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Toolboxes
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2
Integrated Management of Acute Malnutrition National Guidelines
Accessed 1 October 2020
The Guidelines on promotive and preventive mental health interventions for adolescents - Helping Adolescents thrive (HAT), provide evidence-informed recommendations on psychosocial interventions to promote mental health, prevent mental disorders, and reduce self-harm and other risk behaviours among
...
adolescents.
The HAT Guidelines aims to inform policy development, service planning and the strengthening of health and education systems, and facilitate mainstreaming of adolescent mental health promotion and prevention strategies across sectors and delivery platforms.
more
Whole-genome sequencing (WGS) provides a vast amount of information and the highest possible resolution for pathogen subtyping. The application of WGS for global surveillance can provide information on the early emergence and spread of AMR and further inform timely policy development on AMR control.
...
Sequencing data emanating from AMR surveillance may provide key information to guide the development of rapid diagnostic tools for better and more rapid characterization of AMR, and thus complement phenotypic methods. This document addresses the applications of WGS for AMR surveillance, including the benefits and limitations of current WGS technologies
more
This checklist is the first step in identifying and prioritizing areas of action for improving the protection of health and safety of health workers in line with WHO–ILO Global Framework for National Occupational Health Programmes for Health Workers.
It is designed to be filled out in discussio
...
n with management, responsible officers for occupational health, environmental health, infection prevention and control, human resources and representatives of workers in the health facility. This participatory approach will provide a variety of perspectives and a more comprehensive basis for identifying the existing preventive measures, possible problems and solutions for continuous improvement.
more
The rapid arrival of millions of asylum seekers and migrants in Europe in 2015–16 forced cities both large and small to rethink their approach to immigrant inclusion.
Conflict, climate crisis and COVID-19 pose great threats to the health of women and children.
Guidance on pooled testing for severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2)
recommended
The purpose of this document is to provide guidance on the use of pooled sample testing strategy in coronavirus disease (COVID-19)
testing laboratories of the African Union Member States for scaling up SARS-CoV-2 nucleic acid testing capacity with the available resources. The current document descr
...
ibes the effect of factors such as the prevalence of COVID-19 in the population to be tested, the homogeneity of pools, and the sensitivity of the molecular test in optimal pool size determination. It also highlights the importance of monitoring the prevalence of COVID-19 in a population to be tested and proper validation of the test, to limit the potential for false-negative results. Validation studies to determine the optimal pool size by testing laboratories are recommended as the optimum approach. A safe, simple ‘two-stage pooling’ option has been indicated in this guidance to be used by laboratories until such validation can be achieved.
more
This document aims to provide guidance to healthcare facilities and healthcare providers in the European Union/European Economic Area (EU/EEA) and the United Kingdom (UK) on preparedness and infection prevention and control (IPC) measures for the management of possible and confirmed cases of COVID-1
...
9 in healthcare settings, including long-term care facilities (LTCFs). In addition, this document addresses the management of clinical diagnostic specimens at laboratories in the EU/EEA. This is the sixth update of the ECDC guidance on ‘Infection prevention and control and preparedness for COVID-19 in healthcare settings’, and replaces the document dated 6 October 2020.
more
Non-pharmaceutical interventions (NPI) are public health measures that aim to prevent and/or control SARS-CoV-2 transmission in the community. As long as there is no effective and safe vaccine to protect those at risk of severe COVID-19, NPI are the most effective public health interventions against
...
COVID-19. These ECDC guidelines detail available options for NPI in various epidemiologic scenarios, assess the evidence for their effectiveness and address implementation issues, including potential barriers and facilitators.
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COVID-19 has resulted in an unprecedented global crisis. As the pandemic spreads and countries around the world continue to struggle to contain its health and socio-economic consequences, UNRWA is issuing a new humanitarian appeal from August through December 2020 to address the worst impacts of the
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pandemic on Palestine refugees across the Agency’s five fields of operation. Through this appeal the Agency seeks US$ 94.6 million. The funds requested in this appeal are additional to the previous UNRWA COVID-19 appeal for March to July.
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The COVID-19 pandemic has provided a dramatic illustration of the extent to which the health of people, animals and the environment is interdependent, which is why “One Health” is now high on the political agenda. This document provides an overview of KfW Development Bank’s approach to promoti
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ng human, animal and environmental health. Involvement in areas like agriculture, biodiversity, health and water is already contributing to the One Health objectives. Moving forward, it will also be important to give greater consideration to interdependencies between sectors and ensure that structural connections are taken into account in cross-sectoral programmes.
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he statistics in this report are from the Emergency Events Database (EM-DAT) maintained by the Centre for Research on the Epidemiology of Disasters (CRED) which records disasters which have killed ten or more people; affected 100 or more people; resulted in a declared state of emergency; or a call f
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or international assistance.
In the period 2000 to 2019, there were 7,348 major recorded disaster events claiming 1.23 million lives, affecting 4.2 billion people (many on more than one occasion) resulting in approximately US$2.97 trillion in global economic losses.
This is a sharp increase over the previous twenty years. Between 1980 and 1999, 4,212 disasters were linked to natural hazards worldwide claiming approximately 1.19 million lives and affecting 3.25 billion people resulting in approximately US$1.63 trillion in economic losses.
Much of the difference is explained by a rise in climate-related disasters including extreme weather events: from 3,656 climate-related events (1980-1999) to 6,681 climate-related disasters in the period 2000-2019.
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This module is part of the WHO series The Immunological Basis for Immunization, which was initially developed in 1993 as a set of eight modules, comprising one module on general immunology and seven modules each devoted to one of the vaccines recommended for the Expanded Programme on Immunization, i
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.e. vaccines against diphtheria, measles, pertussis, polio, tetanus, tuberculosis and yellow fever. Since then, this series has been updated and extended to include other vaccines of international importance. The main purpose of the modules is to provide national immunization managers and vaccination professionals with an overview of the scientific basis of vaccination against a range of important infectious diseases. The modules developed since 1993 continue to be vaccine-specific, reflecting the biological differences in immune responses to the individual pathogens and the differing strategies employed to create the best possible level of protection that can be provided by vaccination. The modules also serve as a record of the immunological basis for the WHO recommendations on vaccine use, published in the WHO vaccine position papers.*
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2nd edition