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3
The WHO Global Respiratory Syncytial Virus (RSV) Surveillance page describes a World Health Organization initiative under the Global Influenza Programme to monitor RSV infections worldwide. It explains that WHO uses the existing Global Influenza Surveillance and Response System (GISRS) to collect st
...
andardized epidemiological and laboratory data on RSV, in order to understand patterns such as seasonality, disease burden, and age groups at highest risk, especially in young children. The surveillance system aims to support countries in tracking RSV activity, improve detection and laboratory capacity, and generate evidence that can guide public health policies, including the use of vaccines and preventive measures. Overall, the text emphasizes building a global platform for RSV surveillance integrated with influenza monitoring to inform better respiratory virus control strategies.
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 and 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
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 pred
...
ictions. The model is designed to improve forecasting 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 communities. 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 text explains the National Outbreak Reporting System (NORS), a surveillance system used in the United States to collect and analyze data about disease outbreaks. It describes how health departments report outbreaks caused by food, water, person-
...
to-person contact, environmental exposure, or unknown sources. The system helps public health authorities monitor trends, identify causes of outbreaks, and improve prevention strategies. By gathering and sharing outbreak information, NORS supports better responses to public health threats and helps reduce the spread of infectious diseases.
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
Asia-Pacific Climate Change Adaptation Information Platform (AP-PLAT)
Center for Climate Change Adaptation (CCCA)
National Institute for Environmental Studies (NIES), Japan
(2026)
C2
The Asia-Pacific Climate Change Adaptation Information Platform (AP-PLAT) is an online platform designed to support climate change adaptation in the Asia-Pacific region. It provides scientific data, tools, and knowledge to policymakers, researchers,
...
businesses, and the public in order to improve understanding of climate risks and support evidence-based decision-making. The platform aims to strengthen resilience and sustainability by promoting collaboration between countries and institutions, sharing best practices, and enabling effective adaptation actions. Its core activities include generating and integrating scientific information on climate impacts, developing practical tools for adaptation planning, and building capacity through training and knowledge exchange. Overall, AP-PLAT functions as a central hub that connects science with stakeholders and facilitates informed responses to climate change across the region.
more
Front. Public Health 10:876949. doi: 10.3389/fpubh.2022.876949.In the present paper, the results of studying ML techniques in a tuberculosis diagnosis loop in a scenario of limited resources are presented. Data are analyzed using a tuberculosis (TB)
...
therapy program at a health institution in a main city of a developing country using five ML models. Logistic regression, classification trees, random forest, support vector machines, and artificial neural networks are trained under physician supervision following physicians' typical daily work.
more
A crucial element in accelerating progress is the development of improved surveillance systems and tools that provide decision-makers with timely, high-quality data and actionable insights. The investments made to establish genomic platforms for COV
...
ID-19 surveillance have catalyzed a genomic revolution—one that can now be leveraged to strengthen the surveillance of endemic diseases such as malaria.
more
Who is where, when, doing what (4Ws) in mental health and psychosocial support : manual with activity codes
recommended
Humanitarian actors in emergencies often encounter challenges in knowing Who is Where, When, doing What (4Ws) with regard to mental health and psychosocial support (MHPSS). Such knowledge is essential to inform coordination. 4Ws tools are used in many areas of aid to map activities conducted across
...
large geographical areas". This manual outlines the 4Ws with regard to mental health and psychosocial support for humanitarian actors with MHPSS coordinating responsibilities. The tool exists in two parts: a 4Ws data collection spreadsheets application (in excel online) and this manual which describes how to collect the data
more
The government of Rwanda conducted the 2010 Rwanda Demographic and Health Survey (RDHS) to gather up-to-date information for monitoring progress on healthcare programs and policies in Rwanda, including the Economic Development and Poverty Reduction Strategy (EDPRS), the Millennium Development Goals
...
(MDGs),
and Vision 2020. The 2010 RDHS is a follow-up to the 1992, 2000, 2005, and 2007-08 RDHS surveys. Each survey provides data on background characteristics of the respondents, demographic and health indicators, household health expenditures, and domestic violence. The target groups in these surveys were women age 15-49 and men age 15-59
who were randomly selected from households across the country. Information about children age 5 and under also was collected, including the weight and height of the children.
more
Therapy for MDR-TB is extremely long, complex and burdensome to both patients and health care systems. A single diagnosis can require two years of treatment, or longer. When treating children, there are significant additional barriers treating children with MDR-TB. There is limited
...
data on the pharmacokinetics of second-line TB drugs in children, and almost none are in child-friendly formulations. Nonetheless, there is continued work on second-line drugs to fight MDR-TB. The Sentinel Project has created a complex set of dosing recommendations for administering second-line drugs to children
more
The intended purpose of this compendium is to provide program managers, organizations, and policy makers with a menu of indicators to better “know their HIV epidemic/know their response” from a gender perspective. The indicators in the compendium are all either part of existing indicators used i
...
n studies or by countries or have been adapted from existing indicators to address the intersection of gender and HIV. The indicators can be measured through existing data collection and information systems (e.g. routine program monitoring, surveys) in most country contexts, though some may require special studies or research.
more
This is only the cover of the book. Download the whole Toolkit at: www.cdc.gov/reproductivehealth/Refugee/
Understanding the reproductive health needs of conflict-affected women will enable organizations to implement and enhance programs and services to improve the health of women and their fam
...
ilies. The Reproductive Health Assessment Toolkit (RHA) for Conflict-Affected Women provides user-friendly tools to quantitatively assess the reproductive health needs of conflict-affected women aged 15–49 years. The RHA Toolkit enables field staff to collect data to inform program planning, monitoring, evaluation, and advocacy. It promotes using the collected data to enhance services and improve the reproductive health of women and their families.
more
Interim Assessement Report
The EMA review was started by the Agency’s Committee for Medicinal Products for Human Use (CHMP) to support decision-making by health authorities. This first interim report includes information on seven experimental medicines intended for the treatment of people infecte
...
d with the Ebola virus:
BCX4430 (Biocryst);
Brincidofovir (Chimerix);
Favipiravir (Fujifilm Corporation/Toyama);
TKM-100802 (Tekmira);
AVI-7537 (Sarepta);
ZMapp (Leafbio Inc.);
Anti-Ebola F(ab’)2 (Fab’entech).
The amount of information available for the seven treatments is highly variable. For some compounds there is no data from use in human subjects available. A small number of treatments have been administered to patients in the current Ebola outbreak as compassionate use. Finally, there are also medicines included in this review that have already been studied in humans, albeit for the treatment of other viral diseases.
more
Update September 2021. Safe management of health care waste practices play an essential role in protecting human health during all disease outbreaks, including during Ebola Virus Disease (EVD) outbreaks. This question and answer document provides practical, evidence-based recommendations on minimum
...
requirements and best practices for health care waste management in facilities and communities. It was originally developed in 2014 during the West Africa Ebola Outbreak and has been updated in 2021 to reflect lessons learned and new operational research data, including on the use of low-cost treatment technologies . The key recommendations on health care waste remain the same.
more
Updated September 2021.
Provision of water and sanitation and good hygiene practices play an essential role in protecting human health during all disease outbreaks, including during Ebola Virus Disease (EVD) outbreaks. This question and answer document provides practical, evidence-based recommend
...
ations on minimum requirements and best practices for water, sanitation, hygiene (WASH). It was originally developed in 2014 during the West Africa Ebola Outbreak and has been updated in 2021 to reflect lessons learned and new operational research data. The key recommendations on WASH remain the same.
more
Sierra Leone: Wage rates improve in Sierra Leone, mVAM Bulletin #15 March 2015
World Food Programme
(2015)
Imported and local rice prices increased modestly in March. A recovery in economic activity is leading to an improvement in unskilled wage rates (up 7 percent compared to February).
The households who are depending the most on negative coping strategies are in the districts of Kailahun, Kon
...
o, Bombali, Tonkolili and Koinadugu.
March data continues to show that negative coping strategies are most frequently used by the poorest households, by those living in Ebola-affected rural areas and by households headed by women.
more
The Global Status Report on Preventing Violence Against Children 2020 - Executive Summary
recommended
The report – Global Status Report on Preventing Violence Against Children 2020 – is the first of its kind, charting progress in 155 countries against the “INSPIRE” framework, a set of seven strategies for preventing and responding to violence against children. The report signals a clear need
...
in all countries to scale up efforts to implement them. While nearly all countries (88%) have key laws in place to protect children against violence, less than half of countries (47%) said these were being strongly enforced.
The report includes the first ever global homicide estimates specifically for children under 18 years of age – previous estimates were based on data that included 18 to 19-year olds. It finds that, in 2017, around 40,000 children were victims of homicide.
more
The document will provide information for Ministries of Health and hospital sentinel sites on why and how to determine the denominator of at-risk children <5 years of age and rate of meningitis hospitalizations for a sentinel hospital site conducting IB-VPD surveillance. Such a methodology is currently unavailable and this estimation is critical to enable interpretation of surveillance
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data, particularly pre- and post- vaccine introduction
more