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Prior research has considered donor funding for developing world health by recipient and donor country but not by disease. Examining funding by disease is critical since diseases may be in competition with one another for priority and donors may be
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making allocation decisions in ways that do not correspond to developing world need. In this study I calculate donor funding for 20 historically high-burden communicable diseases for the years 1996 to 2003 and examine factors that may explain variance in priority levels among diseases. I consider funding for developing world health from 42 major donors, classifying grants according to the communicable disease targeted. Data show that funding does not correspond closely with burden. Acute respiratory infections comprise more than a quarter of the burden among these diseases but receive less than 3% of direct aid. Malaria also stands out as a high-burden neglected disease.
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Measuring violence against women with disability
recommended
This briefing note, which focuses on the measurement of violence against women with disability, is one in a series of methodological cbriefing notes for strengthening the measurement and data collection of violence against particular groups of women
...
or specific aspects of violence against women. These briefing notes are meant for researchers, national statistics offices and others involved in data collection on violence against women. They have been developed as
part of the UN Women–World Health Organization Joint Programme on strengthening methodologies and measurement of and building national capacities for violence against women data (Joint Programme on Violence against Women Data). These briefing notes seek to contribute to strengthening the quality and availability of data on violence against women and hence enhance global, regional and national level monitoring of progress towards its elimination, including for the United Nations Sustainable Development Goal (SDG) target 5.2 on the elimination of all forms of violence against women and girls
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This briefing note, which focuses on the measurement of violence against women 60 years and older, is one in a series of methodological briefing notes for strengthening the measurement and data collection of violence against particular groups of wom
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en or specific aspects of violence against women . These briefing notes are meant for researchers, national statistics offices and others involved in data collection on violence against women.
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Welcome to the Global Information System on Resources for the Prevention and Treatment of Substance Use Disorders. These pages present data collected from WHO Member States in broad categories: governance, policy and financing, service organization
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and delivery, human resources and national information systems. The latest data were collected in 2014 with the WHO Global Survey on Resources for Prevention and Treatment of Substance Use Disorders (ATLAS-SU survey). The global information system presents all available data to monitor the progress in advancing treatment coverage for substance use disorders (health target 3.5 of the Sustainable Development Goals 2030)
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Young people across the world are urging governments to shield them from predatory tobacco marketing tactics. The industry targets youth for a lifetime of profits, creating a new wave of addiction. The latest data show that children are using e-ciga
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rettes at rates higher than adults in many countries and globally an estimated 37 million youth aged 13–15 years use tobacco.
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This global status report on prevention and control of NCDs (2014), is framed around the nine voluntary global targets. The report provides data on the current situation, identifying bottlenecks as well as opportunities and priority actions for atta
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ining the targets. The 2010 baseline estimates on NCD mortality and risk factors are provided so that countries can report on progress, starting in 2015. In addition, the report also provides the latest available estimates on NCD mortality (2012) and risk factors, 2010-2012.All ministries of health need to set national NCD targets and lead the development and implementation of policies and interventions to attain them. There is no single pathway to attain NCD targets that fits all countries, as they are at different points in their progress in the prevention and control of NCDs and at different levels of socioeconomic development. However all countries can benefit from the comprehensive response to attaining the voluntary global targets presented in this report.
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The monograph contained in this volume was prepared following the ninety-third meeting of the Joint Food and Agriculture Organization of the United Nations (FAO)/World Health Organization (WHO) Expert Committee on Food Additives (JECFA), which met v
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irtually online from 24 March–1 April 2022. This monograph summarizes the data on the contaminant group trichothecenes T-2 and HT-2 toxins reviewed by the Committee. A monograph on the other features of this contaminant group, which were discussed at a previous meeting in 2001, are published in WHO Food Additives Series 47.
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This report on global leishmaniasis surveillance follows those published in 2016–2023.2–6 Six indicators of leishmaniasis are publicly available from the Global Health Observatory (GHO).7 In addition to the GHO, country profiles with up to 30 in
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dicators are published, with detailed data received from 45 Member States.
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A manual for impact assessments. The SCH Practical and Precision Assessment (SPPA) strategy is an evidence-based approach for conducting impact assessments for SCH. The SPPA was identified by programme managers and SCH experts from the African region as a feasible and sufficiently accurate approach
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after reviewing and discussing the results of a multi-country study. This manual describes the resulting Practical and Precision Assessments approach and includes a discussion of the underlying concepts, factors to consider when determining what approach is appropriate, and how to interpret the collected data. The manual also includes annexes with standard operating procedures for conducting the stool and urine analyses.
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Weekly Epidemiological Record. This report summarizes application of the SAFE strategy against trachoma during 2023. It includes estimates of the global population at risk of trachoma blindness based on district-by-district data submitted to WHO by
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national programmes. Summarizing the epidemiological situation in this way is inherently complex because, for any district, up to 3 serial estimates of prevalence may be valid at different times during a calendar year.
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Insufficient funding is hindering the achievement of malaria elimination targets in Africa, despite the pressing need for increased investment in malaria control. While Western donors attribute their inaction to financial constraints, the global health
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community has limited knowledge of China’s expanding role in malaria prevention. This knowledge gap arises from the fact that China does not consistently report its foreign development assistance activities to established aid transparency initiatives. Our work focuses on identifying Chinese-funded malaria control projects throughout Africa and linking them to official data on malaria prevalence. By doing so, we aim to shed light on China’s contributions to malaria control efforts, analysing their investments and assessing their impact. This would provide valuable insights into the development of effective financing mechanisms for future malaria control in Africa.
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Nigeria’s healthcare system faces significant challenges in financing and quality, impacting the delivery of services to its growing population. This study investigates healthcare workers’ perceptions of these challenges and their implications for healthcare policy and practice. A cross-sectiona
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l survey was conducted with 600 healthcare professionals from eight states across Nigeria, representing a variety of healthcare occupations. Participants completed a questionnaire that assessed their perceptions of healthcare financing, quality of care, job satisfaction, and motivation using a 5-point Likert scale, closed- and open-ended questions. Descriptive statistics, Chi-squared test, and regression analysis were used to analyze the data. The findings revealed that healthcare workers were generally not satisfied with the current state of healthcare financing and system quality in Nigeria. Poor funding, inadequate infrastructure, insufficient staffing, and limited access to essential resources were identified as major challenges.
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The WHO Mekong Malaria Elimination (MME) programme hosted a 3-day meeting on 15–17 November 2023 in Siem Riep, Cambodia for representatives from national malaria programmes, research institutions, partners, donors, WHO and UN agencies. The meeting provided a forum to discuss surveillance systems,
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the future priorities for the WHO Malaria Elimination Database and areas of improvement for data sharing, the efficacy of antimalarial drugs, progress made in malaria elimination, and challenges raised by P. vivax elimination.
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The purpose of the guideline is to provide information to stakeholders on the necessary requirements for a complete prequalification dossier for insecticide-treated nets (ITNs). Its aim is to establish the baseline for dossier requirements which are necessary to assess ITN products for the purposes
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of prequalification, describe the data requirements for fulfilling each dossier module, and to provide standardized information for applicants and testing facilities generating data for ITN prequalification dossiers. The document is supported by implementation guidance documents which provide specific information and considerations for how applicants may approach the generation of supporting information and compilation of a complete product dossier.
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Available in English, French an Spanish. The Malaria Threats Map is an interactive data platform which provides a geographic overview of the status of the 4 biological threats to malaria control and elimination
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 Sur
...
veillance and Response System (GISRS) to collect standardized 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.
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The global emergence of antimicrobial resistance (AMR) is posing a threat to human health. Putting resources into the containment of AMR – including surveillance – is one of the highest-yield investments a country can make to mitigate its impact
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. In 2015, WHO launched the Global Antimicrobial Resistance Surveillance System (GLASS), the first global collaborative effort to foster AMR surveillance in bacteria causing acute infections. As of December 2018, 71 countries are enrolled in GLASS. The aim of this report is to document participation efforts and outcomes across these countries, and highlight differences and constraints identified to date. This report follows on from the first GLASS Report – Early implementation 2016-17, published in January 2018, and drawing on data from GLASS first data call in 2017.
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The World Health Organization and the Global Fund to Fight AIDS, Tuberculosis and Malaria are part of a group of agencies working together to accelerate progress towards the health-related SDGs thro
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ugh the Global Action Plan for Healthy Lives and Well-being for All. Understanding patterns of inequalities in these diseases is essential for taking strategic, evidence-informed action to realize our shared vision of ending the epidemics of HIV, TB and malaria.
This report presents the first comprehensive analysis of the magnitude and patterns of socioeconomic, demographic and geographic inequalities in disease burden and access to services for prevention and treatment.
The results confirm there have been improvements in service coverage and decreased disease burden at the national level over the past decade. But they also reveal an uncomfortable reality: unfair inequalities between population subgroups within countries are widespread and have remained largely unchanged over the past decade. For some disease indicators, inequalities are even worsening.
Moreover, the report points to the persistent lack of available data to fully understand inequality patterns in HIV, TB and malaria. Collecting data to improve the monitoring of inequalities in these diseases is vital to develop targeted responses for impact.
There are, encouragingly, isolated successes in reducing inequities. Change is possible when deliberate action is taken to reach disadvantaged populations.
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The World Health Organization (WHO) has identified mental health as an integral component of the COVID-19 response. Its rapid assessment of service delivery for mental, neurological and substance us
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e (MNS) disorders during the COVID-19 pandemic, on which this report is based, is the first attempt to measure the impact of the pandemic on such services at a global level. The data were collected through a web-based survey completed by mental health focal points at ministries of health between June and August 2020. The questionnaire covered the existence and funding of mental health and psychosocial support (MHPSS) plans, the presence and composition of MHPSS coordination platforms, the degree of continuation and causes of disruption of different MNS services, the approaches used to overcome these disruptions, and surveillance mechanisms and research on MNS data.
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This document contains summary information on the latest projections from the IHME model on COVID-19
in Brazil. The model was run on July 15, 2022, with data through July 13, 2022.