sciensano.be
Publié sur sciensano.be (https://www.sciensano.be)

Accueil > Biblio > BenchAMRking: a Galaxy-based platform for illustrating the major issues associated with current antimicrobial resistance (AMR) gene prediction workflows.

BenchAMRking: a Galaxy-based platform for illustrating the major issues associated with current antimicrobial resistance (AMR) gene prediction workflows.

Surveillance de la santé et des maladies  

Peer reviewed scientific article

Anglais

SCIENSANO

Auteurs

Strepis, Nikolaos [1]; Dollee, Dennis [2]; Vrins, Donny [3]; Kevin Vanneste [4]; Bert Bogaerts [5]; Carrillo, Catherine [6]; Bharat, Amrita [7]; Horan, Kristy [8]; Sherry, Norelle L [9]; Seemann, Torsten [10]; Howden, Benjamin P [11]; Hiltemann, Saskia [12]; Chindelevitch, Leonid [13]; Stubbs, Andrew P [14]; Hays, John P [15]

Mots-clés

  1. Anti-Bacterial Agents [16]
  2. bacteria [17]
  3. Computational Biology [18]
  4. Drug Resistance, Bacterial [19]
  5. Genes, Bacterial [20]
  6. SOFTWARE [21]
  7. whole genome sequencing [22]
  8. Processus [23]

Résumé:

BACKGROUND: The Joint Programming Initiative on Antimicrobial Resistance (JPIAMR) networks ‘Seq4AMR’ and ‘B2B2B AMR Dx’ were established to promote collaboration between microbial whole genome sequencing (WGS) and antimicrobial resistance (AMR) stakeholders. A key topic discussed was the frequent variability in results obtained between different microbial WGS-related AMR gene prediction workflows. Further, comparative benchmarking studies are difficult to perform due to differences in AMR gene prediction accuracy and a lack of agreement in the naming of AMR genes (semantic conformity) for t…
Lire la suite

Résumé

BACKGROUND: The Joint Programming Initiative on Antimicrobial Resistance (JPIAMR) networks 'Seq4AMR' and 'B2B2B AMR Dx' were established to promote collaboration between microbial whole genome sequencing (WGS) and antimicrobial resistance (AMR) stakeholders. A key topic discussed was the frequent variability in results obtained between different microbial WGS-related AMR gene prediction workflows. Further, comparative benchmarking studies are difficult to perform due to differences in AMR gene prediction accuracy and a lack of agreement in the naming of AMR genes (semantic conformity) for the results obtained. To illustrate this problem, and as a capacity-building exercise to encourage stakeholder involvement, a comparative Galaxy-based BenchAMRking platform was developed and validated using datasets from bacterial species with PCR-verified AMR gene presence or absence information from abritAMR.

RESULTS: The Galaxy-based BenchAMRking platform ( https://erasmusmc-bioinformatics.github.io/benchAMRking/ ) specifically focusses on the steps involved in identifying AMR genes from raw reads and sequence assemblies. The platform currently comprises four well-characterised and published workflows that have previously been used to identify AMR genes using WGS data from several different bacterial species. These four workflows, which include the ISO certified abritAMR workflow, make use of different computational tools (or tool versions), and interrogate different AMR gene sequence databases. By utilising their own data, users can investigate potential AMR gene-calling problems associated with their own in silico workflows/protocols, with a potential use case outlined in this publication.

CONCLUSIONS: BenchAMRking is a Galaxy-based comparison platform where users can access, visualise, and explore some of the major discrepancies associated with AMR gene prediction from microbial WGS data.

Associated health topics:

Surveillance de la santé et des maladies [24]

Source URL:https://www.sciensano.be/fr/biblio/benchamrking-a-galaxy-based-platform-illustrating-major-issues-associated-current-antimicrobial

Liens
[1] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192514&f%5Bsearch%5D=Strepis%2C%20Nikolaos [2] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192515&f%5Bsearch%5D=Dollee%2C%20Dennis [3] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192516&f%5Bsearch%5D=Vrins%2C%20Donny [4] https://www.sciensano.be/fr/people/kevin-vanneste/biblio [5] https://www.sciensano.be/fr/people/bert-bogaerts/biblio [6] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192517&f%5Bsearch%5D=Carrillo%2C%20Catherine [7] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192518&f%5Bsearch%5D=Bharat%2C%20Amrita [8] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192519&f%5Bsearch%5D=Horan%2C%20Kristy [9] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192520&f%5Bsearch%5D=Sherry%2C%20Norelle%20L [10] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192521&f%5Bsearch%5D=Seemann%2C%20Torsten [11] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192522&f%5Bsearch%5D=Howden%2C%20Benjamin%20P [12] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192523&f%5Bsearch%5D=Hiltemann%2C%20Saskia [13] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192524&f%5Bsearch%5D=Chindelevitch%2C%20Leonid [14] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192525&f%5Bsearch%5D=Stubbs%2C%20Andrew%20P [15] https://www.sciensano.be/fr/biblio?f%5Bauthor%5D=192526&f%5Bsearch%5D=Hays%2C%20John%20P [16] https://www.sciensano.be/fr/biblio?f%5Bkeyword%5D=2355&f%5Bsearch%5D=Anti-Bacterial%20Agents [17] https://www.sciensano.be/fr/biblio?f%5Bkeyword%5D=1260&f%5Bsearch%5D=bacteria [18] https://www.sciensano.be/fr/biblio?f%5Bkeyword%5D=17646&f%5Bsearch%5D=Computational%20Biology [19] https://www.sciensano.be/fr/biblio?f%5Bkeyword%5D=29646&f%5Bsearch%5D=Drug%20Resistance%2C%20Bacterial [20] https://www.sciensano.be/fr/biblio?f%5Bkeyword%5D=29415&f%5Bsearch%5D=Genes%2C%20Bacterial [21] https://www.sciensano.be/fr/biblio?f%5Bkeyword%5D=1740&f%5Bsearch%5D=SOFTWARE [22] https://www.sciensano.be/fr/biblio?f%5Bkeyword%5D=1146&f%5Bsearch%5D=whole%20genome%20sequencing [23] https://www.sciensano.be/fr/biblio?f%5Bkeyword%5D=29073&f%5Bsearch%5D=Processus [24] https://www.sciensano.be/fr/sujets-sante/surveillance-de-la-sante-et-des-maladies