EPI-Net One Health reporting guideline for antimicrobial consumption and resistance surveillance data: a Delphi approach
Creators
- Nithya Babu Rajendran
- Fabiana Arieti
- Carla Alejandra Mena-Benítez
- Liliana Galia
- Maela Tebon
- Julio Alvarez
- Beryl Primrose Gladstone
- Lucie Collineau
- Giulia De Angelis
- Raquel Duro
- William Gaze
- Siri Göpel
- Souha S. Kanj
- Annemarie Käsbohrer
- Direk Limmathurotsakul
- Estibaliz Lopez de Abechuco
- Elena Mazzolini
- Nico T. Mutters
- Maria Diletta Pezzani
- Elisabeth Presterl
- Hanna Renk
- Jesús Rodríguez-Baño
- Oana S˘andulescu
- Federico Scali
- Robert Skov
- Thirumalaisamy P. Velavan
- Cuong Vuong
- Evelina Tacconelli
- on behalf of the EPI-Net One Health consensus working group
Description
Strategic and standardised approaches to analysis and reporting of surveillance data are essential to inform antimicrobial resistance (AMR) mitigation measures, including antibiotic policies. Targeted guidance on linking full-scale AMR and antimicrobial consumption (AMC)/antimicrobial residues (AR) surveillance data from the human, animal, and environmental sectors is currently needed. This paper describes the initiative whereby a multidisciplinary panel of experts (56 from 20 countries—52 high income, 4 upper middle or lower income), representing all three sectors, elaborated proposals for structuring and reporting full-scale AMR and AMC/AR surveillance data across the three sectors. An evidence-supported, modified Delphi approach was adopted to reach consensus among the experts for dissemination frequency, language, and overall structure of reporting; core elements and metrics for AMC/AR data; core elements and metrics for AMR data. The recommendations can support multisectoral national and regional plans on antimicrobials policy to reduce resistance rates applying a One Health approach.
[This article was written with the contribution of the One Health EJP WP5 Science to Policy Translation]
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