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Category
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2
Toolboxes
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1
The Ministry of Health conducted STEPS surveys on adult risk factors surveillance in Myanmar in 2003, 2009 and 2014. Amongst these three surveys, the 2014 one is the most comprehensive, providing an analysis of all States and Regions within Myanmar through not only questionnaires and physical measur
...
ements – STEPs 1 and 2 of the survey – but also with data obtained through biochemical measurements (STEP 3).
The STEPS survey was initiated by the Ministry of Health in December 2014 with the technical support of WHO Headquarters, regional and country offices. more
The STEPS survey was initiated by the Ministry of Health in December 2014 with the technical support of WHO Headquarters, regional and country offices. more
Health System Review: Achievements and Challenges
Tangcharoensathien, Viroy; Patcharanarumol, Walaiporn; Panichkriangkrai, Warisa
World Health Organization (WHO)
(2016)
C_WHO
Policy Note: Thailand Health Systems in Transition
By 2002, Universal Health Coverage was achieved through three public insurance schemes: the Civil Servant Medical Benefit Scheme (CSMBS) for civil servants and their dependents, Social Health Insurance (SHI) for formal sector employees, and the U ... niversal Coverage Scheme (UCS) for the remainder of the population.
The establishment of these three schemes has changed the way health care is financed. A supply-led system, under which all Ministry of Public Health (MOPH) health facilities received an annual budget allocation from the MOPH, has now been completely replaced by a system in which the three public purchasers - separated through a purchaser-provider split - manage a demand-led system of financing. more
By 2002, Universal Health Coverage was achieved through three public insurance schemes: the Civil Servant Medical Benefit Scheme (CSMBS) for civil servants and their dependents, Social Health Insurance (SHI) for formal sector employees, and the U ... niversal Coverage Scheme (UCS) for the remainder of the population.
The establishment of these three schemes has changed the way health care is financed. A supply-led system, under which all Ministry of Public Health (MOPH) health facilities received an annual budget allocation from the MOPH, has now been completely replaced by a system in which the three public purchasers - separated through a purchaser-provider split - manage a demand-led system of financing. more
Flood Disaster Risk Management - Hydrological Forecasts: Requirements and Best Practices (Training Module)
Vogelbacher, A.
National Institute of Disaster Management (NIDM), Deutsche Gesellschaft für Internationale Zusammenarbeit (GIZ)
(2013)
C1
This Case Study explores flood forecasting systems from the perspective of its position within the flood warning process. A method for classifying the different approaches taken in flood forecasting is introduced before the elements of a present-day flood forecasting system are discussed in detail.
...
Finally, the state of the art in developing flood forecasting systems is addressed including how to deal with specific challenges posed.
The target group of this case study are decision makers in disaster risk management and/or water management. The case study should help to understand some hydrologic basics of the flood forecast and assist in the administration and implementation of an appropriate flood warning system in a specific environment, to find the best solution for a region.
Best solutions depend mainly on quality and availability of data, the areas and/or points of interest, catchment properties, cross border catchments, and financial capabilities with special consideration of flood forecast. more
The target group of this case study are decision makers in disaster risk management and/or water management. The case study should help to understand some hydrologic basics of the flood forecast and assist in the administration and implementation of an appropriate flood warning system in a specific environment, to find the best solution for a region.
Best solutions depend mainly on quality and availability of data, the areas and/or points of interest, catchment properties, cross border catchments, and financial capabilities with special consideration of flood forecast. more
Green Climate Fund Proposal Toolkit 2017: Toolkit to develop a project proposal for the GCF
Fayolle, Virginie; Odianose, Serena
Acclimatise, Climate and Development Knowledge Network (CDKN)
(2017)
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The GCF aims to support developing countries in achieving a paradigm shift to low-emission and climate-resilient pathways. This is achieved by funding innovative and transformative lowemission (mitigation) and climate-resilient (adaptation) projects and programmes developed by the public and private
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sectors to contribute to the implementation of national climate change priorities in developing countries. While it is relatively easy to tell what a mitigation project or programme is (i.e. its contribution to the reduction of greenhouse gases in the atmosphere, and/or whether it increases the capacity of an ecosystem to absorb them), the blurred line between a general development project and an adaptation project has been a contentious issue in the international climate finance debate. The relevant question is not whether a project is (also) a development project, but whether the project contributes to adaptation (i.e. what the adaptation/additionality argument is).
This toolkit helps governments and project developers understand how to fulfil the Green Climate Fund’s requirements when developing a fully-fledged funding proposal. more
This toolkit helps governments and project developers understand how to fulfil the Green Climate Fund’s requirements when developing a fully-fledged funding proposal. more
This presentation provides an earthquake risk assessment of Mandalay city in Myanmar. It identifies areas of potentially high seismic risk, which will allow national and local authorities to make plans to mitigate the risk, to allocate resources, and plan for emergency responses accordingly, ultimat
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ely leading to a safer community.
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Joint data assessment by the Central Statistical Organization and UNDP
The report shows that the National Statistical System of Myanmar has some work ahead of it in terms of preparing for the monitoring of the SDG indicators. Only 44 of the SDG indicators are currently produced and readily avai ... lable at the national level. However, the good news is that many (97) of the missing indicators can be computed from existing data sources – often with little effort - and don’t require any additional data collection. The report concludes that Myanmar is in a decent position to start monitoring the SDGs, and should start as soon as possible in putting its existing data to full use for the SDGs. more
The report shows that the National Statistical System of Myanmar has some work ahead of it in terms of preparing for the monitoring of the SDG indicators. Only 44 of the SDG indicators are currently produced and readily avai ... lable at the national level. However, the good news is that many (97) of the missing indicators can be computed from existing data sources – often with little effort - and don’t require any additional data collection. The report concludes that Myanmar is in a decent position to start monitoring the SDGs, and should start as soon as possible in putting its existing data to full use for the SDGs. more
The Government of the Democratic Republic of the Congo announced today that preliminary laboratory results indicate a cluster of cases of Ebola virus in North Kivu province. The announcement was issued little more than a week after the Ministry of Health declared the end of an outbreak in Equateur P
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rovince in the far western part of the country, some 2500 km from North Kivu.
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The 2015-16 MDHS is a national sample survey that provides up-to-date information on fertility levels; marriage; fertility preferences; awareness and use of family planning methods; child feeding practices; nutrition; adult and childhood mortality; awareness and attitudes regarding HIV/AIDS; women
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s empowerment; and domestic violence. The target groups were women and men age 15-49 residing in randomly selected households across the country. In addition to national estimates, the report provides estimates of key indicators for both urban and rural areas in Myanmar and also for the 15 states and regions.
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DHS Working Paper No. 136
A total of 1,222 children age 6-23 months were included in this analysis. Twenty percent of children were stunted and 43% were moderately anemic. Regarding IYCF practices, only 16% of children received a minimum acceptable diet, 25% received diverse food groups, 58% were ... fed with minimum meal frequency, 85% currently breastfed, and 59% consumed iron-rich foods. Breastfeeding reduced the odds of being stunted. By background characteristics, male sex, perceived small birth size, children of short stature, and children of working mother were significant predictors of stunting. Iron-rich food consumption was inversely associated with moderate anemia. Among covariates, male sex and maternal anemia were also significant predictors of moderate anemia among children age 6-23 months.
The study concluded that stunting and anemia among young children in Myanmar are major public health challenges that need urgent action. more
A total of 1,222 children age 6-23 months were included in this analysis. Twenty percent of children were stunted and 43% were moderately anemic. Regarding IYCF practices, only 16% of children received a minimum acceptable diet, 25% received diverse food groups, 58% were ... fed with minimum meal frequency, 85% currently breastfed, and 59% consumed iron-rich foods. Breastfeeding reduced the odds of being stunted. By background characteristics, male sex, perceived small birth size, children of short stature, and children of working mother were significant predictors of stunting. Iron-rich food consumption was inversely associated with moderate anemia. Among covariates, male sex and maternal anemia were also significant predictors of moderate anemia among children age 6-23 months.
The study concluded that stunting and anemia among young children in Myanmar are major public health challenges that need urgent action. more
March - June 2018
Myanmar introduced Child Death Surveillance and Response (CDSR) in 2015 as an initiative to reduce child (under-5) mortality, an initiative that will contribute to the country’s efforts to meet the Sustainable Development Goals (SDG). Technical Guidelines for CDSR were devel ... oped in 2015 followed by the development of Training Package in 2016. An Implementation Plan was made in 2016; and this led to all townships implementing CDSR in early 2017. After one year of implementation an assessment was carried out in early 2018.
The assessment was conducted in 3 region/states – Ayeyarwaddy, Magway, Shan South, with information gathered from the state/region, district, township and basic health unit levels. In addition a caretaker interview was conducted to see health-seeking behavior. In addition to these three regions/states, information was also gathered from three other regions/states but only at the region/state level – Mandalay, Yangon, Kachin. more
Myanmar introduced Child Death Surveillance and Response (CDSR) in 2015 as an initiative to reduce child (under-5) mortality, an initiative that will contribute to the country’s efforts to meet the Sustainable Development Goals (SDG). Technical Guidelines for CDSR were devel ... oped in 2015 followed by the development of Training Package in 2016. An Implementation Plan was made in 2016; and this led to all townships implementing CDSR in early 2017. After one year of implementation an assessment was carried out in early 2018.
The assessment was conducted in 3 region/states – Ayeyarwaddy, Magway, Shan South, with information gathered from the state/region, district, township and basic health unit levels. In addition a caretaker interview was conducted to see health-seeking behavior. In addition to these three regions/states, information was also gathered from three other regions/states but only at the region/state level – Mandalay, Yangon, Kachin. more
Screenshot of statistic data websites.
Follow the link and find Country Profiles in indonesian language on TB, Reproductive Health, Malaria, Lymphoma, Pneumonia, Hypertension and much more.
Alternative websites:
http://www.promkes.depkes.go.id/ or http://www.kemkes.go.id/
This landscape analysis aims to:
1. Identify and document supportive policies and best practices in family planning program implementation
2. Assess the quality of family planning service provision
3. Propose recommendations for scaling up best family planning practices and new interv ... entions to improve program effectiveness and increase utilization of contraception more
1. Identify and document supportive policies and best practices in family planning program implementation
2. Assess the quality of family planning service provision
3. Propose recommendations for scaling up best family planning practices and new interv ... entions to improve program effectiveness and increase utilization of contraception more
Specific measures are being taken within the National Tuberculosis Control Programme (NTP) to address the MDR TB problem through appropriate management of patients and strategies to prevent the propagation and dissemination of MDR TB.
The term "Programmatic Management of Drug Resistant TB" (PMD ... T) refers to programme based MDR TB diagnosis, management and treatment. This guideline promotes full integration of basic TB control and PMDT activities under the NTP, so that patients with TB are evaluated for drug resistance and are placed on the appropriate treatment regimen and properly managed from the outset of treatment, or as early as possible. The guidelines also integrate the identification and treatment of more severe forms of drug resistance, such as extensively drug resistant TB (XDR TB).
At the end, the guideline introduces new standards for registering, monitoring and reporting outcomes of multidrug resistant TB cases. more
The term "Programmatic Management of Drug Resistant TB" (PMD ... T) refers to programme based MDR TB diagnosis, management and treatment. This guideline promotes full integration of basic TB control and PMDT activities under the NTP, so that patients with TB are evaluated for drug resistance and are placed on the appropriate treatment regimen and properly managed from the outset of treatment, or as early as possible. The guidelines also integrate the identification and treatment of more severe forms of drug resistance, such as extensively drug resistant TB (XDR TB).
At the end, the guideline introduces new standards for registering, monitoring and reporting outcomes of multidrug resistant TB cases. more
Vision Statement
From birth to 8 years of age, all children of the Republic of the Union of Myanmar will receive holistic, high-quality and developmentally-appropriate care from their parents, caregivers and service providers to ensure they will be happy, healthy, well nourished, socially adept ... , emotionally balanced and well protected in conditions of freedom, equity and dignity in order to contribute positively to their families, communities and the nation. more
From birth to 8 years of age, all children of the Republic of the Union of Myanmar will receive holistic, high-quality and developmentally-appropriate care from their parents, caregivers and service providers to ensure they will be happy, healthy, well nourished, socially adept ... , emotionally balanced and well protected in conditions of freedom, equity and dignity in order to contribute positively to their families, communities and the nation. more
Indonesia Health Profile 2015
This study consists of a descriptive analysis of M. tuberculosis isolates from Beira Central Hospital, Mozambique, during 2014–2015, being the first report of a genotypic testing used to provide information about second line drug resistance in Mozambique.
BMC Infectious Diseases (2016) 16:423 DO
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I 10.1186/s12879-016-1766-x
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Avec une population estimée à 1 626 606 habitants et une densité de 16 habitants/km2, elle a pour chef-lieu Mbandaka qui est la plus grande ville. L'Équateur est depuis 2015 l’une des 26 provinces de la République démocratique du Congo (RDC).
Les localités de Wangata, Iboko et Bikoro son
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t trois (03) des dix-huit (18) zones de santé (ZS) de cette province affectées par l’épidémie actuelle de la maladie à virus Ebola (MVE).
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Facilitator's Manual on life Skill Education, Stress Management and Suicide Prevention Workshops
Singing to the Lions is a free training package (facilitator’s guide, supplement and video) by CRS, that is designed to help children and youth lessen the impact of violence and abuse in their lives. The main component is a three-day workshop where participants learn skills that can help them tran
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sform their lives and no longer feel dominated by fear. Although the workshop is aimed at young people and includes games, art and songs, it can also be used to help adults take action on aspects of their lives that cause fear and, in so doing, become better parents and caregivers.
Singing to the Lions is available in English, French and Spanish, with Arabic and Hindi in process. See the links below. It can be easily adapted to different cultures, with different pictures and metaphors (e.g., “Singing to the Wolves” in Arabic; “Charming the Snakes” in Hindi.)
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