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Publication Years
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Toolboxes
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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
TArtificial intelligence (AI) is transforming health systems, reshaping how care is planned, delivered and governed. This report presents the first assessment of AI integration into health systems across the whole of the WHO European Region, based on findings from the 2024–2025 survey on AI for he
...
alth care. It examines national strategies, governance models, legal and ethical frameworks, workforce readiness, data governance, stakeholder engagement, private sector roles and the uptake of AI applications. Drawing on insights from 50 Member States, the report explores how countries are navigating opportunities and challenges, highlighting emerging trends, gaps and practices to guide policy-makers towards coherent, ethical and people-centred approaches to AI in health care.
more
A Global Access Framework for Country-Led.
ResponsesThis 2030 Prevention access framework focuses on one of those top-line targets, which covers primary prevention and requires that 90% of people in need of HIV prevention are using effective prevention options by 2030. This target is disaggregated
...
into 15 second-line prevention targets for specific populations and programmes.
The 2030 Prevention Access Framework presents in greater detail the milestones and actions for achieving these targets––all of which are grounded in the three priorities of the Global AIDS Strategy: country-led, resilient and sustainable HIV responses; people-focused services, and community leadership
more
The Gender Assessment Tool for National HIV Responses (Gender Assessment Tool) is intended to assist countries in assessing their HIV epidemic, context and response through an intersectional gender lens, with the aim of strengthening gender-transformative, equitable and rights-based HIV responses. T
...
he 2025 tool places greater emphasis on cost-effectiveness, alignment with national plans, integration and sustainability. Together with a new costing tool and monitoring and evaluation plan template, it is designed to inform the development of country investment cases, funding requests to the Global Fund to Fight AIDS, Tuberculosis and Malaria, and other key national opportunities.
more
Indicators and questions to monitor progress towards the Global AIDS Strategy 2026-2031 targets
This report developed by UNAIDS and the United for Global Mental Health reviews and maps Global Fund investments in priority HIV and TB comorbidities in Grant Cycle 7 (GC7), including key non-communicable diseases (NCDs), cervical, anorectal and other cancers, and mental health and substance use co
...
nditions. It highlights how countries prioritize and are integrating health services and other interventions with HIV and TB programmes to advance person-centered approaches and to sustain HIV and TB responses. Analyzing approved grants from 103 countries, the report finds strong demand for integrated approaches, with 97% of countries prioritizing at least one comorbidity.
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
Support Collaborative Risk Assessment for health threats
The COVID-19 pandemic is the most severe health crisis in a century, exposing deep gaps in the world’s defences against epidemics and pandemics, and teaching us painful
lessons. One of them is that in our intimately connected world, pathogens can spread around the world very quickly, demanding sy
...
stems that can respond equally quickly. That
includes systems to facilitate the rapid exchange of biological materials and related data, to support the development of guidance and medical countermeasures including vaccines,
tests and treatments.
Based on the lessons that COVID-19 was teaching us, World Health Organization announced the
establishment of the WHO BioHub System at the height of the pandemic, in January 2021. Developed collaboratively and iteratiely with the active engagement of Member States and other partners, the BioHub System has now been through a pilot-testing phase that has demonstrated its value as a multilateral model and a tangible asset that Member States can harness to bolster their preparedness against emergent viral threats.
more
Training material and online courses
ASEAN ERAT Guidelines
Medical evacuation in emergencies
recommended
New
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.
more
The menu was developed using the WHO-CHOICE methodology to prepare and update, as appropriate, WHO estimates of the cost-effectiveness of a range of mental health interventions, in line with the development of Appendix 3 to the global action plan for the prevention and control of noncommunicable dis
...
eases 2013–2020.
WHO-CHOICE is a programme that helps countries to identify priorities based on health impact and cost-effectiveness. It can be applied to a wide range of strategies relevant to policies affecting health outcomes. All options are compared to a common comparator, a null scenario in which the impacts of currently implemented interventions are removed, thereby enabling comparison of interventions across geographical areas and aspects of health.
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O presente documento fornece orientações aos Estados-Membros da União Africana sobre as acções a empreender para garantir que continuam a satisfazer todos os requisitos em matéria de saúde
necessidades dos seus cidadãos, de acordo com a realização dos objectivos da Estratégia de Saúde p
...
ara África 2016 - 2030.
more
Arabic Version of Guidance for the continuation of essential health services during COVID-19 pandemic
This document provides up-to-date guidance on laboratory studies as well as smallscale (semi-field) and large-scale field trials to assess the efficacy and determine field application rates of new molluscicide products for control of schistosomiasis.