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This technical report presents results from the FEEDcities Project – eastern Europe and central Asia. This cross-sectional survey was conducted in Ashgabat, Turkmenistan in October 2016 to evaluate the local urban food environment. It characterized the vending sites, the food offered and the nutri
...
tional composition of the industrial and homemade street foods available in these settings. It also described the nutritional composition of ready-to-eat foods sold in supermarkets and at vending sites in food courts. The policy implications of the findings are outlined.
more
This technical report contains the results from the FEEDcities Project – Eastern Europe and Central Asia, a cross-sectional survey of the local urban food environment conducted in Chișinău, Republic of Moldova between June and August 2016. It characterizes the vending sites, the food offered and
...
the nutritional composition of both industrial and homemade street foods. It also describes the nutritional composition of foods sold in supermarkets and fast-food outlets.
The study was conducted within a bilateral partnership between the World Health Organization and the Institute of Public Health of the University of Porto, in collaboration with the Faculty of Medicine, the Faculty of Nutrition and Food Sciences and the Faculty of Pharmacy of the University of Porto (WHO registration 2015/591370 and 2017/698514). The study was funded through a voluntary contribution of the Ministry of Health of the Russian Federation.
more
This technical report describes the results of a cross-sectional survey conducted in Dushanbe, Tajikistan, between April and May 2016, as part of the FEEDcities Project – Eastern Europe and Central Asia. The aim was to describe the local street food environment: the characteristics of the vending
...
sites, the food offered and the nutritional composition of the industrial and homemade foods usually consumed in these settings.
The study was part of a bilateral partnership between WHO and the Institute of Public Health of the University of Porto, Portugal, in collaboration with the Faculty of Medicine, the Faculty of Nutrition and Food Sciences and the Faculty of Pharmacy of the University of Porto (WHO registration numbers 2015/591370 and 2017/698514).
more
This technical report presents the results of a cross-sectional survey conducted in Bishkek, Kyrgyzstan, between June and July 2016, as part of the FEEDcities Project – Eastern Europe and Central Asia. The aim was to describe the local street food environment: the characteristics of the vending si
...
tes, the food offered and the nutritional composition of the industrial and homemade foods often available in these settings. The report also provides guidance for policies to translate the findings into action.
more
This technical report presents the results of a cross-sectional survey conducted in Banja Luka, the Republika Srpska, Bosnia and Herzegovina, between July and August 2017, as part of the FEEDcities Project (Food Environment Description in cities – eastern Europe and central Asia). The aim of the r
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eport is to describe the city’s local street food and takeaway food environment, exploring the characteristics of food vending sites, the industrially produced and homemade foods they typically offer, and the nutritional composition of these foods. Finally, the report provides guidance on how to address its findings through policy action.
more
This technical report presents the results of a cross-sectional survey conducted in Sarajevo, the Federation of Bosnia and Herzegovina, Bosnia and Herzegovina, between June and August 2017, as part of the FEEDcities Project (Food Environment Description in cities – eastern Europe and central Asia)
...
. The aim of the report is to describe the city’s local street food and takeaway food environment, exploring the characteristics of food vending sites, the industrially produced and homemade foods they typically offer, and the nutritional composition of these foods. Finally, the report provides guidance on how to address its findings through policy action.
The study was conducted through a bilateral partnership between the World Health Organization (WHO) and the Institute of Public Health of the University of Porto, in collaboration with the Faculty of Medicine, the Faculty of Nutrition and Food Sciences, the Faculty of Pharmacy of the University of Porto (WHO registration 2015/591370 and 2017/698514) and the Institute of Public Health of the Federation of Bosnia and Herzegovina. The study was funded through a voluntary contribution of the Ministry of Health of the Russian Federation, and through a contribution made by the Swiss Agency for Development and Cooperation (SDC)/Swiss Government to a joint WHO/SDC project, “Reducing Health Risk Factors in Bosnia and Herzegovina: Developing and Advancing Modern and Sustainable Public Health Strategies, Capacities and Services to Improve Population Health”, implemented in Bosnia and Herzegovina.
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Project protocol
Introduction Ready-to-eat food sold in the street represents a global phenomenon, more common in urbanized areas, that constitutes an important dietary source in populations from low- and middle-income countries. However, research on the kind of street food offered and its composit
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ion is scarce. The main objective of this study is to characterize the urban street food environment, including vending places, the food offered, its nutritional composition, food purchasing patterns and advertising.
Methods and analysis This protocol provides a framework for a stepwise, standardized characterization of the street food environment; it consists of three steps that are of increasing complexity and demand increasingly great human and technical resources. Step 1 comprises identification of street food vending sites and characterization of the products available; this stage may be complemented with an evaluation of food advertising in the streets. Step 2 comprises description of street food purchasing patterns, by direct observation. Step 3 requires collection of food samples for bromatological analysis. Different levels of data collection may be defined for each step; hereafter, these are presented as core and expanded evaluations. For the most part, data analysis involves descriptive statistics and basic spatial analysis.
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Guidance for addressing a global infodemic and fostering demand for immunization
December 2020
Misinformation threatens the success of vaccination programs across the world. This guide aims to help organizations to address the global infodemic through the development of strategic and well-coordina
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ted national action plans to rapidly counter vaccine misinformation and build demand for vaccination that are informed by social listening.
more
Orientations pour faire face à une infodémie mondiale et favoriser la demande de vaccination
Décembre 2020
La désinformation menace le succès des programmes de vaccination dans le monde entier. Ce guide vise à aider les organisations à faire face à l'infodémie mondiale par l'élaboration
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de plans d'action nationaux stratégiques et bien coordonnés pour contrer rapidement la désinformation sur les vaccins et créer une demande de vaccination qui soit fondée sur l'écoute sociale.
more
Presentations and agenda of the meeting held to update industry on the COVAX Facility and Gavi’s support for cold chain equipment (CCE) for COVID-19 vaccines.
ASLM in collaboration with the Africa Centres for Disease Control and Prevention, and in partnership with the Clinton Health Access Initiative, Amref and Last Mile Health present the Quality Assurance Framework for SARS-CoV-2 Antigen Rapid Testing for Diagnosis of COVID-19. This framework aims to pr
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ovide general technical guidance to African Union Members States on the rollout, establishment, implementation, monitoring, and evaluation of SARS-CoV-2 Ag RDT interventions so as to effectively and efficiently detect, control and minimise errors in the performance of COVID-19 laboratory testing processes. It describes the core components for quality assurance, resources mobilisation and advocacy for scale up, monitoring, evaluation, learning and accountability for SARS-CoV-2 implementation.
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Updated 28 December 2020
Integrated Management of Newborn and Childhood Illness, Part 1 Blended Learning Module for the Health Extension Programme
HEAT, UNICEF, Open University, AMREF, WHO
Ministry of Health, Federal Democratic Republic of Ethiopia
(2011)
C1
These Blended Learning Modules cover the full range of health promotion, disease prevention, basic management and essential treatment protocols to improve and protect the health of rural communities in Ethiopia. A strong focus is on enabling Ethiopia to meet the Millennium Development Goals to reduc
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e maternal mortality by three-quarters and under-5 child mortality by two-thirds by the year 2015. The Modules cover antenatal care, labour and delivery, postnatal care, the integrated management of newborn and childhood illness, communicable diseases (including HIV/AIDS, malaria, TB, leprosy and other common infectious diseases), family planning, adolescent and youth reproductive health, nutrition and food safety, hygiene and environmental health, non-communicable diseases, health education and community mobilisation, and health planning and professional ethics.
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Nutrition training of health and agriculture workers can help to reduce child undernutrition. Specifically, trained health extension workers cancontribute through frequent nutrition counselling of caregivers. Evidence from systematic reviews has showed that providing nutrition training targeting hea
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lth workers can improve feeding frequency, energy intake, and dietary diversity of children aged six months to two years. Scaling up of nutrition training for health and agriculture workers presents a potential entry point to improve nutrition status among childrenFood insecurity and nutrition deficiency are a common phenomenon in Ethiopia.
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The Federal Ministry of Health (FMOH) has been coordinating sector wide reforms that aim to improve equity and quality of maternal and child health services. As part of these efforts, the ministry is also exerting concerted efforts to improve availability and use of quality
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RMNCH pharmaceuticals. Management of RMNCH pharmaceuticals has had significant challenges such as poor availability of essential pharmaceuticals and wastages of valuable resources as pharmacy professionals were not demonstrating the required knowledge, skill and attitude towards availing the pharmaceuticals and ensuring their rational medicine use.
more
Science . 2020 Sep 11;369(6509):1309-1312. doi: 10.1126/science.abe2803. Epub 2020 Sep 3.
The Fair Priority Model offers a practical way to fulfill pledges to distribute vaccines fairly and equitably
In fragile, conflict-affected and vulnerable settings, delivery of quality health services faces significant challenges, including disruption of a routine health service organization and delivery systems, increased health needs, complex and unpredictable resourcing issues, and vulnerability to multi
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ple public health crises. Despite the difficulty of addressing quality in such settings, the necessity for action is acute, given the significant health needs of the populations in these environments and the increasing numbers of people for whom such settings are home.
This manual has been developed to provide a starting point for multi-actor efforts and actions to address quality of care in the most challenging settings. This includes practical approaches to action planning and implementation of a contextualised set of quality interventions.
more
Oxfam’s report found that Covid-19 has the potential to increase economic inequality in almost every country at once, the first time this has happened since records began over a century ago. It sets out how a rigged economy is enabling a super-rich elite to amass wealth in the middle of the worst
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recession since the Great Depression, while billions of people are struggling amid the worst job crisis in over 90 years. Unless rising inequality is tackled, half a billion more people could be living in poverty on less than $5.50 (£4.00) a day in 2030, than at the start of the pandemic.
more