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Publication Years
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1889
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Category
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339
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80
2
Toolboxes
525
394
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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
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
Manual with Scale
The Good Enough Guide
recommended
A set of basic guidelines on how to be accountable to local people and measure program impact in emergency situations. The "good enough" approach emphasizes simple and practical solutions and encourages the user to choose tools that are safe, quick, and easy to implement
The purpose of this booklet is to assist WHO and other
Public Health workers in the field when an emergency
occurs. The booklet provides technical hints on how to
carry out a rapid health assessment, how to facilitate
coordination, how departments in WHO can assist, etc.
Standard formats for re
...
porting and reference indicators
are provided
more
Humanitarian Response in Violent Conflict
recommended
Catholic Relief Services CRS
(2013)
A Toolbox of Conflict Sensitive Indicators.
This toolbox adapts a sample of 15 indicators from the SPHERE Project's Humanitarian Charter and Minimum Standards in Humanitarian Response to be even more conflict sensitive while remaining practical and user-friendly
Disaster Preparedness Training Programme
This field action guide focuses on the first psychosocial assessment to be conducted just after a calamity strikes or just after a major event in an ongoing armed conflict. While it is necessary to update that initial assessment as the emergency situation evolves through the different phases of reco
...
very (briefly outlined in the “phase chart”), this mini book is meant to guide the formation of a team to assess the psychosocial as well as physical needs of children, their families and the communities and then the recommendations the team makes for ensuing support.
more
Humanitarian Accountability Report
James Darcy, Jessica Alexander, Maria Kiani et al.
Humanitarian Accountability Partnership (HAP)
(2013)
The report offers an overview of the progress the humanitarian sector has made and the obstacles it has faced over the past 10 years. Accountability is no longer just a fashionable term, there is now a shared understanding of what it takes to be accountable. From changes at policy level, to concrete
...
actions taken in the field, this report documents this sector-wide shift. It also shows that being accountable to the people we aim to serve is not just the right thing to do, it is also the best way to ensure programmes are relevant, effective, efficient and sustainable
more
Sphere unpacked
A Review of Needs Assessment Tools, Response Analysis Frameworks, and Targeting Guidance for Urban Humanitarian Response
Lili Mohiddin, Gabrielle Smith
International Institute for Environment and Development, Norwegian Refugee Council, International Rescue Committee, World Vision
(2016)
C1
The magnitude of urban disasters, high population densities, and a complex social, political and institutional environment has challenged the manner in which humanitarian agencies are used to working. Humanitarian agencies are now grappling with how to change their approaches to this reality. This d
...
esk review aims to provide an audit and analysis of existing needs assessments, response analysis frameworks and targeting approaches for use in urban post-conflict emergency response.
more
The Boston Medical Center Patient Navigation Toolkit
The Boston Medical Center AVON Foundation for Women
The Boston Medical Center AVON Foundation for Women
(2020)
C1
This toolkit is designed to help you plan and implement a Patient Navigation program with the best chance of reducing health disparities and improving health outcomes for your patients. It contains evidence-based and experience-based examples, case studies, practical tools, and resources to help you
...
:
1. Establish an evidence-based patient navigation program tailored to reduce barriers for your patients
2. Incorporate best practices to enhance current patient navigation programs or services
3. Implement a patient navigation model to address any targeted medical condition
where disparities exist
4. Hire, prepare, supervise, support and retain effective Patient Navigators
5. Navigate patients who experience health disparities
6. Evaluate patient navigation programs with the aim of continuous quality
improvement
more
The Guidance Notes seek to help operationalize, simplify and standardize the collection and reporting of data through the application of common language and methods. They provide information on the key issues to take into account in the collection of health data and the types of data that should be
...
collated, and potential stakeholders to engage with. They adapt and complement the UNDRR/UNISDR Technical guidance for monitoring and reporting on progress in achieving the global targets of the Sendai Framework for Disaster Risk Reduction, which has a multisectoral target audience.
more
The Strategic Tool for Assessing Risks (STAR) offers a comprehensive, easy-to-use toolkit and approach to enable national and subnational governments to rapidly conduct a strategic and evidence-based assessment of public health risks for planning and prioritization of health emergency preparedness a
...
nd disaster risk management activities. This guidance describes the principles and methodology of STAR to enhance its adaptation and use at the national or subnational levels.
more
Key questions
What is already known?
Critical illness is common throughout the world and COVID-19 has caused a global surge of critically ill patients.
There are large gaps in the quality of care for critically ill patients, especially in low-staffed and low-resourced settings, and mortal
...
ity rates are high.
Essential Emergency and Critical Care (EECC) is the effective lifesaving care of low-cost and low-complexity that all critically ill patients should receive in all wards in all hospitals in the world.
What are the new findings?
The clinical processes that comprise EECC and the essential care of critically ill patients with COVID-19 have been specified in a large consensus among clinical experts worldwide.
The resource requirements for hospitals to be ready to provide this care has been described.
What do the new findings imply?
The findings can be used across medical specialties in hospitals worldwide to prioritise and implement essential care for reducing preventable deaths.
Inclusion of the EEEC processes could increase the impact of pandemic preparedness and response programmes and policies for health systems strengthening.
more
This guide provides strategic direction for host countries, event organizers, health authorities, and key stakeholders to effectively plan and conduct Simulation Exercises (SimEx) and After Action Reviews (AARs) for mass gathering events. Packed with practical tools, it empowers users to seamlessly
...
integrate these activities into ongoing learning and emergency risk management processes. Aligned with the International Health Regulations (IHR, 2005), the guide serves as a critical resource for strengthening global and national health resilience, ensuring safer and more prepared mass gatherings.
more
The present ‘Guideline for the assessment of health risks’ serves
to implement the theoretical principles mentioned in practice and,
therefore, assure the quality of risk assessments and other health
statements published by the BfR