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Toolboxes
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The figures and findings reflected in the 2019 Humanitarian Needs Overview (HNO) represent the independent analysis
of the United Nations (UN) and its humanitarian partners based on information available to them. While the HNO aims
to provide consolidated humanitarian analysis and
...
data to help inform joint strategic humanitarian planning, many of
the figures provided throughout the document are estimates based on sometimes incomplete and partial data sets using
the methodologies for collection that were available at the time. The Government of Syria has expressed its reservations
over the data sources and methodology of assessments used to inform the HNO, as well as on a number of HNO findings.
more
Effective Ebola risk communication requires respect and transparency and remains as vital
as ever. An assessment of changing communication needs and preferences in Beni, North Kivu.
In the second year of the current Ebola outbreak response in the Democratic Republic of Congo (DRC), people at ris
...
k still don’t have clear answers to their questions about the disease in a language they understand. Many local health communicators are themselves confused about the disease prevention and treatment measures they promote. The language, content, and form of communication about Ebola affect how far people understand, trust and act upon it.
more
The global burden of disease (GBD) study provides information about fatal and non-fatal health outcomes around the world.
The objective of this work is to describe the burden of mental disorders among children aged 5–14 years in each of the six regions of the World Health Organisation.
...
Data come from the GBD 2015 study. Outcomes: disability-adjusted life-years (DALYs) are the main indicator of GBD studies and are built from years of life lost (YLLs) and years of life lived with disability (YLDs).
more
The National Action Plan (NAP) has been developed based on the model recommended in the global Action Plan. Local data on on-going interventions were collected from technical informants in the various areas of work. These were analysed using the pol
...
icy framework provided by the AMR policy document. Interventions were developed to address gaps in all five objectives of the global Action Plan. Further consultations were done to ensure that the recommended interventions were feasible, valid and relevant within the systemic contexts pertaining to the various affected sectors.
more
This year’s MPI results show that more than two-thirds of the multidimensionally poor—886 millionpeople—live in middle-income countries. A further 440 million live in low-income countries. In both groups, data show, simple national averagescan
...
hide enormous inequality inpatterns of povertywithin countries. For instance, in Uganda 55 percentof the population experience multidimensional poverty—similartotheaverage in Sub-Saharan Africa. But Kampala, the capital city, has an MPI rate of sixpercent, whileinthe Karamojaregion, the MPI soars to 96 percent—meaningthat partsof Ugandaspan the extremes of Sub-Saharan Africa.There is even inequality under the same roof. In South Asia, for example, almost a quarter ofchildren under five live in households where at least one child in the household is malnourished but at least one child is not.
There is also inequality among the poor. Findings of the2019 global MPI paint a detailed picture of the many differences in how-and how deeply -people experience poverty. Deprivationsamong the poor varyenormously: in general, higher MPI valuesgo hand in hand with greater variationin the intensity of poverty. Results also show that children suffer poverty more intensely than adults and are more likely to be deprived in all 10 of the MPI indicators, lackingessentialssuch as clean water, sanitation, adequate nutrition or primary education
more
The aim of the people-centred framework is to help countries to develop fully prioritized and budgeted NSPs based on a culture of making full use of the available data, which are aligned with national planning cycles and which provide the basis for
...
a robust national response that can accelerate progress towards the goal of ending TB. In addition, applying the framework for other possible applications according to the country’s planning and policy cycle encourages the culture of data utilization and evidence translation into decision making and planning.
more
The booklet starts with a general overview of how illicit drugs and the environment are linked within the bigger picture of the Sustainable Development Goals, climate change and environmental sustainability. It highlights direct and indirect linkages and gives examples of the significant local and i
...
ndividual-level impact that drugs can have on the environment. This is followed by a more in-depth overview of the latest scientific evidence for plant-based drugs and for synthetic drugs. For plant-based drugs, for example, this includes an analysis of the relationship between illicit crop cultivation and deforestation. For synthetic drugs, it includes an analysis of waste composition, volumes, and dumping and discharge, as well as the relation with wastewater treatment.
more
This publication provides a practical tool to support countries in strengthening surveillance of WASH in schools. The findings will inform the development of supportive regulations and improvement planning to safeguard children’s health, well-being, dignity and cognitive performance. The tool also
...
enables countries to use the data collected to facilitate policy dialogue and inform international reporting, including on progress towards achieving the Sustainable Development Goal targets related to WASH in schools.
more
Objective: The study aimed to describe the current epidemiological, clinical and immunological profile of newly
detected HIV - positive patients in Northern Benin by 2016. Methods: It was a prospective study conducted from May 2 to
October 31, 2016 on three main sites of care of people living with
...
HIV (PLHIV) in the department of Borgou in Benin. All
new cases of HIV infection have been systematically and comprehensively recruited. Initial epidemiological, clinical and
immunological data were collected using a questionnaire. These data were entered and analyzed using the Epi Info 7 software.
Results: In total, 185 adults (68 male and 117 female) newly screened HIV positive were included in this study. The middle age
was 36.2 ± 10.9 years and the sex ratio was 0.6 One hundred and thirty-five patients (73%) were between 25 and 50 years old.
In terms of the profession, 132 patients (71.3%) were engaged in liberal activities (craftmen, traders and retailers). The
majority was schooled (113 or 61.1%) and resided in urban areas (146 or 79%). One hundred and sixteen patients lived in
couple (62.7%) with an average monthly income estimated at 70 US Dollars. Clinically, 123 patients (66.5%) were in WHO
stage III. The body mass index was over 18.5 kg/m2 in 124 patients (67%). The median number of TCD4 lymphocytes was
254.5 cells/ml and 25 patients (13.5%) had a number of CD4 over 500 cells/ml. HIV1 was really predominant (97.8%). Most
patients (152 or 82.2%) had been screened for clinical suspicion. Conclusion: HIV infection in Benin remains the prerogative
of young, female, educated and poor people. Screening is delayed and hence the need to develop innovative strategies for early
more
Antimicrobial resistance (AMR) is a major global public health concern and a food safety issue. When pathogens become resistant to antimicrobial agents they can pose a greater human health risk as a result of potential treatment failure, loss of
...
treatment options and increased likelihood and severity of disease.
more
Senegal has adopted the World Health Organization–Joint United Nations Programme on HIV/AIDS recommended 90-90-90 targets.5 The adoption of this strategy means that the country is expected, by 2020, to have 90% of its population living with HIV diagnosed, 90% of all those diagnosed receiving susta
...
ined HIV treatment, and 90% of those receiving antiretroviral therapy having suppressed viral load measures.5 To achieve these outcomes, having good clinical laboratory services for diagnosis and follow-up will be critical.6 More specifically, investments will be needed to improve laboratory infrastructure, and to facilitate the access and availability of routine viral load and early infant diagnosis (EID) measures through the implementation of point-of-care (POC) diagnostic platforms along with an efficient and sustainable quality assurance programme.
more
Module 12:
Adolescents and young adults
July 2018
Module 12: Adolescents and young adults. This module is for people who are interested in providing PrEP services to older adolescents and young adults who are at substantial risk for HIV. It provides information on: factors that influence HIV
...
susceptibility among young people; clinical considerations for safety and continuation on PrEP; ways to improve access and service utilization; and inclusive monitoring approaches to improve the recording and reporting of data on young people.
more
Tanzania: The National Action Plan on AMR 2017-2022
The United Republic of Tanzania - Ministry of Health Community Development Gender Elderly and Children
World Health Organization WHO
(2017)
C_WHO
This National Action Plan addresses actions needed to be taken in order to combat antimicrobial resistance (AMR) in the country. It is obligatory to raise awareness of antimicrobial resistance and promote behavioral change through public communication
programmes that targets human, animal and plant
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health. Inclusion of the use of antimicrobial agents and resistance in school curricula will further promote better understanding and awareness from an early age. Antimicrobial Resistance knowledge, surveillance and research will be strengthened through establishing a national surveillance system for antimicrobial resistance, establishing and building capacity for a national reference laboratory and designated laboratories for AMR surveillance, developing a national research agenda on AMR and establishing and supporting a coordinated mechanism that will ensure harmonized AMR guidelines, data management and sharing systems in human, animal and plant health settings.
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The issue of Antimicrobial resistance has become one of the most substantial health issues, prompting the World Health Assembly (WHA) to urge Member States to finalise tailor made national action plans by May 2017, aligning them with objectives of the Global Action Plan (GAP). These cover awareness,
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surveillance and research, hygiene infection prevention & control, optimal use of antimicrobial medicines and economic case for sustainable investment. Indonesia, by virtue of its geographical terrain and complex interactions with diverse stakeholders, indicates a higher burden of AMR. Most of the country’s data currently relies on local studies conducted by labs and universities. To get a more accurate estimate of the situation, one has to rely on results from the Regional Resistance Surveillance Programme. By undertaking such measure, Indonesia would acquire data to detect AMR trends at a national level.
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The second ECDC/EFSA/EMA joint report on the integrated analysis of antimicrobial consumption (AMC) and antimicrobial resistance (AMR) in bacteria from humans and food-producing animals addressed data obtained by the Agencies’ EU-wide surveillance
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networks for 2013–2015. AMC in both sectors, expressed in mg/kg of estimated biomass, were compared at country and European level. Substantial variations between countries were observed in both sectors. Estimated data on AMC for pigs and poultry were used for the first time. Univariate and multivariate analyses were applied to study associations between AMC and AMR. In 2014, the average AMC was higher in animals (152 mg/kg) than in humans (124 mg/kg), but the opposite applied to the median AMC (67 and 118 mg/kg, respectively). In 18 of 28 countries, AMC was lower in animals than in humans. Univariate analysis showed statistically-significant (p < 0.05) associations between AMC and AMR for fluoroquinolones and Escherichia coli in both sectors, for 3rd- and 4th-generation cephalosporins and E. coli in humans, and tetracyclines and polymyxins and E. coli in animals. In humans, there was a statistically-significant association between AMC and AMR for carbapenems and polymyxins in Klebsiella pneumoniae. Consumption of macrolides in animals was significantly associated with macrolide resistance in Campylobacter coli in animals and humans. Multivariate analyses provided a unique approach to assess the contributions of AMC in humans and animals and AMR in bacteria from animals to AMR in bacteria from humans. Multivariate analyses demonstrated that 3rd- and 4th-generation cephalosporin and fluoroquinolone resistance in E. coli from humans was associated with corresponding AMC in humans, whereas resistance to fluoroquinolones in Salmonella spp. and Campylobacter spp. from humans was related to consumption of fluoroquinolones in animals. These results suggest that from a ‘One-health’ perspective, there is potential in both sectors to further develop prudent use of antimicrobials and thereby reduce AMR.
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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)
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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
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a lack of infrastructure and resources,resulting in a shortage of systematic data (FAO/OIE/WHO, 2018)
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COVID-19: Guidelines for case-finding, diagnosis, management and public health response in South Africa
recommended
Bham A., J. Bhiman, F. Bongweni et al.
Centre for Respiratory Diseases and Meningitis and Outbreak Response
(2020)
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The information contained in this document, be it guidelines, recommendations, diagnostic algorithms or treatment regimens, are offered in this document in the public interest. To the best of the knowledge of the guideline writing team, the informat
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ion contained in these guidelines is correct. Implementation of any aspect of these guidelines remains the responsibility of the implementing agency in so far as public health liability resides, or the responsibility of the individual clinician in the case of diagnosis or treatment.
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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
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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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The escalating antimicrobial resistance (AMR) pandemic is a global public health threat with extensive health, economic and societal implications. Resistance emerges because of selection pressure from rational and indiscriminate antimicrobial use in human health as well as in the veterinary, agricul
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ture and environmental sectors. Infections caused by resistant bacteria result in longer duration of illness, higher mortality rates and increased costs associated with alternative treatment. AMR further constrains procedures that rely on antimicrobial prophylaxis, and AMR is recognized as a threat to theworld economy.
Journal of Public Health | Vol. 39, No. 1, pp. 8–13 | doi:10.1093/pubmed/fdw015 | Advance Access Publication March 3 2016
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The ECDC, the EFSA and the EMA have for the first time jointly explored associations between consumption of antimicrobials in humans and food-producing animals, and antimicrobial resistance in bacteria from humans and food-producing animals, using 2011 and 2012
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data currently available from their relevant five EU monitoring networks. Combined data on antimicrobial consumption and corresponding resistance in animals and humans for EU MSs and reporting countries were analysed using logistic regression models for selected combinations of bacteria and antimicrobials. A summary indicator of the proportion of resistant bacteria in the main food-producing animal species was calculated for the analysis, as consumption data in food-producing animals were not available at the species level
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