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Deeplasmid: Deep learning accurately separates plasmids from bacterial chromosomes
Nucleic Acids Research
  • William B. Andreopoulos, San Jose State University
  • Alexander M. Geller, Hebrew University of Jerusalem
  • Miriam Lucke, Hebrew University of Jerusalem
  • Jan Balewski, National Energy Research Scientific Computing Center (NERSC)
  • Alicia Clum, United States Department of Energy
  • Natalia N. Ivanova, United States Department of Energy
  • Asaf Levy, Hebrew University of Jerusalem
Publication Date
2-22-2022
Document Type
Article
DOI
10.1093/nar/gkab1115
Abstract

Plasmids are mobile genetic elements that play a key role in microbial ecology and evolution by mediating horizontal transfer of important genes, such as antimicrobial resistance genes. Many microbial genomes have been sequenced by short read sequencers and have resulted in a mix of contigs that derive from plasmids or chromosomes. New tools that accurately identify plasmids are needed to elucidate new plasmid-borne genes of high biological importance. We have developed Deeplasmid, a deep learning tool for distinguishing plasmids from bacterial chromosomes based on the DNA sequence and its encoded biological data. It requires as input only assembled sequences generated by any sequencing platform and assembly algorithm and its runtime scales linearly with the number of assembled sequences. Deeplasmid achieves an AUC-ROC of over 89%, and it was more accurate than five other plasmid classification methods. Finally, as a proof of concept, we used Deeplasmid to predict new plasmids in the fish pathogen Yersinia ruckeri ATCC 29473 that has no annotated plasmids. Deeplasmid predicted with high reliability that a long assembled contig is part of a plasmid. Using long read sequencing we indeed validated the existence of a 102 kb long plasmid, demonstrating Deeplasmid's ability to detect novel plasmids.

Creative Commons License
Creative Commons Attribution 4.0
Citation Information
William B. Andreopoulos, Alexander M. Geller, Miriam Lucke, Jan Balewski, et al.. "Deeplasmid: Deep learning accurately separates plasmids from bacterial chromosomes" Nucleic Acids Research Vol. 50 Iss. 3 (2022) p. E17
Available at: http://works.bepress.com/william-andreopoulos/44/