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As countries presented their epidemiological and programmatic situations, and WHO summarized the global status of HAT, the central message was one of satisfaction with the remarkable progress towards elimination. A historically low number of cases was reported, despite maintaining high levels of act
...
ive and passive screening in all accessible at-risk areas. In addition, 10 countries have been officially validated for the elimination of HAT as a public health problem.
Time was also devoted to reviewing progress and challenges in the areas of diagnostics, therapeutics and vector control interventions.
more
This tool enables a rapid, systematic review of pharmacy curricula at the national or institutional level to evaluate their robustness in delivering the expected content and competencies. It can also assist institutions in designing strategies to strengthen AMR curricular content, and to facilitate
...
structured, periodic dialogue on AMR and infection-related competencies among pharmacy faculty and other relevant stakeholders. A pharmacy curriculum that comprehensively integrates AMR content will help ensure that future pharmacists have the knowledge, skills, and attitudes needed to address AMR effectively in both clinical practice and public health.
more
This guidance addresses one type of generative AI, large multi-modal models (LMMs), which can accept one or more type of data input and generate diverse outputs that are not limited to the type of data fed into the algorithm. It has been predicted that LMMs will have wide use and application in heal
...
th care, scientific research, public health and drug development. LMMs are also known as “general-purpose foundation models”, although it is not yet proven whether LMMs can accomplish a wide range of tasks and purposes.
more
The 2026 appeal seeks nearly US$ 1 billion to respond to 36 emergencies worldwide, including 14 Grade 3 emergencies requiring the highest level of organizational response. These emergencies span sudden-onset and protracted humanitarian crises where health needs are critical.
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
ASEAN ERAT Guidelines
Medical evacuation in emergencies
recommended
A guidance for medical teams and specialized care teams.
This guidance aims to provide a comprehensive framework for the safe and context-adapted coordination, clinical care, operations support and logistics relevant to governments, national authorities, including ministries of health, civil protec
...
tion and civil defence, national and international Emergency Medical Teams (EMTs), nongovernmental organizations (NGOs), Emergency Medical Services (EMS) and other key stakeholders operating in the medevac space, or wishing to build this kind of capacity. It defines minimum standards and recommendations for the development and classification of respective specialized care teams (SCTs). This is particularly relevant for contexts without pre-existing or functional prehospital or medevac systems, and can support country-level capacity building, regional and sub-regional planning, and the development of SCTs.
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This document suggests mechanisms that countries can use to respond to emergencies and disasters taking a whole of society and whole of government approach ensuring multisectoral engagement for health actions. It helps to run a participatory process of developing the national health response operati
...
ons plan that brings together all relevant sectors, public health experts, civil society and the international community under government leadership and facilitate ownership, adoption, testing through simulation and finally successful implementation in responding to emergencies and disasters from multiple hazards.
more
It provides comprehensive guidance for logistics planners in humanitarian responses to pandemics, covering preparedness, response strategies, assessment methodologies, and operational planning.
A toolkit designed to support with developing effective community engagement strategies for different emergencies with specific tools for natural hazards, conflicts, disease outbreaks, epidemics, and complex emergencies.
The purpose of this interim guidance is to provide recommendations for planning and implementing RCCE activities that protect and empower communities during MVD outbreaks. The guidance is designed for national and subnational health responders involved in RCCE for MVD readiness and response. It is a
...
lso relevant to other stakeholders, such as partner organizations, ministries (such as those involved in social protection), and academics, who contribute to RCCE activities. The document is meant to be adapted alongside national multi-risk/ multisectoral plans, leveraging existing expertise, coordination mechanisms and partnerships.
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The main aim of this assessment was to evaluate the PSS response of URCS to these VHF, against the needs of beneficiaries and communities focused on the areas of most ‘added value’ of the URCS; community engagement mobilisation and support, documenting any unintended outcomes and best practice r
...
elated to the operation.
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Antimicrobial resistance(AMR) poses a serious threat to human, animal and environmental health. Implementing ethical practice guidelines on how to use antimicrobials effectively and responsibly within the pig industry will contribute in reducing and preventing antimicro
...
bial resistance within the pig industry of South Africa. Members of Pig Vet Society (PVS) SA hereby commit themselvesto put these guidelines into good use in order to preserve the future and effectiveness of antimicrobials. PVS aims to be the leader in prevention of antimicrobial resistance and to encourage the pig industry to work together in achieving this.
more
Organisation mondiale de la Santé, Organisation des Nations Unies pour l’alimentation et l’agriculture & Organisation mondiale de la santé animale. (2021). Résistance aux antimicrobiens et plan-cadre de coopération des Nations Unies pour le développement durable : orientations pour le
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s équipes de pays des Nations Unies. Organisation mondiale de la Santé.
more
Myanmar continues to experience a severe - and worsening - humanitarian and human rights crisis. Conflict and violence have escalated across the country, impacting children and their families and displacing more than 1.5 million people. Access of conflict-affected populations to services and deliver
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y of humanitarian assistance has been further constrained by restrictions imposed on movement of both people and goods.
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