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1
Publication Years
1
2315
6960
146
4
1
Category
3867
477
426
404
385
95
51
Toolboxes
633
561
504
455
445
436
332
301
282
237
224
210
208
168
167
158
142
121
112
110
60
53
52
40
29
7
1
FAST FACTS FROM THE 2015 ZIMBABWE DHS
Torrential rains and the onset of Cyclone Komen triggered severe and widespread floods and landslides in July and August 2015 across 12 out of 14 states and regions in Myanmar. An estimated 1.6 million individuals were recorded as having been tempor
...
arily displaced from their homes by the disaster, and 132 lost their lives. Up to 5.2 million people were exposed to the floods and landslides in the 40 most heavily affected townships. Within the 40 most-affected townships, 775,810 individuals have been displaced, accounting for approximately half of the total displaced population.
The Project recognizes that although the major target disaster is cyclones, the methodology of the Project activities to enhance the capacity of EWS, HRD and CBDRM is also applicable to mitigate the damage of floods. By analyzing the results of a survey based on the experience of the Project activities, the Project can contribute to describe tangible lessons learned and future recommendations for the counterpart agencies and disaster management related agencies of the Government of Myanmar. more
The Project recognizes that although the major target disaster is cyclones, the methodology of the Project activities to enhance the capacity of EWS, HRD and CBDRM is also applicable to mitigate the damage of floods. By analyzing the results of a survey based on the experience of the Project activities, the Project can contribute to describe tangible lessons learned and future recommendations for the counterpart agencies and disaster management related agencies of the Government of Myanmar. more
Indonesia Health Profile 2015
UNICEF Annual Report Indonesia 2015
Annual Household Survey 2015/16 is the forth survey of its kind. These annual surveys are conducted to provide estimations of some major socio-economic indicators on annual basis which would not be possible with other periodic surveys like Nepal Lab
...
our Force Surveys (NLSS) and Nepal Living Standard Surveys (NLSS) which are undertaken at longer intervals. The survey basically aims to provide estimates of consumption by sex, urban-rural area and by consumption quintiles/deciles. Although the major thrust of Annual Household Survey is on consumption and employment situations, other sectors like education, housing and housing facilities and demographic characteristics are also included. As this year NLSS survey is conducted so, this survey does not contain information on employment situation as in previous annual household surveys.
more
This document aims to define a practical plan of action for the IFRC Secretariat to effectively integrate child protection, as a minimum standard, within its organizational systems and development, protracted crisis and emergency operations. The timeline for the action plan is
...
2015 to the end of 2020.
more
Compared to the previous five-year assessment period 2011–2015, the current five-year period 2015–2019 has seen a continued increase in carbon dioxide (CO2 ) emissions and an accelerated increas
...
e in the atmospheric concentration of major greenhouse gases (GHGs), with growth rates nearly 20% higher. The increase in the oceanic CO2 concentration has increased the ocean’s acidity.
The five-year period 2015–20191 is likely to be the warmest of any equivalent period on record globally, with a 1.1 °C global temperature increase since the pre-industrial period and a 0.2 °C increase compared to the previous five-year period.
more
Situation des enfants et des femmes - Dakar urbain 2015-2016 Sénégal - Enquête par grappes à inducatuers multiples
L’Agence Nationale de la Statistique et de la Démographie du Sénégal (ANSD)
Fonds des Nations Unies pour l’enfance (UNICEF)
(2017)
C2
Afin de mesurer le niveau et les tendances des indicateurs relatifs à la situation des enfants et des femmes, l'UNICEF a élaboré, depuis les années 1990, le programme mondial des enquêtes MICS. Ce programme international permet une comparabilité des indicateurs entre les différents pays. Cett
...
e enquête dénommé MICS Urbaine Dakar fait suite aux MICS1 et MICS2 réalisées respectivement en 1996 et 2000. Les résultats présentés dans ce rapport constituent à la fois une évaluation des progrès réalisés dans le respect des engagements convenus au niveau international par l’Etat du Sénégal, et une situation de référence pour le suivi des Objectifs de Développement Durable à l’horizon 2030.
more
Background: In 2015, 5.3 million babies died in the third trimester of pregnancy and first month following birth. Progress in reducing neonatal mortality and stillbirth rates has lagged behind the substantial progress in reducing postneonatal and ma
...
ternal mortality rates. The benefits to prenatal and neonatal health (PNH) from maternal and child health investments cannot be assumed. Methods: We analysed donor funding for PNH over the period 2003–2013. We used an exhaustive key term search followed by manual review and classification to identify official development assistance and private grant (ODA+) disbursement records in the Countdown to 2015 ODA+ Database.
more
Background: To track donor assistance to maternal, newborn, and child health-related activities is necessary to assess progress towards Millennium Development Goals 4 and 5 and to foster donor accountability. Our aim was to analyse aid flows to maternal, newborn, and child health for 2005 and 2006 a
...
nd trends between 2003 and 2006.
Methods: We analysed and coded the complete aid activities database for 2005 and 2006 with methods that we developed previously to track official development assistance. For the 68 Countdown priority countries, we report two indicators for use in monitoring donor disbursements: official development assistance to child health per child and official development assistance to maternal and neonatal health per livebirth.
more
Background: Achievement of high coverage of effective interventions and Millennium Development Goals (MDGs) 4 and 5A requires adequate financing. Many of the 68 priority countries in the Countdown to 2015 Initiative are dependent on official develop
...
ment assistance (ODA). We analysed aid flows for maternal, newborn, and child health for 2007 and 2008 and updated previous estimates for 2003–06.
Methods: We manually coded and analysed the complete aid activities database of the Organisation for Economic Co-operation and Development for 2007 and 2008 with methods that we previously developed to track ODA. By use of newly available data for donor disbursement and population estimates, we revised data for 2003–06. We analysed the degree to which donors target their ODA to recipients with the greatest maternal and child health needs and examined trends over the 6 years.
more
Background: Tracking of financial resources to maternal, newborn, and child health provides crucial information to assess accountability of donors. We analysed official development assistance (ODA) flows to maternal, newborn, and child health for 2009 and 2010, and assessed progress since our monito
...
ring began in 2003.
Methods: We coded and analysed all 2009 and 2010 aid activities from the database of the Organisation for Economic Co-operation and Development, according to a functional classification of activities and whether all or a proportion of the value of the disbursement contributed towards maternal, newborn, and child health. We analysed trends since 2003, and reported two indicators for monitoring donor disbursements: ODA to child health per child and ODA to maternal and newborn health per livebirth. We analysed the degree to which donors allocated ODA to 74 countries with the highest maternal and child mortality rates (Countdown priority countries) with time and by type of donor.
more
Background: Timely reliable data on aid flows to maternal, newborn, and child health are essential for assessing the adequacy of current levels of funding, and to promote accountability among donors for attainment of the Millennium Development Goals (MDGs) for child and maternal health. We provide g
...
lobal estimates of official development assistance (ODA) to maternal, newborn, and child health in 2003 and 2004, drawing on data reported by high-income donor countries and aid agencies to the Organisation for Economic Development and Cooperation.
Methods: ODA was tracked on a project-by-project basis to 150 developing countries. We applied a standard definition of maternal, newborn, and child health across donors, and included not only funds specific to these areas, but also integrated health funds and disease-specific funds allocated on a proportional distribution basis, using appropriate factors.
more
Financing Global Health 2015 is the seventh edition of IHME’s annual series on global health financing. This report captures trends in development assistance for health (DAH) and government health expenditure as source (GHE-S) in low- and middle-i
...
ncome countries. Annually updated GHE-S and DAH estimates are produced to aid decision-makers and other global health stakeholders in identifying funding gaps and invesment opportunities vital to improving population health. This year, IHME made a number of improvements to the data collection and methods implemented to generate Financing Global Health estimates.
more
Amélioration de la santé des populations en Afrique