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Publication Years
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Toolboxes
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This report investigates the impact of potential misclassification of samples on HIV prevalence estimates for 23 surveys conducted from 2010-2014. In addition to visual inspection of laboratory results, we examined how accounting for potential misclassification of HIV status through Bayesian latent
...
class models affected the prevalence estimates. Two types of Bayesian models were specified: a model that only uses the individual dichotomous test results and a continuous model that uses the quantitative information of the EIA (i.e., the signal-to-cutoff values). Overall, we found that adjusted prevalence estimates matched the surveys’ original results, with overlapping uncertainty intervals. This suggested that misclassification of HIV status should not affect the prevalence estimates in most surveys. However, our analyses suggested that two surveys may be problematic. The prevalence could have been overestimated in the Uganda AIDS Indicator Survey 2011 and the Zambia Demographic and Health Survey 2013-14, although the magnitude of overestimation remains difficult to ascertain. Interpreting results from the Uganda survey is difficult because of the lack of internal quality control and potential violation of the multivariate normality assumption of the continuous Bayesian latent class model. In conclusion, despite the limitations of our latent class models, our analyses suggest that prevalence estimates from most of the surveys reviewed are not affected by sample misclassification.
more
Final report 2016
In 2015, the National Institute of Statistics of Rwanda published the Rwanda Poverty Profile Report 2013/2014,which provided a detailed portrait of the extent and nature of poverty in the country, based on information collected by an integrated household living conditions survey (EICV4) undertaken b
...
etween October 2013 and September 2014.
This report complements the study by looking at the trends in poverty between 2010/11 and 2013/14.It is essential to examine changes in poverty over time, because one of the most important goals of economic Sustainable Development Goals is to eliminate severe poverty by 2030.
more
The Demographic Dividend study on Rwanda assessed the socio economic and human development potential of our country in the short, medium and long-term period using a comprehensive approach. It generated relevant policy and programme information to guide a well informed polciy required to propel Rwan
...
da towards achieving its aspirations of being high middle income country by 2035 and high income country by 2050.
The primary objectives of this study were to assess Rwanda’s prospects for harnessing the demographic dividend and demonstrate priority policy and programme options that the country should adopt in order to optimise its chances of earning a maximum demographic dividend in the context of its youthful population and medium, long-term socio economic development aspirations.
more
The Demographic Dividend study on Rwanda assessed the socio-economic and human development potential of our country in the short, medium and long-term period using a comprehensive approach. It generated relevant policy and programme information to guide a well-informed polciy required to propel Rwan
...
da towards achieving its aspirations of being high middle income country by 2035 and high income country by 2050.
The primary objectives of this study were to assess Rwanda’s prospects for harnessing the demographic dividend and demonstrate priority policy and programme options that the country should adopt in order to optimise its chances of earning a maximum demographic dividend in the context of its youthful population and medium, long-term socio-economic development aspirations.
more
The Demographic Dividend study on Rwanda assessed the socio-economic and human development potential of our country in the short, medium and long-term period using a comprehensive approach. It generated relevant policy and programme information to guide a well-informed polciy required to propel Rwan
...
da towards achieving its aspirations of being high middle income country by 2035 and high income country by 2050.
The primary objectives of this study were to assess Rwanda’s prospects for harnessing the demographic dividend and demonstrate priority policy and programme options that the country should adopt in order to optimise its chances of earning a maximum demographic dividend in the context of its youthful population and medium, long-term socio-economic development aspirations.
more
RBC/IHDPC/ EID Division | November 2011 - Ce manuel de procédure vise à
guider les professionnels de soins de santé et des experts en santé publique de différents niveaux du système de santé dans la mise en œuvre de la surveillance renforcée de la méningite cérébrospinale.
The strategic plan reflects shared commitments to enhance collaboration between environmental, animal (wildlife and domestic) and human health, and building new One Health workforce capacity through higher institutions of learning. The strategy also outlines interventions to be undertaken by governm
...
ent institutions and other partners to enhance existing structures and pool together additional resources to prevent and control zoonotic diseases and other events of public health importance. Successful implementation of the strategy will contribute to the realization of vision 2020 by improving public health, food safety and security, and hence significantly improve the socioeconomic status of the people of Rwanda. It is in this regard that we call upon implementing institutions, bilateral and multilateral partners, civil society and the private sector to join us in implementing the One Health strategy in Rwanda.
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State Strategy to Combat the Spread of HIV in Russia through 2020 and beyond
Federal Government
(2016)
C2
Unofficial Translation
Approved by the Federal Government on October 20, 2016
Key Populations action plan 2014-2017
The Global Fund To fight AIDS, Tuberculosis and Malaria
(2019)
C2
Accessed: 08.11.2019
Modelling the health impacts of disruptions to essential health services during COVID-19 Module 1
Several epidemiological models have been created to assess the potential impact of disruptions to essential health services caused by COVID-19 on morbidity and mortality from conditions other than COVI
...
D-19 illness. This guide presents models that have been used to assess these indirect impacts. The effects have been studied in various settings, using a variety of models.
The guide is intended for people who need to understand what the models say, their construction and their underlying assumptions, or need to use models and their outcomes for planning and programme development and to support policy decisions for a country or region.
more
Technical guidance.
This technical guidance aims to inform policy and practice development specifically related to improving the health of older refugees and migrants within the European Union and the larger WHO European Region. Both ageing and migration are in themselves complex multidimensional p
...
rocesses shaped by a range of factors at the micro, meso and macro levels over the life-course of the individual, but also with intertwined trajectories. Relevant areas for policy-making include healthy ageing over the life-course, supportive environments, people-centred health and long-term care services, and strengthening the evidence base and research
more
Following a long recovery from the economic crisis (2007–2013), young people in the EU proved to be more vulnerable to the effects of the restrictions put in place to slow the spread of the COVID-19 pandemic. Young people were more likely than older groups to experience job loss, financial insecur
...
ity and mental health problems. They reported reduced life satisfaction and mental well-being associated with the stay-at-home requirements and school closures. While governments responded quickly to the pandemic, most efforts to mitigate the effects of restrictions were temporary measures aimed at preventing job loss and keeping young people in education. This report explores the effects of the pandemic on young people, particularly in terms of their employment, well-being and trust in institutions, and assesses the various policy measures introduced to alleviate these effects.
Summary available in 22 languages
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There are indigenous communities at high risk in every country of the region. At stake are the lives of 45 million people who belong to more than 800 indigenous peoples. Of these, some 100 are spread across several countries, around 200 maintain voluntary isolation or are in initial contact, and nea
...
rly 500 are at risk of disappearing due to their reduced numbers. Due to their lower immune resistance, their lack of access to hospital care and the increasing penetration of extractive activities in their territories, indigenous communities in voluntary isolation or in initial contact are cause for particular concern.
Far from hospitals and the news cameras, indigenous people in Latin American become ill and die without access to the means needed to protect themselves. They face the pandemic in conditions of social exclusion, racism and discrimination, which highlights historical inequalities and extreme precariousness in basic and health services.
more
Since 2000, concerted efforts by national programmes, supported by public–private partnerships, nongovernmental organizations, donors and academia under the auspices and coordination of the World Health Organization (WHO), have produced important achievements in the control of human African trypan
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osomiasis (HAT). As a consequence, the disease was targeted for elimination as a public health problem by 2020. The Sixty-sixth World Health Assembly endorsed this goal in resolution WHA66.12 on neglected tropical diseases, adopted in 2013.
National sleeping sickness control programmes (NSSCPs) are core to progressing control of the disease and in adapting to the different epidemiological situations. The involvement of different partners, as well as the support and trust of long-term donors, has been crucial for the achievements.
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Birth defect has been an emerging major cause of child mortality in the region. Scarcity of the birth defects information hampers policy decisions and control measures at national level. In order to create evidence for action for birth defects prevention in the region, WHO-SEARO in collaboration wit
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h CDC, USA has developed and launched a regional electronic database on birth defects. This surveillance database allows data collection on newborn health, birth defects and stillbirths cases and provides real time information at hospitals and national level.
Training of the hospital health staffs and data managers in the birth defects surveillance network; at regional, national and at hospital levels is recognized as essential for expansion of this database and to assure quality of data. A two days training module for hospital based birth defects surveillance was developed using a guide for operation and facilitator guide. more
Training of the hospital health staffs and data managers in the birth defects surveillance network; at regional, national and at hospital levels is recognized as essential for expansion of this database and to assure quality of data. A two days training module for hospital based birth defects surveillance was developed using a guide for operation and facilitator guide. more