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MICROBIAL DRUG RESISTANCEVolume 24, Number 5, 2018ªMary Ann Liebert, Inc.DOI: 10.1089/mdr.2017.0383
Antibiotic resistance (ABR) is a worldwide publichealth concern, with serious health, economic, and so-cietal repercussions. Its emergence is att
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ributed to the se-lective pressure exerted by antibiotic use in the community, hospitals, veterinary health, agriculture, aquaculture, and the environment. Additionally aggravating the situation is the fact that very few new antibiotics have recently been produced by pharmaceutical companies. It is widely acknowledged that food animals are key reservoirs of antibiotic-resistant bacteria and that antibiotic usage in this population favors the emergence, selection, and spread of resistance among animals and humans, both through zoonoses (infectious diseases trans-mitted between animals and humans) and the food chain.
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The purpose of this guidance is to assist WHO Member States, and other stakeholders, in the establishment and development of programmes of integrated surveillance of antimicrobial resistance in foodborne bacteria (i.e., bacteria commonly transmitted by food). In this guidance, “integrated surveill
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ance of antimicrobial resistance in foodborne bacteria” is defined as the collection, validation, analyses and reporting of relevant microbiological and epidemiological data on antimicrobial resistance in foodborne bacteria from humans, animals, and food, and on relevant antimicrobial use in humans and animals. Integrated surveillance of antimicrobial resistance in foodborne bacteria therefore includes data from relevant food chain sectors (animals, food and humans) and includes data on both antimicrobial resistance and antimicrobial use. Integrated surveillance of antimicrobial resistance for foodborne bacteria expands on traditional public health surveillance to include multiple elements of the food chain, and to include antimicrobial use data, to better understand the sources of infection and transmission routes.
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The role of environmental contamination in transmission of COVID-19 virus is currently not clear. This protocol has been designed to determine (viable) virus presence and persistence on fomites in various locations where a patient infected with COVI
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D-19 is currently receiving care or being isolated, and to understand how this may relate to COVID-19 transmission events in these settings. It is therefore important that it is done as part of a comprehensive outbreak investigation and that information obtained by environmental studies is combined with the results of epidemiological, laboratory and sequence data from COVID-19 patient investigations.
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With this quick reference guide, providers can easily recognize diseases and side effects related to climate change, implement appropriate management and provide guidance to exposed populations, provide up-to-date information on the relationship between the adverse effects of certain drugs and the w
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orsening of climate-sensitive health conditions, and determine the possible consequences of climate change for health services. This book addresses key meteorological risks, as well as the health conditions which they may influence, grouped by specific clinical areas.
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In response to the COVID-19 outbreak, this guidance provides information on infection and prevention control (IPC) for older people, their friends and families, carers, and healthcare providers. Anyone who manages, works, volunteers or provides care at any type of facilities where older people recei
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ve care at (long-term care facilities, non-acute care facilities, and home care services), should practice strict IPC to prevent and control COVID-19 outbreaks. It has been observed in different countries that older people have higher case-fatality rate compared to other age groups. Therefore, it is especially important to implement and follow IPC measures at facilities, homes, and other venues that older people frequent.
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Le Programme des Nations Unies pour l’environnement (PNUE) soutient les milliards de personnes touchées par la pandémie de COVID-19. Dans l’immédiat, la priorité est de les protéger. Toutefois, il incombe également au PNUE d’aider les pays à
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se reconstruire après la pandémie pour qu’ils soient plus résilients face aux crises à venir.
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COVID-19 has turned the world upside down. Everything has been impacted. How we live and interact with each other, how we work and communicate, how we move around and travel. Every aspect of our lives has been affected.
Depuis plus de dix ans, des journalistes sénégalais et internationaux, des défenseurs des droits de l’homme et des experts en protection de l’enfance ont documenté et dénoncé l’exploitation, la maltraitance et la négligence dont sont victimes des enfants qui vivent dans de nombreuses é
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coles coraniques traditionnelles, ou daaras, au Sénégal. Des milliers de ces enfants, appelés talibés, continuent de vivre dans des conditions de misère extrême, privés de nourriture et de soins médicaux adéquats.
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Une application importante de la santé numérique dans les soins aux patients atteints de tuberculose est le soutien qu'elle peut apporter à l'observance du traitement. Les programmes de lutte contre la tuberculose utilisent déjà le service de
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messages courts (SMS), le traitement assisté par vidéo (VOT) et le dispositif de surveillance des événements pour le soutien des médicaments (EMM)1 pour aider les patients à terminer leur traitement et les travailleurs de la santé à surveiller à la fois la posologie quotidienne et la continuité du traitement
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Risk communication encompasses all the basics of health communication but differs in the need for speed and reliance on trust. At times of crisis, leaders are called on to provide a quick, sensitive and trustworthy response.
Prêt au retour: dossier de formation à la préparation des enseignants vous guidera à travers une réflexion sur l’impact du COVID-19 sur les pratiques pédagogiques quotidiennes et vous fourni
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ra des conseils et des suggestions que vous pourrez appliquer en classe. Les informations fournies ici ne sont qu’une première introduction ; nous espérons que vous les trouverez instructives et utiles, que vous explorerez les sujets plus en profondeur, que vous en discuterez avec vos collègues et que vous utiliserez les ressources disponibles qui vous permettront de changer durablement la vie de vos élèves.
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La pandémie causée par le coronavirus s’est propagée au Niger le 19 mars, date de la notification du premier cas. A la date du 21 juillet 2020, le pays avait enregistré 1 113 cas, dont 1 1018 guéris, 26 sous traitement et 69 décès. Selon l
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analyse des données effectuée par le Ministère de la santé publique, la pandémie a atteint un pic le 9 avril avec 69 cas enregistrés en une journée pour ensuite connaitre une courbe descendante. Cette tendance se maintient en dépit de la progression de la pandémie à Zinder, ainsi que dans les régions d’Agadez et de Diffa, qui étaient, jusqu’au 30 avril 2020, les seules régions épargnées par la COVID-19, et le fait que 169 agents de santé, soit 18,4% de cette catégorie de personnel, figurent parmi les cas confirmés.
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Human Mobility, Shared Opportunities recommends expanding legal pathways, reducing transaction costs on remittances, guaranteeing migrants’ rights, especially for women, fostering integration and social cohesion, and mobilizing diasporas. With forced migration doubling over the last 10 years to ar
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ound 79 million people, tackling its causes will be essential for development.
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Medidas decisivas de preparación, disposición a la acción y respuesta frente a la COVID-19
recommended
Orientations provisoires, 4 novembre 2020
Brazilian media and science communicators must understand the main characteristics of misinformation in social media about COVID-19, so that they can develop attractive, up-to-date and evidence-based content that helps to increase health literacy and counteract the spread of false information.
Loss and damage is an urgent concern, driven by the increasingly harmful effects of climate change. Communities are experiencing new types and forms of climate impact, of higher frequency and intensity, which they are not equipped to handle. These impacts compel vulnerable communities to migrate to
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find alternative livelihoods and ways to survive. But migration generates grave socioeconomic consequences. Through case study analysis from 12 regions in Asia, Africa and the Pacific, this paper explores how climate change-induced migration is creating physical health, mental health and wellbeing issues — both for migrants and the families they leave behind. It then provides recommendations to policymakers on how to strengthen policy, planning and response frameworks to support communities manage health and wellbeing risks created by climate impacts.
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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
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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.
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