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Publication Years
1
3001
5749
695
37
2
1
1
Category
3960
571
553
502
472
165
94
3
Toolboxes
749
628
524
461
367
359
292
281
270
238
215
200
185
180
170
142
128
125
122
115
62
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7
3
Global and regional estimates of violence against women
he report presents the first global systematic review of scientific data on the prevalence of two forms of violence against women: violence by an intimate partner (intimate partner violence) a
...
nd sexual violence by someone other than a partner (non-partner sexual violence). It shows, for the first time, global and regional estimates of the prevalence of these two forms of violence, using data from around the world. Previous reporting on violence against women has not differentiated between partner and non-partner violence. You can download the report in different languages
more
The toolkit aims to provide researchers with guidance for improving the quality of studies that use administrative data to better ascertain child maltreatment incidence, response and service delivery. However, these are complex studies to conduct, a
...
nd the toolkit is not meant to be comprehensive. Researchers using the toolkit should be prepared to follow up on the recommended resources contained within and to consult with other professionals, such as statisticians, to further improve the research design and execution
more
The Sphere Project strategy for working with regional partners, country focal points and resource persons.
Evaluation of Community Management of Acute Malnutrition (CMAM)
Sheila Reed, Camille Eric Kouam, Krishna Belbase et al.
United Nations Children’s Fund (UNICEF) Evaluation Office
(2013)
This evaluation is the first systematic effort by UNICEF to generate evidence on how well its global as well as country level Community Management of Acute Malnutrition (CMAM) strategies have worked, including their acceptance and ownership in vario
...
us contexts and appropriateness of investments in capacity development and supply components. Overall, the evaluation recommends that UNICEF continue to promote and support CMAM as a viable approach to preventing and addressing severe acute malnutrition (SAM), with an emphasis on prevention through strengthening community outreach and integrating CMAM into national health systems and with other intervention
more
Global Experience of Community Health Workers for Delivery of Health Related Millennium Development Goals
Zulfiqar A. Bhutta, Zohra S. Lassi, George Pariyo and Luis Huicho
World Health Organization WHO; Global Health Workforce Alliance
(2010)
C_WHO
A Systematic Review, Country Case Studies, and Recommendations for Integration into National Health Systems
Alliance Report
Participation of community health workers (CHWs) in the provision of primary health care has been experienced all over the
...
world for several decades, and there is an amount of evidence showing that they can add significantly to the efforts of improving the health of the population, particularly in those settings with the highest shortage of motivated and capable health professionals.
more
The document is a World Health Organization publication about communicable disease surveillance and response systems. It explains that communicable disease surveillance is a core public health function used to collect, analyse and interpret health data
...
so that outbreaks and other health threats can be detected early, monitored and responded to appropriately. The guide describes how surveillance systems help provide early warning of potential threats, support programme monitoring, enable outbreak detection and facilitate timely public health action to prevent disease spread. It also discusses the design and evaluation of surveillance systems and how the information they generate is used for decision-making in public health practice.
more
The funding requested in this supplementary appeal will enable UNHCR to enhance preventive, preparedness and response measures against EVD, participate in the regional and country inter-agency response and ensure continuity of operations, including
...
preparations for the resumption of the voluntary repatriation of Ivorian refugees, in the face of the Ebola crisis
more
Currently there is no publicly available source of consolidated information on attacks on health care in emergencies. This report is a first attempt to consolidate and analyse the data that is available from open sources. While the
...
data are not comprehensive, the findings shed light on the severity and frequency of the problem.
more
These WHO guidelines which were updated in 2018, are valid for any country and suitable to local adaptations, and take account of the strength of available scientific evidence, the cost and resource implications, and patient values and preferences.
...
The 2018 edition of the guidelines includes the revision of the recommendation regarding the use of 80% fraction of inspired oxygen (high FiO2) in surgical patients under general anaesthesia with tracheal intubation and the update of the section on implementation. Between 2017 and 2018, WHO re-assessed the evidence on the use of high FiO2 by updating the systematic review related to the effectiveness of this intervention to reduce SSI and commissioning an independent systematic review on adverse events potentially associated with it. Based on the updated evidence, the GDG decided to revise the strength of the recommendation from strong to conditional.
more
DHS Working Papers No. 69
This paper uses data from the three Indian National Family Health Surveys (1992-93, 1998-99, 2005-06) to examine how the relationship between household wealth and child mortality evolved during a time of significant ec ... onomic change in India. The main predictor is a new measure of household wealth that captures changes in wealth over time. Outcomes include neonatal mortality, postneonatal mortality, child mortality, and under-five mortality. Multivariate analysis is conducted at the national, urban, rural, and regional levels.
Results indicate that the overall relationship between household wealth and mortality weakened over time, as evidenced by the coefficients for under-five mortality at the national level. more
This paper uses data from the three Indian National Family Health Surveys (1992-93, 1998-99, 2005-06) to examine how the relationship between household wealth and child mortality evolved during a time of significant ec ... onomic change in India. The main predictor is a new measure of household wealth that captures changes in wealth over time. Outcomes include neonatal mortality, postneonatal mortality, child mortality, and under-five mortality. Multivariate analysis is conducted at the national, urban, rural, and regional levels.
Results indicate that the overall relationship between household wealth and mortality weakened over time, as evidenced by the coefficients for under-five mortality at the national level. more
Where there is no psychiatrist
recommended
2nd edition.
The book is aimed at general health workers in low- and middle-income country settings and has some chapters on perinatal mental health. That said, it has definite applicability in high-income
...
country settings too! In the new edition, there has been a big expansion of the psychosocial interventions. Thanks to your advocacy for such a resource being open-access (as the first edition was not), the book is freely available for download: https://www.cambridge.org/core/books/where-there-is-no-psychiatrist/47578A845CAFC7E23A181749A4190B54
more
The 2013 RMIS is a nationally representative, household-based survey that provides data on malaria indicators, which are used to assess the progress of a malaria control program. The primary objective of the 2013 Rwanda Malaria Indicator Survey (201
...
3 RMIS) was to provide up-to date information on the prevention of malaria to policymakers, planners, and researchers.
more
The National Institute of statistics of Rwanda (NISR) in collaboration with the worldwide Demographic and Health Surveys Program implemented the 2014-15 Rwanda Demographic and Health Survey (RDHS) to collect data for monitoring progress on health pr
...
ograms and policies in Rwanda. This publication illustrates the profile of Eastern Province.
more
The information provided here can be used to understand the current situation, increase attention to preterm births in Rwanda and to inform dialogue and action among stakeholders. Data can be used to identify the most important risk factors to targe
...
t and gaps in care in order to identify and implement solutions for improved outcomes.
more
The information provided here can be used to understand the current situation, increase attention to preterm births in Rwanda and to inform dialogue and action among stakeholders. Data can be used to identify the most important risk factors to targe
...
t and gaps in care in order to identify and implement solutions for improved outcomes.
more
The information provided here can be used to understand the current situation, increase attention to preterm births in Rwanda and to inform dialogue and action among stakeholders. Data can be used to identify the most important risk factors to targe
...
t and gaps in care in order to identify and implement solutions for improved outcomes.
more
Globally, in low-income countries, the average newborn mortality rate is 27 deaths per 1,000 births, the report says. In high-income countries, that rate is 3 deaths per 1,000. Newborns from the riskiest places to give birth are up to 50 times more likely to die than those from the safest places.
... The report also notes that 8 of the 10 most dangerous places to be born are in sub-Saharan Africa, where pregnant women are much less likely to receive assistance during delivery due to poverty, conflict and weak institutions. If every country brought its newborn mortality rate down to the high-income average by 2030, 16 million lives could be saved.
More than 80 per cent of newborn deaths are due to prematurity, complications during birth or infections such as pneumonia and sepsis, the report says. These deaths can be prevented with access to well-trained midwives, along with proven solutions like clean water, disinfectants, breastfeeding within the first hour, skin-to-skin contact and good nutrition. more
... The report also notes that 8 of the 10 most dangerous places to be born are in sub-Saharan Africa, where pregnant women are much less likely to receive assistance during delivery due to poverty, conflict and weak institutions. If every country brought its newborn mortality rate down to the high-income average by 2030, 16 million lives could be saved.
More than 80 per cent of newborn deaths are due to prematurity, complications during birth or infections such as pneumonia and sepsis, the report says. These deaths can be prevented with access to well-trained midwives, along with proven solutions like clean water, disinfectants, breastfeeding within the first hour, skin-to-skin contact and good nutrition. more
The primary objective of the 2015-16 MDHS project is to provide up-to-date estimates of basic demographic and health indicators. Specifically, the MDHS collected information on fertility levels, marriage, fertility preferences, awareness and use of family planning methods, breastfeeding practices, n
...
utrition, maternal and child health and mortality, awareness and behavior regarding HIV/AIDS and other sexually transmitted infections (STIs), and other health-related issues such as smoking and knowledge of tuberculosis. As the 2015-16 MDHS is the first DHS survey in the country, trend analysis is not carried out in this report.
more
Policy Note #2: Myanmar Health Systems in Transition Policy Notes Series
Myanmar is a country in which people’s access to health services is determined more by where they live than their need for care – a situation that is fundamentally ine ... quitable. The challenge is to reduce levels of inequity between different groups in the population and different geographical areas, and most particularly to ensure that health services reach poor and disadvantaged groups, including minorities and those living in conflict-affected areas. more
Myanmar is a country in which people’s access to health services is determined more by where they live than their need for care – a situation that is fundamentally ine ... quitable. The challenge is to reduce levels of inequity between different groups in the population and different geographical areas, and most particularly to ensure that health services reach poor and disadvantaged groups, including minorities and those living in conflict-affected areas. more