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- Module 1: Understanding modelling approaches for sexual, reproductive, maternal, newborn, child and adolescent health, and nutrition
Coronavirus disease 2019 (COVID-19) has a wide range of documented effects. It directly causes death and disabili
...
ty for some people infected. However, disruption to essential health services, resources allocated to mitigation and therefore away from essential health service delivery, and the overall impact on the economy and society must also be considered within the response to COVID-19. Understanding the magnitude of all of these effects is an essential part of developing mitigation polices.
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 COVID-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
UNHCR’s Public Health Strategy 2021-2025 is based on the lessons learnt, and builds on the achievements, of the Global Strategy for Public Health 2014-2018.
Progress was made on policies favourin
...
g inclusion and integration into national systems3 with 92% of 48 operations surveyed reporting refugees having access to national primary health care facilities under the same conditions as nationals and 96% reporting refugees having access to all relevant vaccines under the same conditions as nationals. While many refugee hosting countries have policies that allow refugees to access national health services, many face partial access, prohibitive out-of-pocket expenditures and other barriers including distance to facilities, language and provider acceptance. Furthermore, more work is needed on strengthening these systems to be able to meet the needs of both host communities and refugees.
more
Kenya Quality Model for Health - Health Facilities
This Eye health strategic plan presents the Ministry of Health’s five
year proposed strategies for eye care in Kenya. It sets the strategic
direction for the National Eye
...
Health Care System and presents
information on the priorities, objectives and indicators that the
Ministry has adopted especially with regard to the main eye diseases
and conditions in the country and health system strengthening.
more
The Lancet. 13 March 2022. doi: 10.1016/S0140-6736(21)02868-3. Previous Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) studies have reported
national health estimates for Ethiopia. Substantial regional variations in socioeconomi
...
c status, population, demography, and access to health care within Ethiopia require comparable estimates at the subnational level. The GBD 2019 Ethiopia subnational analysis aimed to measure the progress and disparities in health across nine regions and two chartered cities.
more
Annals of Global Health, 87(1), p.30. DOI: http://doi.org/10.5334/aogh.2647
Financing Global Health 2017: Funding Universal Health Coverage and the Unfinished HIV/AIDS Agenda
Institute for Health Metrics and Evaluation (IHME)
Institute for Health Metrics and Evaluation (IHME)
(2018)
C2
In 2017, $37.4 billion of development assistance was provided to low- and middleincome countries to maintain or improve health. This amount is down slightly compared to 2016, and since 2010, development assistance for
...
health (DAH) has grown at an annualized rate of 1.0%. While global development assistance for health has seemingly leveled off, global health spending continues to climb, outpacing economic growth in many countries. Total health spending for 2015, the most recent year for which data are available, was estimated to be $9.7 trillion (95% uncertainty interval: 9.7–9.8)*, up 4.7% (3.9–5.6) from the prior year, and accounted for 10% of the world’s total economy. With some sources of health spending growing and other types remaining steady, and with major variations in spending from country to country, it is more important than ever to understand where resources for health come from, where they go, and how they align with health needs. This information is critical for planning and is a necessary catalyst for change as we aim to close the gap on the unfinished agenda of the Millennium Development Goals (MDGs) and move forward toward universal health coverage (UHC) in the Sustainable Development Goals (SDGs) era.
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.
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Tracking official development assistance for reproductive health in conflict-affected countries: 2002—2011
Patel P.; Dahab M.; Tanabe M. et al.
BJOG An International Journal of Obstetics and Gynaecology
(2016)
CC
To provide information on trends on official development assistance (ODA) disbursement patterns for
reproductive health activities in 18 conflict-affected countries
This curriculum can be used freely in order to stimulate means of ethical analysis, reflection and decision-making.
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 approach 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
This report outlines the results of a scientific study of the impacts of weather, climate variability, and climate change on health in Mozambique, with a focus on diarrheal disease and malaria.
The African Development Bank has launched a consultation process with health ministers and other partners as it develops a strategy to drive enhanced access to health services across Africa through
...
2030.
Input from ministers in the Bank’s 54 regional member countries, development partners and civil society is expected to strengthen the Bank’s Strategy for Quality Health Infrastructure in Africa (2021-2030). A robust scoping study titled “Good Health and Well-being” underpins the strategy.
more
The revision of the SRHR Policy is based on the results of the analysis of the implementation process of the past policy, which has provided evidence to
ensure that the revised policy is relevant and effective. The revision has also been done with the participation of all national stakeholders who
...
have
also international experience on SRHR issues. The Ministry urges all public and private institutions to use this policy as a guide in the implementation of
SRHR services in the country.
more
Introduction Community health workers (CHWs) are increasingly being tasked to prevent and manage cardiovascular disease (CVD) and its risk factors in underserved populations in low-income and middle-income countries (LMICs); however, little is known
...
about the required training necessary for them to accomplish their role. This review aimed to evaluate the training of CHWs for the prevention and management of CVD and its risk factors in LMICs.
Methods A search strategy was developed in line with Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines, and five electronic databases (Medline, Global Health, ERIC, EMBASE and CINAHL) were searched to identify peer-reviewed studies published until December 2016 on the training of CHWs for prevention or control of CVD and its risk factors in LMICs. Study characteristics were extracted using a Microsoft Excel spreadsheet and quality assessed using Effective Public Health Practice Project’s Quality Assessment Tool. The search, data extraction and quality assessment were performed independently by two researchers.
Results The search generated 928 articles of which 8 were included in the review. One study was a randomised controlled trial, while the remaining were before–after intervention studies. The training methods included classroom lectures, interactive lessons, e-learning and online support and group discussions or a mix of two or more. All the studies showed improved knowledge level post-training, and two studies demonstrated knowledge retention 6 months after the intervention.
Conclusion The results of the eight included studies suggest that CHWs can be trained effectively for CVD prevention and management. However, the effectiveness of CHW trainings would likely vary depending on context given the differences between studies (eg, CHW demographics, settings and training programmes) and the weak quality of six of the eight studies. Well-conducted mixed-methods studies are needed to provide reliable evidence about the effectiveness and cost-effectiveness of training programmes for CHWs.
more