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Discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study

Antimicrobial resistance (AMR) poses a threat to public health. Clinical microbiology laboratories typically rely on culturing bacteria for antimicrobial-susceptibility testing (AST). As the implementation costs and technical barriers fall, whole-genome sequencing (WGS) has emerged as a ‘one-stop’ t...

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Autores principales: Doyle, Ronan M., O'Sullivan, Denise M., Aller, Sean D., Bruchmann, Sebastian, Clark, Taane, Coello Pelegrin, Andreu, Cormican, Martin, Diez Benavente, Ernest, Ellington, Matthew J., McGrath, Elaine, Motro, Yair, Phuong Thuy Nguyen, Thi, Phelan, Jody, Shaw, Liam P., Stabler, Richard A., van Belkum, Alex, van Dorp, Lucy, Woodford, Neil, Moran-Gilad, Jacob, Huggett, Jim F., Harris, Kathryn A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Microbiology Society 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7067211/
https://www.ncbi.nlm.nih.gov/pubmed/32048983
http://dx.doi.org/10.1099/mgen.0.000335
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author Doyle, Ronan M.
O'Sullivan, Denise M.
Aller, Sean D.
Bruchmann, Sebastian
Clark, Taane
Coello Pelegrin, Andreu
Cormican, Martin
Diez Benavente, Ernest
Ellington, Matthew J.
McGrath, Elaine
Motro, Yair
Phuong Thuy Nguyen, Thi
Phelan, Jody
Shaw, Liam P.
Stabler, Richard A.
van Belkum, Alex
van Dorp, Lucy
Woodford, Neil
Moran-Gilad, Jacob
Huggett, Jim F.
Harris, Kathryn A.
author_facet Doyle, Ronan M.
O'Sullivan, Denise M.
Aller, Sean D.
Bruchmann, Sebastian
Clark, Taane
Coello Pelegrin, Andreu
Cormican, Martin
Diez Benavente, Ernest
Ellington, Matthew J.
McGrath, Elaine
Motro, Yair
Phuong Thuy Nguyen, Thi
Phelan, Jody
Shaw, Liam P.
Stabler, Richard A.
van Belkum, Alex
van Dorp, Lucy
Woodford, Neil
Moran-Gilad, Jacob
Huggett, Jim F.
Harris, Kathryn A.
author_sort Doyle, Ronan M.
collection PubMed
description Antimicrobial resistance (AMR) poses a threat to public health. Clinical microbiology laboratories typically rely on culturing bacteria for antimicrobial-susceptibility testing (AST). As the implementation costs and technical barriers fall, whole-genome sequencing (WGS) has emerged as a ‘one-stop’ test for epidemiological and predictive AST results. Few published comparisons exist for the myriad analytical pipelines used for predicting AMR. To address this, we performed an inter-laboratory study providing sets of participating researchers with identical short-read WGS data from clinical isolates, allowing us to assess the reproducibility of the bioinformatic prediction of AMR between participants, and identify problem cases and factors that lead to discordant results. We produced ten WGS datasets of varying quality from cultured carbapenem-resistant organisms obtained from clinical samples sequenced on either an Illumina NextSeq or HiSeq instrument. Nine participating teams (‘participants’) were provided these sequence data without any other contextual information. Each participant used their choice of pipeline to determine the species, the presence of resistance-associated genes, and to predict susceptibility or resistance to amikacin, gentamicin, ciprofloxacin and cefotaxime. We found participants predicted different numbers of AMR-associated genes and different gene variants from the same clinical samples. The quality of the sequence data, choice of bioinformatic pipeline and interpretation of the results all contributed to discordance between participants. Although much of the inaccurate gene variant annotation did not affect genotypic resistance predictions, we observed low specificity when compared to phenotypic AST results, but this improved in samples with higher read depths. Had the results been used to predict AST and guide treatment, a different antibiotic would have been recommended for each isolate by at least one participant. These challenges, at the final analytical stage of using WGS to predict AMR, suggest the need for refinements when using this technology in clinical settings. Comprehensive public resistance sequence databases, full recommendations on sequence data quality and standardization in the comparisons between genotype and resistance phenotypes will all play a fundamental role in the successful implementation of AST prediction using WGS in clinical microbiology laboratories.
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spelling pubmed-70672112020-03-17 Discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study Doyle, Ronan M. O'Sullivan, Denise M. Aller, Sean D. Bruchmann, Sebastian Clark, Taane Coello Pelegrin, Andreu Cormican, Martin Diez Benavente, Ernest Ellington, Matthew J. McGrath, Elaine Motro, Yair Phuong Thuy Nguyen, Thi Phelan, Jody Shaw, Liam P. Stabler, Richard A. van Belkum, Alex van Dorp, Lucy Woodford, Neil Moran-Gilad, Jacob Huggett, Jim F. Harris, Kathryn A. Microb Genom Research Article Antimicrobial resistance (AMR) poses a threat to public health. Clinical microbiology laboratories typically rely on culturing bacteria for antimicrobial-susceptibility testing (AST). As the implementation costs and technical barriers fall, whole-genome sequencing (WGS) has emerged as a ‘one-stop’ test for epidemiological and predictive AST results. Few published comparisons exist for the myriad analytical pipelines used for predicting AMR. To address this, we performed an inter-laboratory study providing sets of participating researchers with identical short-read WGS data from clinical isolates, allowing us to assess the reproducibility of the bioinformatic prediction of AMR between participants, and identify problem cases and factors that lead to discordant results. We produced ten WGS datasets of varying quality from cultured carbapenem-resistant organisms obtained from clinical samples sequenced on either an Illumina NextSeq or HiSeq instrument. Nine participating teams (‘participants’) were provided these sequence data without any other contextual information. Each participant used their choice of pipeline to determine the species, the presence of resistance-associated genes, and to predict susceptibility or resistance to amikacin, gentamicin, ciprofloxacin and cefotaxime. We found participants predicted different numbers of AMR-associated genes and different gene variants from the same clinical samples. The quality of the sequence data, choice of bioinformatic pipeline and interpretation of the results all contributed to discordance between participants. Although much of the inaccurate gene variant annotation did not affect genotypic resistance predictions, we observed low specificity when compared to phenotypic AST results, but this improved in samples with higher read depths. Had the results been used to predict AST and guide treatment, a different antibiotic would have been recommended for each isolate by at least one participant. These challenges, at the final analytical stage of using WGS to predict AMR, suggest the need for refinements when using this technology in clinical settings. Comprehensive public resistance sequence databases, full recommendations on sequence data quality and standardization in the comparisons between genotype and resistance phenotypes will all play a fundamental role in the successful implementation of AST prediction using WGS in clinical microbiology laboratories. Microbiology Society 2020-02-12 /pmc/articles/PMC7067211/ /pubmed/32048983 http://dx.doi.org/10.1099/mgen.0.000335 Text en © 2020 The Authors http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License.
spellingShingle Research Article
Doyle, Ronan M.
O'Sullivan, Denise M.
Aller, Sean D.
Bruchmann, Sebastian
Clark, Taane
Coello Pelegrin, Andreu
Cormican, Martin
Diez Benavente, Ernest
Ellington, Matthew J.
McGrath, Elaine
Motro, Yair
Phuong Thuy Nguyen, Thi
Phelan, Jody
Shaw, Liam P.
Stabler, Richard A.
van Belkum, Alex
van Dorp, Lucy
Woodford, Neil
Moran-Gilad, Jacob
Huggett, Jim F.
Harris, Kathryn A.
Discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study
title Discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study
title_full Discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study
title_fullStr Discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study
title_full_unstemmed Discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study
title_short Discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study
title_sort discordant bioinformatic predictions of antimicrobial resistance from whole-genome sequencing data of bacterial isolates: an inter-laboratory study
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7067211/
https://www.ncbi.nlm.nih.gov/pubmed/32048983
http://dx.doi.org/10.1099/mgen.0.000335
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