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4
1
Depression and Other Common Mental Disorders
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Kiel Policy Brief, Ukraine Special 1, March 2022.Many African countries heavily rely on imports of agricultural commodities and agricultural inputs from Ukraine and Russia, for example wheat, other grains, and fertilizer. Russia’s invasion of Ukraine has disrupted
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global access to grains due to reduced production, exports, and increased trade costs. This policy brief investigates the possible long-term consequences of the conflict on food security in Africa
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Unfortunately, current data available on SDG financing are not sufficient to quantify the distribution of financing for the SDGs.
AidData’s methodology for measuring financing to the SDGs attempts to fill this gap by analyzing development project documentation to estimate project-level contributi
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ons to the SDGs (and their associated targets). This methodology lets us see where development financing is targeted, allowing comparisons among SDG goals and individual SDG targets.
This methodology note describes two iterations of AidData’s methodology. The first, based on a crosswalk with existing aid reporting schemes, was employed for AidData’s 2017 flagship report Realizing Agenda 2030: Will donor dollars and country priorities align with global goals? and our brief Financing the SDGs in Colombia. The second iteration of the methodology employs a direct coding scheme, linking development projects directly to the SDGs through analysis and coding of project descriptions rather than through an intermediary classification system. This method was employed for our 2019 brief Financing the SDGs: Evidence in Four Countries.
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Since the release of the first volume in May 2020, the COVID-19 pandemic has continued to rage around the world. By mid-March, 2021, countries around the globe had reported over 123 million cases—a nearly five-fold increase since this report’s previous volume—and over 2.7 million deaths attrib
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uted to the disease. And while new case loads are currently on the rise again, the global health community has already administered almost 400 million doses of vaccines, at last offering some signs of hope and progress.
Economic impacts threaten to undo decades of recent progress in poverty reduction, child nutrition and gender equality, and exacerbate efforts to support refugees, migrants, and other vulnerable communities. National and local governments—together with international and private-sector partners—must deploy vaccines as efficiently, safely and equitably as possible while still monitoring for new outbreaks and continuing policies to protect those who do not yet have immunity.
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The Global Vaccine Action Plan (GVAP) 2011-2020, endorsed by Member States during the May 2012 World Health Assembly, has set ambitious targets to improve access to immunization and tackle vaccine-preventable diseases. This responsibility has been t
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ranslated into firm commitments in February 2016, through the signature of the Addis Declaration on Immunization (ADI) by African Ministers and subsequently endorsed by the Heads of States from across Africa at the 28th African Union Summit held in January 2017. This commitment from the highest level of government comes as a catalyst to immunization efforts on the continent to deliver on the promise of universal immunization
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Background
Four methods have previously been used to track aid for reproductive, maternal, newborn, and child health (RMNCH). At a meeting of donors and stakeholders in May, 2018, a single, agreed method was requested to produce accurate, predictable, transparent, and up-to-date estimates that coul
...
d be used for analyses from both donor and recipient perspectives. Muskoka2 was developed to meet these needs. We describe Muskoka2 and present estimates of levels and trends in aid for RMNCH in 2002–17, with a focus on the latest estimates for 2017.
Methods
Muskoka2 is an automated algorithm that generates disaggregated estimates of aid for reproductive health, maternal and newborn health, and child health at the global, donor, and recipient-country levels. We applied Muskoka2 to the Organisation for Economic Co-operation and Development's Creditor Reporting System (CRS) aid activities database to generate estimates of RMNCH disbursements in 2002–17. The percentage of disbursements that benefit RMNCH was determined using CRS purpose codes for all donors except Gavi, the Vaccine Alliance; the UN Population Fund; and UNICEF; for which fixed percentages of aid were considered to benefit RMNCH. We analysed funding by donor for the 20 largest donors, by recipient-country income group, and by recipient for the 16 countries with the greatest RMNCH need, defined as the countries with the worst levels in 2015 on each of seven health indicators.
Findings
After 3 years of stagnation, reported aid for RMNCH reached $15·9 billion in 2017, the highest amount ever reported. Among donors reporting in both 2016 and 2017, aid increased by 10% ($1·4 billion) to $15·4 billion between 2016 and 2017. Child health received almost half of RMNCH disbursements in 2017 (46%, $7·4 billion), followed by reproductive health (34%, $5·4 billion), and maternal and newborn health (19%, $3·1 billion). The USA ($5·8 billion) and the UK ($1·6 billion) were the largest bilateral donors, disbursing 46% of all RMNCH funding in 2017 (including shares of their core contributions to multilaterals). The Global Fund and Gavi were the largest multilateral donors, disbursing $1·7 billion and $1·5 billion, respectively, for RMNCH from their core budgets. The proportion of aid for RMNCH received by low-income countries increased from 31% in 2002 to 52% in 2017. Nigeria received 7% ($1·1 billion) of all aid for RMNCH in 2017, followed by Ethiopia (6%, $876 million), Kenya (5%, $754 million), and Tanzania (5%, $751 million).
Interpretation
Muskoka2 retains the speed, transparency, and donor buy-in of the G8's previous Muskoka approach and incorporates eight innovations to improve precision. Although aid for RMNCH increased in 2017, low-income and middle-income countries still experience substantial funding gaps and threats to future funding. Maternal and newborn health receives considerably less funding than reproductive health or child health, which is a persistent issue requiring urgent attention.
Funding
Bill & Melinda Gates Foundation; Partnership for Maternal, Newborn & Child Health.
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Global Plan to end TB 2016-2020
Global Information and Early Warning System on Food and Agriculture (GIEWS)
The Environmental Data Explorer is the authoritative source for data sets used by UNEP and its partners in the Global Environment Outlook (GEO) report and other integrated environment assessments. Its online database holds more than 500 different va
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riables, as national, subregional, regional and global statistics or as geospatial data sets (maps), covering themes like Freshwater, Population, Forests, Emissions, Climate, Disasters, Health and GDP. Display them on-the-fly as maps, graphs, data tables or download the data in different formats.
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This series of 94 climate risk and adaptation profiles offers a common platform to guide access, synthesis, and analysis of relevant country data and information for Disaster Risk Reduction and Adaptation to Climate Change. The profiles are geared towards providing a quick reference source for devel
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opment practitioners to better integrate climate resilience in development planning and operations. Users are able to evaluate climate-related vulnerability and risks by interpreting climate and climate-related data at multiple levels of detail. Sources on climate and climate related information are linked through the country profiles’ on-line platform, which is periodically updated to reflect the most recent publicly available climate analysis. The series is developed by the Global Facility for Disaster Reduction and Recovery (GFDRR), the Global Support Program of the Climate Investment Funds, and the Climate Change Team of the Environment Department of the World Bank and was made possible with the support of the Government of Luxemburg, the World Bank, and the Climate Investment Funds.
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Global cardiovascular disease (CVD) burden is high and rising, especially in low-income and middle-income countries (LMICs). Focussing on 45 LMICs, we aimed to determine (1) the adult population’s median 10-year predicted CVD risk, including its v
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ariation within countries by socio-demographic characteristics, and (2) the prevalence of self-reported blood pressure (BP) medication use among those with and without an indication for such medication as per World Health Organization (WHO) guidelines.
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Cancer: Disease Control Priorities, Third Edition (Volume 3)
Gelband H., Jha P., Sankaranarayanan R. et al.
International Bank for Reconstruction and Development The World Bank
(2015)
C2
Volume 3, Cancer, presents the complex patterns of cancer incidence and death around the world and evidence on effective and cost-effective ways to control cancers. The DCP3 evaluation of cancer will indicate where cancer treatment is ineffective and wasteful, and offer alternative cancer care packa
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ges that are cost-effective and suited to low-resource settings. Main messages from the volume include:
-Quality matters in all aspects of cancer treatment and palliation.
-Cancer registries that track incidence, mortality, and survival paired with systems to capture causes of death are important to understanding the national cancer burden and the effect of interventions over time.
-Effective interventions exist at a range of prices. Adopting ‘resource appropriate’ measures which allow the most effective treatment for the greatest number of people will be advantageous to countries.
-Prioritizing resources toward early stage and curable cancers is likely to have the greatest health impact in low income settings.
-Research prioritization is no longer just a global responsibility.
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Global Campaign Against Epilepsy
GLOBAL EDUCATION MONITORING REPORT 2017/8
Global Education Review, 3(3).4-27
This report summarizes the latest scientific knowledge on the links between exposure to air pollution and adverse health effects in children. It is intended to inform and motivate individual and collective action by health care professionals to prevent damage to children’s health from exposure to
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air pollution.
Air pollution is a major environmental health threat. Exposure to fine particles in both the ambient environment and in the household causes about seven million premature deaths each year. Ambient air pollution alone imposes enormous costs on the global economy, amounting to more than US$ 5 trillion in total welfare losses in 2013.
This public health crisis is receiving more attention, but one critical aspect is often overlooked: how air pollution affects children in uniquely damaging ways. Recent data released by the World Health Organization (WHO) show that air pollution has a vast and terrible impact on child health and survival. Globally, 93% of all children live in environments with air pollution levels above the WHO guidelines (see the full report, Air pollution and child health: prescribing clean air. More than one in every four deaths of children under 5 years of age is directly or indirectly related to environmental risks. Both ambient air pollution and household air pollution contribute to respiratory tract infections that resulted in 543 000 deaths in children under the age of 5 years in 2016.
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Today, the world is facing a learning crisis: While millions of children have entered education systems for the first time, many of them cannot read, write or do basic mathematics, even after several years of primary school.1 This global learning cr
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isis has its roots in children’s earliest years, when failure to invest in quality early childhood education (ECE)results in children starting school already behind in a host of critical skills they need to succeed in primary school.2Investing in the foundations of learning during the child’s early years benefits children,3 families, education systems and societies at large.4 Participation in quality ECE sets in motion a positive learning cycle and is a proven strategy to address the global learning crisis at its roots by closing early learning gaps, strengthening the efficiency of education systems and providing a solid foundation for human capital development and economic grow
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This “living paper” contributes to the global knowledge on how countries are responding to the pandemic by documenting real-time actions in a key area of response – that is, social protection measures planned or implemented by governments.
Governments have dedicated a pivotal role to the private sector in the implementation and financing of the 2030 Agenda and the SDGs. This has pushed a turn towards the private sector, the promotion of multi-stakeholder partnerships between public and private actors. However, far too often there is a
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considerable gap between the social and environmental commitments companies make publicly in political fora like the UN and the actual effects of their production patterns and investment strategies on people and the environment. A new working paper, published by Brot für die Welt, Global Policy Forum and MISEREOR provides an overview of the ways and means by which the UN involves business actors in the debates around the implementation of the 2030 Agenda. It describes new initiatives and alliances of business actors around SDG implementation at the international level, and their main messages and policy proposals. With a few selected examples it contrasts the sustainability rhetoric of corporations with their business reality. And finally, the working paper draws conclusions and formulates recommendations for policymakers on how to increase the benefits of UN-business interactions in implementing the 2030 Agenda - and how to reduce associated risks and negative side effects.
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