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1
The focus of the current quarterly edition of Eurohealth (from the European Observatory on Health Systems and Policies) is Antimicrobial Resistance (AMR) and contains the following articles:
• Strengthening implementation of AMR national action plans
• Fostering clinical developmen
...
t and commercialisation of novel antibiotics
• Tackling AMR in the community
• Quantifying the benefits of vaccines in combating AMR
more
The speed of developing diagnostics for SARS-CoV-2, the causative agent of coronavirus disease 2019 (COVID-19), has been quite remarkable. Diagnostics have focused on nucleic acid amplification testing (NAAT) to identify infected individuals in acute-phase disease for timely implementation of mitiga
...
tion strategies and case management. More and more immunodiagnostics, mostly rapid diagnostic tests, are being made available as an alternative to NAATs. This type of test can be used out-of-laboratory conditions at large scale.
more
With 71 million people forcibly displaced around the world and aid budgets woefully underfunded, how do humanitarian agencies decide whom to help and for how long?
Child friendly spaces (CFS) have become a widely
used approach to protect and provide psychosocial
support to children in emergencies. However,
little evidence documents their outcomes and
impacts. There is widespread commitment among
humanitarian agencies to strengthen the evidence
base of pr
...
ogramming. Recognizing this, the Child
Protection Working Group (CPWG) of the Global
Protection Cluster and the Inter-Agency Standing
Committee (IASC) Reference Group on Mental
Health and Psychosocial Support in Emergency
Settings have identified research in this area as a
high priority.
more
Heat is the top killer among all types of weather hazards, including hurricanes and tornadoes. But hospitals and health care providers do not always report heat-related illnesses or heat as an underlying cause of a death, making it hard to measure the actual impact of extreme heat on health.
May 2020 International Journal of Infectious Diseases 96 DOI: 10.1016/j.ijid.2020.05.003
This report outlines and analyses the implementation of the Bridge Builder Model. This is a two-way, capacity-sharing model aimed at bringing together local faith actors (LFAs) and international humanitarian actors to increase understanding, trust, coordination and collaboration.
One of the most obvious ways in which to ensure impartiality in a health care system is to require impartiality of all actors in the system, i.e. to give health care professionals a duty to treat everyone impartially and to deny them the ‘right’ to give their patients preferential treatment. And
...
one of the possible side-effects of allowing individual health care professionals to give preference to ‘their clients’ is to create inequality in health care. This paper explores the conflict and proposes that it can be right to give preference to ‘your’ patients in certain circumstances.
more
Integritas 4.3 (Fall 2014), pp. 1-30.
doi: 10.6017/integritas.v4i3p1
BMJ Global Health2020;5:e002914. doi:10.1136/bmjgh-2020-002914
The evidence produced in mathematical models plays a key role in shaping policy decisions in pandemics. A key question is therefore how well pandemic models relate to their implementation contexts. Drawing on the cases of Ebola and in
...
fluenza, we map how sociological and anthropological research contributes in the modelling of pandemics to consider lessons for COVID-19. We show how models detach from their implementation contexts through their connections with global narratives of pandemic response, and how sociological and anthropological research can help to locate models differently. This potentiates multiple models of pandemic response attuned to their emerging situations in an iterative and adaptive science. We propose a more open approach to the modelling of pandemics which envisages the model as an intervention of deliberation in situations of evolving uncertainty. This challenges the ‘business-as-usual’ of evidence-based approaches in global health by accentuating all science, within and beyond pandemics, as ‘emergent’ and ‘adaptive’.
more
Progress in Palliative Care, 20:2, 63-65, DOI: https://doi.org/10.1179/0969926012Z.00000000028
List of available resources and courses
At the time of writing, the novel coronavirus pandemic had reached every region of the world, with millions of infections globally and untold disruptions to nearly every aspect of daily life.
Expert Consensus Report for Emergency Centres in
Western Cape
The EiE Competency Framework builds on the INEE Minimum Standards to articulate a set of required, valued and recognized competencies for the humanitarian and education in the emergencies sectors. It broadly describes expected standards of performance across a number of competencies that can be appl
...
ied to different roles within an organization or sector. The framework provides a common lexicon for core humanitarian and technical competencies and defines expected knowledge, skills and attributes for each.
The framework is intended to inform staff recruitment, learning and professional development, performance management, planning, and organizational design. It is a sector-wide guidance to advance the accountability, effectiveness, and predictability of educational preparedness, response and recovery for affected populations.
The framework is primarily intended for use by EiE practitioners in humanitarian contexts. However, it is also relevant at the global level or in development settings in support of planning and emergency preparedness. It is best used in conjunction with the Core Humanitarian Competency Framework (CHCF) and where applicable, the Child Protection in Humanitarian Action (CPHA) Competency Framework. It is transferable across people, countries, and cultures and can be a valuable tool for entry-, mid-, and senior level professional development.
Available in English, Arabic, French, Portuguese and Spanish
more
Paving the Way for One Health: Highlights of the Global Programme Pandemic Prevention and Response, One Health
Haensel L., Argote K., Stübel E.
Deutsche Gesellschaft für Internationale Zusammenarbeit GIZ
(2024)
CC
The document “Paving the Way for One Health: Highlights of the Global Programme Pandemic Prevention and Response, One Health” presents the work and achievements of the global programme implemented by the German development agency GIZ to strengthen pandemic prevention using the One Health approac
...
h. The report highlights how collaboration between the human health, animal health, and environmental sectors can help detect and prevent zoonotic diseases before they spread. It describes activities carried out in partner countries, such as improving surveillance systems, strengthening laboratory capacities, supporting cross-sector cooperation, and building the skills of health professionals. The document also showcases practical examples and project results that demonstrate how integrated One Health strategies contribute to better preparedness and more effective responses to future health threats. Overall, the report illustrates how international cooperation and interdisciplinary approaches can reduce the risk of pandemics and improve global health security.
more
BMJ Global Health, Vol.5 No. 12Spatial subdivision of the camp (‘sectoring’) was able to ‘flatten the curve’, reducing peak infection by up to 70% and delaying peak infection by up to several months. The use of face masks coupled with the efficient isolation of infected individuals reduced t
...
he overall incidence of infection, and sometimes averted epidemics altogether. These interventions must be implemented quickly in order to be maximally effective. Lockdowns had only small effects on COVID-19 dynamics.
Conclusions
Agent-based models are powerful tools for forecasting the spread of disease in spatially structured and heterogeneous populations. Our findings suggest that feasible interventions can slow the spread of COVID-19 in a refugee camp setting, and provide an evidence base for camp managers planning intervention strategies. Our model can be modified to study other closed populations at risk from COVID-19 or future epidemics.
more
BMJ 2019;365:l1807 doi: 10.1136/bmj.l1807 (Published 8 May 2019)