| Literature DB >> 34111583 |
Cherry Lim1, Elizabeth A Ashley2, Raph L Hamers3, Paul Turner4, Thomas Kesteman5, Samuel Akech6, Alejandra Corso7, Mayfong Mayxay8, Iruka N Okeke9, Direk Limmathurotsakul10, H Rogier van Doorn11.
Abstract
BACKGROUND: Routine microbiology results are a valuable source of antimicrobial resistance (AMR) surveillance data in low- and middle-income countries (LMICs) as well as in high-income countries. Different approaches and strategies are used to generate AMR surveillance data.Entities:
Keywords: Antimicrobial resistance; Drug-resistant infections; Low- and middle-income countries; Routine microbiology; Surveillance
Mesh:
Substances:
Year: 2021 PMID: 34111583 PMCID: PMC7613529 DOI: 10.1016/j.cmi.2021.05.037
Source DB: PubMed Journal: Clin Microbiol Infect ISSN: 1198-743X Impact factor: 13.310
Summary on strength and weakness of various strategies for antimicrobial resistance (AMR) surveillance
| Strength | Weakness | |
|---|---|---|
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| Case-finding based on specimens sent routinely to laboratories for clinical purposes | Relatively easy to implement and sustain in LMICs Generate basic data when only laboratory data is available Generate informative data (e.g. origin of infection) when epidemiological and clinical data (e.g. hospital admission date) are also available Generate useful statistics including proportion of samples with growth of non-susceptible bacteria of the species and antibiotic under surveillance per specimen type; proportion of sampled patients with positive culture of any pathogenic bacteria per specimen type (in the cases when data on negative growth is available); and frequency of patients with growth of non-susceptible bacteria per specimen type, species and antibiotic [ Capable of generating data for outbreak detection, but potential influences on the data due to the use of microbiology testing and empirical antibiotic prescription behaviour should considered carefully | Estimates on incidence of infection and proportion of AMR can be influenced by utilization of microbiology testing and empiric antibiotic prescription behaviour Comparability across space and time is often limited in LMIC settings Capability of providing local evidence for empiric treatment guidelines and clinical decision-making is limited, especially in cases when there is a lack of clinical data |
| Case-based surveillance of clinical syndromes | Relatively robust to variations in use of microbiology testing as case definitions allow more systematic and objective data collection Informative data can be generated to inform clinical decisions Capable of addressing different objectives of AMR surveillance including (a) providing local evidence for empiric treatment guidelines; (b) benchmarking to assess the effect of stewardship interventions; (c) estimating health impact of AMR infection; and (d) tracing differences and changes in space and time |
Can be labour-intensive and costly to implement and sustain in LMICs Needs investments on training, guidelines, and diagnostic capacity in LMIC settings |
|
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| DRI: include consecutive samples | - Easy to perform | - At risk of bias due to clinical sampling behaviour |
| DRI: lot quality assurance sampling (LQAS) | - Requires small sample size for informative estimates to inform empiric treatment policy | - Definition of thresholds defining the ‘low’ or ‘high’ prevalence of resistance could be challenging to determine |
| Comparator cohort: exposure density sampling | - Ensures a more accurate estimation for health burdens due to DRI | - Would need training and detailed protocol for LMIC settings |
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| Report susceptibility to individual antibiotic | - Easy to generate the statistics | - Limited capability in translating to clinical practice |
| Weighted-incidence syndromic combination antibiogram (WISCA) | - Statistics generated can be translated to clinical practice | - May be difficult to generate in LMICs where there is a lack of expert and open-access applications to process data |
AST, antibiotic susceptibility testing; DRI, drug-resistant infection; LMIC, low- and middle-income countries.
Strategies for identifying antimicrobial-resistant infections used by antimicrobial resistance (AMR) surveillance networks (a list adapted from Ashley et al., 2018 [7], stratified by strategy used and arranged in alphabetical order) in low- and middle-income countries (LMICs)
| Name | Year | Target infections/organisms | Strategy used to identify AMR cases |
|---|---|---|---|
| A Clinically Oriented Antimicrobial Resistance Surveillance Network (ACORN) | 2019 ongoing | Sepsis; meningitis; pneumonia (both community-acquired and hospital-acquired) | Case-based surveillance of clinical syndrome |
| Antimicrobial Resistance Epidemiological Survey on Cystitis (ARESC), European Society for Infection in Urology | 2003—2006 | Uncomplicated cystitis | Case-based surveillance of clinical syndrome |
| Bacterial Infections and Antibiotic-Resistant Diseases Among Young Children in Low-Income Countries (BIRDY), Institut Pasteur International Network | 2012 ongoing | Sepsis; meningitis; pneumonia | Case-based surveillance of clinical syndrome |
| Burden of Antibiotic Resistance in Neonates from Developing Societies | 2015—2018 | Neonatal sepsis | Case-based surveillance of clinical syndrome |
| Clinical Information Network—Antimicrobial Resistance (CINAMR) project | 2021—2023 | A project that may feed data into other initiative such as ACORN network and WHO GLASS | Case-based surveillance of clinical syndrome |
| Diseases of the Most Impoverished Typhoid Study Group and Multicentre Shigellosis Surveillance Study (DOMI), International Vaccine Institute, Republic of Korea | 2001 —2004 | Typhoid fever | Case-based surveillance of clinical syndrome |
| Global Point Prevalence Survey of Antimicrobial Consumption and Resistance (Global-PPS), University of Antwerp | 2015 ongoing | Hospital-acquired infections | Case-based surveillance of clinical syndrome |
| Hib Impact Project (Pediatric Bacterial Meningitis Surveillance Network) | 2006—2008 | Meningitis | Case-based surveillance of clinical syndrome |
| International Nosocomial Infection Control Consortium (INICC) | 2002 ongoing | Clinically defined pneumonia; laboratory-confirmed bloodstream infection; clinical sepsis; symptomatic urinary tract infection | Case-based surveillance of clinical syndrome |
| Proof-of-Principle routine diagnostics project for antimicrobial resistance surveillance (PoP project), CAESAR | 2018 ongoing | Suspected bloodstream infections | Case-based surveillance of clinical syndrome |
| South Asian Pneumococcal Alliance (SAPNA), GAVI Alliance | 2004—2009 | Sepsis; meningitis; pneumonia (children 2—5 years old) | Case-based surveillance of clinical syndrome |
| Surgical Unit-based Safety Programme (SUSP) | 2013—2015 | Surgical site infection | Case-based surveillance of clinical syndrome |
| The Alexander Project, GlaxoSmithKline | 1992—2002 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Asian Network for Surveillance of Resistant Pathogens (ANSORP), Sungkyunkwan University, Korea | 1996 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Antibiotic Resistance in the Mediterranean Region (ARMed), Infection Control Unit, Mater Dei Hospital, Msida, Malta | 2003—2007 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| ARTEMIS Global Antifungal Surveillance Programme (ARTEMIS) | 1997—2005 | Fungi | Case-finding based on specimens sent to laboratory for clinical purposes |
| Assessing Worldwide Antimicrobial Resistance and Evaluation Programme (AWARE), International Health Management Associates, Inc. (IHMA) | 2012 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Central Asian and Eastern European Surveillance of Antimicrobial Resistance (CAESAR) | 2013 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Caribbean Public Health Agency (CARPHA) | 2013 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Community-Acquired Respiratory Tract Infection Pathogen Surveillance (CARTIPS) | 2009—2010 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Centre for Disease Dynamics, Economics and Policy (CDDEP)/ResistanceMap | 1999 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Community-Based Surveillance of Antimicrobial Use and Resistance in Resource-Constrained Settings, WHO | 2002—2005 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Comparative Activity of Carbapenem Testing (COMPACT and COMPACT II), Janssen Asia-Pacific | 2008—2010 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| International Daptomycin Surveillance Programmes, JMI Laboratories | 2011 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| European Antimicrobial Resistance Surveillance Network (EARS-Net), ECDC | 1999 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Enter-Net International Surveillance Network, Health Protection Agency, UK | 1993—2007 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Food- and Waterborne Diseases and Zoonoses Network (FWD-Net), ECDC | 2007 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Gonococcal Antimicrobial Surveillance Programme (GASP), WHO | 1992 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| International Network For Optimal Resistance Monitoring (INFORM), IHMA | 2012—2014 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| International Network for the Study and Prevention of Emerging Antimicrobial Resistance (INSPEAR), US CDC | 1998—2010 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| In Vitro Activity of Oral Antimicrobial Agents Against Pathogens Associated With Community-Acquired Upper Respiratory Tract and Urinary Tract Infections: A Five Country Surveillance Study, IHMA | 2012—2013 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Multiyear, Multinational Survey of the Incidence and Global Distribution of MBL-Producing Enterobacteriaceae and Pseudomonas aeruginosa, IHMA | 2012—2014 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Minocycline activity tested against | 2013 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Meropenem Yearly Susceptibility Test Information Collection (MYSTIC), AstraZeneca | 1997—2008 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Mortality from Bacterial Infections Resistant to Antibiotics (MBIRA) | 2020 ongoing | Gram-negative enteric bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| NosoMed Pilot Survey in the Eastern Mediterranean Area, Universite Claude Bernard Lyon I | 2003—2004 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Programme to Assess Ceftolozane/Tazobactam Susceptibility (PACTS), Cubist Pharmaceuticals | 2012 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Pan-European Antimicrobial Resistance Using Local Surveillance (PEARLS), Wyeth Pharmaceuticals | 2001—2002 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Prospective Resistant Organism Tracking and Epidemiology for the Ketolide Telithromycin (PROTEKT), Sanofi-Aventis | 1999—2004 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Red Latinoamericana de Vigilancia de la Resistencia a los Antimicrobianos (ReLAVRA), PAHO | 1996 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Study on Antimicrobial Resistance in | 1996 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| SENTRY Antimicrobial Surveillance Programme, JMI laboratories | 1997 ongoing | Bacteria, fungi | Case-finding based on specimens sent to laboratory for clinical purposes |
| Sistema de Redes de Vigilancia de los Agentes Responsables de Neumonias y Meningitis Bacterianas (SIREVA and SIREVA II), PAHO | 1993—onging | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Study for Monitoring Antimicrobial Resistance Trends (SMART), Merck & Co. Inc. | 2002—2011 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Survey of Antibiotic Resistance (SOAR), GlaxoSmithKline | 2002 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| International Solithromycin Surveillance Programmes, JMI Laboratories, USA | 2011 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| TARGETed Surveillance Study, GR Micro Ltd, UK | 2003—2007 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Tigecycline Evaluation and Surveillance Trial (TEST), IHMA | 2004 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| Typhoid Fever Surveillance in Africa Programme (TSAP), International Vaccine Institute, Korea | 2009 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| WHO Western Pacific Regional Programme for Surveillance of Antimicrobial Resistance | 1991—1998 | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
| ZyvoxVR Annual Appraisal of Potency and Spectrum (ZAAPS), JMI Laboratories, USA and Pfizer | 2004 ongoing | Bacteria | Case-finding based on specimens sent to laboratory for clinical purposes |
A tentative timeline (https://sedric.org.uk/amr-surveillance-projects/).