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Publication Years
1
2405
5570
756
30
3
Category
3344
563
491
447
336
162
61
9
3
3
Toolboxes
723
722
643
390
384
363
319
232
211
201
193
189
170
165
163
144
125
108
64
50
45
41
24
8
2
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
Census Report Volume 4-B
In the 2014 Census, early-age mortality was measured from the responses to two simple retrospective questions on childbearing addressed to ever-married women aged 15 and over. These questions referred to how many live children they had ever given birth to, and how many ... had died (or survived). Adult mortality was measured by using a question on the number of household members who had died during the 12 months preceding the Census.
According to the 2014 Census, infant and child mortality, which comprises under-five mortality, was high compared to other countries in the region. Previous estimates indicated a rapid decline during the 1960s and 1970s, with a substantial deceleration starting in the early 1980s. The decline has accelerated again during recent years. more
In the 2014 Census, early-age mortality was measured from the responses to two simple retrospective questions on childbearing addressed to ever-married women aged 15 and over. These questions referred to how many live children they had ever given birth to, and how many ... had died (or survived). Adult mortality was measured by using a question on the number of household members who had died during the 12 months preceding the Census.
According to the 2014 Census, infant and child mortality, which comprises under-five mortality, was high compared to other countries in the region. Previous estimates indicated a rapid decline during the 1960s and 1970s, with a substantial deceleration starting in the early 1980s. The decline has accelerated again during recent years. more
Census Report Volume 4-F (Thematic report on Population Projections for the Union of Myanmar, States/Regions, Rural and Urban Areas, 2014-2050)
Key findings
- The total population of Myanmar is estimated to be 65 million by 2050. The projection is based on steadily declining population grow ... th rate over the projection period: from 0.9 per cent in 2015 to 0.3 per cent in 2050.
- The proportion of the urban population rises from 29.3 per cent in 2015 to 34.7 in 2050. The rural and urban crude birth rates both decline between 2015 and 2050, but the difference between them narrows to almost zero by the end of the period.
- The population of Yangon grows more rapidly than any other area, by 39 per cent between 2015 and 2031. Other rapidly growing areas include Kayah (37 per cent), Kachin (32 per cent), Nay Pyi Taw (27 per cent), and Shan (26 per cent). Ayeyawady, Magway and Mon lose population, mostly due to migration. more
Key findings
- The total population of Myanmar is estimated to be 65 million by 2050. The projection is based on steadily declining population grow ... th rate over the projection period: from 0.9 per cent in 2015 to 0.3 per cent in 2050.
- The proportion of the urban population rises from 29.3 per cent in 2015 to 34.7 in 2050. The rural and urban crude birth rates both decline between 2015 and 2050, but the difference between them narrows to almost zero by the end of the period.
- The population of Yangon grows more rapidly than any other area, by 39 per cent between 2015 and 2031. Other rapidly growing areas include Kayah (37 per cent), Kachin (32 per cent), Nay Pyi Taw (27 per cent), and Shan (26 per cent). Ayeyawady, Magway and Mon lose population, mostly due to migration. more
Report on Main Findings
The review encompasses three complementary components: 1) a review of published literature 2000-2015 on NCDs and their risk factors; 2) qualitative interviews with key actors engaged in NCD research in Myanmar; and 3) additional reviews of Myanmar ethical committee inqui ... ries and postgraduate research on NCDs in Myanmar. This report outlines the key findings from the three components including a synthesis of the key outcomes from the literature review and qualitative interviews, and an assessment of the gaps in the evidence against a framework of evidence needs. more
The review encompasses three complementary components: 1) a review of published literature 2000-2015 on NCDs and their risk factors; 2) qualitative interviews with key actors engaged in NCD research in Myanmar; and 3) additional reviews of Myanmar ethical committee inqui ... ries and postgraduate research on NCDs in Myanmar. This report outlines the key findings from the three components including a synthesis of the key outcomes from the literature review and qualitative interviews, and an assessment of the gaps in the evidence against a framework of evidence needs. more
Together we can Prevent and Control the World's Most Common Diseases
Objectives of the training manual
(1) To improve knowledge of NCD trends, burdens, as well as systems for management and monitoring of NCD services for Township Medical Officers (TMOs), Township Public Health Officers (TP ... HOs), Medical Officers (MOs). The manual can also be used for training of Basic Health staff (BHS), TMOs, TPHOs and MOs,
(2) To equip trainers to train BHS to conduct PEN protocols at the primary care level health centers,
(3) To equip trainers to train in processes to conduct PEN scaling up monitoring , supervision and evaluation activities. more
Objectives of the training manual
(1) To improve knowledge of NCD trends, burdens, as well as systems for management and monitoring of NCD services for Township Medical Officers (TMOs), Township Public Health Officers (TP ... HOs), Medical Officers (MOs). The manual can also be used for training of Basic Health staff (BHS), TMOs, TPHOs and MOs,
(2) To equip trainers to train BHS to conduct PEN protocols at the primary care level health centers,
(3) To equip trainers to train in processes to conduct PEN scaling up monitoring , supervision and evaluation activities. more
Survey report
Four health surveys were performed in Kutupalong Makeshift Settlment (KMS), Balukhali Makeshift Settlement (BMS), Kutupalong Makeshift Settlement Extension (KMS Extension) and Balukhali Makeshift Settlement Extension (BMS Extension). These sites were chosen to ensure that the health ... status and conditions were measured in both the new settlements and the pre-existing settlements. The surveys measured current and retrospective mortality, the main morbidities affecting the population, global and severe acute malnutrition rates, vaccination coverage rates for key antigens and health-seeking behaviour. Simple random sampling was used with a recall period from 25th February 2017 until the date of interview (30th October to 12th November): approximately 260 days. more
Four health surveys were performed in Kutupalong Makeshift Settlment (KMS), Balukhali Makeshift Settlement (BMS), Kutupalong Makeshift Settlement Extension (KMS Extension) and Balukhali Makeshift Settlement Extension (BMS Extension). These sites were chosen to ensure that the health ... status and conditions were measured in both the new settlements and the pre-existing settlements. The surveys measured current and retrospective mortality, the main morbidities affecting the population, global and severe acute malnutrition rates, vaccination coverage rates for key antigens and health-seeking behaviour. Simple random sampling was used with a recall period from 25th February 2017 until the date of interview (30th October to 12th November): approximately 260 days. more
The Sendai Framework for Disaster Risk Reduction 2015-2030 outlines seven clear targets and four priorities for action to prevent new and reduce existing disaster risks: (i) Understanding disaster risk; (ii) Strengthening disaster risk governance to manage disaster risk; (iii) Investing in disaster
...
reduction for resilience and; (iv) Enhancing disaster preparedness for effective response, and to "Build Back Better" in recovery, rehabilitation and reconstruction.
It aims to achieve the substantial reduction of disaster risk and losses in lives, livelihoods and health and in the economic, physical, social, cultural and environmental assets of persons, businesses, communities and countries over the next 15 years. more
It aims to achieve the substantial reduction of disaster risk and losses in lives, livelihoods and health and in the economic, physical, social, cultural and environmental assets of persons, businesses, communities and countries over the next 15 years. more
Disaster risk management systems analysis: A guide book
Baas, Stephan; Ramasamy, Selvaraju; Dey de Pryck, Jenny et al.
Food and Agriculture Organization of the United Nations (FAO)
(2008)
C1
The guide book provides a set of tools and methods to assess existing structures and capacities of national, district and local institutions with responsibilities for Disaster Risk Management (DRM) in order to improve their effectiveness and the integration of DRM concerns into development planning,
...
with particular reference to disaster-prone areas, vulnerable sectors and population groups.
The strategic use of the Guide is expected to enhance understanding of the strengths, weaknesses, opportunities and threats facing existing DRM institutional structures and their implications for on-going institutional change processes. It will also highlight the complex institutional linkages among various actors and sectors at different levels. more
The strategic use of the Guide is expected to enhance understanding of the strengths, weaknesses, opportunities and threats facing existing DRM institutional structures and their implications for on-going institutional change processes. It will also highlight the complex institutional linkages among various actors and sectors at different levels. 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.
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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
The National Disaster Management Plan (NDMP) provides a framework and direction to the government agencies for all phases of disaster management cycle. The NDMP is a “dynamic document” in the sense that it will be periodically improved keeping up with the emerging global best practices and knowl
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edge base in disaster management. It is in accordance with the provisions of the Disaster Management Act, 2005, the guidance given in the National Policy on Disaster Management, 2009 (NPDM), and the established national practices.
more
Myanmar is prone to various natural hazards that include earthquakes, floods, cyclones, droughts, fires, tsunamis, some of whichhave the potential to impact large numbers of people. In the event that large numbers of people are affected (such as was the case in 2008 following cyclone Nargis), the go
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vernment may decide to request international assistance to respond to the disaster.
The overall goal of the ERPP is to mitigate the impact of disasters and save as many lives as possible from preventable causes. It aims to ensure that effective and timely assistance is provided to people in need through effective coordination and communication on emergency preparedness and humanitarian response between members of the HCTin Myanmar. The approach has been developed in collaboration with the Government, to facilitate a coordinated and effective support to people affected by humanitarian crises. more
The overall goal of the ERPP is to mitigate the impact of disasters and save as many lives as possible from preventable causes. It aims to ensure that effective and timely assistance is provided to people in need through effective coordination and communication on emergency preparedness and humanitarian response between members of the HCTin Myanmar. The approach has been developed in collaboration with the Government, to facilitate a coordinated and effective support to people affected by humanitarian crises. more
Myanmar is prone to various natural hazards that include earthquakes, floods, cyclones, droughts, fires, tsunamis, some of whichhave the potential to impact large numbers of people. In the event that large numbers of people are affected(such as was the case in 2008 following cyclone Nargis), the gov
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ernment may decide to request international assistance to respond to the disaster.
The overall goal of the ERPP is to mitigate the impact of disasters and save as many lives as possible from preventable causes. It aims to ensure that effective and timely assistance is provided to people in need through effective coordination and communication on emergency preparedness and humanitarian response between members of the HCTin Myanmar. The approach has been developed in collaboration with the Government, to facilitate a coordinated and effective support to people affected by humanitarian crises.
more
The ERP approach seeks to improve effectiveness by reducing both time and effort, enhancing predictability through establishing predefined roles, responsibilities and coordination mechanisms. The Emergency Response Preparedness Plan (ERPP) has four main components: i) Risk Assessment, ii) Minimum Pr
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eparedness Actions, iii) Standard Operating Procedures (SOP), and iv) Contingency Plans for the initial emergency response. Besides these four elements, the preparedness package also includes the updated Multi-Sector Initial Rapid Assessment (MIRA) methodology, the Scenario Plan for a cyclone in Ayeyawaddy as well as the key documents for cash transfer programming in new emergencies.
more
Planning and Implementation Training. Myanmar
This training module on resilient development planning in Myanmar consists of a 2.5 hours session, at the end of which, the participants will:
a) Have a common understanding on development and disaster linkages.
b) Be able to identify the ... various factors which contribute towards disaster risk including climate change in Myanmar.
c) Be able to identify measures for risk resilient development process in Myanmar.
The three main learning units include:
1. Disaster and development linkages.
2. Components and drivers of disaster risk including climate change.
3. Mainstreaming disaster and climate risk reduction into development. more
This training module on resilient development planning in Myanmar consists of a 2.5 hours session, at the end of which, the participants will:
a) Have a common understanding on development and disaster linkages.
b) Be able to identify the ... various factors which contribute towards disaster risk including climate change in Myanmar.
c) Be able to identify measures for risk resilient development process in Myanmar.
The three main learning units include:
1. Disaster and development linkages.
2. Components and drivers of disaster risk including climate change.
3. Mainstreaming disaster and climate risk reduction into development. more
WHO guidance for contingency planning
recommended
In this contingency planning guidance, a set of actions to prepare for emergencies from all hazards and to help minimize their impact, is proposed. These actions include the development, implementation, simulation, monitoring and regular update of risks-based contingency plans.
This publication presents guidance on good practice from the Ayeyarwaddy Delta in Myanmar, outlining the key factors which contributed to the successful implementation and outcome of a range of community-based Disaster Risk Reduction initiatives implemented by the Myanmar Consortium for Community Re
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silience (MCCR).
The content was developed over a period of two months between November-December 2015, involving a desk review of MCCR project documents including impact studies, monitoring reports and newsletters. Field visits were undertaken to the Ayeyarwaddy Delta to document the perspectives of key stakeholders at community level, including a total of 93 adults (men and women) and 57 children (girls and boys) from eight communities targeted under the DIPECHO IX project. more
The content was developed over a period of two months between November-December 2015, involving a desk review of MCCR project documents including impact studies, monitoring reports and newsletters. Field visits were undertaken to the Ayeyarwaddy Delta to document the perspectives of key stakeholders at community level, including a total of 93 adults (men and women) and 57 children (girls and boys) from eight communities targeted under the DIPECHO IX project. more
The CBDRR Manual is a practical ‘how-to’ guide on community-based disaster risk reduction for government and non-government agencies in Lao PDR. It is a commonly agreed document to be referred to by agencies working on CBDRR in Lao PDR. It provides guidance and support for systematic implementat
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ion of CBDRR programs by explaining each of the steps as well as tools used.
The manual will also support the Government of Lao PDR (GoL) to monitor CBDRR activities, oversee progress of activities implemented by different actors and locations, provide necessary support on CBDRR technical knowledge as well as provide a reference point for replication of initiatives for local government and implementing agencies. more
The manual will also support the Government of Lao PDR (GoL) to monitor CBDRR activities, oversee progress of activities implemented by different actors and locations, provide necessary support on CBDRR technical knowledge as well as provide a reference point for replication of initiatives for local government and implementing agencies. more
Disability Inclusion in Disaster Risk Management: Promising practices and opportunities for enhanced engagement
Guernsey, Katherine; Scherrer, Valérie
Global Facility for Disaster Reduction and Recovery (GFDRR), World Bank
(2018)
C1
This paper provides information to assist World Bank and GFDRR staff in affecting disability-inclusive DRM. It is based upon desk reviews of existing practice, as well as consultations with experts in the field of disability-inclusive DRM. The paper:
- Illustrates promising practices related to ... disability-inclusive DRM;
- Identifies key gaps in knowledge and practices;
- Identifies value-added areas for GFDRR and the World Bank, including specific actions they can take to advance the disability and social inclusion agenda in DRM;
It includess:
- Relevant guiding international policy frameworks;
- Disability inclusion in the priorities of the Sendai Framework for Disaster Risk Reduction; - Illustrations of promising practices in disability-inclusive DRM;
- An annex of resources related to disability and DRM. more
- Illustrates promising practices related to ... disability-inclusive DRM;
- Identifies key gaps in knowledge and practices;
- Identifies value-added areas for GFDRR and the World Bank, including specific actions they can take to advance the disability and social inclusion agenda in DRM;
It includess:
- Relevant guiding international policy frameworks;
- Disability inclusion in the priorities of the Sendai Framework for Disaster Risk Reduction; - Illustrations of promising practices in disability-inclusive DRM;
- An annex of resources related to disability and DRM. more