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Publication Years
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2
Incorporating epidemics risk in the INFORM Global Risk Index
Poljanšek K., Marin-Ferrer M., Vernaccini L., Messina L.
European Commission – Joint Research Centre (JRC)
(2018)
C2
The document focuses on integrating epidemic risk into the INFORM Global Risk Index, a tool used to assess and compare crisis and disaster risks across countries. It explains how epidemics can significantly impact vulnerability and hazard exposure, and therefore should be systematically included in
...
risk assessments. The report outlines methods, indicators, and data sources for incorporating epidemic risk into the index, improving its ability to capture health-related threats. Overall, the document aims to enhance risk analysis and support better preparedness, planning, and decision-making by providing a more comprehensive understanding of global risks.
more
Artificial intelligence for tuberculosis control: a scoping review of applications in public health
Menon, S.; and K. Ghislein Kuro
(2025)
J Glob Health. 2025;15:04192. This scoping review highlights the potential of AI-driven predictions in national TB programmes to enhance diagnostics, track trends, and strengthen public health surveillance. While promising for reducing transmission and support-
ing TB care in low-resource settings,
...
these models require large-scale validation to ensure real-world applicability, especially for high-risk groups
more
A guide for training at a village and clinic level
The Global hepatitis report 2026 provides the most comprehensive and up-to-date assessment of the global burden of hepatitis B (HBV) and hepatitis C (HCV), which together account for more than 95% of deaths related to viral hepatitis. Despite being preventable and treatable, viral hepatitis remains
...
one of the leading infectious disease killers worldwide.
The report also highlights the progress in response efforts at global, regional and country levels, in the context of global commitments, strategies and targets.
more
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 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
Indicators and questions to monitor progress towards the Global AIDS Strategy 2026-2031 targets
Efforts to address the health impacts of climate change increasingly require research agendas that reflect principles of equity and justice, particularly in response to concerns about research waste and the limited social relevance of some health research. This perspective article examines how consi
...
derations of justice can inform the setting of research priorities in the intersecting fields of climate change and health, moving beyond purely technical approaches to knowledge production.
more
The Gulf CDC Technical Guide for Rapid Risk Assessments of Acute Public Health Events provides a structured, multi-sectoral approach to evaluate and manage public health threats in Gulf Cooperation Council (GCC) countries. It focuses on rapid, evidence-based assessments (within 2-5 days) to determin
...
e risk levels, propose control measures, and guide communications
more
Emergency Medical Teams 2030 strategy
recommended
The Emergency Medical Teams (EMT) initiative plays a vital role in building this stronger and
more resilient global health emergency architecture, both by driving its formation and by
contributing to a rapidly deployable global health emergency corps. The Initiative and EMTs
bring something uniqu
...
e to health emergency preparedness and response – they bring
standards, professionalism, reliability, scalability, coordination, and the ability and willingness to
rapidly deploy wherever and whenever they are most needed. Most importantly, EMTs save lives.
more
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.
more
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
Key resources include the Manual for Disaster Response Teams, which helps experts plan public communication, exchange information, and manage media, ensuring crucial data reaches humanitarian actors
This toolkit lays out a framework for a waterborne disease investigation and consolidates resources to assist investigation activities.
The Waterborne Disease Outbreak Investigation Toolkit was designed to assist state and local health departments in conducting waterborne disease outbreak invest
...
igations. Using experiences of epidemiologists at the state and local levels, this toolkit describes best practices in preparing for, identifying, and responding to a waterborne disease outbreak.
more
It provides comprehensive guidance for logistics planners in humanitarian responses to pandemics, covering preparedness, response strategies, assessment methodologies, and operational planning.
This guidance document, titled 'Preparedness Enabler's Guide (PEG)', published in May 2023, aims to promote effective and sustainable localization in humanitarian preparedness through insights and practical tools derived from the Global Logistics Cluster's experience.
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.
more
The manual elaborates on a wide rang of logistics management issues such as carrying assessements, procurement, storing, transporting and distribution of emergency supplies