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Read me – About the Health Financing Toolbox
recommended
The Health Financing Toolbox is designed to equip development cooperation stakeholders with essential information on the internal and external financing of nation states, with a particular emphasis on heal
...
th financing. To achieve this, the Health Financing Toolbox includes a comprehensive collection of topic-specific documents, along with numerous interactive world maps and data tables. These digital tools enable users to explore key aspects of health financing across all countries, with data categorized into both economic and medical dimensions.
more
Globally, it is estimated that 1 billion people suffer from acute and chronic respiratory conditions, making them major causes of illness and death. Although there is a relative lack of data and evidence on lung diseases beyond tuberculosis (TB) in
...
Sub-Saharan Africa (SSA), their estimated regional burden is large and growing. In addition, there is a poorly understood relationship between infections, such as TB, and non-infectious causes of lung health problems. The problem in lung diseases in SSA is exacerbated by many factors, including under-prioritisation, under-treatment and weak preventative measures.
more
The place where you live, the communities you belong to, your education level, ethnicity, race, income and gender, and
whether you have a disability, all make a huge difference to how long you can expect to live a healthy life. People in the
country with the highest life expectancy will, on av
...
erage, live for 33 years more than those born in the country with the lowest
life expectancy. There are major differences in life expectancy between countries at very similar income levels: data shows that regardless of income level, some countries have managed to halve premature death over the past half-century, while in
others, it has remained the same or even increased. Within countries, life expectancy varies by decades, depending on which area you live in and the social group to which you belong
more
Access to safe, effective and quality-assured health products and technologies is crucial for achieving universal health coverage and primary health
...
care goals. The continued growth of the aging population; increasing burden of noncommunicable diseases; growing burden of mental health issues; climate change; shifting patterns of vector borne diseases, fungal disease and waterborne diseases; antimicrobial resistance; and new infectious hazards create an ongoing need for equitable access to safe, effective and quality-assured health products and technologies, and renewed investments in research and development for innovative health products and technologies.
The coronavirus pandemic exposed the inequalities in access to health products, highlighting the need for longer-term strategies to strengthen access to health products and technologies outside of and in emergency situations. While technological and scientific advances present an opportunity to increase access to health products and technologies, the risk of increasing inequality due to higher prices for new health products and technologies; the persisting problem of substandard and falsified medical products; a lack of skilled workforce in many low- and middle-income countries; and a lack of data for decisionmaking and for measuring progress present significant challenges.
more
Promoting and protecting the mental health and psychosocial wellbeing of children, adolescents, and their caregivers remains undamental to achieving the Sustainable Development Goals (SDGs), with a direct contribution to SDG 3 (Good
...
Health and Well- eing). In 2024, UNICEF accelerated the scale-up of integrated, multisectoral MHPSS programming. These efforts contributed to the strengthening of national and subnational child and adolescent mental health systems by supporting programming across the continuum of care, investing in workforce development, advancing data systems and evidence generation, and promoting institutional leadership and coordination mechanisms. UNICEF’s growing reach, particularly through health, education, and child protection systems, reflects a strategic commitment to embedding MHPSS in sustainable development frameworks and in responses that bridge humanitarian action and development programming.
more
The 2019-2023 Strategy for UNU-IIGH, developed in
2018, built on UNU-IIGH’s strategic advantage and
position vis-à-vis the UN and global health ecosystem.
The Strategy set a goal to advance evidencebased policy on key issues related to sustain
...
able
development and health and shifted the Institute’s
body of work from investigator-driven global health
projects to three priority-driven, policy-relevant pillars
of work, each reflecting UNU-IIGH’s unique value
position.
When the COVID-19 pandemic hit in 2020, the
Institute adapted and reprioritised its areas of work
while continuing to deliver on the main strategic
objectives of translating evidence to policy, generating
policy-relevant analyses on gender and health, and
strengthening capacity for local decision making
especially in the Global South.
The new strategic plan encompasses four work packages:
1. Gender Equality and Intersectionality: through this work, we will aim to improve the quality of health care through a human-centred approach, by ensuring the health system is responsive to the needs of structurally excluded individuals and communities; and by advancing a positive and enabling environment for the frontline health workforce—e.g. addressing the experience of gender-based violence.
2. Power and Accountability: through this work, we will catalyse equitable shifts in power and address key accountability deficits that prevent the equitable and effective functioning of the global health system and prevent adequate responsiveness to the needs of states and populations in the Global South.
3. Digital Health Governance: through this work, we will address the colonial legacies and power asymmetries that negatively impact robust digital health governance, identify ways to strengthen health data governance with a particular focus on SRHR and promote diversity in technology design and development.
4. Climate Justice and Determinants of Health: through this work we will leverage UNU-IIGH's position within the UN and network of UNU institutes, network experts, practitioners, policy-makers, and academics to advance evidence-based policy on the different dimensions of the climate emergency and its impact on health.
more
The Policy Framework for Artificial Intelligence in Tanzania's Health Sector was developed through collaboration between multiple stakeholders, including government bodies, academic institutions, non-governmental organisations (NGOs) and internation
...
al partners. The framework demonstrates Tanzania’s dedication to utilising digital technologies and AI to enhance healthcare delivery, facilitate data-driven decision-making, and bolster the resilience of the healthcare system. Although AI integration in Tanzania’s health sector is still in its infancy, a growing number of initiatives are highlighting its potential in clinical care, research, and system management. The Ministry of Health, in collaboration with partners including the President’s Office (PORALG), Fondation Botnar, MUHAS, UDOM and PATH, has spearheaded this initiative with the aim of using AI to minimise errors, improve clinical outcomes and boost the efficiency of the health system.
more
Financing Global Health 2018: Countries and Programs in Transition
Institute for Health Metrics and Evaluation (IHME)
Institute for Health Metrics and Evaluation (IHME)
(2019)
C2
This 10th edition of the Institute for Health Metrics and Evaluation’s annual Financing Global Health report provides the most up-to-date estimates of development assistance for
...
health, domestic spending on health, health spending on two key infectious diseases – malaria and HIV/AIDS – and future scenarios of health spending. Several transitions in global health financing inform this report: the influence of economic development on the composition of health spending; the emergence of other sources of development assistance funds and initiatives; and the increased availability of disease-specific funding data for the global health community. For funders and policymakers with sights on achieving 2030 global health goals, these estimates are of critical importance. They can be used for identifying funding gaps, evaluating the allocation of scarce resources, and comparing funding across time and countries.
more
BMJ Open2018;8:e020423. doi:10.1136/bmjopen-2017-02042
EC has been increasingly used in the evaluation of maternal and child health programmes.12–15 For instance, Nesbitt et al compared crude coverage and EC of pregnant women with facility-based
...
obstetric services in Ghana and estimated that although 68% of the women studied had service access only 18% received high-quality care provided by a skilled birth attendant.16 Similarly, by comparing EC of young children receiving Strengths and limitation of this study. Using multiple data sources (direct observation, vignettes, facility inventories) this study comprehensively assessed under 5-year-old child service
performance of first-line health facilities. We conducted this study in around 500 primary-level health facilities and within 7000 households
across six regions in Burkina Faso.
more
Ethiopia has been repeatedly affected by conflict, flooding, drought, and disease outbreaks in the past years. As of January 2024, the country is actively responding to the longest recorded cholera outbreak which started in August 2022, recurrent measles outbreaks which started in August 2021, and t
...
he highest number of malaria cases reported since 2017. The El Niño phenomenon is expected to cause further havoc up to July 2024, by causing drought in some parts of the country, and flooding in others. Food insecurity due to lost harvest and livestock is aggravating already high malnutrition rates, negatively impacting morbidity and mortality.
The Health Cluster is closely collaborating with the Ministry of Health (MOH) to prepare for, prevent, and respond to public health emergencies by mobilizing resources to enable health partners to provide life-saving health services to vulnerable populations.
In an environment with ever-increasing needs and decreased funding, the below priorities for 2024 and 2025 have been identified: 1 Strengthen advocacy for longer-term, development funding to address root causes of recurrent disease outbreaks, including through the Humanitarian-Development-Peace Nexus 2 Advocate for increased access to quality health services, with a strong focus on:
sexual and reproductive health services (including for survivors of sexual and gender-based violence)
inclusion of people with disabilities, older people, and people living with HIV
remote populations through inclusion of Mobile Health Teams (MHT) as part of the health system 3 Standardize health services provided by Health Cluster partners through the implementation of Essential Health Care packages, aligned with existing MOH guidance, aimed at ensuring quality service delivery for affected populations, especially at community level 4 Strengthen quality of, and access to data for needs analysis and informed decision-making 5 Strengthen subnational coordination, with increased focus on zones and local health partners
more
Development assistance for health (DAH) is an important part of financing healthcare in low- and middle-income countries. We estimated the gross disbursement of DAH of the 29 Development Assistance Committee (DAC) member countries of the Organisatio
...
n for Economic Co-operation and Development (OECD) for 2011–2019; and clarified its flows, including aid type,
channel, target region, and target health focus area. Data from the OECD iLibrary were used. The DAH definition was based on the OECD sector classification. For core funding to non-healthspecific multilateral agencies, we estimated DAH and its flows based on the OECD methodology for
calculating imputed multilateral official development assistance (ODA).
more
I examine the effectiveness of donors in targeting the highest burden of malaria in the Democratic Republic of Congo when health information structure is fragmented. I exploit local variations in the burden of malaria induced by mining activities as
...
well as financial and epidemiological data from health facilities to estimate how local aid is matching local health needs. Using a regression discontinuity design, I find significant but quantitatively small variations in aid to health facilities located within mining areas. Comparing local aid with the additional cost of treatment and prevention associated with the increased risk of malaria transmission, I find suggestive evidence that local populations with the highest burden of the disease receive a proportionately lower share of aid compared to neighbouring areas with reduced exposure to malaria infection. The evidence of disparities in the allocation of aid for malaria supports the view that donors may have inaccurate information about local population needs.
more
Human Resource Capacity Development in Public Health Supply Chain Management: Assessment Guide and Tool
USAID; Deliver Project
(2013)
this toolkit presents a structured, rating-based methodology designed to provide a rapid, comprehensive assessment of the capacity of the human resource support system for a country’s supply chain. Data are gathered from a document review, focus g
...
roup discussions, and in-country stakeholder interviews to identify the strengths, areas for improvement, opportunities, and challenges for a wide range of human resource inputs and components. The findings are transformed into specific recommendations and strategies for action based on an understanding of country priorities and programming gaps. It includes Word templates; PowerPoint templates and Exce-based Diagnostic Dashboard
more
Our World in Data: Natural Catastrophes
University of Oxford
(2018)
CC
Our World in Data is an online publication that shows how living conditions are changing. The aim is to give a global overview and to show changes over the very long run, so that we can see where we are coming from and where we are today. We cover a
...
wide range of topics across many academic disciplines: Trends in health, food provision, the growth and distribution of incomes, violence, rights, wars, culture, energy use, education, and environmental changes are empirically analyzed and visualized in this web publication. For each topic the quality of the data is discussed and, by pointing the visitor to the sources, this website is also a database of databases. Covering all of these aspects in one resource makes it possible to understand how the observed long-run trends are interlinked.
more
The substantial burden of death and disability that results from interpersonal violence, road traffic injuries, unintentional injuries, occupational health risks, air pollution, climate change, and inadequate water and sanitation falls disproportion
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ally on low- and middle-income countries. Injury Prevention and Environmental Health addresses the risk factors and presents updated data on the burden, as well as economic analyses of platforms and packages for delivering cost-effective and feasible interventions in these settings. The volume's contributors demonstrate that implementation of a range of prevention strategies-presented in an essential package of interventions and policies-could achieve a convergence in death and disability rates that would avert more than 7.5 million deaths a year
more
Cancer is an emerging public health problem in sub-Saharan Africa due to population growth, ageing and westernisation of lifestyles. In this piece, we use data from Mozambique over a 50-year period
...
to illustrate cancer epidemiological trends in low-income and middle-income countries to hypothesise potential circumstances and factors that could explain changes in cancer burden and to discuss surveillance weaknesses and potential improvements. This epidemiological transition deserves increasing policy attention.
more
Slum population in India is growing fast (25.1% decadal growth – Census 2011). Its health and nutrition indicators are worse than that of the non slum urban areas and comparable to that of rural India.
The National Urban
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Health Mission (HUHM), launched in 2013, focuses on improving the health of urban slum population through a needs based, city-specific urban health care system that includes a revamped primary care system, targeted outreach, equitable access, and involvement of the community and urban local bodies (ULBs).
The HUHM recognizes that lack of disaggregated data collected at local and/or city level impedes efficient planning with focus on the urban poor, and that data availability is a critical need.
more
India contributes to 16% of the global maternal deaths and around 27% of global newborn deaths. Reducing the burden of maternal and newborn mortality and morbidity in urban poor settings today requires an expansion of effective Maternal and Newborn Health
...
(MNH) care services and lowering the barriers to the use of such services, especially availability and accessibility.
For designing sensitive, responsive and relevant urban health policy and action, it is important for planners and programme managers to understand the context with regard to current systems and mechanisms, potential organisations and best practices.
In order to adres this need, Save the Children’s Saving Newborn Lives programme commissioned a study that reviewed the literature and looked at available secondary data on MNH in urban poor settings.
more
Paying for performance (P4P) provides financial incentives for providers to increase the use and quality of care. P4P can affect health care by providing incentives for providers to put more effort into specific activities, and by increasing the amo
...
unt of resources available to finance the delivery of services. This paper evaluates the impact of P4P on the use and quality of prenatal, institutional delivery, and child preventive care using data produced from a prospective quasi-experimental evaluation nested into the national rollout of P4P in Rwanda. Treatment facilities were enrolled in the P4P scheme in 2006 and comparison facilities were enrolled two years later. The incentive effect is isolated from the resource effect by increasing comparison facilities’ input-based budgets by the average P4P payments to the treatment facilities. The data were collected from 166 facilities and a random sample of 2158 households. P4P had a large and significant positive impact on institutional deliveries and preventive care visits by young children, and improved quality of prenatal care. The authors find no effect on the number of prenatal care visits or on immunization rates. P4P had the greatest effect on those services that had the highest payment rates and needed the lowest provider effort. P4P financial performance incentives can improve both the use of and the quality of health services. Because the analysis isolates the incentive effect from the resource effect in P4P, the results indicate that an equal amount of financial resources without the incentives would not have achieved the same gain in outcomes.
more
Task Shifting for Scale-up of HIV Care: Evaluation of Nurse-Centered Antiretroviral Treatment at Rural Health Centers in Rwanda
Shumbusho, F., van Griensven, J., Lowrance, D., Turate, I., Weaver, M.A., et al.
PLoS Medicine
(2009)
CC
The shortage of human resources for health, and in particular physicians, is one of the major barriers to achieve universal access to HIV care and treatment. In September 2005, a pilot program of nurse-centered antiretroviral treatment (ART) prescri
...
ption was launched in three rural primary health centers in Rwanda. We retrospectively evaluated the feasibility and effectiveness of this task-shifting model using descriptive data.
more