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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
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
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 Health Emergency and Disaster Risk Management
Chan E.Y.Y., Huang Z., Hung K.K.C. et al
United Nations Office for Disaster Risk Reduction UNDRR
(2022)
CC
An emerging framework for achieving synergies among the Sendai Framework, the 2030 Agenda for Sustainable Development, the New Urban Agenda and the Paris Agreement. This paper discusses the potential of the Health Emergency and Disaster Risk Management (Health-EDRM) Framework in promoting syne
...
rgies in pursing risk- resilient sustainable development pathways via conceptual analysis of the key roles of health and Health-EDRM in the major international risk-resilient and sustainable development agendas of the Sendai Framework, the 2030 Agenda for Sustainable Development, the New Urban Agenda and the Paris Agreement. It first analyses the Health-EDRM Framework, which is a comprehensive, systematic, cross-sectoral, and interdisciplinary endeavour of the World Health Organization and its health and non- health partners. The four key international risk-resilient and sustainable development agendas are then analysed in detail to explore how they can be interlinked and synergised under the Health-EDRM Framework.
more
O documento apresenta o quadro da Organização Mundial da Saúde para a gestão de riscos de emergências de saúde e desastres (Health EDRM). Explica que comunidades em todo o mundo enfrentam uma ampla variedade de perigos — como surtos de doenças infecciosas, desastres naturais e conflitos —
...
e enfatiza a necessidade de uma abordagem abrangente e baseada no risco para reduzir seus impactos. O quadro descreve princípios fundamentais como prevenção, preparação, resposta e recuperação, e destaca a importância de sistemas de saúde fortes, colaboração multissetorial e envolvimento da comunidade. Também apresenta componentes centrais como desenvolvimento de políticas, coordenação, força de trabalho, comunicação e infraestrutura. De modo geral, o texto tem como objetivo ajudar os países a fortalecer a resiliência, reduzir riscos à saúde e melhorar sua capacidade de lidar com emergências de forma eficaz.
more
The current effort on fighting COVID-19 cannot conceal the fact that climatic and geological hazards affect Latin-America and the Caribbean every year. At a time when countries of the region are actively responding to the pandemic, they also need to prepare for and implement actions to mitigate the
...
potential impacts of other recurrent hazards. For instance, countries like Guatemala and El Salvador have been recently hit by tropical storm Amanda and, as the Caribbean region faces its annual hurricane season, countries are enhancing climate-hazard preparedness. Many countries are bracing for a two-tier crisis as they grapple with complicated logistics, limited resources and scant supplies.
more
COVID-19! How Can I Protect Myself and Others?
recommended
This curriculum will help you, and your community, understand the science of the virus that causes COVID-19 and other viruses like it. It will help you to figure out how this virus is impacting or affecting you or may impact you in the future. It will help you to understand the actions that you can
...
take to keep yourself and your community safe.
It is available in 15 languages. Download for free at the website
more
In 2012, 25.7% of adults in Tanzania aged 25–64 had hypertension, affecting approximately 4 million people. However, most remain unaware of their condition or are not receiving treatment, with only 0.1 million achieving blood pressure control.
Despite the increasing population of refugees stuck in protracted situations and our awareness of the vulnerability of children and adolescents growing in up these contexts, relatively little is known about community based child protection mechanisms (CBCPMs) in refugee communities. CBCPMs, defined
...
broadly, include all groups or networks that respond to and prevent problems of child protection and vulnerable children. These mechanisms may include family supports, peer group supports, and community groups such as primary and secondary schools, non-formal education and vocational training structures, women’s groups, religious groups, and youth groups, as well as traditional community processes, government mechanisms, and mechanisms initiated by international or domestic non-governmental organisations (NGOs). In diverse contexts, CBCPMs represent front-line, day-to-day efforts to protect children from exploitation, abuse, violence, and neglect and to promote children’s well being. This study, together with a parallel study conducted among the urban refugee population in Uganda, is the first study of CBCPMs undertaken in refugee settings.
more
It describes and analyzes the theoretical-practical incidences of misinformation, disinformation, and malinformation, including but not limited to the Information Science framework. Besides, it aims to outline an understanding of these three concepts based on 16 arrangements intercon
...
nected according to their intentionality.
Conclusions: We highlight that the complexity that permeates the various fields in the present situation is due to the difficulty of reaching a consensus on the semantic definition of the concepts of information, misinformation, and its disambiguations since these concepts have various properties.
Also available in: Portuguese
more
UNHCR invested significantly in risk mitigation, prevention and response to sexual exploitation and abuse (SEA) in the Europe region in 2022-2023, in particular in connection with the Ukraine emergency, where the risks were considered high due to the unprecedented scale and speed of displacement, mo
...
stly women and children, combined with high turnover of humanitarian staff and the range of new and untraditional actors involved in the response. PSEA also remains a priority for UNHCR’s work for other refugees, internally displaced and stateless persons across the region.
This compilation highlights the 10 most promising practices that were initiated by UNHCR and its partners in the Europe region in 2022-2023. These practices are shared with the aim to inspire further work on PSEA in the region and elsewhere and encourage continuous learning and exchange.
more
Objectives Our study aimed to systematically review the literature and synthesise findings on potential associations of built environment characteristics with type 2 diabetes (T2D) in Asia.
Diabetes is a major public health problem. The rising incidence of Diabetes Type 2 is related to the effects of urbanization and unhealthy lifestyles. Research studies show that healthy eating and regular physical activity can prevent or delay the onset of Diabetes Type 2, even in high-risk individu
...
als.
more
In recent decades, India has witnessed a rapidly exploding epidemic of diabetes.
Indeed, India today has the second largest number of people with diabetes in the
world. The International Diabetes Federation (IDF) estimates that there are 72.9 million people with diabetes in India in 2017, which is
...
projected to rise to 134.3 million by the year 2045. The prevalence of diabetes in urban India, especially in large metropolitan cities has increased from 2% in the 1970s to over 20% at present and the rural areas are also fast catching up.
more
The ICMR type 1 diabetes guidelines come at a time when the SARS-CoV-2 pandemic
has disproportionately affected people with diabetes population, exposing them to a
high risk for severe illness and mortality. Globally, diabetes was responsible for over fourmillion deaths in the year 2019. It was th
...
e leading cause of end-stage kidney disease, adult-onset blindness and cardiovascular diseases. Further, there was a considerable heterogeneity in the prevalence of complications and deaths associated with diabetes across the countries.
more
We investigate whether and to what extent Chinese development finance affects infant mortality, combining 92 demographic and health surveys (DHS) for a maximum of 53 countries and almost 55,000 sub-national locations over the 2002-2014 period. We address causality by instrumenting aid with a set of
...
interacted variables. Variation over
time results from indicators that measure the availability of funding in a given year. Cross-sectional variation results from a sub-national region’s “probability to receive aid.” Controlled for this probability in tandem with fixed effects for country-years and provinces, the interactions of these variables form powerful and excludable instruments. Our results show that Chinese aid increases infant mortality at sub-national scales, but decreases mortality at the countrylevel. In several tests, we show that this stark contrast likely results from aid being fungible within recipient countries.
more