Lambraki Irene Anna, Majowicz Shannon Elizabeth, Parmley Elizabeth Jane, Wernli Didier, Léger Anaïs, Graells Tiscar, Cousins Melanie, Harbarth Stephan, Carson Carolee, Henriksson Patrik, Troell Max, Jørgensen Peter Søgaard
School of Public Health and Health Systems, University of Waterloo, Waterloo, ON, Canada.
Department of Population Medicine, Ontario Veterinary College, University of Guelph, Guelph, ON, Canada.
JMIR Res Protoc. 2021 Jun 10;10(6):e24378. doi: 10.2196/24378.
Antimicrobial resistance (AMR) is an escalating global crisis with serious health, social, and economic consequences. Building social-ecological system resilience to reduce AMR and mitigate its impacts is critical.
The aim of this study is to compare and assess interventions that address AMR across the One Health spectrum and determine what actions will help to build social and ecological capacity and readiness to sustainably tackle AMR.
We will apply social-ecological resilience theory to AMR in an explicit One Health context using mixed methods and identify interventions that address AMR and its key pressure antimicrobial use (AMU) identified in the scientific literature and in the gray literature using a web-based survey. Intervention impacts and the factors that challenge or contribute to the success of interventions will be determined, triangulated against expert opinions in participatory workshops and complemented using quantitative time series analyses. We will then identify indicators using regression modeling, which can predict national and regional AMU or AMR dynamics across animal and human health. Together, these analyses will help to quantify the causal loop diagrams (CLDs) of AMR in the European and Southeast Asian food system contexts that are developed by diverse stakeholders in participatory workshops. Then, using these CLDs, the long-term impacts of selected interventions on AMR will be explored under alternate future scenarios via simulation modeling and participatory workshops. A publicly available learning platform housing information about interventions on AMR from a One Health perspective will be developed to help decision makers identify promising interventions for application in their jurisdictions.
To date, 669 interventions have been identified in the scientific literature, 891 participants received a survey invitation, and 4 expert feedback and 4 model-building workshops have been conducted. Time series analysis, regression modeling of national and regional indicators of AMR dynamics, and scenario modeling activities are anticipated to be completed by spring 2022. Ethical approval has been obtained from the University of Waterloo's Office of Research Ethics (ethics numbers 40519 and 41781).
This paper provides an example of how to study complex problems such as AMR, which require the integration of knowledge across sectors and disciplines to find sustainable solutions. We anticipate that our study will contribute to a better understanding of what actions to take and in what contexts to ensure long-term success in mitigating AMR and its impact and provide useful tools (eg, CLDs, simulation models, and public databases of compiled interventions) to guide management and policy decisions.
INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): DERR1-10.2196/24378.
抗菌药物耐药性(AMR)是一场不断升级的全球危机,会带来严重的健康、社会和经济后果。增强社会生态系统的复原力以减少AMR并减轻其影响至关重要。
本研究旨在比较和评估在“同一健康”框架下应对AMR的干预措施,并确定哪些行动有助于建设社会和生态能力以及做好可持续应对AMR的准备。
我们将在明确的“同一健康”背景下,运用社会生态复原力理论研究AMR,采用混合方法,并通过基于网络的调查,在科学文献和灰色文献中识别应对AMR及其关键压力源——抗菌药物使用(AMU)的干预措施。将确定干预措施的影响以及挑战或促成干预措施成功的因素,并与参与式研讨会上的专家意见进行三角互证,同时辅以定量时间序列分析。然后,我们将使用回归模型确定指标,这些指标可预测动物和人类健康领域的国家和地区AMU或AMR动态。这些分析将共同帮助量化欧洲和东南亚食品系统背景下AMR的因果循环图(CLD),这些图是由参与式研讨会上的不同利益相关者绘制的。然后,利用这些CLD,通过模拟建模和参与式研讨会,在不同的未来情景下探索选定干预措施对AMR的长期影响。将开发一个公开的学习平台,从“同一健康”角度提供有关AMR干预措施的信息,以帮助决策者确定有前景的干预措施,供其在辖区内应用。
迄今为止,已在科学文献中识别出669项干预措施,891名参与者收到了调查邀请,并举办了4次专家反馈和4次模型构建研讨会。预计时间序列分析、AMR动态国家和地区指标的回归建模以及情景建模活动将于2022年春季完成。已获得滑铁卢大学研究伦理办公室的伦理批准(伦理编号40519和41781)。
本文提供了一个如何研究AMR等复杂问题的示例,这类问题需要整合跨部门和跨学科的知识来寻找可持续的解决方案。我们预计,我们的研究将有助于更好地理解应采取哪些行动以及在何种背景下采取行动,以确保在减轻AMR及其影响方面取得长期成功,并提供有用的工具(如CLD、模拟模型和已汇编干预措施的公共数据库)来指导管理和政策决策。
国际注册报告识别号(IRRID):DERR1-10.2196/24378