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Promoting and protecting health is essential to human welfare and sustained economic and social development. This was recognized more than 30 years ago by the Alma-Ata Declaration signatories, who noted that Health for All would contribute
both to a better
...
quality of life and also to global peace and security
more
New research published today shows that older, disabled and injured Syrian refugees are paying a double toll as a result of the conflict. The report, released by Handicap International and HelpAge International, provides new data showing how much th
...
ese vulnerable refugees are struggling to meet their specific needs
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As part of a wider organisational undertaking to better capture and communicate the effectiveness of its work, Oxfam developed an evaluative method to assess the quality of targeted humanitarian responses. This method uses a global humanitarian indi
...
cator tool which is intended to enable Oxfam GB to estimate how many disaster-affected men and women globally have received humanitarian aid that meets establishes standards for excellence. This method was used after the independence of South Sudan, which was followed by political tensions with its neighbour on issues unresolved from the Comprehensive Peace Agreement (CPA) which include border demarcation, wealth-sharing and the fate of the disputed territory of Abyei.
more
In 2014 UNICEF, WHO and the World Bank report new joint estimates of child malnutrition using available data up to 2013 The Interactive dashboard allows users to generate a variety of graphs and charts, using the newest joint estimates of prevalence
...
and numbers for child stunting, underweight, overweight, wasting and severe wasting. Users can select the different regional country groupings of the UN, MDG, UNICEF, WHO regions as well as World Bank income groups and geographic regions to present the data.
A summary of 4 pages presents the key findings for each indicator, an introduction to the dashboard and updates on methods
more
The Status of the Wheelchair in Uganda
Mary Florence Mukisa
Uganda National Action on Physical Disability (UNAPD); Uganda Ministry of Health; et al.
(2010)
C1
A Report of A survey study conducted to determine the demand, availability, quality of production, usage, and affordability of wheelchairs in Uganda.
Accessed Febr. 12,2015
A user-friendly instrument designed to collect and calculate indicators of effective inventory management. The IMAT guides the user through a process of collecting data on the physical and theoretical stock balance and the duration of stockouts for
...
a set of up to 25 frequently-used products, calculating indicators, analyzing the results, and identifying strategies for improving record-keeping and stock management practices. The IMAT comes as a computerized spreadsheet in Excel and includes instructions, a data collection form, analysis guidelines, recommendations, and a graphical display of the indicator results.
more
Who suffers Most from Extreme Weather Events? Weather-related Loss Events in 2019 and 2000 to 2019
The Global Climate Risk Index 2021 analyses and ranks to what extent countries and regions have been affected by impacts of climate related extreme weather events (storms, floods, heatwaves etc.). The
...
most recent data available for 2019 and from 2000 to 2019 was taken into account.
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The aim of this handbook is to provide network members and other laboratories involved in the diagnosis of tuberculosis, with an agreed list of key diagnostic methods and their protocols in various areas of TB diagnosis, ranging from microbiological diagnosis of active TB to the diagnosis of latent
...
TB infection. This handbook offers a single source of reference by compiling all methods, with a strong focus on standard (reference) and evidence-based methods. In so doing, it will also contribute to the improvement of disease surveillance data for Europe.
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The aim of this paper is to map and critically analyse evidence of good practice in prevention and response to gender-based violence (GBV) in humanitarian contexts which can support humanitarian practitioners and policy makers to improve the quality
...
of GBV programming in the field. The paper is structured as follows. Following a brief discussion of key concepts and definitions in relation to GBV, Chapter 2 presents an overview of the extent of GBV in emergencies, and some of the challenges in responding to the problem. Chapter 3 then analyses some of the literature on the evidence of GBV programming effects in humanitarian settings, and draws out key lessons with regard to good practice. Chapter 4 discusses some of the key issues emerging from this review, and Chapter 5 concludes the paper with a discussion of the implications of the findings for research, policy and programming on GBV.
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This guideline is intended to provide recommendations to applicants wishing to submit applications for the registration of medicines. It represents the Medicines Control Council’s current thinking on the safety, quality and efficacy of medicines.
...
more
The modules (1-12) are based on materials originally developed by FIND, KNCV and Cepheid, and are in PowerPoint format for country customization. Depending on the audience, modules may be selected and adapted according to need (e.g. basic users, supervisors, clinicians). Topics covered include: Over
...
view of TB and diagnostics, biosafety, specimen collection, procurement, installation, Xpert MTB/RIF technology, results interpretation, reporting, troubleshooting, maintenance, a clinical guide, and quality assurance.
Please download each manual directliy from the website
more
Climate change is damaging human health now and is projected to have a greater impact in the future. Low- and middle-income countries are seeing the worst effects as they are most vulnerable to climate shifts and least able to adapt given weak health systems and poor infrastructure. Low-carbon appro
...
ach can provide effective, cheaper care while at the same time being climate smart. Low-carbon healthcare can advance institutional strategies toward low-carbon development and health-strengthening imperatives and inspire other development institutions and investors working in this space. Low-carbon healthcare provides an approach for designing, building, operating, and investing in health systems and facilities that generate minimal amounts of greenhouse gases. It puts health systems on a climate-smart development path, aligning health development and delivery with global climate goals. This approach saves money by reducing energy and resource costs. It can improve the quality of care in a diversity of settings. By prompting ministries of health to tackle climate change mitigation and foster low-carbon healthcare, the development community can help governments strengthen local capacity and support better community health.
more
The aim with this study was to examine in what amount disabled children in South Africa can live a participating life in society, with focus on special needs schools and their capability to empower the children. The data material has been collected
...
through eight qualitative interviews, and observations at seven special needs schools in the country. Through my result I have distinguished three main roads to empower the children: First, to analyze social structures, secondly, to gain knowledge and awareness, and thirdly, to strengthen the children’s self-esteem. I have also analyzed the structural barriers that are hindering disabled children to participate, and illustrated this by describing social policies and their effect on special needs schools in South Africa.
more
Testimonies from Humanitarian Workers with Disabilities.
By reading the first-hand accounts, we hear how persons with disabilities, not through any particular talent or skill but from unique knowledge gained through life experience, are ideally placed to provide insights, ideas and leadership, to s
...
upply essential data, and to fill the gaps in humanitarian response that cause this exclusion.
more
The 2013 RMIS is a nationally representative, household-based survey that provides data on malaria indicators, which are used to assess the progress of a malaria control program. The primary objective of the 2013 Rwanda Malaria Indicator Survey (201
...
3 RMIS) was to provide up-to date information on the prevention of malaria to policymakers, planners, and researchers.
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This report complements the previous poverty analysis studies by presenting a series of poverty maps of Rwanda at cell and sector levels, based on data from EICV4 and the 2012 Population and Housing Census. A poverty map is simply a map that shows t
...
he incidence of poverty in different areas of the country. It allows the viewer to appreciate, at a glance, the geographic dimensions of poverty. Apart from their intrinsic interest, poverty maps may be used to help guide the allocation of resources across local agencies or governmental units, in an effort to better target efforts to reach the poor by pinpointing the small areas of most need.
In 2015, the National Institute of Statistics of Rwanda (NISR) published the Rwanda Poverty Profile Report which provided a detailed portrait of the extent and nature of poverty in the country, while in 2016 a Poverty Trends Analysis Report which complements the Profile study by looking at the trends in poverty between 2010/11 and 2013/14 was also published. Both reports were based on information collected by an integrated household living conditions survey (EICV4) undertaken between October 2013 and September 2014.
more
The HIV drug resistance report 2021 summarizes findings from 38 countries that had finalized the surveys by the time of this report and shared data with WHO.
Pretreatment HIVDR to non-nucleoside reverse-transcriptase inhibitors (NNRTI) can affect
...
more than 10% of adults starting therapy and is found up to 3 times more often in people who had previous exposure to antiretroviral drugs. In addition, nearly half of infants newly diagnosed with HIV has HIVDR to NNRTI before initiating treatment.The high levels of observed NNRTI pretreatment HIVDR among emphasize the need to fast-track the transition to WHO-recommended dolutegravir-based ART.
more
The Health Sector Policy gives general orientations for the sector which are further developed in the various sub-sector policies guiding key health programs and departments. All health sub-sector policies will be updated in line with this new policy. The Health Sector Policy is the basis of nationa
...
l health planning and the first point of reference for all actors working in the health sector. The overall aim of this policy is to ensure universal accessibility (in geographical and financial terms) of equitable and affordable quality health services (preventative, curative, rehabilitative and promotional services) for all Rwandans. It sets the health sector’s objectives, identifies the priority health interventions for meeting these objectives, outlines the role of each level in the health system, and provides guidelines for improved planning and evaluation of activities in the health sector. A companion Health Sector Strategic Plan (HSSP) elaborates the strategic directions defined in the Health Sector Policy in order to support and achieve the implementation of the policy, and more detailed annual operational plans describe the activities under each strategy.
more
This report highlights key achievements registered by the Ministry of Health, affiliated institutions, implementing agencies both at central and decentralized levels in 2013-2014. Generally, the Health Sector accomplishments and programs routine data
...
for 2013-2014 confirm that Rwanda maintains its progress towards the realization of health-related MDGs and national health targets as well.
more
The National Institute for Transforming India (NITI) Aayog has developed the Composite Water Management Index (CWMI) to enable effective water management in Indian states in the face of extreme water stress. The Index and this associated report are expected to: (1) establish a clear baseline and ben
...
chmark for state-level performance on key water indicators; (2) uncover and explain how states have progressed on water issues over time, including identifying high-performers and under-performers, thereby inculcating a culture of constructive competition among states; and, (3) identify areas for deeper engagement and investment on the part of the states. Eventually, NITI Aayog plans to develop the index into a composite, national-level data management platform for all water resources in India.
more