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The importance of robust mortality surveillance systems cannot be overstated in an era marked by increasing global health challenges where health threats loom large and population dynamics continue to evolve. Accurate and timely mortality data is essential for identifying trends and detecting emergi
...
ng health threats, evaluating the impact of interventions, and guiding evidence-based policy decisions.
This framework outlines a holistic approach to strengthening routine mortality surveillance systems, considering the unique contextual factors and challenges faced by African countries. It emphasizes the importance of establishing efficient data collection mechanisms, enhancing data quality and completeness, and promoting data sharing and collaboration among stakeholders.
Moreover, the framework recognizes the pivotal role of technology in the integration of data from fragmented mortality data sources. It highlights the potential of innovative data capture methods, advanced analytics, and real-time reporting systems to enhance mortality data’s accuracy, efficiency, and timeliness.
The continental framework for mortality surveillance aligns with Africa CDC’s mission and strategic goal by serving as a fundamental component in strengthening public health systems, enhancing disease surveillance capacities and capabilities, informing evidence-based policies and interventions, and promoting collaboration and coordination among African countries to address health challenges and improve health outcomes on the continent.
The successful implementation of this framework requires collective commitment and concerted efforts from governments, health institutions, and the international community. We hope this document will serve as a catalyst for transformative change, enabling countries to build resilient mortality surveillance systems that protect public health, save lives, and contribute to evidence-based decision-making.
more
L'importance de systèmes de surveillance de la mortalité robustes ne peut être surestimée à une époque marquée par des défis sanitaires mondiaux croissants, où les menaces sanitaires pèsent lourd et la dynamique des populations continue d'évoluer. Des données précises et opportunes sur
...
la mortalité sont essentielles pour identifier les tendances et détecter les menaces émergentes pour la santé, évaluer l'impact des interventions et orienter les décisions politiques fondées sur des données probantes.
Ce cadre décrit une approche holistique pour renforcer les systèmes de surveillance de routine de la mortalité, en tenant compte des facteurs contextuels uniques et des défis auxquels sont confrontés les pays africains. Il souligne l'importance d'établir des mécanismes de collecte de données efficaces, d'améliorer la qualité et l'exhaustivité des données et de promouvoir le partage des données et la collaboration entre les parties prenantes.
De plus, le cadre reconnaît le rôle central de la technologie dans l'intégration des données provenant de sources de données fragmentées sur la mortalité. Il met en évidence le potentiel des méthodes innovantes de capture de données, des analyses avancées et des systèmes de notification en temps réel pour améliorer la précision, l'efficacité et l'actualité des données sur la mortalité.
Le cadre continental de surveillance de la mortalité s'aligne sur la mission et l'objectif stratégique d'Africa CDC en servant d'élément fondamental dans le renforcement des systèmes de santé publique, l'amélioration des capacités et des capacités de surveillance des maladies, l'élaboration de politiques et d'interventions fondées sur des données probantes et la promotion de la collaboration et de la coordination entre les pays africains pour relever les défis sanitaires et améliorer les résultats sanitaires sur le continent.
La mise en œuvre réussie de ce cadre nécessite un engagement collectif et des efforts concertés de la part des gouvernements, des établissements de santé et de la communauté internationale. Nous espérons que ce document servira de catalyseur pour un changement transformateur, permettant aux pays de mettre en place des systèmes de surveillance de la mortalité résilients qui protègent la santé publique, sauvent des vies et contribuent à la prise de décision fondée sur des données probantes.
more
The Mapping Antimicrobial Resistance and Antimicrobial Use Partnership (MAAP) project has conducted a multi-year, multi-country study that provides stark insights on the under-reported depth of the antimicrobial resistance (AMR) crisis across Africa and lays out urgent policy recommendations to addr
...
ess the emergency.
MAAP reviewed 819,584 AMR records from 2016-2019, from 205 laboratories across Burkina Faso, Cameroon, Eswatini, Gabon, Ghana, Kenya, Malawi, Nigeria, Senegal, Sierra Leone, Tanzania, Uganda, Zambia, and Zimbabwe. MAAP also reviewed data from 327 hospital and community pharmacies and 16 national-level AMC datasets.
more
The 2018 global health financing report presents health spending data for all WHO Member States between 2000 and 2016 based on the SHA 2011 methodology. It shows a transformation trajectory for the global spending on health, with increasing domestic public funding and declining external financing. T
...
his report also presents, for the first time, spending on primary health care and specific diseases and looks closely at the relationship between spending and service coverage
more
The Mapping Antimicrobial Resistance and Antimicrobial Use Partnership (MAAP) project has conducted a multi-year, multi-country study that provides stark insights on the under-reported depth of the antimicrobial resistance (AMR) crisis across Africa and lays out urgent policy recommendations to addr
...
ess the emergency.
MAAP reviewed 819,584 AMR records from 2016-2019, from 205 laboratories across Burkina Faso, Cameroon, Eswatini, Gabon, Ghana, Kenya, Malawi, Nigeria, Senegal, Sierra Leone, Tanzania, Uganda, Zambia, and Zimbabwe. MAAP also reviewed data from 327 hospital and community pharmacies and 16 national-level AMC datasets.
more
The Mapping Antimicrobial Resistance and Antimicrobial Use Partnership (MAAP) project has conducted a multi-year, multi-country study that provides stark insights on the under-reported depth of the antimicrobial resistance (AMR) crisis across Africa and lays out urgent policy recommendations to addr
...
ess the emergency.
MAAP reviewed 819,584 AMR records from 2016-2019, from 205 laboratories across Burkina Faso, Cameroon, Eswatini, Gabon, Ghana, Kenya, Malawi, Nigeria, Senegal, Sierra Leone, Tanzania, Uganda, Zambia, and Zimbabwe. MAAP also reviewed data from 327 hospital and community pharmacies and 16 national-level AMC datasets.
more
The Mapping Antimicrobial Resistance and Antimicrobial Use Partnership (MAAP) project has conducted a multi-year, multi-country study that provides stark insights on the under-reported depth of the antimicrobial resistance (AMR) crisis across Africa and lays out urgent policy recommendations to addr
...
ess the emergency.
MAAP reviewed 819,584 AMR records from 2016-2019, from 205 laboratories across Burkina Faso, Cameroon, Eswatini, Gabon, Ghana, Kenya, Malawi, Nigeria, Senegal, Sierra Leone, Tanzania, Uganda, Zambia, and Zimbabwe. MAAP also reviewed data from 327 hospital and community pharmacies and 16 national-level AMC datasets.
more
The Mapping Antimicrobial Resistance and Antimicrobial Use Partnership (MAAP) project has conducted a multi-year, multi-country study that provides stark insights on the under-reported depth of the antimicrobial resistance (AMR) crisis across Africa and lays out urgent policy recommendations to addr
...
ess the emergency.
MAAP reviewed 819,584 AMR records from 2016-2019, from 205 laboratories across Burkina Faso, Cameroon, Eswatini, Gabon, Ghana, Kenya, Malawi, Nigeria, Senegal, Sierra Leone, Tanzania, Uganda, Zambia, and Zimbabwe. MAAP also reviewed data from 327 hospital and community pharmacies and 16 national-level AMC datasets.
more
The Mapping Antimicrobial Resistance and Antimicrobial Use Partnership (MAAP) project has conducted a multi-year, multi-country study that provides stark insights on the under-reported depth of the antimicrobial resistance (AMR) crisis across Africa and lays out urgent policy recommendations to addr
...
ess the emergency.
MAAP reviewed 819,584 AMR records from 2016-2019, from 205 laboratories across Burkina Faso, Cameroon, Eswatini, Gabon, Ghana, Kenya, Malawi, Nigeria, Senegal, Sierra Leone, Tanzania, Uganda, Zambia, and Zimbabwe. MAAP also reviewed data from 327 hospital and community pharmacies and 16 national-level AMC datasets.
more
The increasing amounts of official development assistance (ODA) for health have been aimed primarily at fighting HIV/AIDS, malaria and tuberculosis. Neglected tropical diseases (NTD), one of the most serious public health burdens among the most deprived communities, have only recently drawn the atte
...
ntion of major donors. While frequently stated, the low share
of funding for NTD control projects has not been calculated empirically. Our analysis of ODA commitments for infectious disease control for the years 2003 to 2007 confirms that Development Assistance Committee (DAC)-countries and multilateral donors have largely ignored funding NTD control projects. On average, only 0.6% of total annual health ODA was dedicated
to the fight against NTDs while the average share of control projects for HIV/AIDS was 36.3%, for malaria 3.6%, and for tuberculosis 2.2%. This allocation of health ODA does not reflect the diseases’ respective health burdens.
more
A variety of international organizations are involved in mobilizing resources from both public and private
sources and using them to extend development assistance to low-and middle-income countries around the world. They provide country-focused financial and technical assistance to developing count
...
ries, and contribute to the generation of global public goods,
such as disease surveillance, norms and standards,
data and knowledge, and aid coordination
more
This report analyses the intersection of HIV, COVID-19 and public debt in developing countries. The collision between COVID-19 and a crippling debt crisis have reversed decades of progress - putting present and future investments in health and HIV at risk. Pragmatic options to address the pandemic t
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riad are proposed.
more
UNAIDS leads and inspires the world to achieve its shared vision of zero new HIV infections, zero discrimination and zero AIDS-related deaths. It unites the efforts of 11 UN Cosponsor organizations- UNHCR, UNICEF, WFP, UNDP,UNFPA, UNODC, UN Women, ILO, UNESCO, WHO and the World Bank- and a Secretari
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at.
more
The urgency of now - Turning the tide against epidemic and pandemic infectious diseases
Coalition for Epidemic Preparedness Innovations (CEPI)
Coalition for Epidemic Preparedness Innovations (CEPI)
(2021)
CC
CEPI is seeking to raise $3.5 billion to implement CEPI’s next 5-year plan. To mitigate the immediate threat of COVID-19 variants, it is activating key elements of this plan now—and seeking to mobilise a portion of this $3.5 billion in 2021. We have already launched R&D programmes to initiate de
...
velopment of next-generation vaccines against COVID-19 variants and we are planning studies to answer critical scientific questions related to the durability of immunity, effectiveness of mixed-vaccine regimens, and vaccine effectiveness in vulnerable populations such as pregnant women. We are also bringing forward our plans to develop vaccines that could protect against multiple COVID-19 variants and other coronavirus specie
more
Follow up to the so called Abuja Declaration ten years later: In April 2001, heads of state of African Union countries met and pledged to set a target of allocating at least 15% of their annual budget to improve the health sector. At the same time, they urged donor countries to "fulfil the yet to be
...
met target of 0.7% of their GNP as official Development Assistance (ODA) to developing countries". This drew attention to the shortage of resources necessary to improve health in low income settings.
more
This paper introduces a new dataset of official financing—including foreign aid and other forms of concessional and non-concessional state financing—from China to 138 countries between 2000 and 2014. We use these data to investigate whether and to what extent Chinese aid affects economic growth
...
in recipient countries. To account for the endogeneity of aid, we employ an instrumental-variables strategy that relies on exogenous variation in the supply of Chinese aid over time resulting from changes in Chinese steel production. Variation across recipient countries results from a country’s probability of receiving aid. Controlling for year- and recipient-fixed effects that capture the levels of these variables, their interaction provides a powerful and excludable instrument. Our results show that Chinese official development assistance (ODA) boosts economic growth in recipient countries. For the average recipient country, we estimate that one additional Chinese ODA project produces a 0.7 percentage point increase in economic growth two years after the project is committed. We also benchmark the effectiveness of Chinese aid vis-á-vis the World Bank, the United States, and all members of the OECD’s Development Assistance Committee (DAC).
more
This codebook outlines the set of TUFF procedures that have been developed, tested, refined, and implemented by AidData staff and affiliated faculty at the College of William & Mary. We initially employed these methods to achieve a specific objective: documenting the known universe of officially fin
...
anced Chinese projects in Africa (Strange et al. 2013, 2017). We have since then employed these methods to track Chinese official finance to five major world regions: Africa, the Middle East, Asia and the Pacific, Latin America and the Caribbean, and Central and Eastern Europe (Dreher et al. 2017). Additionally, other social scientists have adapted and applied the TUFF methodology to identify grants and loans from Gulf Cooperation Council (GCC) members (Minor et al. 2014), under-reported humanitarian assistance flows from traditional and non-traditional sources (Ghose 2017), foreign direct investment from Western and non-Western sources (Bunte et al. 2017), and pre-2000 foreign aid flows from China (Morgan and Zheng 2017). However, this codebook focuses specifically on TUFF data collection and quality assurance procedures to track Chinese official finance between 2000 and 2014.
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Background: Mental health has recently gained increasing attention on global health and development agendas, including calls for an increase in international funding. Few studies have previously characterized official development assistance for mental health (DAMH) in a nuanced and differentiated ma
...
nner in order to support future funding efforts. Methods: Data from the Organisation for Economic Cooperation and Development Creditor Reporting System were obtained through keyword searches. Projects were manually reviewed and categorized into projects dedicated entirely to mental health and projects that mention mental health (as one of many aims). Analysis of donor, recipient, and sector characteristics within and between categories was undertaken cumulatively and yearly.
more
The Seventy-fifth World Health Assembly through a decision on sustainable financing, adopted the recommendations of the Member States Working Group on Sustainable Financing, contained in Appendix 2 of the Working Group’s report to the Seventy-fifth World Health Assembly. As part of the recommendat
...
ions, the Secretariat was requested to “explore the feasibility of a replenishment mechanism to broaden further the financing base, in consultation with Member States and taking into consideration the Framework of Engagement with Non-State Actors; and to present a report that includes relevant options for Member States to consider, to the Seventy-sixth World Health Assembly, through the 152nd session of the Executive Board and the thirty-seventh meeting of the Programme, Budget and Administration Committee in January 2023” (paragraph 39(f) of Appendix 2 of the Working Group’s report). In response to this request, the Secretariat reviewed the feasibility of a WHO replenishment mechanism in line with the principles set out by the Working Group on Sustainable Financing. It consulted with Member States through the work of the Agile Member States Task Group on strengthening WHO’s budgetary, programmatic and financing governance and benchmarked a set of replenishment mechanisms within and beyond the global health arena. This report outlines the Secretariat’s review and proposals on key elements of a potential WHO replenishment mechanism.
more
As a global community of +750 representatives of the world’s civil society, the C20 official Engagement Group of the G20 is submitting a list of policy priorities for the upcoming G20 Finance Ministers & Central Bank Governors meeting on July 18th and the G20 Extraordinary Sherpa Meeting on July 2
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4th. The proposed recommendations take into account complimentary policy areas at the intersection of health and finance policymaking; including funding gaps, systemic, fiscal and financial priorities to put global finances at the service of global health.
more