| Literature DB >> 32513200 |
S Rogers Van Katwyk1,2, S J Hoffman3,4, M Mendelson5, M Taljaard6,7, J M Grimshaw7,8.
Abstract
Antimicrobial resistance (AMR) has the potential to threaten tens of millions of lives and poses major global economic and development challenges. As the AMR threat grows, it is increasingly important to strengthen the scientific evidence base on AMR policy interventions, to learn from existing policies and programmes, and to integrate scientific evidence into the global AMR response.While rigorous evaluations of AMR policy interventions are the ideal, they are far from the current reality. To strengthen this evidence base, we describe a framework for planning, conducting and disseminating research on AMR policy interventions. The framework identifies challenges in AMR research, areas for enhanced coordination and cooperation with decision-makers, and best practices in the design of impact evaluations for AMR policies.This framework offers a path forward, enabling increased local and global cooperation, and overcoming common limitations in existing research on AMR policy interventions.Entities:
Keywords: Antimicrobial resistance; evaluation; evidence-informed policy; health policy
Mesh:
Substances:
Year: 2020 PMID: 32513200 PMCID: PMC7278195 DOI: 10.1186/s12961-020-00549-1
Source DB: PubMed Journal: Health Res Policy Syst ISSN: 1478-4505
Fig. 1Framework for prioritising, conducting and disseminating AMR policy interventions
Fig. 2Considerations when choosing a prospective evaluation design for AMR policy interventions
Fig. 3Recommended study designs for evaluating AMR policy interventions
Framework and recommendations for planning, conducting and disseminating evaluations of AMR policy interventions
| Prioritise research to study what works, when it works, why it works, and what elements are necessary to its success | Engage with the research community and make your evidence needs clear | Funding support for formal prioritisation processes Targeted grant competitions to drive research in priority areas | Require that research reports summarise the evidence that was already known on a topic and show systematic review evidence that supports the conduct of an intervention | |
| Inform interventions using rigorous systematic reviews | Partner with researchers to do evidence syntheses to inform policy-making | Strategic funding support for systematic reviews, evidence syntheses, living systematic reviews Require evaluations to be justified by systematic reviews | Support the publication of systematic review protocols, systematic reviews, evidence syntheses and living systematic reviews | |
| Work with other stakeholders to make rigorous evaluations of all AMR programmes the norm | Working with researchers, plan the evaluation strategy for a programme or policy before launching the programme or policy | Strategic funding support for evaluations of policy interventions and for policy-research partnerships to facilitate this research | Require authors to register study protocols | |
| Ensure that research addresses all informational needs of policy-makers (e.g. including equity and cost-effectiveness) | Decide in advance what information and evidence you need to inform policy-making | Encourage integrated knowledge translation and collaboration with stakeholders when awarding grants to support AMR policy research | Ensure timely peer review and publication of research to ensure that evidence is available to support stakeholders | |
| Use theory, frameworks and logic models in the intervention design phase to frame how and why an intervention is expected to work | Use theory, frameworks and logic models when planning policy interventions to clarify how and why an intervention is expected to work | Do not fund interventions that do not employ theory, frameworks or logic models to describe how and why the intervention is expected to work | Require authors to report on their use of theory, frameworks, and logic in the design and conduct of AMR interventions | |
| Use the most rigorous possible evaluation designs to minimise bias and maximise generalisability | Embrace research evaluation to understand what, when, why and how and intervention works | Studies using weak study designs (e.g. uncontrolled before and after designs) should not be funded | Refrain from publishing studies that use poor quality methods such as uncontrolled before and after studies for evaluation of AMR interventions | |
| Conduct head-to-head comparisons of intervention variations | Promote radical incrementalism (based on rigorous evaluation) to enhance the effectiveness of extant policies | Provide funding support for head-to-head trials | Publish research with neutral and negative results | |
| Develop a set of core outcome measures for AMR research | Partner with researchers to ensure that core outcome measures address your key evidence needs | Funding support for the development of an AMR core outcome set Require use of core outcome measures in funded applications | Require researchers to use the core outcome measures in published evaluations | |
Commit to full and transparent reporting of studies Use reporting guidelines and checklists to fully report a study Register intervention protocols to reduce the risk of publication bias Avoid ‘spin’ especially with weak evaluative designs | Publish or make available reports on the effectiveness of policy interventions and efforts to improve them | Make public the details of funded interventions Require full and transparent reporting of studies Require researchers to register the protocols of their interventions | Require authors to use the relevant research reporting guidelines and checklists Publish research with neutral and negative results | |
Disseminate research widely and embrace open data and open access opportunities Make datasets available to other researchers through data repositories Develop cross programme collaborations to encourage learning and efficient knowledge generation | Take advantage of opportunities to borrow and adapt policy interventions from other contexts Make available data on policy interventions in your setting to promote uptake in other contexts and ensure that ineffective policy is not duplicated in other settings | Provide funding for open access publishing, open data-sharing platforms, cross programme collaborations and living systematic reviews | Increased commitment and support for open access publication |
AMR antimicrobial resistance
Box 1
| Current state of the evidence base on AMR policy interventions | |
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Around the world, 129 governments are currently in the process of developing or implementing a National Action Plan to address antimicrobial resistance [ Global capacity for AMR surveillance is lacking; discrepancies between methods and monitoring systems, data quality concerns and lack of representativeness make it challenging to compare AMR data between countries [ Many evaluations of AMR policy interventions are conducted retrospectively by academics who were not involved in the design or implementation of the intervention [ A systematic review of experimental and quasi-experimental studies evaluating government policy interventions to reduce the use of antimicrobials [ Another systematic review of 221 interventions for improving antibiotic prescribing among hospital inpatients found the quality of the reporting for the 163 non-randomised studies was so poor that it was difficult for professionals to use the research findings or to implement interventions that were shown to be useful; further, this systematic review found that no useful evidence could be gleaned from studies using controlled before–after and non-randomised trial designs [ Reporting of AMR policy intervention studies is weak; studies often fail to describe the intervention in sufficient detail for replication and many do not report the reason the intervention is expected to work [ In the broader field of public health, researchers have estimated that at least 50% of published research is not sufficiently clear, complete or accurate for others to interpret or use [ There are no standardised measures and metrics for AMR research; many AMR intervention studies report antimicrobial use in defined daily dose per 1000 population or a simple prescribing rate [ |
Box 2
| The APEASE Criteria [ | |
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