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Publication Years
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Category
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9
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Toolboxes
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2
A Review of Existing Policy Frameworks.
Report III Conversations on Planetary Health
Report V of Conversations on Planetary Health
For the purposes of this review, we are not setting out what exactly implementing the concept of
planetary health at a national level should or could look like. This is a complicated and nuanced aspect
of moving the concept of planetary health to action that will be highly dependent on the unique
...
needs
of each country. We are, however, trying to encourage progress in this regard by identifying openings
that could be leveraged to speed the uptake of the concept of planetary health.
more
The case is intended to be used as the basis for group work and class discussion rather than to illustrate either effective or ineffective handling of a Medical Peace Work situation. This is one of seven Medical Peace Work courses.
Mortality and burden of disease attributable to selected major risks
Globally each year, millions of people suffer illness or lose their lives because the vaccines, medicines and diagnostic tests that they need are either unavailable or unaffordable – and this lack of access to medicine is acute in low- and middle-in-
come countries (LMICs). While the COVID-19 pan
...
demic laid this inequity bare, it also saw the pharmaceutical industry develop and bring new vaccines and treat- ments to market at unprecedented speed. As the world emerges from the worst
of this crisis, pharmaceutical companies are now at an important juncture, where lessons learned from the pandemic can prove pivotal in finding solutions to bridge long-standing gaps in access to medicine in LMICs.
more
The growing challenges for people in low and middle-income countries to access new medicines.
Analysis 58
В данном издании представлены результаты оценки системы материнской и неонатальной помощи в Кыргызстане и соответствующие программы. Здесь описана текущая деяте
...
льность, направленная на улучшение здоровья матери и новорожденного, и инновационные пути для решения существующих трудностей, а также предложена модель проведения оценки эффективности программ, которые созданы на основе доказательной медицины и могут изменить сложившуюся ситуацию.
more
What you get for your dollar
Global Policy Forum Europe e.V. ; Brot für die Welt ; Misereor
(2019)
“Effective Altruism” — What it is, how philanthropic foundations use it and what are its risks and side-effects
Gesundheit leistet einen grundlegenden Beitrag für ein erfülltes und zufriedenes Leben. Gesundheit ist ein zentrales Menschenrecht, eines der höchsten Güter aller Menschen und zugleich wesentliche Voraussetzung für soziale, wirtschaftliche und politische Entwicklung und Stabilität. Gesundheit
...
kann weltweit nur sichergestellt und verbessert werden durch gemeinsames globales Handeln.
more
This document aims to assist policy‑makers, health care providers and researchers to understand key concepts in health ethics and to identify basic ethical questions surrounding health and health care. It illustrates the challenges of applying ethical principles to global public health and outline
...
s practical strategies for dealing with those challenges.
more
Responses to epidemics, emergencies and disasters raise many ethical issues for the people involved, including public health specialists and policy makers. This training manual provides material on ethical issues in research, surveillance and patient care in these difficult contexts.
Introduction
Chapter A.13
Mental health disorders remain widely under-reported — in our section on Data Quality & Definitions we discuss the challenges of dealing with this data. Figures presented in this entry should be taken as estimates of mental health disorder prevalence — they do not strictly reflect diagnosis data
...
(which would provide the global perspective on diagnosis, rather than actual prevalence differences), but are imputed from a combination of medical, epidemiological data, surveys and meta-regression modelling where raw data is unavailable. Further information can be found here.
Accessed April 15, 2019
more
PLoS Med. 2009 Oct;6(10):e1000159. doi: 10.1371/journal.pmed.1000159. Epub 2009 Oct 6.
NICE guideline
Published: 23 May 2017
Accessed April 16, 2019