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Publication Years
3215
4863
664
38
2
Category
3128
693
574
443
330
150
110
2
Toolboxes
1236
563
500
489
449
397
346
285
238
209
196
168
165
163
133
128
127
116
105
98
84
84
58
54
15
4
2
Dziva Chikwari et al. Implementation Science (2018) 13:70 https://doi.org/10.1186/s13012-018-0762-5
The State of the world’s nursing 2020 report provides the latest, most up-to-date evidence on and policy options for the global nursing workforce.
BACKGROUND: Growing political attention to antimicrobial resistance (AMR) offers a rare opportunity for achieving meaningful action. Many governments have developed national AMR action plans, but most have not yet implemented policy interventions to reduce antimicrobial overuse. A systematic evidenc
...
e map can support governments in making evidence-informed decisions about implementing programs to reduce AMR, by identifying, describing, and assessing the full range of evaluated government policy options to reduce antimicrobial use in humans.
METHODS AND FINDINGS: Seven databases were searched from inception to January 28, 2019, (MEDLINE, CINAHL, EMBASE, PAIS Index, Cochrane Central Register of Controlled Trials, Web of Science, and PubMed). We identified studies that (1) clearly described a government policy intervention aimed at reducing human antimicrobial use, and (2) applied a quantitative design to measure the impact. We found 69 unique evaluations of government policy interventions carried out across 4 of the 6 WHO regions. These evaluations included randomized controlled trials (n = 4), non-randomized controlled trials (n = 3), controlled before-and-after designs (n = 7), interrupted time series designs (n = 25), uncontrolled before-and-after designs (n = 18), descriptive designs (n = 10), and cohort designs (n = 2). From these we identified 17 unique policy options for governments to reduce the human use of antimicrobials. Many studies evaluated public awareness campaigns (n = 17) and antimicrobial guidelines (n = 13); however, others offered different policy options such as professional regulation, restricted reimbursement, pay for performance, and prescription requirements. Identifying these policies can inform the development of future policies and evaluations in different contexts and health systems. Limitations of our study include the possible omission of unpublished initiatives, and that policies not evaluated with respect to antimicrobial use have not been captured in this review.
CONCLUSIONS: To our knowledge this is the first study to provide policy makers with synthesized evidence on specific government policy interventions addressing AMR. In the future, governments should ensure that AMR policy interventions are evaluated using rigorous study designs and that study results are published.
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The current document provides the background, justification and objectives for the revision of WHO policy on LF-LAM. It provides details on the index test (AlereLAM) being assessed. It also describes the process of evidence retrieval, quality assess
...
ment and grading; formulation of the recommendations; and GDG decision-making. Finally, the document presents policy recommendations and related remarks.
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The Privacy, Confidentiality and Security Assessment Tool - User Manual
UNAIDS (Joint United Nations Programme on HIVAIDS); PEPFAR
UNAIDS (Joint United Nations Programme on HIVAIDS); PEPFAR
(2019)
C2
UNAIDS / 2019 Guidance
Conflict, in its active or latent forms, is everywhere. The COVID-19 pandemic has demonstrated that public health emergencies can strike any country at any time. Given the universality of and interconnections between conflict, humanitarian crises,
...
and public health emergencies, practitioners trained in one sector or the other are being called upon to understand how to navigate all of these emergencies at once.
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The Global guidance framework for the responsible use of the life sciences: mitigating biorisks and governing dual-use research (the framework) aims to provide values and principles, tools
...
and mechanisms to support Member States and key stakeholders to mitigate and prevent biorisks and govern dual-use research.
Digital publication you can download the English, French, Spanish and Russian version
The framework adopts the One health approach and focuses on the role that responsible life sciences research can play in preventing and mitigating risks caused by accidents, inadvertent or deliberate misuse with the intention to cause harm to humans, nonhuman animals, plants and agriculture, and the environment.
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Plos Neglected Tropical Diseases 8(11): e3229 (20 November 2014)
13 July 2021
The module provides an overview of factors to consider when monitoring the safety of COVID-19 vaccines administered to pregnant and breastfeeding women. It describes how national routine AEFI surveillance should be adapted to cater fo
...
r this specific group of population using both passive and active surveillance methods. Specific considerations and limitations of each method are provided as well as tools for implementation.
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interim guidance, 19 July 2021 (arabic version)
Access to health workers who are fit for purpose, motivated and protected is a fundamental force of health service delivery and the achievement of universal health coverage
...
and the health and health-related Sustainable Development Goals. Data and knowledge of the distribution, skill mix and future development needs of the health workforce can mean the difference between enabling or impeding health systems performance, inclusive economic growth and global health security preparedness and response
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