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Publication Years
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Toolboxes
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Q3: Can febrile seizures (simple or complex) be managed at first or second level care by non-specialist health care providers in low and middle income country settings? What is the role of diagnostic tests in the management of febrile seizures by no
...
n-specialists in low and middle income settings? For prophylaxis to prevent recurrence of simple or complex febrile seizures, which of the pharmacological interventions when compared with placebo/comparator produce benefit/harm in specified outcomes?
- continuous anticonvulsant therapy - intermittent anticonvulsant therapy - intermittent antipyretic treatment
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Q5: What is the added advantage of doing an electroencephalography (EEG) in people with convulsive epilepsy in non- specialist settings in low and middle income countries?
Info from and between Mental Health Workers, NGO's, Institutes, Service Users and others who are interested in improving Mental Health in Low and Middle Income Countries
Q 12: In children and adolescents with anxiety disorders, what is the effectiveness and safety, considering system issues in low- and middle-income countries, of using pharmacological interventions in non-specialist settings?
The Global Movement for Mental Health has brought renewed attention to the neglect of people with mental illness within health policy worldwide. The maltreatment of the mentally ill in many low-income countries is widely reported within psychiatric
...
hospitals, informal healing centres, and family homes. International agencies have called for the development of legislation and policy to address these abuses. However such initiatives exemplify a top-down approach to promoting human rights which historically has had limited impact at the level of those living with mental illness and their families.
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Soapbox Collaborative has launched a new training package called TEACH CLEAN, which is a package for those that clean health care facilities in low- and middle-income countries.
The TEACH CLEAN package presents information and materials required to
...
deliver comprehensive, participatory training on safe environmental cleaning, applying aspects of essential IPC for these tasks. The package is tailored towards use with low-literate cleaning staff but can be applied to wider facility staff.
To request a copy of the TEACH CLEAN Package, or supporting materials, please complete the online form.
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The Movement for Global Mental Health (MGMH) is a virtual network of individuals and organisations that aim to improve services for people living with mental health problems and psychosocial disabilities worldwide, especially in low- and middle-income
...
countries (LMIC) where effective services are often scarce.
Two principles are fundamental to the Movement: scientific evidence and human rights.
more
Suicides take a high toll. Over 800 000 people die by suicide every year and it is the second leading cause of
death in 15-29-year-olds. Most suicides occur in low- and middle-income countries where resources
and services, if they do exist, are of
...
ten scarce and limited for early identification, treatment and support of
people in need. These striking facts and the lack of implemented timely interventions make suicide a serious
global public health problem that needs to be tackled urgently.
more
Gapminder: Dollar Street
recommended
See how people really live. Imagine the world as a street. All houses are lined up by income, the poor living to the left and the rich to the right. Everybody else somewhere in between. Where would you live? Would your life look different than your
...
neighbours’ from other parts of the world, who share the same income level?
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Housing at the forefront of the response to COVID-19: Discussion paper on policy options for Myanmar
Urban poor communities including the homeless, residents of informal settlements, residents at risk of being evicted, Internally Displaced Persons (IDPs), undocumented persons, low-income renters, as well as homeowners are perhaps at greatest risk f
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rom both COVID-19 and the response interventions to it.
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Chapter · January 2009 DOI: 10.1007/978-0-387-72711-0_25
D.D. Celentano and C. Beyrer (eds.), Public Health Aspects of HIV/AIDS in Low and Middle Income Countries, DOI: 10.1007/978-0-387-72711-0 25, c Springer Science+Business Media, LLC 2008
After Maria: Everyday Recovery from Disaster
recommended
In 2017 Hurricane Maria devastated the Caribbean island of Puerto Rico. “After Maria” is based on a one-year ethnographic research project about how 16 low-income Puerto Rican families were affected by, and recovered from the impacts of Maria. D
...
r. Gemma Sou visited Puerto Rico five times during the first year after Maria, to chat candidly about how the families were recovering. Although this graphic novella tells the story of a fictional family, “After Maria” is based on the experiences that tie together all of the Puerto Rican families that I spoke to.
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Ineffective Healthcare Technology Management in Benin’s Public Health Sector: The Perceptions of Key Actors and Their Ability to Address the Main Problems
P. Thierry Houngbo, Tjard De Cock Buning, Joske Bunders, Harry L. S. Coleman, Daton Medenou, Laurent Dakpanon†, Marjolein Zweekhorst
International Journal of Health Policy and Management IJHPM
(2017)
C2
Int J Health Policy Manag 2017, 6(10), 587–600
Low-income countries face many contextual challenges to manage healthcare technologies effectively, as the majority are imported and resources are constrained to a greater extent. Previous healthca
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re technology management (HTM) policies in Benin have failed to produce better quality of care for the population and cost-effectiveness for the government. This study aims to identify and assess the main problems facing HTM in Benin’s public health sector, as well as the ability of key actors within the sector to address these problems.
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Antimicrobials are widely used in food animal production, and use is rapidly increasing.
In an era of growing demand for animal products, there is an increasing trend towards the industrial production of food animals, especially in lower- and middle-incom
...
e countries (LMICs). One hallmark of this method of animal production is the
use of antimicrobial drugs, which in the majority of cases are administered to healthy animals for purposes other than
treating or controlling disease (termed “therapeutic uses”)
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A conceptual framework for the environmental surveillance of antibiotics and antibiotic resistance
Patricia M.C. Huijbers, Carl-Fredrik Flach, D.G. Joakim Larsson
Centre for Antibiotic Resistance Research (CARe), University of Gothenburg
(2019)
C2
The systematic surveillance of antibiotic use and antibiotic re-sistance prevalence in humans and animals is imperative for managingbacterial infectious disease (JPIAMR, 2019;WHO, 2015). Many low-income countries currently face substantial challenge
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s in building national surveillance systems due to a lack of infrastructure and resources,resulting in a shortage of systematic data (FAO/OIE/WHO, 2018)
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Learn what antibiotic resistance is and how to prevent it while increasing productivity among your livestock - This course is for livestock keepers and professionals working in the livestock production sector (such as veterinarians and advisors) in low-inc
...
ome countries and emerging economies worldwide. The course might also be of interest for agricultural authorities in those countries.
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This study addresses part of the Terms of Reference for a scoping report ‘An analysis of approaches to laboratory capacity strengthening for drug resistant infections in low and middle income countries’. It has been produced as a separate report
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because it is also very relevant for a second study ‘Supporting Surveillance Capacity for Antimicrobial Resistance: Regional Networks and Educational Resources’. This study compares antimicrobial surveillance systems in three low and middle income countries in order to describe the components of these systems and to understand which surveillance models are best suited to particular contexts. Ghana, Nigeria and Nepal were selected as study countries because they cover different continents and include one ‘fragile’ context (Nigeria). Brief information from Malawi is also included.
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The Global Antibiotic Resistance Partnership (GARP) aims to address the challenge of antibiotic resistance by developing actionable Policy Proposals in Vietnam and four other low- and middle-income countries: China, India, Kenya and South Africa. GA
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RP will develop the evidence base for Policy action on antibiotic resistance and identify policy opportunities where research, advocacy and information have the best chance of slowing the development and spread of resistance.
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In this paper they make estimates of the potential short-term economic impact of COVID-19 on global monetary poverty through contractions in per capita household income or consumption.
The estimates are based on three scenarios: low, medium, and
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high global contractions of 5, 10, and 20 per cent; we calculate the impact of each of these scenarios on the poverty headcount using the international poverty lines of US$1.90, US$3.20 and US$5.50 per day.
The estimates show that COVID poses a real challenge to the UN Sustainable Development Goal of ending poverty by 2030 because global poverty could increase for the first time since 1990 and, depending on the poverty line, such increase could represent a reversal of approximately a decade in the world’s progress in reducing poverty.
In some regions the adverse impacts could result in poverty levels similar to those recorded 30 years ago. Under the most extreme scenario of a 20 per cent income or consumption contraction, the number of people living in poverty could increase by 420–580 million, relative to the latest official recorded figures for 2018.
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This report presents three scenarios on the impact of COVID-19 in Africa using economic growth forecasts, mortality and efforts to ameliorate impact through social grants. Likely effects are examined on per capita income, poverty and the attainment
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of selected Sustainable Development Goals targets. Africa’s development trajectory has suffered a severe setback, with extreme poverty rising in all the scenarios. The pandemic threatens Africa in several ways, and the report provides policy recommendations to reduce vulnerability and strengthen resilience.
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