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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 aim of the meeting was to broaden the network’s initiatives. Preliminary work involved integrating laboratory testing for skin NTDs other than Buruli ulcer, such as cutaneous leishmaniasis, mycetoma, leprosy and yaws, while extending the
...
network’s reach to encompass additional laboratories.
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 d
...
isasters. It is a practical guide for health and surveillance 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 text is a report from a WHO meeting that focuses on strengthening research in the field of health emergency and disaster risk management (Health EDRM). It describes how experts from different regions discussed current challenges, progress, and future priorities in improving research to better pr
...
epare for and respond to health emergencies and disasters. A central theme is the need for stronger collaboration between countries, institutions, and disciplines, as well as better use of evidence to support policies and decision-making. The report also outlines key actions, such as improving data sharing, developing practical guidance for policymakers, increasing research capacity—especially in low- and middle-income countries—and ensuring that research findings are effectively translated into real-world practice. Overall, the text emphasizes global cooperation and evidence-based strategies to enhance preparedness and resilience against health threats.
more
Early warning systems for disease outbreaks are surveillance systems that collect information on a selected list of epidemic-prone diseases in order to trigger prompt public health interventions. They function in humanitarian emergency situations when the routine public health surveillance systems o
...
f a country are underperforming, disrupted or non-existent. Early warning systems are often set up to fill such temporary gaps, while the routine systems recover from the effects of the disaster or a crisis. During humanitarian emergencies, detecting and responding swiftly to epidemics is key in order to reduce unecessary illness and death, especially among refugees and displaced people.
more
The spread of antimicrobial-resistant microorganisms poses anincreasing threat to affordable modern health care. In the Netherlands, efforts to control the dispersal of known and novel antimicrobial-resistant organisms have been mostly implemented at the hospital level. However, recent studies have
...
recommended shifting the focus of control strategies fromsingle hospitals toward larger healthcare networks. These networks consist of clusters of hospitals that are connected viashared patients. Several studies have shown that patients transferred from one hospital to another can spread antimicrobial-resistant pathogens across the healthcare network
infection control & hospital epidemiology july 2016, vol. 37, no. 7
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Asthma is the most common chronic disease in children globally. The Global Asthma Network (GAN) Phase I study aimed to determine if the worldwide burden of asthma symptoms is changing.
This updated cross-sectional study used the same methods as the
...
International study of Asthma and Allergies in Childhood (ISAAC) Phase III. Asthma symptoms were assessed from centres that completed GAN Phase I and ISAAC Phase I (1993–95), ISAAC Phase III (2001–03), or both. We included individuals from two age groups (children aged 6–7 years and adolescents aged 13–14 years) who self-completed written questionnaires at school. We estimated the 10-year rate of change in prevalence of current wheeze, severe asthma symptoms, ever having asthma, exercise wheeze, and night cough (defined by core questions in the questionnaire) for each centre, and we estimated trends across world regions and income levels using mixed-effects linear regression models with region and country income level as confounders.
Overall, 119 795 participants from 27 centres in 14 countries were included: 74 361 adolescents (response rate 90%) and 45 434 children (response rate 79%). About one in ten individuals of both age groups had wheeze in the preceding year, of whom almost half had severe symptoms. Most centres showed a change in prevalence of 2 SE or more between ISAAC Phase III to GAN Phase I. Over the 27-year period (1993–2020), adolescents showed a significant decrease in percentage point prevalence per decade in severe asthma symptoms (–0·37, 95% CI –0·69 to –0·04) and an increase in ever having asthma (1·25, 0·67 to 1·83) and night cough (4·25, 3·06 to 5·44), which was also found in children (3·21, 1·80 to 4·62). The prevalence of current wheeze decreased in low-income countries (–1·37, –2·47 to –0·27], in children and –1·67, –2·70 to –0·64, in adolescents) and increased in lower-middle-income countries (1·99, 0·33 to 3·66, in children and 1·69, 0·13 to 3·25, in adolescents), but it was stable in upper-middle-income and high-income countries.
Trends in prevalence and severity of asthma symptoms over the past three decades varied by age group, country income, region, and centre. The high worldwide burden of severe asthma symptoms would be mitigated by enabling access to effective therapies for asthma.
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Asthma management and control in children, adolescents, and adults in 25 countries: a Global Asthma Network Phase I cross-sectional study
García-Marcos, L.; Chiang, C. Y.; Asher, I.; et al.
The Lancet Global Health Volume 11, Issue 2e218-e228February 2023
(2023)
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Asthma is one of the most common non-communicable diseases globally. This study aimed to assess asthma medicine use, management plan availability, and disease control in childhood, adolescence, and adulthood across different country settings.
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
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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.
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In an effort to improve the capabilities and accountability of humanitarian and economic practitioners, the SEEP (Small Enterprise Education and Promotion) Network's Minimum Economic Recovery Standards focus on minimum industry standards for facilit
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ating economic recovery in crisis situations.
The handbook sets out strategies and interventions designed to improve income, cash flow, asset management, and growth among crisis-affected households and enterprises. These include financial services, productive assets, employment, and enterprise development. It emphasizes encouraging the re-start of enterprises and livelihoods strategies, and improving market productivity and governance
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This working draft develops guidance on conducting effective evaluations of conflict prevention and peacebuilding work. The current working draft will be used for a one year application phase through 2008. It is the result of an ongoing collaborative project by the OECD DAC Networks on Development E
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valuation and on Conflict, Peace and Development Co-operation (CPDC). The two Networks began this collaboration in 2005, responding to the need expressed by CPDC members for greater clarity regarding techniques and issues of evaluation in their field. An assessment of past conflict and peace evaluations and a study of current practices were undertaken in 2006 and identified a need for further guidance.
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