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1
Publication Years
1
2965
6298
944
53
5
1
1
Category
3631
634
571
520
483
235
70
13
4
3
Toolboxes
995
806
684
476
439
391
354
336
331
307
255
215
211
204
182
181
180
142
73
72
65
54
49
10
3
2
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
Update - 27 June 2018
During the reporting week, the monsoon rains brought 252 mm of rainfall compared to 95 mm during the previous week. The downpour caused 65% of the week’s weather-related incidents (i.e. landslides, wind-storms and floods). Three rain gauges were installed in Chakmarkul ( ... near Camp 21), Camp 16 and Kutupalong, complementing existing rain gauges in Cox’s Bazar and Teknaf, as well as the Meteorological Station installed by Samaritan Purse in Camp 12. This network of rain gauges provides localized rainfall data at regular intervals throughout the day, which will allow the humanitarian community to better monitor, anticipate and respond to developments within the camps. Relocation of families at risk of landslides and flooding continued; a total of some 200 families have already moved to Camp 20 Extension and more than 100 families to Camp Extension 4. Repair of access roads, culverts, bridges and infrastructure is ongoing with continued attention to preparing for further heavy rains. more
During the reporting week, the monsoon rains brought 252 mm of rainfall compared to 95 mm during the previous week. The downpour caused 65% of the week’s weather-related incidents (i.e. landslides, wind-storms and floods). Three rain gauges were installed in Chakmarkul ( ... near Camp 21), Camp 16 and Kutupalong, complementing existing rain gauges in Cox’s Bazar and Teknaf, as well as the Meteorological Station installed by Samaritan Purse in Camp 12. This network of rain gauges provides localized rainfall data at regular intervals throughout the day, which will allow the humanitarian community to better monitor, anticipate and respond to developments within the camps. Relocation of families at risk of landslides and flooding continued; a total of some 200 families have already moved to Camp 20 Extension and more than 100 families to Camp Extension 4. Repair of access roads, culverts, bridges and infrastructure is ongoing with continued attention to preparing for further heavy rains. more
A discussion paper on the scope of the problem, its drivers, and strategies for moving forward for policy, practice, and research
In many protracted emergencies, the prevalence rates of global acute malnutrition (GAM) regularly exceed the emergency threshold of > 15% of children with acute malnutri
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tion (< -2 weight-for-height z-scores (WHZ) or with nutritional edema), despite ongoing humanitarian interventions. The widespread scale and long-lasting nature of “persistent GAM” means that it is a policy and programming priority.
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Attraction and Retention of Rural Primary Health-care Workers in the Asia Pacific Region
Liu Xiaoyun; Zhu, Anna; Tang, Shenglan
World Health Organization, Regional Office for South-East Asia
(2018)
C_WHO
The Asia Pacific Observatory on Health Systems and Policies is a collaborative partnership which supports and promotes evidence-based health policy making in the Asia Pacific Region. Based in WHO’s Regional Office for South-East Asia, it brings together governments, international agencies, foundat
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ions, civil society and the research community with the aim of linking systematic and scientific analysis of health systems in the Asia Pacific Region with the decision-makers who shape policy and practice.
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The document contains a set of indicators that can be used for monitoring traditional and complementary medicine (T&CM) systems in a country.
The core indicator set consists of 16 indicators that were considered essential and collectively able to provide information on T&CM inputs, processes and ou
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tputs. A longer list of reference indicators is also available for countries that wish to monitor more indicators or that want to consider alternative metrics that would better suit each country’s T&CM situation, priorities and monitoring capacities.
Each core and reference indicator is accompanied by a set of metadata. This provides information on the indicator rationale, definitions, data elements (numerator, denominator and data disaggregation), frequency of measurement, and data sources. It is a guide towards more standardized data measurement as well as data interpretation.
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Conducted November 2011 to February 2012: Summary Report
This summary report has five sections. Following the introduction (Section 1), Section 2 sets out summary findings and recommendations of the assessment team. Section 3 describes the context in which artemisinin resistance is being tackle ... d. Section 4 highlights key achievements and enabling factors for the response to artemisinin resistance, whilst Section 5 provides a more detailed discussion of major issues to be addressed. more
This summary report has five sections. Following the introduction (Section 1), Section 2 sets out summary findings and recommendations of the assessment team. Section 3 describes the context in which artemisinin resistance is being tackle ... d. Section 4 highlights key achievements and enabling factors for the response to artemisinin resistance, whilst Section 5 provides a more detailed discussion of major issues to be addressed. more
At the threshold of Sustainable Development Goals (SDG) era, this document captures the remarkable achievements by Member States towards achieving MDGs 4 and 5. It acknowledges new opportunities in the post-2015 phase shaped by the SDGs and the Global Strategy for women’s, children’s and adoles
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cents’ health and presents an advanced state of preparedness in the Region. This also highlights the region’s renewed commitment for a more inclusive and more dynamic flagship action for ending preventable maternal, newborn and child mortality as well as to improve women’s, children’s and adolescents’ health and wellbeing in the South-East Asia Region.
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Effective malaria prevention is threatened by widespread and increasing vector insecticide resistance. Failure to mitigate this threat will likely result in an increased burden of disease, with significant cost implications. This new framework provides support for the development of a national insec
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ticide resistance monitoring and management plan as part of a national malaria strategic plan.
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Recent efforts to fight malaria in the Greater Mekong Subregion (GMS) have yielded impressive results. According to the latest WHO estimates, the six GMS countries cut their malaria case incidence by an estimated 54% between 2012 and 2015. Malaria death rates fell by 84% over the same period.
I ... n May 2015, GMS Ministers of Health adopted the WHO Strategy for malaria elimination in the Greater Mekong Subregion 2015-2030. Urging immediate action, the plan aims to eliminate P. falciparum malaria from the subregion by 2025 and all species of human malaria by 2030. more
I ... n May 2015, GMS Ministers of Health adopted the WHO Strategy for malaria elimination in the Greater Mekong Subregion 2015-2030. Urging immediate action, the plan aims to eliminate P. falciparum malaria from the subregion by 2025 and all species of human malaria by 2030. more
An estimated 59 000 people die from rabies each year. That’s one person every nine minutes of every day, 40% of whom are children living in Asia and Africa. As dog bites cause almost all human cases, we can prevent rabies deaths by increasing awareness, vaccinating dogs to prevent the disease at i
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ts source and administering life-saving treatment after people have been bitten. We have the vaccines, medicines, tools and technologies to prevent people from dying from dog-mediated rabies. For a relatively low cost it is possible to break the disease cycle and save lives
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This guidance document sets out a methodology to identify and track financing to the WASH sector in a coherent and consistent manner across several countries. It is designed to help countries track financing to the WASH sector on a regular and comparable basis and analyse this information to support
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evidence-based policy-making based on useful indicators.
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This toolkit for integrated vector management (IVM) is designed to help national and regional programme managers coordinate across sectors to design and run large IVM programmes.
The toolkit provides the technical detail required to plan, implement, monitor and evaluate an IVM approach. IVM can ... be used when the aim is to control or eliminate vector-borne diseases and can also contribute to insecticide resistance management. This toolkit provides information on where vector-borne diseases are endemic and what interventions should be used, presenting case studies on IVM as well as relevant guidance documents for reference.
The diseases that are the focus of this toolkit are malaria, lymphatic filariasis, dengue, leishmaniasis, onchocerciasis, human African trypanosomiasis and schistosomiasis. It also includes information on other viral diseases (Rift Valley fever, West Nile fever, Chikungunya, yellow fever) and trachoma. If other vector-borne diseases appear in a country or area, vector control with an IVM approach should be adopted, as per national priorities. more
The toolkit provides the technical detail required to plan, implement, monitor and evaluate an IVM approach. IVM can ... be used when the aim is to control or eliminate vector-borne diseases and can also contribute to insecticide resistance management. This toolkit provides information on where vector-borne diseases are endemic and what interventions should be used, presenting case studies on IVM as well as relevant guidance documents for reference.
The diseases that are the focus of this toolkit are malaria, lymphatic filariasis, dengue, leishmaniasis, onchocerciasis, human African trypanosomiasis and schistosomiasis. It also includes information on other viral diseases (Rift Valley fever, West Nile fever, Chikungunya, yellow fever) and trachoma. If other vector-borne diseases appear in a country or area, vector control with an IVM approach should be adopted, as per national priorities. more
This year marked the beginning of the WHO biennium 2016-2017 action plan; this annual report highlights WHO’s key achievements in 2016
It also documents the extraordinary efforts by a broad coalition of government ministries, municipalities, international agencies, community groups, women’s or
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ganizations, religious and traditional leaders, media, private sector and donors towards restoration and improving health indicators.
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This report covers research conducted on HIV stigma and discrimination using the Stigma Index in the Papua New Guinea provinces of Western Highlands and Chimbu*. When Igat Hope began the project the aim was to conduct interviews in all regions of PNG. However, due to funding constraints and organis
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ational capacities, the Stigma Index has only been applied in one region, that is, the Highlands Region. In future, the hope is to gather comparable data from other regions in PNG. Despite the fact that the overall project aims have not yet been achieved, the data contained in this report provides useful information that can be considered as work continues in PNG on HIV-related stigma and discrimination and human rights.
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Pathways to progress: a multi-level approach to strengthening health systems
Samuels, F., Amaya, A.B., Rodríguez Pose, R. and Balabanova, D.
Overseas Development Institute
(2014)
C1
Findings on maternal and child health in Nepal, Mozambique and
Rwanda, and neglected tropical diseases in Cambodia and Sierra Leone | This report synthesises findings from five country case studies from the health dimension of this project, which focus on maternal and child health (MCH) (Mozambique
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,Nepal, Rwanda) and neglected tropical diseases (NTDs)(Cambodia, Sierra Leone). MCH was selected given its centrality in two of the Millennium Development Goals (MDGs) and its ability to act as a proxy for strengthened health systems. NTDs, while until recently relatively neglected in global policy debates, are now attracting more interest, not least because they are viewed as diseases of the poor whose treatment could positively impact on most of the other MDGs.
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The Kabeho Mwana project (2006–2011) supported the Rwanda Ministry of Health (MOH) in scaling up integrated community case management (iCCM) of childhood illness in 6 of Rwanda’s 30 districts. The project trained and equipped community health workers (CHWs) according to national guidelines. In p
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roject districts, Kabeho Mwana staff also trained CHWs to conduct household-level health promotion and established supervision and reporting mechanisms through CHW peer support groups (PSGs) and quality improvement systems. The iCCM model implemented by Kabeho Mwana resulted in greater improvements in care-seeking than those seen in the rest of the country. Intensive monitoring, collaborative supervision, community mobilization, and CHW PSGs contributed to this success. The PSGs were a unique contribution of the project, playing a critical role in improving care-seeking in project districts. Effective implementation of iCCM should therefore include CHW management and social support mechanisms. Finally, re-analysis of national survey data improved evaluation findings by providing impact estimates.
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