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The evidence base for differentiated care for stable patients has grown in recent years. There has been less attention, however, to developing differentiated models of care for patients with advanced or unstable HIV disease. Current clinical guidelines and policies regarding optimal packages of care
...
for high-risk patients give few or no recommendations about how, by whom, or where they should be delivered for optimal impact.
more
more
2nd Generation HIV Surveillance in Pakistan, Round 5
The Overall objective of this mapping study was to update population size estimates of selected key populations (PWID, FSWs, MSM & TGs) to create evidence for developing action plans for HIV prevention interventions in Pakistan. A total numbe ... r of 23 cities/towns were selected for Mapping. This included 13 cities in Punjab province, 6 in Sindh Province and 2 cities each in KPK and Baluchistan provinces.
large file: 70,5 MB The preview/download includes only the pages 1 to 23. more
The Overall objective of this mapping study was to update population size estimates of selected key populations (PWID, FSWs, MSM & TGs) to create evidence for developing action plans for HIV prevention interventions in Pakistan. A total numbe ... r of 23 cities/towns were selected for Mapping. This included 13 cities in Punjab province, 6 in Sindh Province and 2 cities each in KPK and Baluchistan provinces.
large file: 70,5 MB The preview/download includes only the pages 1 to 23. more
This toolkit provides practical guidance to governments, funders, civil society organizations and other implementing partners on conducting a gender analysis and using findings to inform HIV prevention, care and treatment programs with key populations. It outlines considerations and steps for conduc
...
ting a gender analysis; explores how to engage with stakeholders, including key population members, in a meaningful partnership; shares lessons learned from a comprehensive gender analysis in Kenya and an abridged gender analysis in Cameroon; and provides tools and resources for conducting a gender analysis with key populations.
more
2nd Generation HIV Surveillance in Pakistan, Round 5
Approaches to Conservation of Medicinal Plants and Traditional Knowledge: A Focus on the Chittagong Hill Tracts
Motaleb, Mohammad Abdul
IUCN (International Union for Conservation of Nature), KNCF (Keidanren Nature Conservation Fund)
(2010)
C1
This report documents different approaches to conservation of medicinal plants and traditional knowledge in Bolipara union of Thanchi upazila of Bandarban hill district. This initiative involved the collection of baseline data on medicinal plants and their uses, motivating people towards the uses an
...
d practices, identification and knowledge sharing with the traditional healers, establishment of an electronic database and carrying out specific conservation measures and awareness activities. This document also provides a number of recommendations to ensure sustainability of such initiatives for safeguarding medicinal plants and indigenous knowledge associated with them. We sincerely hope that this account will be useful to the people interested in medicinal plants, especially in developing countries.
Original file: 29 MB more
Original file: 29 MB more
Afr J Tradit Complement Altern Med. (2016) 13(4):123-131
Out of 400 questionnaires distributed to the participants, 389 were returned with data acceptable for analysis. Ages of the participants ranged from 18 to 75 years (Mean=43 + 11.6). Out of the 272 (69.9%) participants who conceded that th ... ey had used medicinal herbs at least once, 30 (7.7%) participants used medicinal herbs frequently while 242 (62.2 %) rarely used the herbs. At least 20 plant species belonging to 16 families were reportedly used by the participants. Asteraceae was the most common plant family reportedly used by the participants. Allium sativum and Dicoma anomala, reportedly used by 21.0% and 14.3% respectively, were the most commonly used medicinal herbs in this population. In addition, boosting the immune system and treating gastrointestinal ailments, apparently cited by 32% and 28% participants respectively, were the most commonly reported reasons for using medicinal herbs.
http://dx.doi.org/10.21010/ajtcam.v13i4.17 more
Out of 400 questionnaires distributed to the participants, 389 were returned with data acceptable for analysis. Ages of the participants ranged from 18 to 75 years (Mean=43 + 11.6). Out of the 272 (69.9%) participants who conceded that th ... ey had used medicinal herbs at least once, 30 (7.7%) participants used medicinal herbs frequently while 242 (62.2 %) rarely used the herbs. At least 20 plant species belonging to 16 families were reportedly used by the participants. Asteraceae was the most common plant family reportedly used by the participants. Allium sativum and Dicoma anomala, reportedly used by 21.0% and 14.3% respectively, were the most commonly used medicinal herbs in this population. In addition, boosting the immune system and treating gastrointestinal ailments, apparently cited by 32% and 28% participants respectively, were the most commonly reported reasons for using medicinal herbs.
http://dx.doi.org/10.21010/ajtcam.v13i4.17 more
Chinese Medicine, (2016) 11:37
Medicinal plants are globally valuable sources of herbal products, and they are disappearing at a high speed. This article reviews global trends, developments and prospects for the strategies and methodologies concerning the conservation and sustainable use of me ... dicinal plant resources to provide a reliable reference for the conservation and sustainable use of medicinal plants. We emphasized that both conservation strategies (e.g. in situ and ex situ conservation and cultivation practices) and resource management (e.g. good agricultural practices and sustainable use solutions) should be adequately taken into account for the sustainable use of medicinal plant resources. We recommend that biotechnical approaches (e.g. tissue culture, micropropagation, synthetic seed technology, and molecular marker-based approaches) should be applied to improve yield and modify the potency of medicinal plants.
https://doi.org/10.1186/s13020-016-0108-7 more
Medicinal plants are globally valuable sources of herbal products, and they are disappearing at a high speed. This article reviews global trends, developments and prospects for the strategies and methodologies concerning the conservation and sustainable use of me ... dicinal plant resources to provide a reliable reference for the conservation and sustainable use of medicinal plants. We emphasized that both conservation strategies (e.g. in situ and ex situ conservation and cultivation practices) and resource management (e.g. good agricultural practices and sustainable use solutions) should be adequately taken into account for the sustainable use of medicinal plant resources. We recommend that biotechnical approaches (e.g. tissue culture, micropropagation, synthetic seed technology, and molecular marker-based approaches) should be applied to improve yield and modify the potency of medicinal plants.
https://doi.org/10.1186/s13020-016-0108-7 more
Tropical Medicine and Infectious Disease 2017, 2(4), 50
This is a cross-sectional analysis of baseline data in a longitudinal study on asymptomatic, LF antigen-positive and -negative young people in Myanmar. Rapid field screening was used to identify antigen-positive cases and a group of antige ... n-negative controls of similar age and gender were invited to continue in the study. ... Results demonstrate that sub-clinical changes associated with infection can be detected in asymptomatic cases. Further exploration of these low-cost devices in clinical and research settings on filariasis-related lymphedema are warranted.
https://doi.org/10.3390/tropicalmed2040050 more
This is a cross-sectional analysis of baseline data in a longitudinal study on asymptomatic, LF antigen-positive and -negative young people in Myanmar. Rapid field screening was used to identify antigen-positive cases and a group of antige ... n-negative controls of similar age and gender were invited to continue in the study. ... Results demonstrate that sub-clinical changes associated with infection can be detected in asymptomatic cases. Further exploration of these low-cost devices in clinical and research settings on filariasis-related lymphedema are warranted.
https://doi.org/10.3390/tropicalmed2040050 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
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
...
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 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
The purpose of this ‘Facilitator Guidebook’ is to help the Course Coordinator deliver and document consistently high-quality CBDRR training courses.
- Module 1: Understanding the Basics: introduces the participants to the basics of CBDRR implementation of MRCS, general aspects of CBDRR in ... the context of Myanmar.
- Module 2: Implementing the Program: introduces the participants to the 9 CBDRR steps that are followed by MRCS when implementing community- and school-based programs and key points.
- Module 3: Ensuring Sustainability: introduces the participants to two aspects that are often forgotten when it comes to program implementation.
- Module 4: Being a Facilitator:introduces the participants to facilitation skills and some exercises are carried out that willhelp the participants to be a facilitator of the course themselves in the end. more
- Module 1: Understanding the Basics: introduces the participants to the basics of CBDRR implementation of MRCS, general aspects of CBDRR in ... the context of Myanmar.
- Module 2: Implementing the Program: introduces the participants to the 9 CBDRR steps that are followed by MRCS when implementing community- and school-based programs and key points.
- Module 3: Ensuring Sustainability: introduces the participants to two aspects that are often forgotten when it comes to program implementation.
- Module 4: Being a Facilitator:introduces the participants to facilitation skills and some exercises are carried out that willhelp the participants to be a facilitator of the course themselves in the end. more
The CBDRR Step-by-Step Methodology aims to guide the effective implementation of new community-based as well as school-based interventions implemented by MRCS as well as other DRR actors in Myanmar identifying key steps that need to be followed under each program as well as minimum activities for ea
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ch of the steps.
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This guideline consists of two main parts:
i.) Guidelines for Red Cross and Red Crescent national societies on how to start up and engage with other stakeholders in country in rolling out disaster risk reduction (DRR) education and awareness activities for children - not only in school, but also ... in the community;
ii.) Games and activities to engage children with key lessons and messages to carry away. With a focus on Southeast Asia, cases from Viet Nam and Indonesia are highlighted. more
i.) Guidelines for Red Cross and Red Crescent national societies on how to start up and engage with other stakeholders in country in rolling out disaster risk reduction (DRR) education and awareness activities for children - not only in school, but also ... in the community;
ii.) Games and activities to engage children with key lessons and messages to carry away. With a focus on Southeast Asia, cases from Viet Nam and Indonesia are highlighted. more
Natural Disaster Management Law, Myanmar
(2013)
C1
(The Pyidaungsu Hluttaw Law No. 21,2013)
Lack of satisfactory progress in mainstreaming disaster risk reduction within development is attributed to various factors. One of the important factor that is often not much appreciated is the inadequate comprehension of mainstreaming and the absence of clear, cogent and practical guidelines, tools
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and techniques for mainstreaming DRR within development. This Guidebook helps to tackle this challenge by providing strategic and practical guidelines on how to mainstream disaster risk reduction into their policies plans and programmes across key sectors. It discusses strategic approaches towards risk resilient development in the Asia-Pacific region and demonstrates how to operationalize them using examples from various countries in the region. These guidelines can be adopted by countries according to their specific contexts, resources and capacities.
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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
CBDRR Practice. Case Studies 1
No publication year indicated.
No publication year indicated.