Literature DB >> 32308439

Monitoring Antimicrobial Resistance and Drug Usage in the Human and Livestock Sector and Foodborne Antimicrobial Resistance in Six European Countries.

Octavio Mesa Varona1, Katerina Chaintarli2, Berit Muller-Pebody3, Muna F Anjum2, Tim Eckmanns4, Madelaine Norström5, Ides Boone4, Bernd-Alois Tenhagen1.   

Abstract

INTRODUCTION: Antimicrobial resistance (AMR), associated with antimicrobial use (AMU), is a major public concern. Surveillance and monitoring systems are essential to assess and control the trends in AMU and AMR. However, differences in the surveillance and monitoring systems between countries and sectors make comparisons challenging. The purpose of this article is to describe all surveillance and monitoring systems for AMU and AMR in the human and livestock sectors, as well as national surveillance and monitoring systems for AMR in food, in six European countries (Spain, Germany, France, the Netherlands, the United Kingdom and Norway) as a baseline for developing suggestions to overcome current limitations in comparing AMU and AMR data.
METHODS: A literature search in 2018 was performed to identify relevant peer-reviewed articles and national and European grey reports as well as AMU/AMR databases.
RESULTS: Comparison of AMU and AMR systems across the six countries showed a lack of standardization and harmonization with different AMU data sources (prescription vs sales data) and units of AMU and AMR being used. The AMR data varied by sample type (clinical/non-clinical), laboratory method (disk diffusion, microdilution, and VITEK, among others), data type, ie quantitative (minimum inhibition concentration (MIC) in mg/L/inhibition zone (IZ) in mm) vs qualitative data (susceptible-intermediate-resistant (SIR)), the standards used (EUCAST/CLSI among others), and/or the evaluation criteria adopted (epidemiological or clinical). DISCUSSION: A One Health approach for AMU and AMR requires harmonization in various aspects between human, animal and food systems at national and international levels. Additionally, some overlap between systems of AMU and AMR has been encountered. Efforts should be made to improve standardization and harmonization and allow more meaningful analyses of AMR and AMU surveillance data under a One Health approach.
© 2020 Mesa Varona et al.

Entities:  

Keywords:  AMR; AMU; food-producing animals; harmonization; monitoring; surveillance

Year:  2020        PMID: 32308439      PMCID: PMC7140725          DOI: 10.2147/IDR.S237038

Source DB:  PubMed          Journal:  Infect Drug Resist        ISSN: 1178-6973            Impact factor:   4.003


Introduction

Antimicrobial use (AMU) in the last few decades is the main trigger for antimicrobial resistance (AMR) in humans and animals. For example, broad use of fluoroquinolones, effective antimicrobials against gram-positive and gram-negative bacteria, in humans and some animal populations has caused high resistance rates.1 Antibiotics like colistin, that have issues with side effects but still have low resistance rates, have been reconsidered as a last-line drug due to a lack of alternative antimicrobials for multidrug-resistant Gram-negative bacteria.2 This global threat includes both pathogenic and commensal bacteria. In order to tackle the AMR crisis, several global strategies have been developed such as the Global Action Plan (GAP) of the World Health Organization (WHO),3 the new European One Health Action Plan against AMR4 and the Central Asian and Eastern European Surveillance of Antimicrobial Resistance network (CAESAR).5 Surveillance6 and monitoring6 systems of AMU and AMR in humans and animals are essential to assess and subsequently control the global trends in the use of antimicrobials and antimicrobial susceptibility patterns of bacteria in different populations.7 Using a One Health approach, zoonotic and indicator bacteria are of particular relevance. Surveillance and monitoring systems are one of the five strategies of the GAP. However, even when the proper implementation of these systems enables the collection of reliable and good quality data, not all countries worldwide have surveillance and monitoring systems in place so it is not possible to perform a global comparison. Several projects address the systems' evaluation of AMU and AMR in human, livestock and food sectors in Europe and also across European countries. As an illustration, the Ecology from Farm to Fork Of microbial drug Resistance and Transmission (EFFORT) project8 is a relevant work collecting AMU and AMR data from broilers, pigs, turkeys, veal calves, rainbow trout and companion animals at farm level across different EU countries. Additionally, the Antibiotic Resistance Dynamics: the influence of geographic origin and management systems on resistance gene flows within humans, animals and the environment (ARDIG)9 project gathers AMU and AMR data from the human and animal sectors together with AMR data collection from food at European level. Likewise, another crucial work carried out at global level and in the animal sector is the Network on quantification of veterinary Antimicrobial usage at herd level and Analysis, CommunicaTion and benchmarkING to improve responsible usage (AACTING).10 The latter initiative has generated a review of existing systems that collect AMU data at farm level. This report follows on the work carried out in the ARDIG project and provides a review of AMU and AMR surveillance and monitoring systems, adopting a One Health approach, currently available in six European countries that perform routine surveillance, as well as systems at a European level. It will make recommendations regarding the harmonization of surveillance and monitoring systems across Europe with a view to help overcome current limitations in comparing AMU and AMR data captured by these systems from different sectors and countries within Europe.

Materials and Methods

In this manuscript, we gathered key features of surveillance and monitoring systems on AMU and AMR in livestock and humans as well as AMR systems in food from Spain, Germany, France, the Netherlands, Norway, the United Kingdom (UK) together with its regions and Europe between 2014 and 2017. A literature search in 2018 was performed using PubMed to identify relevant peer-reviewed articles and the internet to identify national and European grey reports as well as AMU/AMR databases. The terms used for the search are “antimicrobial resistance”, “antimicrobial use”, “Spain”, “Germany”, “UK”, “United Kingdom”, “Scotland”, “Wales”, “England”, “Northern Ireland”, “Netherlands”, “France”, “Norway”, “Europe”, “food”, “human”, “animal”, “surveillance”, “system” and “monitoring”. Additionally, a questionnaire asking for detailed information on any available AMR and AMU database in each country was developed and sent to all collaborating institutes for completion (). A detailed systems' description by country and sector has been performed in order to detect and define the lack of harmonization and standardization on AMU and AMR.

Results

Antimicrobial Resistance Surveillance and Monitoring Systems

A general overview on AMR monitoring and surveillance systems is provided in Table 1. The variables collected in the table are the country/region, database name, data type, data origin, unit, interpretation standard, evaluation criteria, public data, published report, report language, submitting data to Europe, laboratory method and set-up year of the database. Additionally, Figures 1–3, showing AMR systems reporting and not reporting to EU per country and sector, are provided.
Table 1

Features of AMR Databases in Human, Food and Animal Sectors by Region

Country/RegionData TypeData OriginDatabaseUnitInterpretation StandardInterpretation ApproachPublic ReportLanguage of the ReportCommunication to EULabor MethodYear System Developed
GermanyCClinicalARSMIC/SIREUCAST-CLSI-DINCBPInteractive database: ARS (https://ars.rki.de/)GermanNoSeveral2008
GermanyHClinicalARSMIC/SIREUCAST-CLSI-DINCBPInteractive database: ARS (https://ars.rki.de/)GermanEARS-NETSeveral2008
Germany (Lower saxony)CClinicalARMINMIC/SIREUCAST-CLSICBPInteractive report: ARMIN (https://www.nlga.niedersachsen.de/infektionsschutz/armin_resistenzentwicklung/armin_interaktiv/)GermanNoSeveral2006
Germany (Lower saxony)HClinicalARMINMIC/SIREUCAST-CLSICBPInteractive report: ARMIN (https://www.nlga.niedersachsen.de/infektionsschutz/armin_resistenzentwicklung/armin_interaktiv/)GermanNoSeveral2006
GermanyHClinicalMRSA-KISSSRNot definedCBPMRSA-KISS Referenzdaten (https://www.nrz-hygiene.de/surveillance/kiss/mrsa-kiss/)GermanNoSeveral2006
GermanyHClinicalSARI-KISSSREUCAST-CLSI-DINCBPSARI Resistenzdaten (https://eu-burden.info/sari/ab.php)GermanNoSeveral2000
GermanyHClinicalICU-KISS and OP-KISSSRNot definedCBPReferenzdaten (https://www.nrz-hygiene.de/surveillance/kiss/op-kiss/)GermanNoSeveral1997
GermanyH/CClinicalPEGMIC/SIREUCASTCBPDatabase: https://www.p-e-g.org/resistenz/database/Reports: https://www.p-e-g.org/berichte-der-studien.htmlGermanNoMicrodilution1975
GermanyH/CClinicalBARDAMIC/SIREUCASTCBPNoNoNoMicrodilution2019
GermanyAClinicalGERMVETMICCLSICBPGERMAP (http://www.p-e-g.org/econtext/germap)GERMVET (https://www.bvl.bund.de/SiteGlobals/Forms/Suche/Servicesuche_Formular.html?nn=1461338&resourceId=1412490&input_=10035804&pageLocale=de&templateQueryString=germ-vet&submit=Suchen)English and GermanGermanNoMicrodilution2001
GermanyANon-ClinicalZOMOMICEUCASTECOFFsZOMO (https://www.bvl.bund.de/DE/08_PresseInfothek/04_Publikationen/03_Berichte/infothek_berichte_node.html#doc1401838bodyText4)GermanEFSAMicrodilution2009
GermanyFNon-ClinicalZOMOMICEUCASTECOFFsZOMO (https://www.bvl.bund.de/DE/08_PresseInfothek/04_Publikationen/03_Berichte/infothek_berichte_node.html#doc1401838bodyText4)GermanEFSAMicrodilution2009
SpainHClinicalEARS-NET-ES (ISCIII)MIC/SIR/IZEUCAST-CLSICBPJIACRA Espana (http://www.resistenciaantibioticos.es/en/system/files/field/files/informe_jiacra-espana.pdf?file=1&type=node&id=410&force=0)SpanishEARS-NETSeveral1986
SpainAClinicalVAVMICEUCAST-CLSICBPReport VAV (2005) (https://www.visavet.es/data/VAV2005.pdf)Spanish and EnglishNoDisk diffusion/Microdilution1997
SpainANon-ClinicalVAVMICEUCASTECOFFsJIACRA Espana (http://www.resistenciaantibioticos.es/en/system/files/field/files/informe_jiacra-espana.pdf?file=1&type=node&id=410&force=0)Report VAV (2005) (https://www.visavet.es/data/VAV2005.pdf)Simplified report on zoonoses and antimicrobial resistance of broilers and turkeys for poutry professionals (https://www.mapa.gob.es/ca/ganaderia/temas/sanidad-A-higiene-ganadera/sanidad-A/zoonosis-resistencias-antimicrobianas/resistencias_antimicrobianas.aspx)Simplified report on zoonoses and antimicrobial resistance of laying hens for professionals in the laying poultry sector (https://www.mapa.gob.es/ca/ganaderia/temas/sanidad-A-higiene-ganadera/sanidad-A/zoonosis-resistencias-antimicrobianas/resistencias_antimicrobianas.aspx)EFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)SpanishSpanish and EnglishSpanishSpanishEnglishEFSADisk diffusion/Microdilution1998
SpainFNon-ClinicalVAVMICEUCASTECOFFsReport VAV (2005) (https://www.visavet.es/data/VAV2005.pdf)Simplified report on zoonoses and antimicrobial resistance of broilers and turkeys for poutry professionals (https://www.mapa.gob.es/ca/ganaderia/temas/sanidad-A-higiene-ganadera/sanidad-A/zoonosis-resistencias-antimicrobianas/resistencias_antimicrobianas.aspx) Simplified report on zoonoses and antimicrobial resistance of laying hens for professionals in the laying poultry sector (https://www.mapa.gob.es/ca/ganaderia/temas/sanidad-A-higiene-ganadera/sanidad-A/zoonosis-resistencias-antimicrobianas/resistencias_antimicrobianas.aspx)EFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)Spanish and EnglishSpanishSpanishEnglishEFSADisk diffusion/Microdilution2000
England/Northern IrelandCClinicalSGSSSIREUCAST-BSAC-CLSICBPESPAUR (https://assets.publishing.service.gov.uk/government/uploads/system/uploads/attachment_data/file/759975/ESPAUR_2018_report.pdf)EnglishNoSeveral2014
England/Northern IrelandHClinicalSGSSSIREUCAST-BSAC-CLSICBPESPAUR (https://assets.publishing.service.gov.uk/government/uploads/system/uploads/attachment_data/file/759975/ESPAUR_2018_report.pdf)EnglishEARS-NETSeveral2014
England/WalesAClinicalAPHA VET PATHOGENSSR/MIC (IZ)BSAC (EUCAST)CBPUK-VARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)EnglishNoDisk diffusion1972
UKANon-ClinicalEU HARMONIZED SURVEILLANCESIR/MICEUCASTCBP/ECOFFsUK-VARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)EFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)EnglishEnglishEFSAMicrodilution2014
UKFNon-ClinicalEU HARMONIZED SURVEILLANCESIR/MICEUCASTCBP/ECOFFsUK-VARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)EFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)EnglishEnglishEFSAMicrodilution2014
ScotlandHClinicalECOSSSIREUCASTCBPSOONAR (https://www.hps.scot.nhs.uk/web-resources-container/scottish-one-health-antimicrobial-use-and-antimicrobial-resistance-in-2017/)EnglishNoSeveral2013
ScotlandHClinicalECOSSSIREUCASTCBPSOONAR (https://www.hps.scot.nhs.uk/web-resources-container/scottish-one-health-antimicrobial-use-and-antimicrobial-resistance-in-2017/)EnglishEARS-NETSeveral2013
Northern IrelandAClinicalAFBISIRCLSICBPUK-VARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)All-Island Animal Disease Surveillance Report (https://www.afbini.gov.uk/publications/all-island-animal-disease-surveillance-report-2016)EnglishNoDisk diffusion2010
ScotlandAClinicalSRUCSIRBSACCBPSOONAR (https://www.hps.scot.nhs.uk/web-resources-container/scottish-one-health-antimicrobial-use-and-antimicrobial-resistance-in-2017/)EnglishNoBSAC disk diffusion2016
WalesCClinicalDatastoreSIREUCAST (2012)CBPAntibacterial Resistance in Wales (http://www.wales.nhs.uk/sitesplus/888/page/94136)EnglishNoSeveral1999
WalesHClinicalDatastoreSIREUCAST (2012)CBPAntibacterial Resistance in Wales (http://www.wales.nhs.uk/sitesplus/888/page/94136)EnglishEARS-NETSeveral1999
Northern IrelandCClinicalCoSurvSIREUCASTCBPSurveillance of Antimicrobial Use and Resistance in Northern Ireland (http://www.publichealth.hscni.net/sites/default/files/AMR_annual_report_final_0.pdf)EnglishNoNot defined2009
Northern IrelandHClinicalCoSurvSIREUCASTCBPSurveillance of Antimicrobial Use and Resistance in Northern Ireland (http://www.publichealth.hscni.net/sites/default/files/AMR_annual_report_final_0.pdf)EnglishEARS-NETNot defined2009
UK and IrelandCClinicalBSACMIC and SIREUCAST-BSACCBPBSAC (http://www.bsacsurv.org/)EnglishNoDisk diffusion1999
UK and IrelandHClinicalBSACMIC and SIREUCAST-BSACCBPBSAC (http://www.bsacsurv.org/)EnglishNoDisk diffusion2001
NorwayCClinicalNORMMICEUCAST/NordicASTCBPNORM (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)EnglishNoDisk diffusion2000
NorwayCClinicalMSISMICEUCASTCBPNORM (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)EnglishNoMicrodilution1977
NorwayHClinicalNORMMICEUCAST/NordicASTCBPNORM (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)Interactive report: MSIS (http://www.MSIS.no/)Interactive database: https://norm-atlas.no/EnglishEnglish and NorwegianNorwegianEARS-NETDisk diffusion2000
NorwayHClinicalMSISMICEUCASTCBPNORM (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)Interactive report: MSIS (http://www.MSIS.no/)EnglishEnglish and NorwegianEARS-NETMicrodilution1977
NorwayAClinicalNORM-VETMICEUCASTECOFFsNORM-VET https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM%20NORM-VET%202013.pdfEnglishNoMicrodilution1999
NorwayANon-ClinicalNORMVETMICEUCASTECOFFsNORMVET (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)EFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)EnglishEnglishEFSAMicrodilution1999
NorwayFNon-ClinicalNORMVETMICEUCASTECOFFsNORMVET (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)EFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)EnglishEnglishEFSAMicrodilution method2004
FranceC/HClinicalONERBA (taken over in 2019 by SPF and loaded in ConsoRes)MIC, SIR, IZCA-SFMCBPONERBA (http://onerba.org/publications/rapports-onerba/)French and EnglishEARS-NETSeveral1997
FranceHClinicalBMR-Raisin (taken over in 2019 by SPF and loaded in ConsoRes)SIRCA-SFMCBPBMR-RAISIN (https://www.santepubliquefrance.fr/recherche/#search=BMR%20RAISIN)FrenchNoSeveral2002
FranceAClinicalRESAPATHIZ/SIRCA-SFMCBPRESAPATH (https://resapath.anses.fr/resapath_uploadfiles/files/Documents/2017_RESAPATH%20annual%20report.pdf)ONERBA (http://onerba.org/publications/rapports-onerba/)English and French English and FrenchNoDisk diffusion1982
FranceA/FNon-ClinicalANSESMICEUCASTECOFFsEFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)EnglishEFSAMicrodilution2010
The NetherlandsCClinicalISIS-ARMIC/IZ/SIREUCASTCBPNETHMAP (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)Interactive report: ISISweb (https://isis-web.nl/interactieve_rapporten/bezoekvraag/)EnglishDutchNoSeveral2008
The NetherlandsHClinicalISIS-ARMIC/IZ/SIREUCASTCBPNETHMAP (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)Interactive report: ISISweb (https://isis-web.nl/interactieve_rapporten/bezoekvraag/)EnglishDutchEARS-NETSeveral2008
The NetherlandsAClinicalMARANMICEUCASTECOFFsMARAN (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)EnglishNoMicrodilution2014
The NetherlandsANon-ClinicalMARANMICEUCASTECOFFsMARAN (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)EFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)EnglishEnglishEFSAMicrodilution1998
The NetherlandsFNon-ClinicalMARANMICEUCASTECOFFsMARAN (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)EFSA_Report (https://www.efsa.europa.eu/en/biological-hazards-data/reports)EnglishEnglishEFSAMicrodilution2005
EuropeHClinicalEARSNETMIC/IZ/SIREUCASTCBPSurveillance of antimicrobial resistance in Europe (https://ecdc.europa.eu/en/publications-data/surveillance-antimicrobial-resistance-europe-2017)EnglishEARSNETDilution test/diffusion test1998
EuropeAClinicalVetPathMICCLSICBPNoNoNoMicrodilution1998
EuropeANon-ClinicalEFSAMIC/SIREUCASTECOFFsThe European Union summary report on antimicrobial resistance in zoonotic and indicator bacteria from humans, animals and food (https://www.efsa.europa.eu/en/efsajournal/pub/5598)The European Union summary report on trends and sources of zoonoses, zoonotic agents and food-borne outbreaks (https://www.efsa.europa.eu/en/efsajournal/pub/5500)EnglishEnglishEFSADilution test/diffusion test2010
EuropeFNon-ClinicalEFSAMICEUCASTECOFFsThe European Union summary report on antimicrobial resistance in zoonotic and indicator bacteria from humans, animals and food (https://www.efsa.europa.eu/en/efsajournal/pub/5598)The European Union summary report on trends and sources of zoonoses, zoonotic agents and food-borne outbreaks (https://www.efsa.europa.eu/en/efsajournal/pub/5500)EnglishEnglishEFSADilution test/diffusion test2010
EuropeFNon-ClinicalEASSAMICEUCAST-CLSICBPNoNoNoMicrodilution1998
Figure 1

Overview on AMR systems in livestock in six European countries. Inner ring systems (dotted sections) report AMR data to EFSA while outer ring systems not. For details on the systems and their relationship, see the body of the text.

Figure 3

Overview on AMR systems in food in six European countries. Ring systems (dotted sections) report AMR data to EFSA. For details on the systems and their relationship, see the body of the text.

Features of AMR Databases in Human, Food and Animal Sectors by Region Overview on AMR systems in livestock in six European countries. Inner ring systems (dotted sections) report AMR data to EFSA while outer ring systems not. For details on the systems and their relationship, see the body of the text. Overview on AMR systems in humans in six European countries. Inner ring systems report (dotted sections) AMR data to EARS-NET while outer ring systems not. For details on the systems and their relationship, see the body of the text. Overview on AMR systems in food in six European countries. Ring systems (dotted sections) report AMR data to EFSA. For details on the systems and their relationship, see the body of the text.

Europe

The European Food Safety Authority (EFSA)11 is responsible for providing independent scientific advice and communication on food chain risks to risk managers and the public. EFSA together with the European Centre for Disease Control and Prevention (ECDC) collect annually AMR data on humans, food and healthy animals from the EU Member States (MS) and some associated countries. EFSA publishes “The European Union summary report on antimicrobial resistance in zoonotic and indicator bacteria from humans, animals and food”.12 EFSA also publishes annually the “Trends and sources of zoonoses and zoonotic agents in foodstuffs, animals and feeding stuffs”13 report (“EFSA report” onwards) for those countries which have not published this information. The European Animal Health Study Center (CEESA)14 is a non-governmental organization financed by the veterinary pharmaceutical industry doing research on AMR. Two relevant CEESA subsystems for this review are the VetPath monitoring system and the European Antimicrobial Susceptibility Surveillance in Animals (EASSA). CEESA monitors the antimicrobial susceptibility of major disease-causing bacterial pathogens in food animals (VetPath), and of foodborne and commensal bacteria in food animals (EASSA). The European Antimicrobial Resistance Surveillance Network (EARS-Net)15 is an AMR surveillance network in accordance with the legislation16 for Europe and for the European Economic Area members.17 Through EARS-Net, the ECDC collects AMR data from the EU Member States and publishes the annual EARS-Net report “Surveillance of antimicrobial resistance in Europe” which presents resistance percentages and trends for key resistant bacteria. Data are based on blood and cerebrospinal fluid isolates from humans.18 The European Medicines Agency (EMA), EFSA and ECDC have produced two joint inter-agency antimicrobial consumption and resistance analysis (JIACRA) reports19 attempting to compare antimicrobial use in animals and humans to AMR in the sectors and to assess potential effects of AMU and AMR in animals on the situation in humans.

Spain

The Spanish Veterinary Antimicrobial Resistance Surveillance Network (VAV)14,20 was created to monitor AMR. It consists of three programs dealing with healthy animals, sick animals and with food and it is performed by the Ministry of Agriculture, Fisheries and Food (MAPAMA). VAV submits non-clinical data to the EFSA that are included in the annual EFSA reports. The MAPAMA publishes the annual zoonoses and antimicrobial resistance report.21 This report is based on the annual EFSA report and informs on zoonotic pathogens and diseases in animals, humans and food in addition to data on AMR in some zoonotic bacteria and indicator bacteria according to the EU legislation.22,23 The Spanish national plan to tackle and reduce AMR (PRAN)24 has been set up by the Spanish Agency for Consumer Affairs, Food Security and Nutrition (AECOSAN). PRAN publishes a simplified report on zoonoses and antimicrobial resistance of chickens and turkeys for poultry professionals and a simplified report on zoonoses and antimicrobial resistance of laying hens for professionals in the laying hen sector.21 In addition, PRAN publishes the JIACRA Spain report25 which assesses the relationship between AMU and AMR in humans and animals in Spain. On the medical side, the national center of Carlos III Institute (ISCIII) coordinates and manages the national AMR database (EARS-Net-ES) submitting the data to the EARS-Net.25

The Netherlands

The AMR monitoring system on animals and food in the Netherlands is the “Monitoring of Antimicrobial Resistance and Antibiotic Usage in Animals in the Netherlands” (MARAN) bringing together the AMR food database of the Food and Consumer Product Safety Authority (NVWA).26 The Netherlands publishes data on the resistance of foodborne pathogens and of commensal indicators from livestock and food in the annual report also referred to as MARAN.27 The report is produced in collaboration with the NVWA, the National Institute for Public Health and the Environment (RIVM), the Netherlands Veterinary Medicines Institute (SDa), the University of Utrecht and Wageningen University and Research. In the human sector, the Infectious Disease Surveillance Information System on Antibiotic Resistance (ISIS-AR)28,29 aims at monitoring AMR in major pathogens. The Dutch Foundation of the Working Party on Antibiotic Policy (SWAB) publishes the annual report “Consumption of antimicrobial agents and antimicrobial resistance among medically important bacteria in the Netherlands” (NethMap).26 This report provides resistance data for outpatients, inpatients and care in nursing homes. It reports on several surveillance programs such as the ISIS-AR and Mycobacterium tuberculosis surveillance program and others. It has been created by the Ministry of Health, Welfare and Sport and the Dutch Society of Medical Microbiology (NVMM) and coordinated by the RIVM.

United Kingdom

Several systems and reports coexist to monitor AMR in animals in the UK, which is based on the EU decision.30 The EU harmonized surveillance system (a native UK system) collects mandatory AMR data on indicator commensal Escherichia coli and/or Campylobacter spp. from meat and faecal/caecal content of healthy animals (chicken, cattle/beef, turkey and pigs) in the UK. There are also UK National Control Programs for Salmonella in layers, broilers and turkeys, which are hosted in the EU harmonized surveillance system. In England and Wales the scanning surveillance system Vet Pathogens APHA31 provides AMR data from diseased animals provided for diagnostic services on a voluntary basis by veterinarians covering all relevant bacteria and animal species. In Scotland, a surveillance system carried out by the Scotland’s Rural College Veterinary Services and Capital Diagnostics (SRUC) collects clinical isolates from animals. In Northern Ireland, an AMR surveillance system performed by the Agri-Food Biosciences Institute (AFBI) collects livestock clinical data from post-mortem investigation of colibacillosis or similar diseases. E. coli isolates mainly originate from samples coming from less than 2-week old calves and animals with bovine mastitis.32 The annual report “UK-Veterinary Antibiotic Resistance and Sales Surveillance” (UK-VARSS) promoted by the UK government and produced by the Veterinary Medicine Directorate (VMD) provides details on veterinary AMR and AMU data in the UK.32 On the human side, the Resistance Surveillance Program of the British Society for Antimicrobial Chemotherapy (BSAC)33 publishes antibiotic resistance data from participating laboratories in the UK and Ireland for a range of clinically significant bacteria from respiratory infections from the community (since 1999), hospitals (since 2008) and bloodstream infections (since 2001). Public Health England’s Second Generation Surveillance System (SGSS) captures routine laboratory surveillance data on infectious diseases and antimicrobial resistance from 98% of National Health Service (NHS) laboratories across England. SGSS data are reported annually in the English surveillance program for antimicrobial utilization and resistance (ESPAUR) report.34,35 The Electronic Communication of Surveillance in Scotland (ECOSS) database collects AMR data from participating NHS and reference laboratories in Scotland.36 The data are published together with the AMR data on animals from the SRUC and several AMU data sources from humans in the Scottish One Health Antimicrobial Use and Antimicrobial Resistance (SONAAR) report.37 The medical AMR data in Northern Ireland are collected on a voluntary basis by the CoSurv database. These data are published annually in the “Surveillance of Antimicrobial Use and Resistance in Northern Ireland” report (“NI report”). This report was published for the first time in 2017 by the Public Health Agency (PHA). Finally, the DataStore is an open-access database that collects on a voluntary basis AMR data from Wales covering all hospital labs. The DataStore data are annually published in the “Antibacterial Resistance in Wales” report.

Norway

The Norwegian Surveillance System for Communicable Diseases (MSIS)38 together with the Norwegian Surveillance System for Antimicrobial Drug Resistance (NORM) and Norwegian Veterinary Antimicrobial Resistance Monitoring (NORM-VET) system are the three AMR surveillance programs in Norway.39 These systems publish their data in the “Usage of Antimicrobial Agents and Occurrence of Antimicrobial Resistance in Norway” (NORM/NORM-VET) report.40 This annual report provides updated data on the occurrence and distribution of AMU and AMR in the human, animal and food sectors.

France

The French Agency for Food, Environmental and Occupational Health & Safety (ANSES) monitors AMR data associated with farming, food and the environment.43 This institution coordinates the French surveillance network for antimicrobial resistance in pathogenic bacteria of animal origin (RESAPATH) and the Salmonella network. In addition, ANSES collects AMR non-clinical data from the national programs and the Salmonella network to be submitted to the EFSA. The Salmonella network is a surveillance system set up to control non-human Salmonella throughout the food chain. Samples are collected from healthy animals, food and the environment. The passive voluntary surveillance system RESAPATH provides in the annual RESAPATH report the AMR data compilation for the primary bacterial species and general isolates from sick animals from each animal sector.41 This surveillance system started in 1982 under the name of RESABO (only for bovine species). In 2000, it was extended to pigs and poultry and in 2007 to other species including small ruminants, horses and companion animals. This network collaborates with the National Observatory of the Epidemiology of Bacterial Antibiotic Resistance (ONERBA). On the medical side, ONERBA is the annual French report on AMU and AMR as well as the main AMR network collecting data from a complex network of subsystems. Currently (2019), the French health system (SPF) is taking over the ONERBA network and results are reported in the new tool ConsoRes.42 This tool has been set up by the support centers for the prevention of healthcare-associated infections (CPias) Great East and New Aquitaine. Additionally, the AMR community network driven by SPF reports results using the Medqual43 tool coordinated by the CPias Pays de la Loire. Finally, the Alert, Investigation and Surveillance of Nosocomial Infection Network (RAISIN)44,45 coordinates nationally the nosocomial infection surveillance coordination centers (CCLIN), now CPias. The RAISIN network includes several surveillance system modules. The private RAISIN module for multi-drug resistant bacteria BMR-RAISIN reports on AMR data in the community. However, it will be replaced shortly by the tool ConsoRes (2019).46

Germany

The German veterinary monitoring system (GERM-VET) collects clinical AMR data in Germany from companion and food-producing animals. These data are published in detail by the Federal Office of Consumer Protection and Food Safety (BVL) in a report with the same denomination.47 AMR-testing in the Zoonosis-Monitoring system (ZOMO) is carried out by the Federal Institute for Risk Assessment (BfR). The results are published in the annual zoonosis monitoring report by the BVL.48 The report contains data about zoonotic and commensal bacteria in diverse food chains that are also reported to the EFSA together with AMR-data on Salmonella from the national control programs. Antimicrobial Resistance Surveillance (ARS)49 is the national AMR surveillance system in human medicine. Established by the Robert Koch Institute, it collects routine susceptibility data for all bacterial species from any kind of sample site from hospital care as well as from outpatient care institutions by an increasing number of laboratories participating on a voluntary basis. Results for main pathogens are published via an interactive database on the ARS website. Besides the national surveillance ARS, the federal state Lower Saxony sets up a similar system (ARMIN).50 A further system has recently been set up in Bavaria (BARDa).51 The Hospital Infection Surveillance System (KISS) is the nosocomial infection surveillance system in hospitals formed by several sub-systems collecting AMU and AMR data.52 This network assimilated the Surveillance of Antimicrobial Use and Bacterial Resistance in Intensive Care Units (SARI).53,54 SARI collected on a voluntary basis aggregated data on antimicrobial sensitivity for selected pathogenic bacteria and AMU-AMR development. The project is organized by the Institute for Hygiene and Environmental Medicine of the Charité, Berlin.55 Patient-based and unit-based AMR data (MRSA, VRE, ESBL) are collected as well. Finally, the Paul Ehrlich Society for Chemotherapy (PEG)56 is a society that conducts studies on antimicrobial resistance in human pathogens as part of a longitudinal study in both hospital and community sectors. Results are presented as an interactive database on the PEG website. The report on Antibiotic Consumption and the Spread of Antibiotic Resistance in Human and Veterinary Medicine in Germany (GERMAP),55 a joint work of the PEG, the BVL and Infectiology Freiburg, is published on a regular basis. This report provides AMU and AMR data and trends in human and veterinary medicine in Germany since 2008. GERMAP publishes AMR-data mainly from GERM-VET, ARS and data of the PEG. The report publishes antibiotic consumption data from the community analyzed by the Research Institute of the largest German public non-private Health Insurance AOK (WIdO).

Antimicrobial Consumption Surveillance and Monitoring Systems

A general overview on AMU monitoring and surveillance systems is provided in Table 2. The variables collected in the AMU table are country/region, database name, data origin, unit, public data published report, report language, data source, submitting data to Europe and set-up year of the database. Additionally, Figures 4 and 5 show AMU systems reporting and not reporting to EU per country and sector.
Table 2

Features of AMU Databases in Human and Animal Sectors by Region

Country/RegionData typeDatabaseUnitPublic ReportLanguage of the ReportCommunication to EUData SourceYear System Developed
GermanyCWIdODDD/1000 insured dayGERMAP (http://www.p-e-g.org/econtext/GERMAP)German and EnglishESAC-NetReimbursement1980
GermanyHAVSDDD/100 patient day and RDD/100 patient dayInteractive report: AVS-report (https://avs.rki.de/Content/ReferenceData/AIReport.aspx)GermanNoPrescription (hospital pharmacy)2008
GermanyHADKA-IF-DGIRDD/100 care dayADKA-if_DGI Antiinfektiva-Surveillance (http://www.antiinfektiva-surveillance.de/files/kvr_2014-2015_adka-if-dgi_121116_v.4_open_access_geschwaerzt_neu.pdf)GermanNoPrescription (hospital pharmacy)2015
GermanyHSARI-KISSDDD/1000 patients day and DDDSARI-Antibiotikadaten (https://eu-burden.info/sari/ab.php)GermanNoPrescription (hospital pharmacy)2000
GermanyADIMDIWeight of active ingredientGERMAP (http://www.p-e-g.org/econtext/GERMAP)DIMDI (https://www.bvl.bund.de/DE/08_PresseInfothek/01_FuerJournalisten_Presse/01_Pressemitteilungen/05_Tierarzneimittel/2010/2010_11_18_pi_abgabemengenregister.html;jsessionid=9D2FE13408BFF8D5F5E702CD3A473318.1_cid332)German and English/GermanESVACSales (wholesalers)2011
GermanyAHITTherapy frequencyBVL (https://www.bvl.bund.de/DE/05_Tierarzneimittel/03_Tieraerzte/04_Therapiehaeufigkeit/Therapiehaeufigkeit_node.html)GermanNoPrescription2014
GermanyAQSTherapy frequencyNoGermanNoPrescription2012
GermanyAVetCabTherapy frequencyNoNoNoPrescription2007
SpainAPlan REDUCEmg/PCUPlan REDUCE (http://www.resistenciaantibioticos.es/es/system/files/field/files/primer_informe_programa_reduce_colistina_0.pdf?file=1&type=node&id=387&force=0)SpanishESVAC since 2019PrescriptionSince 2016
SpainCMSCBSDDD/1000 inhabitants dayJIACRA Espana (http://www.resistenciaantibioticos.es/en/system/files/field/files/informe_jiacra-espana.pdf?file=1&type=node&id=410&force=0)Interactive report: PRAN (http://www.resistenciaantibioticos.es/es/profesionales/vigilancia/mapas-de-consumo)SpanishSpanishESAC-NetReimbursement1978
SpainHIQVIADDD/1000 inhabitants dayJIACRA Espana (http://www.resistenciaantibioticos.es/en/system/files/field/files/informe_jiacra-espana.pdf?file=1&type=node&id=410&force=0)Interactive report: PRAN (http://www.resistenciaantibioticos.es/es/profesionales/vigilancia/mapas-de-consumo)SpanishSpanishESAC-NetSales (hospital pharmacy)2012
SpainCIQVIADDD/1000 inhabitants dayJIACRA Espana (http://www.resistenciaantibioticos.es/en/system/files/field/files/informe_jiacra-espana.pdf?file=1&type=node&id=410&force=0)Interactive report: PRAN (http://www.resistenciaantibioticos.es/es/profesionales/vigilancia/mapas-de-consumo)SpanishSpanishESAC-NetSales (pharmacy)2014
SpainAESVAC-ESWeight of active ingredientJIACRA Espana (http://www.resistenciaantibioticos.es/en/system/files/field/files/informe_jiacra-espana.pdf?file=1&type=node&id=410&force=0)SpanishESVACSales (since 2019 prescription data also available)2010
EnglandCNHS BSA (PHE Antibiotic Prescribing Data Warehouse)DDD/1000 inhabitants day and DDD/admissions yearESPAUR (https://assets.publishing.service.gov.uk/government/uploads/system/uploads/attachment_data/file/759975/ESPAUR_2018_report.pdf)EnglishESAC-NetReimbursement2014
EnglandHIQVIADDD/1000 inhabitants dayESPAUR (https://assets.publishing.service.gov.uk/government/uploads/system/uploads/attachment_data/file/759975/ESPAUR_2018_report.pdf)EnglishESAC-NetSales (hospital pharmacy)2014
ScotlandCPISDDD/1000 inhabitants day and items/1000 inhabitants dayScottish One Health Antimicrobial Use and Antimicrobial Resistance (https://www.hps.scot.nhs.uk/resourcedocument.aspx?id=6971)EnglishESAC-NetReimbursement1993
ScotlandHHMUDDDD/1000 occupied beds/day and DDD/1000 inhabitants dayScottish One Health Antimicrobial Use and Antimicrobial Resistance (https://www.hps.scot.nhs.uk/resourcedocument.aspx?id=6971)EnglishESAC-NetReimbursement2007
Northern IrelandCElectronic Prescribing DatabaseDDD/1000 beds/day, DDD/1000 inhabitants day and DDD/1000 admissions yearSurveillance of Antimicrobial use and Resistance in Northern Ireland (http://www.publichealth.hscni.net/sites/default/files/AMR_annual_report_final_0.pdf)EnglishESAC-NetReimbursement2014
Northern IrelandHJAC Medicines Management SystemsDDD/1000beds day, DDD/1000 inhabitants day and DDD/1000 admissions yearSurveillance of Antimicrobial use and Resistance in Northern Ireland (http://www.publichealth.hscni.net/sites/default/files/AMR_annual_report_final_0.pdf)EnglishESAC-NetReimbursement2014
WalesCPrescribing Information Data Warehouse (PSU)Items/1000 patients year and items/1000 STAR-PUAntimicrobial Usage in Primary Care in Wales (http://www.wales.nhs.uk/sitesplus/888/page/94136)EnglishESAC-NetReimbursement2000
WalesHMedusa databaseDDD/1000 beds day and DDD/1000 admissions yearAntimicrobial Usage in Secondary Care in Wales (http://www.wales.nhs.uk/sitesplus/888/page/94136)EnglishESAC-NetReimbursement1995
UKAVMDWeight of active ingredient and mg/kgUKVARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)EnglishESVACSales1989
UKABEICWeight of active ingredientUKVARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)EnglishNoPrescription1986
UKABPC stewardshipWeight of active ingredientUKVARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)EnglishNoPrescription2012
UKAeMB-pigsWeight of active ingredient and mg/kgUKVARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)EnglishNoPrescription2016
UKAeMB-Cattle and SheepTo be determinedeMB-Cattle and Sheep (http://beefandlamb.ahdb.org.uk/wp-content/uploads/2018/10/CHAWG-Fourth-Report-2018.pdf)EnglsihNoPrescription2018
UKANMLmg/PCU, mg/kg, DDD-vet, DDD-vetUK,DCD-vet and DCD-vetUKNML (https://www.nationalmilklaboratories.co.uk/vets/farm-assist)NoNoPrescription2017
Great BritainAFarmvet SystemsWeight of active ingredient and mg/kgUKVARSS (https://www.gov.uk/government/collections/veterinary-antimicrobial-resistance-and-sales-surveillance)EnglishNoPrescription2015
NorwayANorwegian Prescription database (NorPD)DDDThe Norwegian Prescription Database report (https://www.fhi.no/en/hn/health-registries/norpd/)EnglishNoPrescription2004
NorwayCNorwegian Prescription database (NorPD)DDD/1000 inhabitants dayNORM (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)Norwegian Prescrition Database report (https://www.fhi.no/en/hn/health-registries/norpd/)EnglishEnglishESAC-Net (only ambulatory)Reimbursement2004
NorwayHNorwegian Prescription database (NorPD)DDD/1000 inhabitants dayNORM (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)Norwegian Prescrition Database report (https://www.fhi.no/en/hn/health-registries/norpd/)EnglishEnglishESAC-Net (only ambulatory)Reimbursement2004
NorwayC/HNorwegian drug wholesales statistics database (NIPH)DDD/1000 inhabitants dayNORM (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)Drug Consuption in Norway report (https://www.fhi.no/en/publ/2018/legemiddelstatistikk-20182-reseptregisteret-20132017/)EnglishEnglish and NorwegianNoSales (wholesalers)1970
NorwayHHospital pharmacies drug statistics database (NorPD)DDD/1000 inhabitants day, DDD/100 beds days and DDD/admissions yearNORM (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)EnglishESAC-NetSales (hospital pharmacy)2006
NorwayANORM-VETWeight of active ingredientNORMVET (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)EnglishESVACSales1999
NorwayAVetRegWeight of active ingredientNORMVET (https://unn.no/Documents/Kompetansetjenester,%20-sentre%20og%20fagr%C3%A5d/NORM%20-%20Norsk%20overv%C3%A5kingssystem%20for%20antibiotikaresistens%20hos%20mikrober/Rapporter/NORM_NORM-VET_2017.pdf)EnglishNoPrescription2011
NorwayHNOISWeight of active ingredient and boxesNOIS (https://www.fhi.no/hn/helseregistre-og-registre/nois/)NorwegianHAI-Net SSIPrescription (hospital pharmacy)2005
FranceCSNDS-SNIIRAM (taken over in 2019 by SPF and loaded in ConsoRes)Number of boxes, number of tablets and concentrationNoNoNoPrescription (hospital pharmacy)2003
FranceCSNDS-SNIIRAM (taken over in 2019 by SPF and loaded in ConsoRes)Number of boxes, number of tablets and concentrationNoNoNoReimbursement2003
FranceCANSMDDD/1000 inhabitants dayAntibiotic consumption trends in France (https://ansm.sante.fr/S-informer/Points-d-information-Points-d-information/Evolution-des-consommations-d-antibiotiques-en-France-entre-2000-et-2015-Point-d-Information)Antibiotic consumption in France in 2016 (https://www.google.com/url?sa=t&rct=j&q=&esrc=s&source=web&cd=5&ved=2ahUKEwiCr5S-pMDjAhXlQkEAHWuRDFQQFjAEegQIBBAC&url=https%3A%2F%2Fwww.ansm.sante.fr%2Fcontent%2Fdownload%2F113089%2F1432671%2Fversion%2F1%2Ffile%2FRapport%2Bantibio_nov2017.pdf&usg=AOvVaw1dqdemy8MEH3MrXCwBPHbK)FrenchFrenchESAC-NetSales (Pharmacy)1999
FranceHANSMDDD/1000 inhabitants dayAntibiotic consumption trends in France (https://ansm.sante.fr/S-informer/Points-d-information-Points-d-information/Evolution-des-consommations-d-antibiotiques-en-France-entre-2000-et-2015-Point-d-Information)Antibiotic consumption in France in 2016 (https://www.google.com/url?sa=t&rct=j&q=&esrc=s&source=web&cd=5&ved=2ahUKEwiCr5S-pMDjAhXlQkEAHWuRDFQQFjAEegQIBBAC&url=https%3A%2F%2Fwww.ansm.sante.fr%2Fcontent%2Fdownload%2F113089%2F1432671%2Fversion%2F1%2Ffile%2FRapport%2Bantibio_nov2017.pdf&usg=AOvVaw1dqdemy8MEH3MrXCwBPHbK)FrenchFrenchESAC-NetSales (Pharmacy)1999
FranceHATB-RAISIN (taken over in 2019 by SPF and loaded in ConsoRes)DDD/1000 inpatient daySurveillance de la consommation des antibiotiques (https://www.santepubliquefrance.fr/recherche/#search=ATB%20RAISIN)FrenchNoPrescription (hospital pharmacy)2001
FranceAINAPORCDDD and DCD based on national SPC; DDDvet, DCDvet from EMANoNoNoPrescription2010
FranceAPermanent Observatory of Antibiotics in Veal Calf FarmsThe number of antimicrobial treatment per calf and batch, the number of antimicrobial treatment days per calf, the total quantity of active ingredient per calf and the Animal Level of Exposure to Antimicrobials (ALEA)NoNoNoPrescription2016
FranceAGVETThe number of antimicrobial treatment, the number of antimicrobial treatment days, UDD, UCD, DDD, DCD, DDDvet and DCDvetNoNoNoPrescription2017
FranceAANMVADDkg in tonnes, ACDkg, ALEASales survey of veterinary medicinal products containing antimicrobials in France (https://www.anses.fr/en/system/files/ANMV-Ra-Antibiotiques2017EN.pdf)English and FrenchESVACSales (Pharmacy)1999
The NetherlandsCSFKDDD/1000 inhabitants day and DDDNethmap (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)EnglishESAC-NetSales (Pharmacy)1990
The NetherlandsCSNIVDDD/1000 residents dayNethmap (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)EnglishNoSales (Pharmacy)2007
The NetherlandsAFIDINWeight of active ingredientMARAN (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)EnglishESVAC (since 2009)Sales1999
The NetherlandsASDaWeight of active ingredient, DDDvet and DDDA NATMARAN (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)SDa report (https://www.autoriteitdiergeneesmiddelen.nl/en/publications)EnglishEnglish and DutchNoPrescription2010
The NetherlandsHDutch hospital electronic prescribing system (SWAB)DDD/100 patient day and DDD/1000 inhabitants dayNethmap (https://www.rivm.nl/bibliotheek/rapporten/2019-0038.pdf)EnglishESAC-NetSales (hospital pharmacy)1996
The NetherlandsAMediRundDDD/animal/yearNoNoNoPrescription2012
EuropeC/HESAC-NetDDD/1000 inhabitants dayAntimicrobial consumption - Annual Epidemiological Report (https://ecdc.europa.eu/en/antimicrobial-consumption/surveillance-and-disease-data/report-protocol)EnglishESAC-NetSales and reimbursement2002
EuropeAESVACmg/PCUESVAC (http://www.ema.europa.eu/ema/index.jsp?curl=pages/regulation/document_listing/document_listing_000302.jsp)EnglishESVACSales2010
Figure 4

Overview on AMU systems in livestock in six European countries. Inner ring systems (dotted sections) report AMU data to ESVAC while outer ring systems not. For details on the systems and their relationship, see the body of the text.

Figure 5

Overview on AMU systems in humans in six European countries. Inner ring systems (dotted sections) report AMU data to ESAC-NET while outer ring systems not. For details on the systems and their relationship, see the main text.

Features of AMU Databases in Human and Animal Sectors by Region Overview on AMU systems in livestock in six European countries. Inner ring systems (dotted sections) report AMU data to ESVAC while outer ring systems not. For details on the systems and their relationship, see the body of the text. Overview on AMU systems in humans in six European countries. Inner ring systems (dotted sections) report AMU data to ESAC-NET while outer ring systems not. For details on the systems and their relationship, see the main text. The term “prescription data” has been used in the veterinary field in the later table as “usage data” covering what is prescribed by the veterinarian, supplied by the veterinarian under veterinary prescription, or administered by the farmer under veterinary prescription. EMA monitors overall AMU in livestock through sales data in the European Surveillance of Veterinary Antimicrobial Consumption (ESVAC) project.57,58 Since 2010, AMU is provided as an overall consumption (ie overall sales corrected for the animal population present in the country) in mg/kg. Since 2019, European countries are required to set up a data collection system in order to provide antibiotic consumption per species to ESVAC from 2022 onwards. The Network on quantification of veterinary Antimicrobial usage at herd level and Analysis, CommunicaTion and benchmarkING to improve responsible usage (AACTING) provides in its website guidelines and information on farm level AMU collection systems from AACTING members, mostly European countries.10 Similar to ESVAC, on the medical side, European AMU data from the community and hospital sector are collected by the European Surveillance of Antimicrobial Consumption Network (ESAC-Net),59 that is coordinated by ECDC. AMU data are collected by MS in the community and the hospital sector or both (total care). In addition, ECDC coordinates the Healthcare-Associated Infections Surveillance Network (HAI-Net) since the coordination of the Improving Patient Safety in Europe network (IPSE) was transferred to ECDC in 2008. The HAI-Net supports MS in the prevention and control of healthcare-associated infections (HAI) and coordinates the European point prevalence survey of HAI and AMU in acute care hospitals, the European surveillance of surgical site infections (HAI-Net SSI), the European surveillance of Healthcare-Associated Infections in intensive care units and the repeated prevalence surveys of HAI and AMU in European long-term care facilities. The ESVAC-ES is a project from PRAN and carried out by the Spanish Agency of Medicaments and Sanitary Products (AEMPS).60 It collects animal AMU data on a voluntary basis and reports annually these sales data from the veterinary sector to ESVAC. Since 2019, ESVAC-ES additionally collects prescription data. Moreover, since 2016, several collaboration programs between PRAN, MAPAMA and the animal production sectors have been implemented. In these programs that are called “Plan REDUCE” the animal sectors provide AMU data on a voluntary basis to PRAN. These data together with the prescription data that ESVAC-ES collects will be submitted to ESVAC. On the medical side, the Ministry of Health, Consumption and Social Welfare (MSCBS) database collects community reimbursement data on antimicrobials dispensed from only official prescriptions in the public system. The system is run by the General Directorate of Basic Services of the National Health and Pharmacy System.61 The database for Pharmacoepidemiological Research in Primary Care (BIFAP) and the Primary Care Clinical Database (BDCAP) provide primary care data integrated into the MSCBS database. Spain is able to provide primary and secondary care sales data through The Human Data Science Company (IQVIA) database, formerly Quintiles and IMS Health.24,62 The PRAN website provides charts based on data collected from the latter databases with estimates on AMU in hospitals since 2012 and in the community (national and regional) since 2014.63 The MARAN report includes AMU data from two sources26: The Federation of the Dutch veterinary pharmaceutical industry (FIDIN) provides antibiotic sales data on the major livestock farming sectors.27 The Netherlands Veterinary Medicines Institute (SDa) is an independent institute that promotes responsible drug consumption. It hosts a mandatory delivery records AMU database on the main livestock sectors and publishes it in the SDa report.64 Similarly, Medirund,65 the central database for the mandatory registration of antibiotics in cattle in the Netherlands, reports AMU data quarterly.66 On the medical side, the NethMap report publishes AMU data from electronic antibiotic prescriptions on patient level.26 These are extracted from the Dutch hospital electronic prescribing system for hospitals by SWAB and from the Foundation for Pharmaceutical Statistics (SFK) system for the community. This report also assimilates data from the national sentinel surveillance network for infectious diseases in nursing homes (SNIV).67 The VMD collates and analyses overall sales data from marketing authorization holders and aggregated usage data by species provided on a voluntary basis by several industry-based databases. Both sales and usage data are published in the UK-VARSS report. The industry-based databases on pig, cattle and poultry are The Electronic Medicine Book for Pigs (eMB pigs),68 launched by the Agriculture and Horticulture Development Board Pork (AHDB-Pork), collects usage data at farm level from the pig industry in the UK, covering around 90% of production. The British Poultry Council (BPC) Stewardship69 provides meat poultry usage data (for chickens, turkeys and ducks) in the UK, covering 90% of UK poultry meat production. The British Egg Industry Council (BEIC) organizes the collection of antibiotic usage data for the laying hen industry. The Lion Scheme, representing over 90% of the UK laying hen industry, requires sharing usage data with BEIC. FarmVet Systems is a private company, which collects usage data from veterinary practice and this data is published for cattle (dairy, around 30% UK coverage, and beef, around 5% UK coverage). This represents a convenience sample and so may not be representative of the UK cattle industry.32 Additionally, the National Milk Laboratories (NML) database collects AMU data at farm level in dairy cattle.70 However, this data source is currently at an early stage. Likewise, the new eMB cattle and sheep database71 has been set up during 2018 as a pilot project collecting usage data at farm level and it is still in pilot stage. On the medical side, the NHS Digital database in England displays antibiotic prescribing and AMR indicators from general practice (GP). Additional primary care sources such as hospices, nursing homes, police custody (among others) are displayed in the ESPAUR report. The IQVIA database shares secondary care data with Public Health England (PHE). However, these data are not openly available. In Scotland, the Information Service Division (ISD) holds the Prescribing Information System (PIS) database that provides AMU data from primary care. The data are supplied by the Practitioner and Counter Fraud Services (P&CFS) of the National System Scotland (NSS). This system is responsible for the processing and pricing of all prescriptions dispensed in Scotland. Data from secondary care are provided by the Hospital Medicines Utilisation Database (HMUD) that is also held by the ISD. Primary and secondary care data are published in the SONAAR report. In Northern Ireland, the Electronic Prescribing Database and the JAC Medicines Management Systems are the two datasets on AMU data from primary and secondary care, respectively. Data are published in the NI report. In Wales, the AMU data are collected from the prescribing Information Data Warehouse for primary care provided by the Prescribing Services Unit (PSU)72 and the Medusa dataset73 for secondary care. Both are managed by Public Health Wales (PHW) and they cover 100% of Welsh dispensing contractors and hospital pharmacies. The NORM-VET monitoring system collects AMU data from the Norwegian drug wholesales statistics database and the Veterinary Prescription Register (VetReg).40,74 The latter register is owned by the Norwegian Food Safety Authority (NFSA) and applies to veterinarians, pharmacies and feed mills. There, prescription data on farmed fish (since 2011) and terrestrial animals (since 2012) are stored. On the medical side, the NORM surveillance program gathers AMU data in humans from the following surveillance systems: The Hospital Pharmacies Drug Statistics Database. The national prescription database (NorPD)75 that contains dispensed drugs in hospitals and nursing homes from pharmacies in Norway. The Norwegian drug wholesales statistics database that contains all sales data in Norway provided by the Norwegian Institute of Public Health (NIPH). Additionally, the Norwegian Surveillance System for Antibiotic Consumption and Healthcare-Associated Infections (NOIS) is a nationwide mandatory system administrated by the NIPH. It is largely based on hospital automated data extraction on AMU. The French Agency for Veterinary Medicinal Products (ANMV)76 within ANSES collects annually sales data on veterinary drugs containing antibiotics in France, and also reports these data stratified by animal species. ANMV uses marketing authorisation holder estimates on the proportion sold per target species. In addition, The Permanent Observatory of Antibiotics in Veal Calf Farms77 is a voluntary system collecting AMU data in veal calves. Data are collected and analyzed by ANSES and the French Livestock Institute (IDELE). The French Pork Interprofessional Organization (INAPORC)78 is a voluntary system gathering consumption data on pig categories (sows, fatteners, weaners and sucklers) from 160 randomly chosen pig farms (approximately 1% of French farms). This system is run by ANSES, the swine industry’s French technical institute (IFIP) and stakeholders. The results are delivered to each farmer by the end of the study. Similar to INAPORC, the GVET79 system is a voluntary pig register run by ANSES and IFIP. The latter system also collects AMU data from the same pig categories adopted by INAPORC providing an online result access to farmers. On the medical side, the national health insurance cross-schemes information system (SNIIRAM) is a large French healthcare database which covers around 99% of the French population. SNIIRAM was extended with outpatient data through the National health data system (SNDS) by French law80 in 2016. The SNIIRAM-SNDS dataset provides prescription data covering primary and secondary care in the ambulatory and hospital sectors. It includes systems such as CNAMTS (for employed workers), RSI (for independent workers) and MSA (for farmers) among others. Through CNAMTS, the MEDIC’AM spreadsheet81,82 provides all medication reimbursement data and also the costs to the system (overall and reimbursement) and packages sold. SPF will take over shortly SNIIRAM-SNDS (2019). In parallel, The Antibiotic Consumption Monitoring RAISIN module (ATB RAISIN) provides AMU data collected on a voluntary basis from the hospital sector. It is connected to the CPIAS network. It will be replaced shortly by the tool ConsoRes (2019).46 The French National Agency for Medicine and Health Products Safety (ANSM) publishes on a regular basis the antibiotic consumption trends in France report.83 It includes data on outpatient and hospital AMU in humans, critical antibiotics and AMU in Europe. The data in the report are extracted from the following databases: ANSM, IQVIA, Permanent Sample of Medical Prescription (EPPM), OPEN-MEDIC and ESAC-Net. Several initiatives collect AMU data in Germany. The animal antimicrobial sales data are reported annually by the industry and wholesalers to the German Institute for Medical Documentation and Information (DIMDI).84 The industry-based system run by Quality and Safety GmbH (QS)85 carries out an antibiotic monitoring program on AMU data in broilers, turkeys, ducks, veal and pork productions. Some QS data are transferred to the Hi-Tier (HIT)27 database. The HIT database is hosted by the Bavarian Ministry for the Food Chain, Agriculture and Forestry. The data collection includes treatment data on pigs, turkeys, broilers and cattle. This AMU database receives data from farmers and vets including the antimicrobial product, treatment days and number of treated animals. From the data, benchmarks for AMU in the different livestock sectors are calculated twice a year and published by the BVL. These inform farmers on the necessity to reduce AMU, ie farmers with a use above the third quartile of all reporting farms of their sector need to take action. The sentinel project Veterinary Consumption of Antibiotics (VetCab)27,86 is carried out by the Institute for Biometry, Epidemiology and Information Processing of the Hanover University of Veterinary Medicine Foundation (IBEI-TIHO). VetCab aims to describe and assess AMU in farm animals in Germany and includes data on pigs, cattle and broilers. In the human sector, two national surveillance systems are in place for hospital data: AVS (RKI) and ADKA-if-DGI. The Federal Association of German Hospital Pharmacists (ADKA) created together with the infectious disease department of the University Freiburg the ADKA-if project in 2007. Since 2015, the network supported by the German Society for Infectious Diseases (DGI) is called ADKA-if-DGI.87 The AVS87,88 housed by the RKI with technical support of the Charité collects data from German and Austrian hospitals on antimicrobial consumption for individual substances and groups of substances in acute care hospitals and rehabilitation centers since 2015 (2014 pilot study) according to the German Infection Protection Act. On behalf of the SHI (Statutory Health Insurance Funds), the WIdO55,89 collects all antimicrobial prescriptions from mandatory health-insured patients (totaling about 89% of the German population). Only reimbursement data from the ambulatory sector (about 85–90%) are included in the WIdO dataset. Since 2001, all prescription data have become available. WIdO data are yearly reported to ESAC-Net via the RKI. In addition, the ZI, a research institute of the Federal Association of Statutory Health Insurance Physicians collects AMU data of ambulant patients.

Discussion

Harmonization and Interpretation of the AMU and AMR Data

A wide variety of AMU and AMR monitoring and surveillance systems and reports were identified at country and regional levels in the six countries. Funding of the systems is mostly public, but may also be private. Monitoring and surveillance databases are mostly not freely accessible. Some databases do not report to the public on a regular basis. Even when most of the reports like NORM/NORM-VET, UK-VARSS, ESPAUR, MARAN/NETHMAP, ARS, EARS-Net among others, which publish aggregated data, are freely accessible others like Medirund or EASSA reports are not. This lack of free access to the available information may contribute to the existence of overlap between systems, reports and databases that may duplicate efforts and economic resources. A further potential overlap source may be that the development of the different systems is frequently due to specific interests that are not fully covered by earlier systems leading to a substantial diversity in objectives and procedures. Therefore, it seems essential to reduce the number of overlapping systems joining forces, promoting synergies and planning the systems properly. Note that some overlap between systems may also contribute to validate system results. Some examples of overlapping are presented in Table 3. In addition, often newer systems are easier to use with the possibility of web-based reporting and feedback.
Table 3

Complementary Systems with Some Overlap

On the Human AMR SectorOn the Human AMU SectorOn Livestock AMU SectorOn the Livestock AMR SectorOn the Food AMR Sector
GermanyARS, PEG, MRSA-KISS, ICU-KISS, OP-KISS and SARI-KISSRegional: ARMIN and BARDaAVS, ADKA-if-DGISARI-KISSDIMDI, HIT, QS and VetCabxx
The NetherlandsxxFIDIN, SDa and MEDIRUNDxx
NorwayxThe Norwegian drug wholesales statistics database, NorPD, NOIS and the hospital pharmacies drug statistics databaseNorPD, NORM VET and VetRegxx
United KingdomBSACRegional: SGSS, ECOSS, Datastore and CoSurvxFarmVet Systems, eMB cattle and NMLxx
FranceBMR-RAISIN and ONERBASNDS-SNIIRAM, ANSM, ATB-RAISINANMV, GVET and INAPORCxx
SpainxMSCBS and IQVIAESVAC-ES and Plan REDUCExx
EuropexxxxEASSA and EFSA
Complementary Systems with Some Overlap The presence of overlap between systems also translates to the existence of different reports that provide information on the same type of data generated in different systems. Furthermore, reports not based on a specific system may also produce overlaps (eg GERMAP resistance data on animals are also published by GERM-VET). However, the level of reported information may be different. National AMU and AMR reports are published in different languages (see Tables 1 and 2). Annual publication of these reports in an international agreed language would facilitate access to published data.

AMR Surveillance and Monitoring Systems

AMR surveillance and monitoring systems vary substantially between sectors and across the countries in the type of data collected and reported. Besides the human, animal or food population studied, main sources of variability include the type of samples collected (clinical vs non-clinical samples) and the sample collection basis (voluntary, sentinel or mandatory). Both define the bacterial population that the isolates may be representative for and influence the degree of representativeness of the data. Diversity was also observed regarding the laboratory methods (eg micro broth dilution, disk diffusion or other, automatic systems) and the reported result type (minimum inhibition concentration (MIC), inhibition zone (IZ) or susceptible-intermediate-resistant (SIR)). The laboratory method selected may affect final results. As an example, colistin, a key antimicrobial in human and animal health, diffuses poorly into the agar medium. Therefore, disk diffusion results from colistin are not reliable.90 Quantitative data allow for interpretation using different clinical breakpoints (CBP) or epidemiological cut-offs (ECOFF) as provided by EUCAST, CLSI or other, sometimes national institutions. SIR data can only be validly compared to other SIR data, if the methodology used is standardized. This includes both laboratory methods as well as the ECOFFS or breakpoints used for the categorization of the isolate populations to SR or SIR. Therefore, AMR reports should capture quantitative data rather than qualitative values (SIR or SR) to allow for interpretation of data using different thresholds. However, the comparability of quantitative data from different laboratory methodologies remains as an issue. Data collection systems often adopt a specific standard. However, most standards and their corresponding evaluation criteria do not cover all drug/bug combinations. In that case, different standards and/or evaluation criteria may be used for different drug/bug combinations in the same data collection system. Therefore, AMR collecting systems should have a similar approach (ie standard, evaluation criteria, antibiotic panel, unit and data type (clinical-non clinical)) so that data comparison, evaluation and analyses across countries and sectors were valid. In addition, ECOFFs and CBPs are regularly revised, so their threshold values may vary over time. Differences between ECOFFs and CBPs are frequently underlined in literature.91,92 ECOFFs identify the wild-type (those assumed to have no acquired/mutational resistance) from non-wild-type populations (those that show a degree of acquired/mutational resistance) while CBPs define clinically a microorganism as “sensitive”, “intermediate” or “resistant” in relation to the likelihood of therapeutic success. CBPs take into account information such as the infection site, ability of the antimicrobial to reach the infection site, dosage regimens and formulations available to determine the effectiveness against the pathogen. Therefore, interpretation of results between countries may not be directly comparable as different dose regimens are used.93 However, in most instances, the differences between published ECOFF and CBP values are limited, given that one dilution step is the tolerance of microdilution in both systems. Moreover, values for both evaluation criteria are constantly evolving when new data become available and those with the greatest differences (eg ciprofloxacin in E. coli) tended to converge over time.94 The main task of surveillance systems is to provide an overview of patterns and trends, however some systems may provide additional useful information for risk factor analysis. A further source of variability identified on AMR systems is the collection of sample results from diverse laboratories, using different diagnostic methods and interpretation standards. Antimicrobial panels to be tested in laboratories against zoonotic and commensal bacteria are standardized in the livestock sector by Commission Implementing Decision 2013/652/EU. This is not the case in the medical sector and for the testing of clinical isolates from animals. However, EU institutions clearly indicate that the antimicrobial panel described for indicator bacteria on livestock by Decision 2013/652/EU takes human relevance into consideration.95 Therefore, reporting part of the data adopting this standardized panel would help minimize current standardization and harmonization issues.

AMU Surveillance and Monitoring Systems

AMU collection systems are based on a variety of data sources ranging from overall national sales data to individual prescription or treatment data.7 Data are displayed in very diverse units (such as weight of active ingredient, therapy frequency, mg/Population Correction Unit (PCU), Defined Daily Dose (DDD)/1000 inhabitants/days, DDD/1000 Specific Therapeutic Group Age-sex weightings Related Prescribing Units (STAR-PU) among others) hampering the comparison of data from different sources. Differences in dosage regimes and treatment durations between hospitals and countries might result in an erroneous assessment of the treatment numbers if they are deduced from the amount of drug sold. For these reasons, any evaluation and comparison of AMU data from different sources should be done carefully. A consensus has been reached to report AMU data to European level (ESVAC and ESAC-Net systems) adopting the unit DDD/1000 inhabitants/days on the medical side and antibiotic weight per population correction unit (mg/PCU) on the animal side. However, as with breakpoints in AMR, these units have drawbacks and the consensus is a compromise that is continuously under debate. The weight of the active ingredient as collected for the ESVAC project does not account for its potency, ie the amount needed to treat 1 kg of animal. Moreover, most antimicrobials may be used in several animal species and may also be licensed at a different dosage for different and sometimes even for the same animal species. Sales data on the veterinary side therefore only provide a general overview, but for further analyses, farm-level data are needed. These are frequently collected on the regional or national level as shown in Table 2, but at a very low level of harmonization. At best they allow for assessing trends within the system, but between systems analyses are very challenging. This also applies for comparisons to the medical side. The differences between the systems have repeatedly been described and critically reviewed.27,96 The DDD/1000 inhabitants/day is widely used as a standard for monitoring antimicrobial consumption for the human sector. However, it does not necessarily reflect the dose prescribed to the individual patient. This particularly plays a role for special patient populations (eg children or patients with renal insufficiency). The same issue applies for defined daily doses for animals. Dosing of drugs for systemic use ideally should be done giving the amount of drug needed per kg of treated individual. If the weight of the treated animal is not accounted for and DDDs are calculated from the amount of drug used alone, substantial miscalculations are possible. In broilers 1-day-old chicks weigh about 50 g and 1-month-old broilers around 2 kg, ie, that is 40 times more. If 1 kg of drug dosed at 20mg/kg/day can be used to treat 1,000,000 1-day-old chicks, it will only serve 25,000 1-month-old broilers. Using a standard weight for broilers at about 1 kg (average weight at the time of treatment applied by ESVAC) to calculate a DDD would result in 50,000 DDDs which neither reflects the exposure of 1-day-old chicks nor the exposure of 1-month-old broilers. Therapy frequency, used for farm animals in Germany, on the other hand, has the drawback that it does not account for dosing as it only considers the number of animals that were treated with the drug, assuming that this happens at a standard dose. DDDs, in case the DDD are equivalent to the prescribed daily dose (PDD), and therapy frequency both may represent days under treatment, but the results may differ substantially when describing the same population. This is because one is based on counted treatment days and therefore the amount of active substance used cannot be deduced from the figure. DDD, on the other hand, is deduced from used amounts of drugs and therefore does not have to be equivalent to real treatment days because of the issues explained above. In summary, regarding antimicrobial use in animals, there is need for a measure that includes the name of the active ingredient, the amount of active ingredient, the number of treated animals, the population at risk, the weight of treated animals, the time under treatment and the duration of the therapeutic effect of the active ingredient in the body. If those are collected, most of the units that are currently in use should be deducible from the information with a reasonable accuracy. Likewise, besides DDDs, additional metrics should be collected in order to describe the different aspects of AMU in the human sector (eg days of treatment, number of prescriptions). However, the EU agreed data type is not always provided in the national or regional surveillance and monitoring system reports but other units such as DDD/1000 STAR-PU are.97 Those datasets that do not report their data at European level may have different units than the agreed ones, such as HIT or the SNIIRAM-SNDS system. The health-care system implemented in each country is of great relevance to understand the data collection. As an example, in England, it is common to dispense outpatient medications by hospitals, whereas in Northern Ireland these are usually prescribed by the GP at the request of secondary care specialists.98 Thus, there may be significant dissimilarities in the data collected across countries from homologous databases. The usage data per animal species is a more useful source than sales data; however, it is not consistently collected by all countries and also not provided to ESVAC yet. Collections of these data are laborious if they are not available in electronic formats. However, in most countries, prescription data are collected at least from a part of the animal population such as in the UK (collecting prescription data on a voluntary basis from pigs through eMB pigs and meat poultry through BPC stewardship), among others or Norway (mandatory data collection of prescription data from food-producing animals in VetReg and on a voluntary basis from companion animals). However, the VetReg system has been compared to the sales data and there is a proportion of underreporting among the prescription data recorded since the registry started.99

Tools for Comparison

JIACRA analyses comparing AMU in animals and humans to AMR in the sectors are accompanied by a long list of disclaimers but provide a valuable general overview. Major progress could further be improved by including prescription data, or at least use data by animal species. Diverse tools have been developed to assess correlations and associations between AMU and the development of AMR. As an example, the hospital-based ARVIA100 and Conso-Res are similar initiatives under development in the human sector launched by Germany and France, respectively. These efforts supplement the JIACRA reports and address the issue at the hospital level.

Conclusions

AMU and AMR Systems and Reports Need Further Harmonization to Support the One Health approach. Availability of prescription data or similar for animals would allow a more detailed analysis of antimicrobial treatment and resistance data, and enhance interpretation of the findings published in the JIACRA reports by EFSA, EMA and ECDC. In addition, major challenges need to be addressed in order to harmonize AMU and AMR data in the animal sector through uniform and robust standards that are either fully harmonized or allow for conversion of data to different units. To this end, for AMU, the name of the active ingredient, amount of active ingredient, number of treated animals, the population at risk, weight of treated individual, treatment duration and the duration of the therapeutic effect of the active ingredient in the body are needed. AMR collecting systems should have as far as possible a similar approach (ie standard, evaluation criteria, antibiotic panel, unit and data type (clinical-non clinical)) to be compared, evaluated and analyzed across countries and sectors. Otherwise, the data may not be directly assessed. Additionally, reports on AMR should capture quantitative values rather than data on the SIR level to allow for interpretation of data using different thresholds. However, there will be still an issue with comparability of quantitative data from different methodologies. ECDC, EMA and EFSA indicate that the antimicrobial panel described for livestock by Decision 2013/652/EU takes human relevance into consideration. Reporting at least part of the data adopting this standardized panel would ensure uniformity. Currently, there is some overlap between national and international systems (see Table 3). Therefore, it seems essential to join forces, promote synergies and plan the systems properly in order to avoid overlapping and address potential gaps making better use of the available resources. A first step to achieve the latter goal is to address the system harmonization that will substantially increase data sharing with the EU. It seems that some resources could be used more efficiently by reducing the number of overlapping systems. However, note that some overlap between systems may be useful for system and data validation. Preferably national AMU and AMR reports should be published annually and provided in one international agreed language (eg English) to facilitate access to published data.
  22 in total

1.  A pharmaco-epidemiological study of antibacterial treatments and bacterial diseases in Norwegian aquaculture from 2011 to 2016.

Authors:  Atle Lillehaug; Christine Børnes; Kari Grave
Journal:  Dis Aquat Organ       Date:  2018-05-07       Impact factor: 1.802

2.  Antibiotic consumption in Germany: first data of a newly implemented web-based tool for local and national surveillance.

Authors:  Birgitta Schweickert; Marcel Feig; Marc Schneider; Niklas Willrich; Michael Behnke; Luis Alberto Peña Diaz; Petra Gastmeier; Doreen Richter; Hans-Peter Blank; Tim Eckmanns; Muna Abu Sin
Journal:  J Antimicrob Chemother       Date:  2018-12-01       Impact factor: 5.790

3.  Surveillance of Antibiotic Use and Resistance in Intensive Care Units (SARI).

Authors:  Cornelius Remschmidt; Sandra Schneider; Elisabeth Meyer; Barbara Schroeren-Boersch; Petra Gastmeier; Frank Schwab
Journal:  Dtsch Arztebl Int       Date:  2017-12-15       Impact factor: 5.594

4.  French hospital discharge database (PMSI) and bacterial resistance: Is coding adapted to hospital epidemiology?

Authors:  L de Léotoing; F Barbier; A Dinh; D Breilh; G Chaize; A Vainchtock; L Levy-Bachelot; C Bensoussan; S Dramard; J Fernandes
Journal:  Med Mal Infect       Date:  2018-04-17       Impact factor: 2.152

5.  Assessment of the comparability of CLSI, EUCAST and Stokes antimicrobial susceptibility profiles for Escherichia coli uropathogenic isolates.

Authors:  C O'Halloran; N Walsh; M C O'Grady; L Barry; C Hooton; G D Corcoran; B Lucey
Journal:  Br J Biomed Sci       Date:  2017-12-06       Impact factor: 3.829

Review 6.  Surveillance and monitoring of antimicrobial resistance and antibiotic consumption in humans and animals.

Authors:  P Silley; S Simjee; S Schwarz
Journal:  Rev Sci Tech       Date:  2012-04       Impact factor: 1.181

7.  National laboratory-based surveillance system for antimicrobial resistance: a successful tool to support the control of antimicrobial resistance in the Netherlands.

Authors:  Wieke Altorf-van der Kuil; Annelot F Schoffelen; Sabine C de Greeff; Steven Ft Thijsen; H Jeroen Alblas; Daan W Notermans; Anne Lm Vlek; Marianne Ab van der Sande; Tjalling Leenstra
Journal:  Euro Surveill       Date:  2017-11

8.  Estimating Factors Related to Fluoroquinolone Resistance Based on One Health Perspective: Static and Dynamic Panel Data Analyses From Europe.

Authors:  Dandan Zhang; Youwen Cui; Xinping Zhang
Journal:  Front Pharmacol       Date:  2019-10-03       Impact factor: 5.810

9.  Reliable estimation of antimicrobial use and its evolution between 2010 and 2013 in French swine farms.

Authors:  Anne Hémonic; Claire Chauvin; Didier Delzescaux; Fabien Verliat; Isabelle Corrégé
Journal:  Porcine Health Manag       Date:  2018-04-17

10.  Antibiotic use on German pig farms - A longitudinal analysis for 2011, 2013 and 2014.

Authors:  Malin Hemme; Inga Ruddat; Maria Hartmann; Nicole Werner; Lisa van Rennings; Annemarie Käsbohrer; Lothar Kreienbrock
Journal:  PLoS One       Date:  2018-07-03       Impact factor: 3.240

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  12 in total

1.  The European Union Summary Report on Antimicrobial Resistance in zoonotic and indicator bacteria from humans, animals and food in 2019-2020.

Authors: 
Journal:  EFSA J       Date:  2022-03-29

2.  Electronic information systems for One Health surveillance of antimicrobial resistance: a systematic scoping review.

Authors:  Madalene Oberin; Skye Badger; Céline Faverjon; Angus Cameron; Melanie Bannister-Tyrrell
Journal:  BMJ Glob Health       Date:  2022-01

3.  Comparison of Phenotypical Antimicrobial Resistance between Clinical and Non-Clinical E. coli Isolates from Broilers, Turkeys and Calves in Four European Countries.

Authors:  Octavio Mesa-Varona; Rodolphe Mader; Martina Velasova; Jean-Yves Madec; Sophie A Granier; Agnes Perrin-Guyomard; Madelaine Norstrom; Heike Kaspar; Mirjam Grobbel; Eric Jouy; Muna F Anjum; Bernd-Alois Tenhagen
Journal:  Microorganisms       Date:  2021-03-25

4.  Survey on Antimicrobial Drug Use Practices in California Preweaned Dairy Calves.

Authors:  Emmanuel Okello; Deniece R Williams; Wagdy R ElAshmawy; Jaymes Adams; Richard V Pereira; Terry W Lehenbauer; Sharif S Aly
Journal:  Front Vet Sci       Date:  2021-04-22

5.  [Antimicrobial resistance in E. coli from different cattle populations in Germany].

Authors:  Bernd-Alois Tenhagen; Annemarie Käsbohrer; Mirjam Grobbel; Jens Hammerl; Heike Kaspar
Journal:  Tierarztl Prax Ausg G Grosstiere Nutztiere       Date:  2020-08-21       Impact factor: 0.488

6.  Wildlife as Sentinels of Antimicrobial Resistance in Germany?

Authors:  Carolina Plaza-Rodríguez; Katja Alt; Mirjam Grobbel; Jens Andre Hammerl; Alexandra Irrgang; Istvan Szabo; Kerstin Stingl; Elisabeth Schuh; Lars Wiehle; Beatrice Pfefferkorn; Steffen Naumann; Annemarie Kaesbohrer; Bernd-Alois Tenhagen
Journal:  Front Vet Sci       Date:  2021-01-27

7.  Outcome of Different Sequencing and Assembly Approaches on the Detection of Plasmids and Localization of Antimicrobial Resistance Genes in Commensal Escherichia coli.

Authors:  Katharina Juraschek; Maria Borowiak; Simon H Tausch; Burkhard Malorny; Annemarie Käsbohrer; Saria Otani; Stefan Schwarz; Diana Meemken; Carlus Deneke; Jens Andre Hammerl
Journal:  Microorganisms       Date:  2021-03-14

8.  Comparison of Consumption Data and Phenotypical Antimicrobial Resistance in E. coli Isolates of Human Urinary Samples and of Weaning and Fattening Pigs from Surveillance and Monitoring Systems in Germany.

Authors:  Octavio Mesa-Varona; Ides Boone; Matthias Flor; Tim Eckmanns; Heike Kaspar; Mirjam Grobbel; Bernd-Alois Tenhagen
Journal:  Antibiotics (Basel)       Date:  2021-12-27

9.  Awareness of Antimicrobial Resistance and Associated Factors among Layer Poultry Farmers in Zambia: Implications for Surveillance and Antimicrobial Stewardship Programs.

Authors:  Steward Mudenda; Sydney Malama; Musso Munyeme; Bernard Mudenda Hang'ombe; Geoffrey Mainda; Otridah Kapona; Moses Mukosha; Kaunda Yamba; Flavien Nsoni Bumbangi; Ruth Lindizyani Mfune; Victor Daka; Darlington Mwenya; Prudence Mpundu; Godfrey Siluchali; John Bwalya Muma
Journal:  Antibiotics (Basel)       Date:  2022-03-14

10.  Pathogenic E. coli from Cattle as a Reservoir of Resistance Genes to Various Groups of Antibiotics.

Authors:  Alexandra Tabaran; Virginie Soulageon; Flore Chirila; Oana Lucia Reget; Marian Mihaiu; Mihai Borzan; Sorin Daniel Dan
Journal:  Antibiotics (Basel)       Date:  2022-03-17
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