Genomics for antimicrobial resistance surveillance to support infection prevention and control in health-care facilities

Integration of genomic technologies into routine antimicrobial resistance (AMR) surveillance in health-care facilities has the potential to generate rapid, actionable information for patient management and inform infection prevention and control measures in near real time. However, substantial chall...

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Veröffentlicht in:The Lancet. Microbe 2023-12, Vol.4 (12), p.e1040-e1046
Hauptverfasser: Jauneikaite, Elita, Baker, Kate S, Nunn, Jamie G, Midega, Janet T, Hsu, Li Yang, Singh, Shweta R, Halpin, Alison L, Hopkins, Katie L, Price, James R, Srikantiah, Padmini, Egyir, Beverly, Okeke, Iruka N, Holt, Kathryn E, Peacock, Sharon J, Feasey, Nicholas A
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Sprache:eng
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Zusammenfassung:Integration of genomic technologies into routine antimicrobial resistance (AMR) surveillance in health-care facilities has the potential to generate rapid, actionable information for patient management and inform infection prevention and control measures in near real time. However, substantial challenges limit the implementation of genomics for AMR surveillance in clinical settings. Through a workshop series and online consultation, international experts from across the AMR and pathogen genomics fields convened to review the evidence base underpinning the use of genomics for AMR surveillance in a range of settings. Here, we summarise the identified challenges and potential benefits of genomic AMR surveillance in health-care settings, and outline the recommendations of the working group to realise this potential. These recommendations include the definition of viable and cost-effective use cases for genomic AMR surveillance, strengthening training competencies (particularly in bioinformatics), and building capacity at local, national, and regional levels using hub and spoke models.
ISSN:2666-5247
2666-5247
DOI:10.1016/S2666-5247(23)00282-3