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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 challenges in building national surveillance systems due to
...
a lack of infrastructure and resources,resulting in a shortage of systematic data (FAO/OIE/WHO, 2018)
more
Since the introduction of penicillin in the early twentieth century, antimicrobial treatments have been utilized not only in human medicine but also in veterinary care – initially to ward off diseases, prevent post-surgery infections, and treat sick farm animals.Global food production
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has intensified over the past 50 years due to economic expansion and popu-lation growth. The use of antimicrobials in agriculture – in livestock, fish farming, and even on crops – has grown as well. Antimicrobials are not only used as medicines, but are sometimes also added in low concentrations to animal feed as a way of stimulating growth.
more
This document updates the 2014 Core Elements for Hospital Antibiotic Stewardship Programs and incorporates new evidence and lessons learned from experience with the Core Elements. The Core Elements are applicable in all hospitals, regardless of size. There are suggestions specific to small and criti
...
cal access hospitals in Implementation of Antibiotic Stewardship Core Elements at Small and Critical Access Hospitals (12).There is no single template for a program to optimize antibiotic prescribing in hospitals. Implementation of antibiotic stewardship programs requires flexibility due to the complexity of medical decision-making surrounding antibiotic use and the variability in the size and types of care among U.S. hospitals. In some sections, CDC has identified priorities for implementation, based on the experiences of successful stewardship programs and published data. The Core Elements are intended to be an adaptable framework that hospitals can use to guide efforts to improve antibiotic prescribing. The assessment tool that accompanies this document can help hospitals identify gaps to address.
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A regional guide for governments in Asia and the Pacific to review, update and develop policies to address antimicrobial resistance and antimicrobial use in animal production
The guidelines are to be used to guide the management of adults with lower respiratory tract infection (LRTI). As will be seen in the following text, this diagnosis, and the other clinical syndromes within this grouping, can be difficult to make accurately. In the absence of agreed definitions of th
...
ese syndromes these guidelines are to be used when, in the opinion of a clinician, an LRTI syndrome is present. The following are put forward as def-initions to guide the clinician, but it will be seen in the ensuingtext that some of these labels will always be inaccurate. These definitions are pragmatic and based on a synthesis of available studies. They are primarily meant to be simple to apply in clinical practice, and this might be at the expense of scientific accuracy. These definitions are not mutually exclusive, with lower respiratory tract infection being an umbrella term that includes all others, which can also be used for cases that cannot be classified into one of the other groups. No new evidence has been identified that would lead to a change in the clinical definitions,which are therefore unchanged from the 2005 publication.
Clin Microbiol Infect 2011;17(Suppl. 6): 1–24 The full version of these guidelines can be found on Wiley Online Library.
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Recommendations from the American Nurses Association/Centers for Disease Control and Prevention Workgroup on the Role of Registered Nurses in Hospital Antibiotic Stewardship Practices
The protection of children and educational facilities is particularly important. Precautions are necessary to prevent the potential spread of COVID-19 in school settings; however, care must also be taken to avoid stigmatizing students and staff who may have been exposed to the virus. It is important
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to remember that COVID-19 does not differentiate between borders, ethnicities, disability status, age or gender. Education settings should continue to be welcoming, respectful, inclusive, and supportive environments to all. Measures taken by schools can prevent the entry and spread of COVID-19 by students and staff who may have been exposed to the virus, while minimizing disruption and protecting students and staff from discrimination.
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Historically, the discovery of the sulfa drugs in the 1930s and the subsequent development of penicillin during World War II ushered in a new era in the treatment of infectious diseases. Infections that were common causes of death and disease in the pre-
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antibiotic era - rheumatic fever, syphilis, cellulitis and bacterial pneumonia - became treatable, and over the next 20 years most of the classes of antibiotics that find clinical use today were discovered and changed medicine in a profound way. The availability of antibiotics enabled revolutionary medical interventions such as cancer chemotherapy, organ transplants and essentially all major invasive surgeries from joint replacements to coronary bypass. Antibiotics, though, are unique among drugs in that their use precipitates their obsolescence. Paradoxically, these cures select for organisms that can evade them, fueling an arms race between microbes, clinicians and drug discoverers.
Wright BMC Biology 2010, 8:123 http://www.biomedcentral.com/1741-7007/8/12
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Improving the quality of hospital antibiotic use is a major goal of WHO’s global action plan to combat antimicrobial resistance. The WHO Essential Medicines List Access, Watch, and Reserve (AWaRe) classification could facilitate simple stewardship interventions that are widely applicable globally.
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We aimed to present data on patterns of paediatric AWaRe antibiotic use that could be used for local and national stewardship interventions.
www.thelancet.com/lancetgh Vol 7 July 2019
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Rapporto ISS COVID-19, n. 5/2020
Gruppo di Lavoro ISS Ambiente e Qualità dell’Aria Indoor
versione del 23 marzo 2020
Accessed: 01.04.2020
Available in English, French and Arabic
As countries like the United States pass temporary legislation to cushion the massive blow that is on the horizon that is about to hit many of their citizens – poor and not poor – it is important to think about the tools available to governments of low-income countries, what kind of preparations
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they might consider, and what type of scal burden they face for social protection programs that can be nanced through their own budgets and grants from international development institutions like the World Bank.
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COVID-19: Inclusive programming – Ensuring assistance and protection addresses the needs of marginalized and at-risk people
International Committee of the Red Cross (ICRC)
International Committee of the Red Cross (ICRC)
(2020)
C2
March 2020
The purpose of this document is to provide guidance on how quarantine and isolation can be achieved if there is a suspected or confirmed case in an overcrowded setting. It will focus on informal settlements and collective shelters, but the guidance can be applied in non-refugee settings as well, suc
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h as detention centres and crowded neighborhoods. This guidance aims to support a coordinated and efficient response. It supports detailed planning at the regional level and is meant to be adapted to the local context. Households residing outside of these shelter types will be expected to follow the self-isolation circular provided by the MoPH. It is preferable, whenever feasible, that people are supported to remain in their homes. This guidance note will be continuously adapted as needed from the National level.
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Productive and Inclusive Cities for an Emerging Democratic Republic of Congo
This edition of UNICEF’s annual Humanitarian Action for Children highlights UNICEF’s funding appeal, which sets out an ambitious agenda to address the major challenges facing children and young people living through conflict and crisis. It presents the investments needed in 2021 to save their li
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ves and protect their futures.
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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 high global contractions of 5, 10, and 20 per cent;
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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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