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Publication Years
1002
2323
248
13
1
Category
1578
319
252
161
147
58
14
Toolboxes
268
201
184
173
156
147
142
97
78
75
73
64
59
47
36
35
34
31
27
27
22
14
9
8
4
2
2
Over the period 2015 to 2019, scaling up a package of selected nutrition-specific and nutrition sensitive interventions to cover 90 per cent of Sudan would:
- Reduce the under-five mortality rate to 49/1,000 live births
- Reduce the prevalence of stunting to 25 per cent
- Reduce the ... prevalence of wasting (global acute malnutrition – GAM) to 6 per cent
- Increase exclusive breastfeeding to 63 per cent
- Reduce iron deficiency anaemia among pregnant women to 26 per cent. more
- Reduce the under-five mortality rate to 49/1,000 live births
- Reduce the prevalence of stunting to 25 per cent
- Reduce the ... prevalence of wasting (global acute malnutrition – GAM) to 6 per cent
- Increase exclusive breastfeeding to 63 per cent
- Reduce iron deficiency anaemia among pregnant women to 26 per cent. more
ت، ّالرعاية الصحية المجتمعية، بما يتضم."19كوفيد-′′في سياق جائح
National-scale databases and reliability issue
Background report
The 2019 SLDHS is a national sample survey that provides up-to-date information on demographic and health indicators. The sample was selected using a stratified, two-stage cluster design, with enumeration areas (EAs) as the sampling units for the first stage. The second stage was a complete listing
...
of households carried out in each of the 578 selected EAs. The target groups were women age 15-49 and men age 15-59 in
randomly selected households across the country. A representative sample of approximately 13,872 households was selected for the survey. Half of the households (6,936) were selected for biomarker and men’s interview. The men’s survey was conducted in half (50%) of the sample households, and all men age 15-59 in these households were included. In this subsample, one eligible woman in each household was randomly selected to be asked additional questions about domestic violence.
more
This report started with a simple question—“How can we tell how much funding is devoted to global health programs?”—and ended (more than two years later) with an answer that is far from simple. As those who have tried know well, tracking health-related funding is challenging in any setting,
...
given the range of public and private sources and the many types of services and programs that fall within the definition of “health sector.” It is made all the more complicated when significant external support from donors and private charities plus in-kind donations of drugs and other inputs are taken into account. The task is made yet harder by inadequate public expenditure management systems in countries where public agencies’ capacity is stretched very thin and by donor accounting structures that are not designed to respond in a timely way
more
Facts For Life
recommended
Handbook on pregnancy, childbirth, childhood illnesses, child development and the care of children. The handbook, Facts for Life, provides vital messages and information for mothers, fathers, other family members and caregivers and communities to use in changing behaviours and practices that can sav
...
e and protect the lives of children and help them grow and develop to their full potential.
This version of Facts for Life builds on the three previous editions, which have been helping families and communities around the world since 1989. Newborn Health has been added to the Safe Motherhood chapter, giving attention to child survival from the first stage of life. A new chapter, Child Protection, has been included, focusing attention on the actions needed to ensure children grow up in protective environments.
more
Strengthening HIV prevention among most-at-risk populations (MARPs) in the Syrian Arab Republic:
Report by the Director-General 22 May 2022
This report presents country, regional and global estimates of low birth weight for 2000, together with a detailed description of the methods used in calculating the estimates. Some limited data on trends are also included. The limitations of low-birth-weight data are described and recommendations a
...
re made for further improvements in the data for this important indicator of health.
more
Country overview: Kyrgyzstan
European Monitoring Centre for Drugs and Drug Addiction
(2015)
C2
The INEE Minimum Standards Handbook is the only global tool that articulates the minimum level of educational quality and access in emergencies through to recovery. The Minimum Standards express a commitment that all individuals—children, youth and adults—have a right to education.
There are
...
different languages available: Arabic, Azerbajan, Bahsa Indonesia, Bengali, Bosnian, Coratian, Serbian, Chinese, English, French, Japanese, Krygyz, Nepali, Pashto, Portuguese, Russian, Spanish, Urdu, Turkish, Vietnamese
more