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Timely, accurate and complete data on causes of death provide essential information for quantifying the size of the problem and for the development of suicide prevention strategies, in terms of priority setting, public
...
health practice, research, and evaluation of interventions and policy changes. This resource aims to strengthen the death certification and coding for suicides. It is primarily intended for professionals involved in certifying deaths and for mortality coders, but it may also be useful for other professionals involved in the process of investigating and certifying deaths due to suicide, including police officers, forensic doctors, coroners, physician assistants, nurse practitioners and statisticians.
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This document contains summary information on the latest projections from the IHME model on COVID-19 in Peru. The model was run on July 15, 2022, with data through July 10, 2022.
Outbreak surveillance in humanitarian emergencies involves rapid detection, data collection, and analysis to identify disease threats, while response focuses on implementing timely control measures to prevent further spread.
Estimating the size of key affected populations (KAP) provides important data for planning and implementing an effective response to the HIV epidemic. In the Philippines, these KAP include males who have sex with males (MSM), female sex workers (FSW
...
), and injecting drug users (IDU). Given the difficulty in reaching these populations, as well as their high mobility, the process consequently entailed a specific methodology to directly estimate the size of KAP.
The national estimate of MSM was 531,500 or 2.2% (1.8%-3.2%) of males aged 15-49. Within this MSM estimate, figures for transgender women (TGW) and male transactional sex workers (MSW) were determined. The national estimate for TGW was 122,800 or about 0.50% (0.40%-0.75%) of males aged 15-49, and 23% of the MSM population. Meanwhile, MSW comprised 0.35% (0.29%-0.53%) of the male population aged 15-49 and 16% of the MSM population, giving a best estimate of 86,600.
The estimate of combined RFSW and FFSW was 66,100 or 0.28% (0.19%-0.40%) of females aged 15-49. Meanwhile, there are approximately 10,000 to 21,700 IDU or 0.04%-0.09% of males aged 15-49. more
The national estimate of MSM was 531,500 or 2.2% (1.8%-3.2%) of males aged 15-49. Within this MSM estimate, figures for transgender women (TGW) and male transactional sex workers (MSW) were determined. The national estimate for TGW was 122,800 or about 0.50% (0.40%-0.75%) of males aged 15-49, and 23% of the MSM population. Meanwhile, MSW comprised 0.35% (0.29%-0.53%) of the male population aged 15-49 and 16% of the MSM population, giving a best estimate of 86,600.
The estimate of combined RFSW and FFSW was 66,100 or 0.28% (0.19%-0.40%) of females aged 15-49. Meanwhile, there are approximately 10,000 to 21,700 IDU or 0.04%-0.09% of males aged 15-49. more
Genomic sequencing has been an essential tool in generating virological data, driving the laboratory response, and better understanding the dispersal and evolutionary patterns of SARS-CoV-2. In addition to the characterization of the global circulat
...
ion patterns, early detection of SARS-CoV-2 variants inside each country is critical to complement the epidemiological and virological surveillance
9 February 2021
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Outdoor air pollution is one of the world's largest health and environmental problems. The Global Burden of Disease is a major global study on the causes and risk factors for death. These estimates of the annual number of deaths attributed to a wide
...
range of risk factors are shown here. This chart is shown for the global total but can be explored for any country or region using the "change country or region" toggle.
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The WHO Malaria Threats Map is an interactive online platform that showcases the latest global data on four critical biological threats to effective malaria control and elimination: mosquito insecticide resistance, Plasmodium falciparum hrp2/3 gen
...
e deletions, antimalarial drug resistance, and the spread of invasive vector species. Designed for public health professionals and researchers, the map allows users to explore and filter data regionally, track emerging resistance patterns, and view visual trends. Its purpose is to inform strategies for surveillance, guide policy-making, and support efforts to eliminate malaria, particularly by anticipating and responding to biological challenges that could undermine control programs.
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Surveillance is a core malaria intervention. Data standards, tools and curricula materials have been developed to support countries to strengthen and monitor national routine surveillance systems and to support use of
...
data for decision-making in all transmission settings. These standards have been developed into malaria modules in DHIS2 for countries using this platform. These tools comprise: modules for burden reduction and elimination settings; aggregate module; case-based module and modules for entomological surveillance and vector control interventions
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The Global status report on violence prevention 2014, which reflects data from 133 countries, is the first report of its kind to assess national efforts to address interpersonal violence, namely child maltreatment, youth violence, intimate partner a
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nd sexual violence, and elder abuse. Jointly published by WHO, the United Nations Development Programme, and the United Nations Office on Drugs and Crime, the report reviews the current status of violence prevention efforts in countries, and calls for a scaling up of violence prevention programmes; stronger legislation and enforcement of laws relevant for violence prevention; and enhanced services for victims of violence.
You can download summaries in different languages, single chapters and graphics
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The Committee examined the clinical development of Ebola virus vaccines and conducted an inventory of available data on their safety. It also reviewed 3 generic issues: updating a global strategy on vaccine saf
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ety, use of a network of distributed data to monitor the safety of vaccines and case studies of communication about the safety of human papillomavirus (HPV) vaccines.
Weekly epidemiological record/Relevé épidémiologique hebdomadaire 12 JULY 2019, 94th YEAR / 12 JUILLET 2019, 94e ANNÉENo 28, 2019, 94, 309–316
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Past quantitative research on health financing has focused mostly on the level and distribution of total expenditure, with little emphasis on the specific role of public funds, despite their known importance for universal
...
health coverage (UHC). Health Accounts data do not disaggregate public expenditure on health by source of funding. Achieving a better understanding of public financing for health in the context of the macro-fiscal and health financing environment is of fundamental importance to the development of future health financing policy, particularly in low- and middle-income countries (LMICs).
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This report is the first of its kind. It brings together various data sets to present the current status of hand hygiene, highlight lagging progress, and call governments and supporting agencies to action, offering numerous inspiring examples of cha
...
nge.
During the COVID-19 pandemic, hand hygiene received unprecedented attention and became a central pillar in national COVID prevention strategies. However, concern with hand hygiene should not only be as temporary public health measure in times of crisis, but as a vital everyday behaviour that contributes to health and economic resilience. Hand hygiene is a highly cost-effective investment, providing outsized health benefits for relatively little cost.
Despite efforts to promote hand hygiene, the rates of access to hand hygiene facilities remain stubbornly low. If current rates of progress continue, by the end of the SDG era in 2030, 1.9 billion people will still lack facilities to wash their hands at home.
This report presents a compelling case for investment in five key ‘accelerators’ as a pathway towards achieving hand hygiene for all – governance, financing, capacity development, data and information, and innovation. These accelerators are identified under the UN-Water SDG 6 Global Acceleration Framework.
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From this website you can download the technical guidance, Interim case reporting form for 2019 Novel Coronavirus of confirmed and probable cases ; Template for line listing in Excel format and Data dictionary in Excel format .
The documents are
...
available in Arabic, Chinese, Englisch, French, Russian, Portuguese, Spanish
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The microbiology laboratory database software.
WHONET is a desktop Windows application for the management and analysis of microbiology laboratory data with a particular focus on antimicrobial resistance surveillance. WHONET, available in 28 languag
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es, supports local, national, regional, and global surveillance efforts in over 2,300 hospital, public health, animal health, and food laboratories in over 130 countries worldwide.
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The World Health Organization invites clinicians and patients to collect information on COVID-19 in a systematic way and contribute clinical data to the WHO Clinical Platform to expand our knowledge
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on Post-COVID-19 condition, and support patient care and public health interventions.
WHO’s Post COVID case report form (CRF) has been designed to report standardized clinical data from individuals after hospital discharge or after the acute illness to examine the medium- and long-term consequences of COVID-19. The forms will be available in multiple languages.
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WHO invites Member States, health facilities and other entities to participate in the global effort to collect anonymized clinical data relating to suspected or confirmed cases of monkeypox and cont
...
ribute data to the WHO Global Clinical Platform.
WHO has developed a clinical characterization case report forms (CRF) to standardize data collection of clinical features of monkeypox among outpatient and hospitalized cases.
For onboarding to the WHO Global Clinical Platform for monkeypox, please contact: monkeypox_clinicaldataplatform@who.int
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21 July 2022. The Rapid Core CRF is designed to collect data obtained through examination, interview and review of
hospital or clinic notes of patients with suspected, probable, or confirmed monkeypox infection.
...
Data
may be collected prospectively or retrospectively. The data collection period is defined as the period
from hospital admission or first clinic visit to discharge from care, transfer, death, or continued
hospitalization without possibility of continued data collection.
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Resource platform.
The Global Atlas of medical devices (GAMD) provides global, regional and country data on availability of:
national policy on health technology
regulation of medical dev
...
ices
health technology assessment national unit
health technology management
use of medical devices nomenclature system
national lists of priority medical devices
high cost medical equipment.
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The aim of this toolkit is to guide countries on how to best estimate their current burden of dengue by combining existing data from dengue surveillance systems with on-going research efforts to measure the community burden
of dengue.
During Epidemiological week (Epiweek) 5, 20 countries in the WHO African region (WHO AFR) contributed virological data for analysis - Algeria, Burkina Faso, Cameroon, Central African Republic, Côte d’Ivoire, Democratic Republic of the Congo, Ethi
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opia, Ghana, Madagascar, Mali, Mauritania, Mozambique, Niger, Nigeria, Rwanda, South Africa, South Sudan, Togo, Uganda, and Zambia
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