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Publication Years
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Category
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Toolboxes
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Background Unrest in Chile over inequalities has underscored the need to improve public hospitals. Nursing has been overlooked as a solution to quality and access concerns, and nurse staffing is poor by international standards. Using Chile’s new diagnosis-related groups system and surveys of nurse
...
s and patients, we provide information to policy makers on feasibility, net costs, and estimated improved outcomes associated with increasing nursing resources in public hospitals.
more
The training is based on ensuring that the competencies to care for newborn are acquired.
A range of adult learning methods are used, these include reading and self-study,
discussion, and case based learning in written exercises and group discussions, visual presentations and extensive clinical pr
...
actice.
more
A summary of what we know
Proc Natl Acad Sci U S A v.110(21); 2013 May 21 PMC3666729 ;
A systematic review was conducted by a multidisciplinary team to analyze qualitatively best available scientific evidence on the effect of agricultural intensification and environmental changes on the risk of zoonoses for which there are
...
epidemiological interactions between wildlife and livestock.
more
Open access book describing tools for engaging communities in resilience strategies
Based on practical experience from participatory positive futures visioning in nine Latin American and US cities
For students and professionals of different sectors including sustainability, engineering, ec
...
ology and urban planning
more
Potential for solar thermal heating in South African hospitals
Buckley, A.; D. Fitzgerald, U. Terblanche and K. Kritzinger
Centre for Renewable and Sustainable Energy Studies (CRSES) at Stellenbosch University
(2018)
CC
Panam Salud Publica. 2021;45:e22. https://doi.org/10.26633/RPSP.2021.22
Adapting community-led approaches . Three out of 10 people in urban areas do not use improved sanitation facilities, and one out of 10 people are forced to practise open defecation. Still higher proportions do not have access to safely managed sanitation facilities, where the fecal sludge
is contai
...
ned and either left in situ or safely emptied, transported, and delivered to a treatment plant.
more
Lancet Planet Health 2022;6: e760–68
The emergence of COVID-19 has drawn the attention of health researchers sharply back to the role that food systems can play in generating human disease burden. But emerging pandemic threats are just one dimension of the complex relationship between agriculture
...
and infectious disease, which is evolving rapidly, particularly in low-income and middle-income countries (LMICs) that are undergoing rapid food system transformation. This changing relationship is examined through four current disease issues.
more
Prevention of drug use in schools
Ranaweera, S.; and D. Samarashinghe
World Health Organization (WHO), Regional Office for South-East Asia
(2022)
C_WHO
Schools are generally the most popular setting for drug-use-
prevention programmes, and are used both by governmental and
non-governmental agencies. This may be for many reasons: ease of
obtaining funding for school drug-use-prevention programmes, the
captive audience, and the popular perception
...
that drug prevention
should start from schools, or the need to show that action is being
taken to control a serious social problem.
more
The COVID-19 pandemic has resulted in a double shock - health and economic. As of March 1, 2021, COVID-19 has cost more than 2.5 million lives and triggered an economic recession surpassing any economic downturn since World War II.
Part I of this paper explores the impact of this current macro-fisc
...
al outlook on the three primary sources of health spending. Drawing on experiences from previous economic crises, scenario analyses suggest a fall in government per capita spending on health in 2021 and 2022 unless governments make bold choices to increase the share of health in general government spending.
Part II of the paper discusses policy options to meet the spending needs in health. These options encompass strategies to make fiscal adjustments work and channel funds where they are most needed, as well as policies to stabilize the balance sheets of social health insurance (SHI) schemes. The paper explains how the health sector can play an active role in expanding fiscal space, contributing to tax reforms, most importantly pro-health taxes, and mobilizing and absorbing external financing, including debt relief.
more
The COVID-19 pandemic has brought the need for well-functioning primary health care (PHC) into sharp focus. PHC is the best platform for providing basic health interventions (including effective management of non-communicable diseases) and essential public health functions. PHC is widely recognised
...
as a key component of all high-performing health systems and is an essential foundation of universal health coverage
more
Background: At the MDG Summit in September 2010, the UN Secretary-General launched the Global Strategy for
Women’s and Children’s Health. Central within the Global Strategy are the ambitions of “more money for health”
and “more health for the money”. These aim to leverage more resource
...
s for health financing whilst simultaneously
generating more results from existing resources - core tenets of public expenditure management and governance.
This paper considers these ambitions from a human resources for health (HRH) perspective
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
Over the past 20 years, the Global Initiative for Asthma (GINA) has regularly published and annually updated a global strategy for asthma management and prevention that has formed the basis for many national guidelines. However, uptake of existing guidelines is poor. A major revision of the GINA r
...
eport was published in 2014, and updated in 2015, reflecting an evolving understanding of heterogeneous airways disease, a broader evidence base, increasing interest in targeted treatment, and evidence about effective implementation approaches. During development of the report, the clinical utility of recommendations and strategies for their practical implementation were considered in parallel with the scientific evidence.
more
Asbestosis is a process of diffuse interstitial fibrosis of the lung due to exposure to asbestos dust. Asbestos is the name given to a group of naturally occurring minerals that are resistant to heat and corrosion; these include mineral fibers such as chrysotile, amosite, and crocidolite, among oth
...
ers. Chrysotile is by far the most common type of asbestos fiber produced in the world, and it accounts for virtually all commercial use of asbestos in the United States.
more
The Lancet Volume 403, Issue 10422p203-218January 13, 2024, Free Download with free registration
BMC Pregnancy Childbirth 20, 379 (2020). https://doi.org/10.1186/s12884-020-03064-x
The paper “Artificial Intelligence for Public Health Surveillance in Africa: Applications and Opportunities” examines how artificial intelligence (AI) can improve public health systems across Africa, particularly in low-resource settings. It explores how machine learning and other AI techniques
...
are being used for disease detection, outbreak prediction, real-time surveillance, and health resource management.
The authors focus on major public health challenges such as HIV, cholera, Ebola, measles, tuberculosis, malaria, COVID-19, and mental health. Through numerous case studies, the paper shows that AI can enhance the accuracy and speed of disease detection, predict outbreaks more effectively than traditional methods, support vaccination strategies, and optimize healthcare resource allocation. At the same time, it discusses important barriers to implementation, including limited data quality, infrastructure constraints, ethical concerns, and shortages of technical expertise.
Overall, the paper highlights AI’s strong potential to strengthen disease surveillance and health outcomes in Africa while emphasizing the need for careful integration, improved data systems, and supportive policy frameworks.
more
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