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Phylodynamic Inference of Bacterial Outbreak Parameters Using Nanopore Sequencing

Nanopore sequencing and phylodynamic modeling have been used to reconstruct the transmission dynamics of viral epidemics, but their application to bacterial pathogens has remained challenging. Cost-effective bacterial genome sequencing and variant calling on nanopore platforms would greatly enhance...

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Autores principales: Steinig, Eike, Duchêne, Sebastián, Aglua, Izzard, Greenhill, Andrew, Ford, Rebecca, Yoannes, Mition, Jaworski, Jan, Drekore, Jimmy, Urakoko, Bohu, Poka, Harry, Wurr, Clive, Ebos, Eri, Nangen, David, Manning, Laurens, Laman, Moses, Firth, Cadhla, Smith, Simon, Pomat, William, Tong, Steven Y C, Coin, Lachlan, McBryde, Emma, Horwood, Paul
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8963328/
https://www.ncbi.nlm.nih.gov/pubmed/35171290
http://dx.doi.org/10.1093/molbev/msac040
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author Steinig, Eike
Duchêne, Sebastián
Aglua, Izzard
Greenhill, Andrew
Ford, Rebecca
Yoannes, Mition
Jaworski, Jan
Drekore, Jimmy
Urakoko, Bohu
Poka, Harry
Wurr, Clive
Ebos, Eri
Nangen, David
Manning, Laurens
Laman, Moses
Firth, Cadhla
Smith, Simon
Pomat, William
Tong, Steven Y C
Coin, Lachlan
McBryde, Emma
Horwood, Paul
author_facet Steinig, Eike
Duchêne, Sebastián
Aglua, Izzard
Greenhill, Andrew
Ford, Rebecca
Yoannes, Mition
Jaworski, Jan
Drekore, Jimmy
Urakoko, Bohu
Poka, Harry
Wurr, Clive
Ebos, Eri
Nangen, David
Manning, Laurens
Laman, Moses
Firth, Cadhla
Smith, Simon
Pomat, William
Tong, Steven Y C
Coin, Lachlan
McBryde, Emma
Horwood, Paul
author_sort Steinig, Eike
collection PubMed
description Nanopore sequencing and phylodynamic modeling have been used to reconstruct the transmission dynamics of viral epidemics, but their application to bacterial pathogens has remained challenging. Cost-effective bacterial genome sequencing and variant calling on nanopore platforms would greatly enhance surveillance and outbreak response in communities without access to sequencing infrastructure. Here, we adapt random forest models for single nucleotide polymorphism (SNP) polishing developed by Sanderson and colleagues (2020. High precision Neisseria gonorrhoeae variant and antimicrobial resistance calling from metagenomic nanopore sequencing. Genome Res. 30(9):1354–1363) to estimate divergence and effective reproduction numbers (R(e)) of two methicillin-resistant Staphylococcus aureus (MRSA) outbreaks from remote communities in Far North Queensland and Papua New Guinea (PNG; n = 159). Successive barcoded panels of S. aureus isolates (2 × 12 per MinION) sequenced at low coverage (>5× to 10×) provided sufficient data to accurately infer genotypes with high recall when compared with Illumina references. Random forest models achieved high resolution on ST93 outbreak sequence types (>90% accuracy and precision) and enabled phylodynamic inference of epidemiological parameters using birth–death skyline models. Our method reproduced phylogenetic topology, origin of the outbreaks, and indications of epidemic growth (R(e) > 1). Nextflow pipelines implement SNP polisher training, evaluation, and outbreak alignments, enabling reconstruction of within-lineage transmission dynamics for infection control of bacterial disease outbreaks on portable nanopore platforms. Our study shows that nanopore technology can be used for bacterial outbreak reconstruction at competitive costs, providing opportunities for infection control in hospitals and communities without access to sequencing infrastructure, such as in remote northern Australia and PNG.
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spelling pubmed-89633282022-03-29 Phylodynamic Inference of Bacterial Outbreak Parameters Using Nanopore Sequencing Steinig, Eike Duchêne, Sebastián Aglua, Izzard Greenhill, Andrew Ford, Rebecca Yoannes, Mition Jaworski, Jan Drekore, Jimmy Urakoko, Bohu Poka, Harry Wurr, Clive Ebos, Eri Nangen, David Manning, Laurens Laman, Moses Firth, Cadhla Smith, Simon Pomat, William Tong, Steven Y C Coin, Lachlan McBryde, Emma Horwood, Paul Mol Biol Evol Article Nanopore sequencing and phylodynamic modeling have been used to reconstruct the transmission dynamics of viral epidemics, but their application to bacterial pathogens has remained challenging. Cost-effective bacterial genome sequencing and variant calling on nanopore platforms would greatly enhance surveillance and outbreak response in communities without access to sequencing infrastructure. Here, we adapt random forest models for single nucleotide polymorphism (SNP) polishing developed by Sanderson and colleagues (2020. High precision Neisseria gonorrhoeae variant and antimicrobial resistance calling from metagenomic nanopore sequencing. Genome Res. 30(9):1354–1363) to estimate divergence and effective reproduction numbers (R(e)) of two methicillin-resistant Staphylococcus aureus (MRSA) outbreaks from remote communities in Far North Queensland and Papua New Guinea (PNG; n = 159). Successive barcoded panels of S. aureus isolates (2 × 12 per MinION) sequenced at low coverage (>5× to 10×) provided sufficient data to accurately infer genotypes with high recall when compared with Illumina references. Random forest models achieved high resolution on ST93 outbreak sequence types (>90% accuracy and precision) and enabled phylodynamic inference of epidemiological parameters using birth–death skyline models. Our method reproduced phylogenetic topology, origin of the outbreaks, and indications of epidemic growth (R(e) > 1). Nextflow pipelines implement SNP polisher training, evaluation, and outbreak alignments, enabling reconstruction of within-lineage transmission dynamics for infection control of bacterial disease outbreaks on portable nanopore platforms. Our study shows that nanopore technology can be used for bacterial outbreak reconstruction at competitive costs, providing opportunities for infection control in hospitals and communities without access to sequencing infrastructure, such as in remote northern Australia and PNG. Oxford University Press 2022-02-16 /pmc/articles/PMC8963328/ /pubmed/35171290 http://dx.doi.org/10.1093/molbev/msac040 Text en © The Author(s) 2022. Published by Oxford University Press on behalf of the Society for Molecular Biology and Evolution. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Article
Steinig, Eike
Duchêne, Sebastián
Aglua, Izzard
Greenhill, Andrew
Ford, Rebecca
Yoannes, Mition
Jaworski, Jan
Drekore, Jimmy
Urakoko, Bohu
Poka, Harry
Wurr, Clive
Ebos, Eri
Nangen, David
Manning, Laurens
Laman, Moses
Firth, Cadhla
Smith, Simon
Pomat, William
Tong, Steven Y C
Coin, Lachlan
McBryde, Emma
Horwood, Paul
Phylodynamic Inference of Bacterial Outbreak Parameters Using Nanopore Sequencing
title Phylodynamic Inference of Bacterial Outbreak Parameters Using Nanopore Sequencing
title_full Phylodynamic Inference of Bacterial Outbreak Parameters Using Nanopore Sequencing
title_fullStr Phylodynamic Inference of Bacterial Outbreak Parameters Using Nanopore Sequencing
title_full_unstemmed Phylodynamic Inference of Bacterial Outbreak Parameters Using Nanopore Sequencing
title_short Phylodynamic Inference of Bacterial Outbreak Parameters Using Nanopore Sequencing
title_sort phylodynamic inference of bacterial outbreak parameters using nanopore sequencing
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8963328/
https://www.ncbi.nlm.nih.gov/pubmed/35171290
http://dx.doi.org/10.1093/molbev/msac040
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