A systematic review of antimicrobial resistance transmission inferences at the human-livestock interface in Africa

Abstract The transmission of antibiotic-resistant bacteria across multi-species networks is a contributor to the global challenge of antimicrobial resistance (AMR). AMR transmission inferencing, a retrospective process, is critical for refining the evidence underpinning current control strategies. I...

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Main Authors: Frank Chilanga, Keneth I. Kasozi, Stella Mazeri, Gavin K. Paterson, Adrian Muwonge
Format: Article
Language:English
Published: Nature Portfolio 2025-06-01
Series:npj Antimicrobials and Resistance
Online Access:https://doi.org/10.1038/s44259-025-00126-y
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author Frank Chilanga
Keneth I. Kasozi
Stella Mazeri
Gavin K. Paterson
Adrian Muwonge
author_facet Frank Chilanga
Keneth I. Kasozi
Stella Mazeri
Gavin K. Paterson
Adrian Muwonge
author_sort Frank Chilanga
collection DOAJ
description Abstract The transmission of antibiotic-resistant bacteria across multi-species networks is a contributor to the global challenge of antimicrobial resistance (AMR). AMR transmission inferencing, a retrospective process, is critical for refining the evidence underpinning current control strategies. In Africa, where AMR is associated with an estimated 1.05 million deaths annually, it is crucial to evaluate how AMR transmission inferences are made and to consider their implications for achieving national action plan goals. Key questions that need to be addressed in these settings include: (a) How is transmission defined? (b) How are transmission studies designed? (c) Which pathogens or commensal bacteria are used to infer AMR transmission? (d) How granular and reliable is the data used to make transmission inferences? (e) Can the frequency of transmission events be quantified? and (f) Can the directionality of transmission between hosts be established? In this systematic review, we examine the evidence informing current control strategies by analysing 34 studies from Africa, involving 18,604 human and livestock samples and 16 sentinel bacteria. Transmission inferences largely rely on cross-sectional studies with limited sample representativeness. Gram-negative bacteria, mainly Escherichia coli (64.71%), form the basis of most inferences. Most inferences remain qualitative, and analyses often overlook uncertainty quantification. In addition, studies are potentially underpowered as only 25% of collected samples are used for transmission inferencing. Based on this analysis, we propose a framework that leverages the growing use of genomic epidemiology to infer AMR transmission with an aim of supporting the design and evaluation of targeted interventions.
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spelling doaj-art-6344beff40484f10a2efe1c4663c85d02025-08-20T04:01:35ZengNature Portfolionpj Antimicrobials and Resistance2731-87452025-06-013111110.1038/s44259-025-00126-yA systematic review of antimicrobial resistance transmission inferences at the human-livestock interface in AfricaFrank Chilanga0Keneth I. Kasozi1Stella Mazeri2Gavin K. Paterson3Adrian Muwonge4The Digital One Health Laboratory, Royal (Dick) School of Veterinary Studies and The Roslin Institute, Easter Bush CampusInfection Medicine, Deanery of Biomedical Sciences, Edinburgh Medical School, College of Medicine and Veterinary Medicine, The University of EdinburghRoyal (Dick) School of Veterinary Studies and The Roslin Institute, Easter Bush CampusRoyal (Dick) School of Veterinary Studies and The Roslin Institute, Easter Bush CampusThe Digital One Health Laboratory, Royal (Dick) School of Veterinary Studies and The Roslin Institute, Easter Bush CampusAbstract The transmission of antibiotic-resistant bacteria across multi-species networks is a contributor to the global challenge of antimicrobial resistance (AMR). AMR transmission inferencing, a retrospective process, is critical for refining the evidence underpinning current control strategies. In Africa, where AMR is associated with an estimated 1.05 million deaths annually, it is crucial to evaluate how AMR transmission inferences are made and to consider their implications for achieving national action plan goals. Key questions that need to be addressed in these settings include: (a) How is transmission defined? (b) How are transmission studies designed? (c) Which pathogens or commensal bacteria are used to infer AMR transmission? (d) How granular and reliable is the data used to make transmission inferences? (e) Can the frequency of transmission events be quantified? and (f) Can the directionality of transmission between hosts be established? In this systematic review, we examine the evidence informing current control strategies by analysing 34 studies from Africa, involving 18,604 human and livestock samples and 16 sentinel bacteria. Transmission inferences largely rely on cross-sectional studies with limited sample representativeness. Gram-negative bacteria, mainly Escherichia coli (64.71%), form the basis of most inferences. Most inferences remain qualitative, and analyses often overlook uncertainty quantification. In addition, studies are potentially underpowered as only 25% of collected samples are used for transmission inferencing. Based on this analysis, we propose a framework that leverages the growing use of genomic epidemiology to infer AMR transmission with an aim of supporting the design and evaluation of targeted interventions.https://doi.org/10.1038/s44259-025-00126-y
spellingShingle Frank Chilanga
Keneth I. Kasozi
Stella Mazeri
Gavin K. Paterson
Adrian Muwonge
A systematic review of antimicrobial resistance transmission inferences at the human-livestock interface in Africa
npj Antimicrobials and Resistance
title A systematic review of antimicrobial resistance transmission inferences at the human-livestock interface in Africa
title_full A systematic review of antimicrobial resistance transmission inferences at the human-livestock interface in Africa
title_fullStr A systematic review of antimicrobial resistance transmission inferences at the human-livestock interface in Africa
title_full_unstemmed A systematic review of antimicrobial resistance transmission inferences at the human-livestock interface in Africa
title_short A systematic review of antimicrobial resistance transmission inferences at the human-livestock interface in Africa
title_sort systematic review of antimicrobial resistance transmission inferences at the human livestock interface in africa
url https://doi.org/10.1038/s44259-025-00126-y
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