Literature DB >> 34042467

Component Parts of Bacteriophage Virions Accurately Defined by a Machine-Learning Approach Built on Evolutionary Features.

Tze Y Thung1,2,3, Murray E White1,2,3, Wei Dai1,2,4, Jonathan J Wilksch1,2,3, Rebecca S Bamert1,2,3, Andrea Rocker1,2, Christopher J Stubenrauch1,2,3, Daniel Williams1,2,3, Cheng Huang5,6,7, Ralf Schittelhelm5,6,7, Jeremy J Barr3,8, Eleanor Jameson9, Sheena McGowan1,2,3, Yanju Zhang4, Jiawei Wang1,2,3, Rhys A Dunstan1,2,3, Trevor Lithgow1,2,3.   

Abstract

Antimicrobial resistance (AMR) continues to evolve as a major threat to human health, and new strategies are required for the treatment of AMR infections. Bacteriophages (phages) that kill bacterial pathogens are being identified for use in phage therapies, with the intention to apply these bactericidal viruses directly into the infection sites in bespoke phage cocktails. Despite the great unsampled phage diversity for this purpose, an issue hampering the roll out of phage therapy is the poor quality annotation of many of the phage genomes, particularly for those from infrequently sampled environmental sources. We developed a computational tool called STEP3 to use the "evolutionary features" that can be recognized in genome sequences of diverse phages. These features, when integrated into an ensemble framework, achieved a stable and robust prediction performance when benchmarked against other prediction tools using phages from diverse sources. Validation of the prediction accuracy of STEP3 was conducted with high-resolution mass spectrometry analysis of two novel phages, isolated from a watercourse in the Southern Hemisphere. STEP3 provides a robust computational approach to distinguish specific and universal features in phages to improve the quality of phage cocktails and is available for use at http://step3.erc.monash.edu/. IMPORTANCE In response to the global problem of antimicrobial resistance, there are moves to use bacteriophages (phages) as therapeutic agents. Selecting which phages will be effective therapeutics relies on interpreting features contributing to shelf-life and applicability to diagnosed infections. However, the protein components of the phage virions that dictate these properties vary so much in sequence that best estimates suggest failure to recognize up to 90% of them. We have utilized this diversity in evolutionary features as an advantage, to apply machine learning for prediction accuracy for diverse components in phage virions. We benchmark this new tool showing the accurate recognition and evaluation of phage component parts using genome sequence data of phages from undersampled environments, where the richest diversity of phage still lies.

Entities:  

Keywords:  Klebsiella; antimicrobial resistance; artificial intelligence; bacteriophage; bacteriophage therapy; bacteriophages; machine learning; phage therapy; virion structure

Year:  2021        PMID: 34042467     DOI: 10.1128/mSystems.00242-21

Source DB:  PubMed          Journal:  mSystems        ISSN: 2379-5077            Impact factor:   6.496


  2 in total

1.  PncsHub: a platform for annotating and analyzing non-classically secreted proteins in Gram-positive bacteria.

Authors:  Wei Dai; Jiahui Li; Qi Li; Jiasheng Cai; Jianzhong Su; Christopher Stubenrauch; Jiawei Wang
Journal:  Nucleic Acids Res       Date:  2022-01-07       Impact factor: 16.971

2.  Mechanistic Insights into the Capsule-Targeting Depolymerase from a Klebsiella pneumoniae Bacteriophage.

Authors:  Rhys A Dunstan; Rebecca S Bamert; Matthew J Belousoff; Francesca L Short; Christopher K Barlow; Derek J Pickard; Jonathan J Wilksch; Ralf B Schittenhelm; Richard A Strugnell; Gordon Dougan; Trevor Lithgow
Journal:  Microbiol Spectr       Date:  2021-08-25
  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.