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Publication Years
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Category
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Toolboxes
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1
The goal of this course is to provide participants with the foundational skills needed to begin the development, implementation and ongoing improvement of a congenital anomalies surveillance programme, in particular for countries with limited resou
...
rces. It focuses on the methodology needed to develop either population-based or hospital based surveillance programmes.
A set of congenital anomalies will be used as examples throughout this course. The specific examples used are typically severe enough that they would probably be captured within the first few days after birth, have a significant public health impact and, for some of them, have the potential for primary prevention.
more
An output of a series of workshops on psychosocial support held in 2004-2005 by the Bernard van Leer Foundation and the Coalition on Children Affected by AIDS. Authors Linda Richter, Geoff Foster and
...
Lorraine Sherr discuss the issues surrounding psychosocial care and support for children made vulnerable by the HIV/AIDS pandemic and make recommendations for future priorities and programming directions. Includes the ""Call To Action"" for Toronto 2006.
more
An Evidence-Based Treatment Guide for Clinicians
This guidance addresses rationale, risk-based scenarios, practical considerations prior to adoption of the self-testing products, quality assurance, safety and ethical considerations, and data manag
...
ement considerations for COVID-19 self-testing. The Africa CDC recommends the use of rapid antigen self-testing within two key scenarios. The first includes testing for case identification within scenarios with a high risk of infection, including symptomatic cases and contacts of a confirmed case. The second scenario involves general screening within scenarios of low or unknown risk exposure allowing for self-care such as before gatherings with at-risk individuals and prior to participation in events involving members of different households. Within these scenarios, a positive test result indicates likelihood of current infection, while a negative test result indicates a lower risk of active infection, though it does not rule out infection altogether. All positive cases should be managed following the national COVID-19 management protocol of Member States.ssur
more
BMJ 2009; 338 doi: https://doi.org/10.1136/bmj.b158 (Published 05 February 2009)
Cite this as: BMJ 2009;338:b158
Correspondence to: A Burns alistair.burns@manchester.ac.uk
Promoting the rights of children with disabilites in Malawi
Alister Munthali, Maxton Tsoka, James Milner, and Peter Mvula
UNICEF; Government of Malawi
(2012)
C1
From Exclusion to Inclusion
The scope of the Guidance is primarily the education in rural settings in Myanmar, but it covers some of the issues which have pan Myanmar implication and relevance. Considering the importance, complexity
...
and vastness of the subject, similar type of initiatives on urban school and education system and other issues needs to be taken up in future.
The Guidance has four sections namely Introduction to this Guidance, Rationale for Mainstreaming DRR in the Education Sector, How to Mainstream Disaster Risk Reduction in Reconstruction Process of Education Sector in Myanmar and Creating an Enabling Environment for Safer Education. The Guidance also includes good practices of various agencies involved in Cyclone Nargis education sector recovery as example.
No publication year indicated. more
The Guidance has four sections namely Introduction to this Guidance, Rationale for Mainstreaming DRR in the Education Sector, How to Mainstream Disaster Risk Reduction in Reconstruction Process of Education Sector in Myanmar and Creating an Enabling Environment for Safer Education. The Guidance also includes good practices of various agencies involved in Cyclone Nargis education sector recovery as example.
No publication year indicated. more
FACTI Panel Interim Report
The High-Level Panel on International Financial Accountability, Transparency and Integrity for Achieving the 2030 Agenda (FACTI Panel)
The High-Level Panel on International Financial Accountability, Transparency and Integrity for Achieving the 2030 Agenda (FACTI Panel)
(2020)
CC
The High-Level Panel on International Financial Accountability, Transparency and Integrity for Achieving the 2030 Agenda (FACTI Panel) was convened by the 74th President of United Nations General Assembly
...
and the 75th President of the Economic and Social Council on 2 March 2020. The objective of the FACTI Panel is to contribute to the overall efforts undertaken by Member States to implement the ambitious and transformational vision of the 2030 Agenda for Sustainable Development. It is mandated to review current challenges and trends related to financial accountability, transparency and integrity, and to make evidence-based recommendations to close remaining gaps in the international system.
more
This report investigates the impact of potential misclassification of samples on HIV prevalence estimates for 23 surveys conducted from 2010-2014. In addition to visual inspection of laboratory results, we examined how accounting for potential misclassification of HIV status through Bayesian latent
...
class models affected the prevalence estimates. Two types of Bayesian models were specified: a model that only uses the individual dichotomous test results and a continuous model that uses the quantitative information of the EIA (i.e., the signal-to-cutoff values). Overall, we found that adjusted prevalence estimates matched the surveys’ original results, with overlapping uncertainty intervals. This suggested that misclassification of HIV status should not affect the prevalence estimates in most surveys. However, our analyses suggested that two surveys may be problematic. The prevalence could have been overestimated in the Uganda AIDS Indicator Survey 2011 and the Zambia Demographic and Health Survey 2013-14, although the magnitude of overestimation remains difficult to ascertain. Interpreting results from the Uganda survey is difficult because of the lack of internal quality control and potential violation of the multivariate normality assumption of the continuous Bayesian latent class model. In conclusion, despite the limitations of our latent class models, our analyses suggest that prevalence estimates from most of the surveys reviewed are not affected by sample misclassification.
more
Delivering quality health services: A global imperative for universal health coverage
Kieny, Marie-Paule; Evans, Timothy Grant; Scarpetta, Stefano; Kelley, Edward T.; Klazinga, Niek; Forde, Ian; Veillard, Jeremy Henri Maurice; Leatherman, Sheila; Syed, Shamsuzzoha; Kim, Sun Mean; Nejad, Sepideh Bagheri; Donaldson, Liam
World Health Organization (WHO), Organisation for Economic Co-operation and Development (OECD), and The World Bank
(2018)
C_WHO
Poor quality health services are holding back progress on improving health in countries at all income levels.
Today, inaccurate diagnosis, medication errors, inappropriate or unnecessary treatment, inadequate or unsafe clinical facilities or practices, or providers who lack adequate training ... and expertise prevail in all countries.
The situation is worst in low and middle-income countries where 10 percent of hospitalized patients can expect to acquire an infection during their stay, as compared to seven percent in high income countries. This is despite hospital acquired infections being easily avoided through better hygiene, improved infection control practices and appropriate use of antimicrobials.. At the same time, one in ten patients is harmed during medical treatment in high income countries. more
Today, inaccurate diagnosis, medication errors, inappropriate or unnecessary treatment, inadequate or unsafe clinical facilities or practices, or providers who lack adequate training ... and expertise prevail in all countries.
The situation is worst in low and middle-income countries where 10 percent of hospitalized patients can expect to acquire an infection during their stay, as compared to seven percent in high income countries. This is despite hospital acquired infections being easily avoided through better hygiene, improved infection control practices and appropriate use of antimicrobials.. At the same time, one in ten patients is harmed during medical treatment in high income countries. more
One billion people around the world live with disabilities. This report makes the case that they are being “left behind” in the global community’s work on health. This lack of access not only violates the rights of people with disabilities under international law, but UHC
...
and SDG 3 cannot be attained without better health services for the one billion people with disabilities.
more
Practical Guidelines for Infection Control in Health Care Facilities
recommended
Manju Vatsa, Duangvadee Sungkhobol, Sudarshan Kumari, et al.
WHO Western Pacific, Manila, and WHO South-East Asia, New Delhi
(2004)
C_WHO
An infection control programme puts together various practices which when used appropriately restrict the spread of infection
Sectors in which Priority Adaptation Projects should be implemented first include:
- 1) Agriculture, Early Warning Systems and Forest (First Priority Level Sectors). This is followed by:
- 2) Public Health ... and Water Resources (Second Priority Level Sectors);
- 3) Coastal Zone (Third Priority Level Sector); and
- 4) Energy and Industry, and Biodiversity (Fourth Priority Level Sectors). more
- 1) Agriculture, Early Warning Systems and Forest (First Priority Level Sectors). This is followed by:
- 2) Public Health ... and Water Resources (Second Priority Level Sectors);
- 3) Coastal Zone (Third Priority Level Sector); and
- 4) Energy and Industry, and Biodiversity (Fourth Priority Level Sectors). more