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Publication Years
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Toolboxes
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1
L’année 2020 a été une année particulièrement difficile pour la population de la République démocratique du Congo (RDC). Les conflits armés, les épidémies, les catastrophes naturelles ainsi que l’impact socio-économique de la COVID-19 ont considérablement exacerbé les vulnérabilit
...
s déjà existantes dans un contexte marqué par un manque criant d’accès aux services essentiels pour une grande majorité de la population. La RDC, le plus grand pays d'Afrique subsaharienne et le troisième le plus peuplé, avec une population estimée à 103 millions, demeure confrontée à l'une des crises humanitaires les plus graves au monde.
more
One important application of digital health in TB patient care is the support that it can lend to medication adherence. TB programmes have already been using short message service (SMS), video-supported treatment (VOT) and event monitoring device for medication support
...
(EMM)1 to help patients complete treatment and health-care workers to monitor both daily dosing and treatment continuity
more
Orientations provisoires
BUKO Pharma-Kampagne has investigated the causes and consequences of antibiotic resistance in India, South Africa, Tanzania and Germany. Together with our partners we collected data and did interviews with numerous stakeholders. The outcome is presented in a brochure that is now available in English
...
Resistant bacteria are spreading worldwide. In collaboration with partners in India, Tanzania, South Africa and Germany, we have investigated the causes and consequences of this spread.2 This Pharma-Brief Special presents the results. It examines the risks for humans, animals and the environment. It focuses on local problems and approaches, international interactions and the re-sponsibility of doctors, farmers and consumers.
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Guidelines for Critical Care of Seriously Ill Adult Patients with Coronavirus (COVID-19) in the Americas
recommended
Short Version
This clinical practice guideline was developed in order to provide recommendations for the management of critically ill adult patients with COVID-19 in intensive care units (ICUs).
Updated 10 August 2020
This document presents an essential medicines list (EML) to manage patients in intensive care units (ICUs) with suspected or confirmed COVID-19 diagnosis, which includes active ingredients with dosage form and concentration, and are preferably in the WHO Model Lists of Essent
...
ial Medicines 2019; based on clinical presentations and symptoms identified and prioritized in World Health Organization (WHO) and Surviving Sepsis Campaign (SSC) guidelines and the evidence presented in these guidelines.
more
Ce document d'orientation est destiné aux cliniciens qui s'occupent de patients atteints de COVID-19 à toutes les phases de leur maladie (c'est-à-dire du dépistage à la sortie de l'hôpital). Cette mise à jour a été étendue pour répondre aux besoins des cliniciens de première ligne et fa
...
vorise une approche multidisciplinaire des soins aux patients atteints de COVID-19, y compris ceux qui présentent une maladie légère, modérée, grave et critique. Les sections suivantes sont entièrement nouvelles : parcours de soins COVID-19, traitement des infections aiguës et chroniques, gestion des manifestations neurologiques et mentales, maladies non transmissibles, réadaptation, soins palliatifs, principes éthiques et déclaration du décès ; les chapitres précédents ont également été considérablement étoffés.
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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.
The WHO Global Health Estimates show that nearly half a million deaths (493 471) occurred in the WHO European Region due to violence and injuries in 2016. This represents a decline of 29% from 2000. Injuries account for 5.3% of all deaths and 9.6 of all years of life lost. They are a leading cause o
...
f death in people aged 15–29 years and the second leading cause of death for young people aged 5–14. The three leading causes of injury deaths are self-directed violence (141 089), falls (83 325) and road-traffic injuries (78 198). Inequalities in injury deaths exist in the Region, with mortality rates 2.4 times higher in males than in females and 1.5 times higher in middle-income compared to high-income countries.
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Les mises à jour réalisées pour de nombreux pays ont permis d’estimer la faim dans le monde avec une plus grande précision cette année. En particulier, les données nouvellement accessibles ont permis de revoir l’ensemble des estimations annuelles de la sous-alimentation en Chine en remonta
...
nt jusqu’à 2000, ce qui a entraîné une importante révision à la baisse du nombre de personnes sous-alimentées dans le monde. Néanmoins, la révision confirme la tendance signalée dans les éditions précédentes: le nombre de personnes touchées par la faim dans le monde est en lente augmentation depuis 2014.
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Integritas 4.3 (Fall 2014), pp. 1-30.
doi: 10.6017/integritas.v4i3p1
Version 4
The purpose of these standard operating procedures (SOPs) is to offer policy guidance and to provide performance standards on how to respond to any type of poliovirus outbreak or event in a timely and effective manner, and specifically, to stop an outbrea
...
k within 120 days.
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Severe acute respiratory infections treatment centre: practical manual to set up and manage a SARI treatment centre and a SARI screening facility in health care facilities
There is no secret to our procedure: the daily scanning of the literature helps us to stay afloat in the never-ending waves of new publications about SARS-CoV-2 and COVID-19. Many papers discussed in the Top 10 will eventually make it into subsequent editions of COVID Reference.
A new reportshows that people in some 25 countries are set to face devasting levels of hunger in coming months due to the fallout from the COVID-19 pandemic. While the greatest concentration of need is in Africa, countries in Latin America and the Caribbean, and in the Middle East and Asia – inclu
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ding middle-income countries - are also being ravaged by crippling levels of food insecurity
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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’.
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COVID-19: Travel, Points of Entry and Border Health