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Feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets

Background: Antibiotics are often prescribed empirically to treat infection syndromes before causative bacteria and their susceptibility to antibiotics are identified. Guidelines on empiric antibiotic prescribing are key to effective treatment of infection syndromes, and need to be informed by likel...

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Autores principales: Leclerc, Quentin J., Naylor, Nichola R., Aiken, Alexander M., Coll, Francesc, Knight, Gwenan M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: F1000 Research Limited 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7327722/
https://www.ncbi.nlm.nih.gov/pubmed/32656364
http://dx.doi.org/10.12688/wellcomeopenres.15477.2
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author Leclerc, Quentin J.
Naylor, Nichola R.
Aiken, Alexander M.
Coll, Francesc
Knight, Gwenan M.
author_facet Leclerc, Quentin J.
Naylor, Nichola R.
Aiken, Alexander M.
Coll, Francesc
Knight, Gwenan M.
author_sort Leclerc, Quentin J.
collection PubMed
description Background: Antibiotics are often prescribed empirically to treat infection syndromes before causative bacteria and their susceptibility to antibiotics are identified. Guidelines on empiric antibiotic prescribing are key to effective treatment of infection syndromes, and need to be informed by likely bacterial aetiology and antibiotic resistance patterns. We aimed to create a clinically-relevant composite index of antibiotic resistance for common infection syndromes to inform recommendations at the national level. Methods: To create our index, we used open-access antimicrobial resistance (AMR) surveillance datasets, including the ECDC Surveillance Atlas, CDDEP ResistanceMap, WHO GLASS and the newly-available Pfizer ATLAS dataset. We integrated these with data on aetiology of common infection syndromes, existing empiric prescribing guidelines, and pricing and availability of antibiotics. Results:  The ATLAS dataset covered many more bacterial species (287) and antibiotics (52) than other datasets (ranges = 8-11 and 16-32 respectively), but had a similar number of samples per country per year. Using these data, we were able to make empiric prescribing recommendations for bloodstream infection, pneumonia and cellulitis/skin abscess in up to 44 countries. There was insufficient data to make national-level recommendations for the other six syndromes investigated. Results are presented in an interactive web app, where users can visualise underlying resistance proportions to first-line empiric antibiotics for infection syndromes and countries of interest. Conclusions: We found that whilst the creation of a composite resistance index for empiric antibiotic therapy was technically feasible, the ATLAS dataset in its current form can only inform on a limited number of infection syndromes. Other open-access AMR surveillance datasets are largely limited to bloodstream infection specimens and cannot directly inform treatment of other syndromes. With improving availability of international AMR data and better understanding of infection aetiology, this approach may prove useful for informing empiric prescribing decisions in settings with limited local AMR surveillance data
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spelling pubmed-73277222020-07-10 Feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets Leclerc, Quentin J. Naylor, Nichola R. Aiken, Alexander M. Coll, Francesc Knight, Gwenan M. Wellcome Open Res Research Article Background: Antibiotics are often prescribed empirically to treat infection syndromes before causative bacteria and their susceptibility to antibiotics are identified. Guidelines on empiric antibiotic prescribing are key to effective treatment of infection syndromes, and need to be informed by likely bacterial aetiology and antibiotic resistance patterns. We aimed to create a clinically-relevant composite index of antibiotic resistance for common infection syndromes to inform recommendations at the national level. Methods: To create our index, we used open-access antimicrobial resistance (AMR) surveillance datasets, including the ECDC Surveillance Atlas, CDDEP ResistanceMap, WHO GLASS and the newly-available Pfizer ATLAS dataset. We integrated these with data on aetiology of common infection syndromes, existing empiric prescribing guidelines, and pricing and availability of antibiotics. Results:  The ATLAS dataset covered many more bacterial species (287) and antibiotics (52) than other datasets (ranges = 8-11 and 16-32 respectively), but had a similar number of samples per country per year. Using these data, we were able to make empiric prescribing recommendations for bloodstream infection, pneumonia and cellulitis/skin abscess in up to 44 countries. There was insufficient data to make national-level recommendations for the other six syndromes investigated. Results are presented in an interactive web app, where users can visualise underlying resistance proportions to first-line empiric antibiotics for infection syndromes and countries of interest. Conclusions: We found that whilst the creation of a composite resistance index for empiric antibiotic therapy was technically feasible, the ATLAS dataset in its current form can only inform on a limited number of infection syndromes. Other open-access AMR surveillance datasets are largely limited to bloodstream infection specimens and cannot directly inform treatment of other syndromes. With improving availability of international AMR data and better understanding of infection aetiology, this approach may prove useful for informing empiric prescribing decisions in settings with limited local AMR surveillance data F1000 Research Limited 2020-06-24 /pmc/articles/PMC7327722/ /pubmed/32656364 http://dx.doi.org/10.12688/wellcomeopenres.15477.2 Text en Copyright: © 2020 Leclerc QJ et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Leclerc, Quentin J.
Naylor, Nichola R.
Aiken, Alexander M.
Coll, Francesc
Knight, Gwenan M.
Feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets
title Feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets
title_full Feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets
title_fullStr Feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets
title_full_unstemmed Feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets
title_short Feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets
title_sort feasibility of informing syndrome-level empiric antibiotic recommendations using publicly available antibiotic resistance datasets
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7327722/
https://www.ncbi.nlm.nih.gov/pubmed/32656364
http://dx.doi.org/10.12688/wellcomeopenres.15477.2
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