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4
1
The WHO’s Early Warning, Alert and Response System (EWARS) is a tool used in emergencies such as conflicts or natural disasters to quickly detect and respond to disease outbreaks. It helps set up simple and reliable surveillance systems even in places without stable electricity or internet, using
...
kits that include phones, laptops, and solar chargers. EWARS supports national health authorities during crises and can later be integrated into the regular health surveillance system.
more
The WHO handbook “Epidemiological Data Analysis for the Early Warning Alert and Response Network (EWARN) in Humanitarian Emergencies” explains how to collect, analyse, interpret, and share health data during crises such as conflicts or natural disasters. It is a practical guide for health and su
...
rveillance officers to detect disease outbreaks early and guide quick public health responses. The document outlines steps for managing data at different levels (local, regional, national), analysing disease trends by time, place, and person, and using indicators to monitor outbreak risks. It also provides methods for interpreting and communicating results clearly to decision-makers to support effective health interventions in emergencies.
more
The document provides a standardized protocol for evaluating the Early Warning Alert and Response Network (EWARN), a surveillance system used during humanitarian emergencies when regular national health surveillance may be disrupted. The purpose of EWARN is to detect outbreaks of communicable diseas
...
es early and enable rapid public health response. The guidance explains how the system should be assessed in terms of its structure, implementation, effectiveness, and usefulness. It outlines the key steps of evaluation: preparation, system description, data collection, and post-evaluation reporting. The protocol highlights common challenges observed in previous EWARN implementations, such as delays in establishing the system, limited data quality, weak outbreak response, and lack of clear transition plans back to routine surveillance systems. It emphasizes the need to evaluate both weekly disease reporting and alert verification processes, and to review attributes such as simplicity, data quality, timeliness, sensitivity, and stability. The document also provides templates for interviews, data review forms, and laboratory assessment, as well as guidance on conducting remote evaluations when access is limited. The overall goal of the protocol is to ensure that EWARN functions effectively to detect and respond to outbreaks and that practical recommendations are developed to improve the system’s performance and sustainability in emergency settings.
more
EWARS is a surveillance system developed by the World Health Organization to detect and respond quickly to disease outbreaks in emergency settings where normal health systems are disrupted. It allows health facilities to report priority diseases on a regular basis and generates alerts when unusual p
...
atterns or suspected outbreaks occur. The system is designed to be simple and fast to set up, even in remote areas, and supports rapid public health action to prevent the spread of disease during crises.
more
The webpage introduces the “Health Cluster Coordination” channel on World Health Organization’s OpenWHO platform, focusing on training and resources for coordinating health-cluster operations in humanitarian emergencies. It outlines how participants can learn about setting up and managing heal
...
th clusters, establishing collaboration among partners, and ensuring effective service delivery in crisis settings.
more
The page lists and describes a number of mobile apps and digital tools provided by WHO/EMRO to support prevention, monitoring and response to epidemic- and pandemic-prone diseases. These include apps focused on diseases such as Middle East Respiratory Syndrome (MERS), Zika virus disease, travel-rel
...
ated infection prevention, and general infection-control guidance.
In addition, there are tools such as assessment instruments for infection prevention and control programmes (IPC), and portals for emerging infectious-disease information and outbreak investigation support.
Overall, the page serves as a gateway to digital resources that help healthcare workers and public-health professionals access WHO technical guidance, coordinate outbreak responses, and implement control measures for a variety of infectious-disease threats.
more
This resource is a practical, user-friendly tools that aid in the application of gender-transformative approaches for everyday work at the frontlines within the social, health, education, or legal sectors, among others.
Gender-transformative approaches intentionally challenge harmful gender norms
...
, roles, and relations towards a more equal redistribution of power and resources. This includes engaging diverse stakeholders, such as men, boys, and traditional leaders, in redefining gender roles and increasing the agency of women and girls.
more
This resource is a practical, user-friendly tools that aid in the application of gender-transformative approaches for everyday work at the frontlines within the social, health, education, or legal sectors, among others.
Gender-transformative approaches intentionally challenge harmful gender norms
...
, roles, and relations towards a more equal redistribution of power and resources. This includes engaging diverse stakeholders, such as men, boys, and traditional leaders, in redefining gender roles and increasing the agency of women and girls.
more
The website presents the CDC Field Epidemiology Manual, a practical resource developed by the Centers for Disease Control and Prevention (CDC). It provides guidance for epidemiologists and public health professionals on how to investigate and respond to disease outbreaks and other public health even
...
ts. The manual covers key topics such as outbreak investigation methods, surveillance systems, data collection and analysis, laboratory support, risk communication, and emergency response in various settings. It is designed as a hands-on reference to support evidence-based decision-making and effective fieldwork in public health practice.
more
The document “Communicable Disease Surveillance and Response Systems: A Guide to Planning” is a World Health Organization (WHO) guide designed to help countries develop and strengthen national surveillance and response systems for communicable diseases . It explains why surveillance is essential
...
for early detection of outbreaks, informed decision-making, and effective public health action, especially in the context of the revised International Health Regulations (2005).
The guide provides a structured approach to strategic and operational planning. It outlines how countries should assess their existing systems, define a vision and goals, identify expected key result areas (EKRAs), prioritize activities, set realistic targets, allocate resources, and monitor progress. It also includes practical tools such as templates, worksheets, and examples to support ministries of health in organizing planning workshops and developing multi-year strategic plans and annual operational plans. Overall, the document serves as a practical framework to improve preparedness, early warning, and response to public health emergencies.
more
The UNDP webpage “Climate Information and Early Warning Systems” explains how climate information and early warning systems help countries and communities better prepare for and respond to climate-related hazards such as extreme weather events, floods, heatwaves and droughts. It describes UNDP
...
s approach to strengthening climate data collection, forecasting, communication and decision-making, as well as building partnerships and capacity to reduce risk, protect lives and support sustainable development in the face of a rapidly changing climate.
more
The Guardian article reports that Google DeepMind has developed an artificial intelligence model capable of predicting weather more accurately than one of the world’s leading traditional forecasting systems. The AI system, trained on large amounts of historical weather data, can generate faster an
...
d more precise medium-range forecasts, potentially improving predictions of extreme weather events such as storms, heavy rainfall, and heatwaves. Scientists suggest that this advancement could enhance early warning systems and disaster preparedness worldwide, though experts also emphasize the importance of continued evaluation and collaboration with existing meteorological institutions.
more
This Mobile user guidance is aimed at supporting implementation of EWARS in a box, WHO’s electronic early warning, alert and response system in emergencies. This guidance fulfills a long felt need to have an easy to use resource with step-by-step instructions in establishing EWARS in a box, facili
...
tating field epidemiologists, surveillance officers and emergency responders.
more
The webpage presents WeatherNext 2, an advanced AI-based weather forecasting model developed by Google DeepMind. It explains how the system uses machine learning to analyze large amounts of atmospheric data and produce fast and accurate weather predictions. The model is designed to improve forecasti
...
ng for various weather variables such as temperature, wind, and precipitation, and to support better predictions of extreme weather events. The page also highlights how AI-driven forecasting can complement traditional numerical weather models and help scientists, governments, and organizations make better decisions related to weather and climate.
more
The text explains what early warning systems are and why they are important for climate action and disaster risk reduction. It describes how these systems collect and analyze data to detect hazards such as storms, floods, heatwaves, or droughts and provide timely alerts to governments and communitie
...
s. This allows people to prepare, evacuate, or take protective measures before disasters occur. The article also highlights that effective early warning systems can save lives, reduce economic losses, and strengthen resilience to climate change, especially in vulnerable regions.
more
The document “Guidelines for the Investigation and Control of Disease Outbreaks” provides practical guidance for public health professionals on how to detect, investigate, and manage outbreaks of communicable diseases. It describes the key steps of outbreak investigation, including confirming th
...
e outbreak, establishing a case definition, collecting epidemiological and laboratory data, identifying the source and mode of transmission, and implementing control measures. The guidelines also explain how to organize outbreak response teams, communicate findings, and document results in outbreak reports. Overall, the document aims to support systematic and effective outbreak investigations in order to control disease spread and protect public health.
more
The document “Interim Guidelines – Infectious Disease Outbreak Response and Analytic System” published by the United Nations provides a framework for how UN missions and organizations should detect, report, analyze, and respond to infectious disease outbreaks. It outlines a coordinated system
...
for monitoring health threats, collecting and analyzing epidemiological data, and guiding decision-making during outbreaks. The guidelines define roles and responsibilities for different actors within the UN system, describe procedures for outbreak reporting and risk assessment, and emphasize early detection, information sharing, and coordinated response measures to protect personnel and maintain operational continuity during public health emergencies.
more
Ewha Med J Volume 47(3); 2024
The article “Reporting Guidelines for Community Outbreak Investigation (G-CORE): A Study Protocol” describes the development of standardized reporting guidelines for investigations of infectious disease outbreaks in community settings. The authors highlight that ou
...
tbreak reports are often inconsistent and lack important epidemiological information, which makes it difficult to compare studies and apply findings to public health practice. The G-CORE project aims to create a structured guideline that improves the quality, transparency, and completeness of outbreak investigation reports. By establishing clear reporting standards, the guideline intends to support researchers and public health professionals in documenting outbreaks more systematically and to facilitate better communication, analysis, and response to infectious disease events.
more
World Health Organization (2018). A practical guide for developing and conducting simulation exercises to test and validate pandemic influenza preparedness plans.
World Health Organization (2018). A practical guide for developing and conducting simulation exercises to test and validate pandemic influenza preparedness plans. World Health Organization.