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1
UN, international agencies and experts released a groundbreaking report demanding immediate, coordinated and ambitious action to avert a potentially disastrous drug-resistance crisis.
If no action is taken - warns the UN Ad hoc Interagency Coordinating Group on Antimicrobial Resistance who release
...
d the report – drug-resistant diseases could cause 10 million deaths each year by 2050 and damage to the economy as catastrophic as the 2008-2009 global financial crisis. By 2030, antimicrobial resistance could force up to 24 million people into extreme poverty.
more
National Earthquake Preparedness and Response Plan
Government of Myanmar
European Union Civil Protection and Humanitarian Aid Operations (ECHO) and developed by the United Nations Development Programme (UNDP)
(2019)
CC
It aims to minimize damage to property, reduce injury and lives lost, and normalize the lives of those affected in a timely manner in the case of a damaging earthquake in the country.
It also seeks to contribute to the achievements of Myanmar Sustainable Development Goals as well as respond to Gl
...
obal and Regional Frameworks which Myanmar has endorsed.
more
This Training Manual is developed based on the Child Protection Working Group Interagency Guidelines for Case Management. The Facilitator’s Guide provides guidance on the key steps to take before, during and after training, including customizing the training to different contexts and audiences.
A new report by the world’s largest humanitarian network warns that the number of people needing humanitarian assistance every year as a result of climate-related disasters could double by 2050. It estimates that the number of people in need of humanitarian assistance as a result of storms, droug
...
hts and floods could climb beyond 200 million annually – compared to an estimated 108 million today.
It further suggests that this rising human toll would come with a huge financial price tag, with climate-related humanitarian costs ballooning
more
Preventing Suicide: A Technical Package of Policy, Programs, and Practices
Stone, D.; K. Holland, B. Bartholow, et al.
Centers for Disease Control and Prevention CDC
(2017)
C_CDC
This technical package represents a select group of strategies based on the best available evidence to help communities and states sharpen their focus on prevention activities with the greatest potential to prevent suicide
An Examination of 13 Projects in PEPFAR-Supported Countries
Case Study on Improving HIV Testing and Services for Children Orphaned or made Vulnerable by HIV (OVC)
A preventable crisis - El Niño and La Niña events need earlier responses and a renewed focus on prevention
Oxfam
(2016)
C2
The devastating impacts of the 2015–16 El Niño will be felt well into 2017. This crisis was predicted, yet overall, the response has been too little too late. The looming La Niña event may further hit communities that are already deeply vulnerable. To end this cycle of failure, there is an urgen
...
t need for humanitarian action where the situation is already dire, to prepare for La Niña later this year, to commit to comprehensive new measures to build communities’ resilience, and to mobilize global action to address climate change which is creating a ‘new normal’ of higher temperatures, drought and unpredictable growing seasons.
more
The compendium compiles practical case studies on the use of Geospatial Artificial Intelligence (GeoAI) to enhance disaster risk reduction and emergency response across diverse geographic and institutional contexts.
The compendium features selected case studies submitted by twenty-seven Regional Su
...
pport Offices (RSOs) working across Asia, Africa, Latin America, and Europe. These examples highlight how GeoAI, is being used to forecast floods, map wildfire risk, assess landslide susceptibility, monitor droughts, and support emergency response. Each project demonstrates how cloud-based platforms and machine learning tools help governments act faster and more precisely when disaster strike.
more
Diagnosis and Treatment Outcomes of Tuberculosis in Relation to Gender and HIV Status in South Benin
Journal of Tuberculosis Research, 2017, 5, 189-200
Background: In Benin, little is known about the influence of both gender and
HIV-status on diagnostic patterns and treatment outcomes of Tuberculosis
(TB) patients. Objective: To assess whether differences in gender and HIV
status affect diagn
...
ostic patterns and treatment outcomes of TB patients. Methods:
Retrospective cohort study of patients registered in 2013 and 2014 in
the three largest TB Basic Management Units in south Benin. Results: Of 2694
registered TB patients, 1700 (63.1%) were male. Case notification rates were
higher in males compared with females (96 vs 53/100,000 inhabitants). The
male to female ratio was 1:1 in HIV positive patients, but was 2:1 among HIV
negative cases. In HIV-positive patients, there were no differences in TB types
between men and women. In HIV-negative patients, there were significantly
higher proportions of females with clinically diagnosed pulmonary TB (p =
0.04) and extrapulmonary TB (p < 0.001). Retreatment TB was 4.65 times
higher amongst males compared with females. For New bacteriologically confirmed
pulmonary TB, no differences were observed in treatment outcomes
between genders in the HIV positive group; but significantly more unfavorable
outcomes were reported among HIV negative males, with higher rates of
failure (p < 0.001) and loss-to-follow up (p = 0.02). Conclusion: The study
has shown that overall TB notification rates were higher in males than in females
in south Benin, with more females co-infected with HIV. Unfavorable outcomes were more common in HIV-negative males.
more
In aquaculture, antibiotics have been used mainly for therapeutic purposes and as prophylactic agents. The contribution to antimicrobial resistance of antibiotics used in aquaculture is reviewed here, using a risk analysis framework. Some recommendations on responsible conduct in this context are pr
...
oposed, aimed at diminishing the threat of build up of antimicrobial resistance.
more
As part of the new strategy preparation, USAID/Senegal requested assistance with a gender assessment. This study was conducted from March 20 to April 11, 2010. It was supported jointly by the Women in Development Indefinite Quantity Contract (WID IQC) Task Order 1 ShortTerm Technical Assistance and
...
Training (STTA&T) and the USAID/Senegal mission. In addition to conducting a literature review, the team made site visits in the cities and towns of Dakar, Thiès, Kaolack, and Tambacounda and villages near each of them. These offered examples of key gender issues in Senegal, including gender disparities in access to education, unequal allocation of land and other productive resources, and gender-based violence (such as domestic violence, female genital cutting [FGC], and rape), as well as examples of USAID/Senegal‟s programming to address these problems.
more
Malar J (2017) 16:174 DOI 10.1186/s12936-017-1808-x
Background: Since 2004, artemisinin-based combination therapy (ACT) has been the first-line treatment for uncomplicated malaria in Benin. In 2016, a medicine outlet survey was implemented to investigate the availability, price, and market share of
...
anti-malarial treatment and malaria diagnostics. Results provide a timely and important benchmark to measure future interventions aimed at increasing access to quality malaria case management services.
more
This document provides guidance on the application of non-pharmaceutical countermeasures to minimise the spread of the 2019 novel coronavirus (2019-nCoV) in the population. Some of the measures proposed refer specifically to certain phases of the epidemic (containment or mitigation phases), and can
...
be adapted depending on the assessed severity/impact of the infection. Other measures are valid for all phases of an epidemic.
The guidance is based on the current knowledge of the 2019-nCoV and evidence available on other viral respiratory pathogens, mainly the Severe Acute Respiratory Syndrome coronavirus (SARS-CoV), the Middle East Respiratory Syndrome-related coronavirus (MERS-CoV) and seasonal or pandemic influenza viruses.
more
The Core Elements of Outpatient Antibiotic Stewardship provides a framework for antibiotic stewardship for outpatient clinicians and facilities that routinely provide antibiotic treatment. This report augments existing guidance for other clinical settings. In 2014 and 2015, respectively, CDC release
...
d the Core Elements of Hospital Antibiotic Stewardship Programs and the Core Elements of Antibiotic Stewardship for Nursing Homes. Antibiotic stewardship is the effort to measure and improve how antibiotics are prescribed by clinicians and used by patients. Improving antibiotic prescribing involves implementing effective strategies to modify prescribing practices to align them with evidence-based recommendations for diagnosis and management.
more
A WFP analysis of the economic and food security implications of the pandemic
FAO’s component of the Global COVID-19 Humanitarian Response Plan
18.5.2020