infrastructure

DOE | SC | Biological and Environmental Research

DOE | Office of Science

Agence Nationale de la Recherche

Publisher

Oxford University Press (OUP)

Subject

General Medicine

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