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The government of Rwanda conducted the 2010 Rwanda Demographic and Health Survey (RDHS) to gather up-to-date information for monitoring progress on healthcare programs and policies in Rwanda, including the Economic Development and Poverty Reduction Strategy (EDPRS), the Millennium Development Goals
...
(MDGs),
and Vision 2020. The 2010 RDHS is a follow-up to the 1992, 2000, 2005, and 2007-08 RDHS surveys. Each survey provides data on background characteristics of the respondents, demographic and health indicators, household health expenditures, and domestic violence. The target groups in these surveys were women age 15-49 and men age 15-59
who were randomly selected from households across the country. Information about children age 5 and under also was collected, including the weight and height of the children.
more
Sierra Leone: Wage rates improve in Sierra Leone, mVAM Bulletin #15 March 2015
World Food Programme
(2015)
Imported and local rice prices increased modestly in March. A recovery in economic activity is leading to an improvement in unskilled wage rates (up 7 percent compared to February).
The households who are depending the most on negative coping strategies are in the districts of Kailahun, Kon
...
o, Bombali, Tonkolili and Koinadugu.
March data continues to show that negative coping strategies are most frequently used by the poorest households, by those living in Ebola-affected rural areas and by households headed by women.
more
The context of the Ebola epidemic presented extreme challenges for Oxfam, as it did for many organisations. At the onset of the epidemic, there was a general lack of understanding of the disease and how to respond to it effectively and safely. A pervasive and persistent climate of fear, coupled with
...
changing predictions about the likely evolution of the epidemic, influenced analysis and response at all levels. There was strong pressure to treat the epidemic as a medical emergency requiring a medical response – organised through topdown processes – rather than standard humanitarian coordination
more
The aim of this handbook is to provide network members and other laboratories involved in the diagnosis of tuberculosis, with an agreed list of key diagnostic methods and their protocols in various areas of TB diagnosis, ranging from microbiological diagnosis of active TB to the diagnosis of latent
...
TB infection. This handbook offers a single source of reference by compiling all methods, with a strong focus on standard (reference) and evidence-based methods. In so doing, it will also contribute to the improvement of disease surveillance data for Europe.
more
Testimonies from Humanitarian Workers with Disabilities.
By reading the first-hand accounts, we hear how persons with disabilities, not through any particular talent or skill but from unique knowledge gained through life experience, are ideally placed to provide insights, ideas and leadership, to s
...
upply essential data, and to fill the gaps in humanitarian response that cause this exclusion.
more
2nd edition
WASH FIT is a risk-based, continuous improvement framework with a set of tools for undertaking water, sanitation and hygiene (WASH) improvements as part of wider quality improvements in health care facilities. It is aimed at small primary, and in some instances secondary, health care fa
...
cilities in low and middle income countries.
An app, for front line data collection is also available in the Android Google Play store or as a web app
more
A case study of the Essential Health Benefit in Tanzania mainland
Todd G.; Nswilla A.; Kisanga O.; Mamdani M.
Regional Network for Equity in Health in east and southern Africa (EQUINET)
(2017)
C1
Regional Network for Equity in Health in east and southern Africa (EQUINET): Disussion Paper 109
This report describes the evolution of mainland Tanzania’s EHB; the motivations for developing the EHBs, the methods used to develop, define and cost them; how it is being disseminated, communicat ... ed, and used; and the facilitators (and barriers) to its development, uptake or use. Findings presented in this report are from three stages of analysis: literature review, key informant perspectives and a national consultative meeting. more
This report describes the evolution of mainland Tanzania’s EHB; the motivations for developing the EHBs, the methods used to develop, define and cost them; how it is being disseminated, communicat ... ed, and used; and the facilitators (and barriers) to its development, uptake or use. Findings presented in this report are from three stages of analysis: literature review, key informant perspectives and a national consultative meeting. more
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
...
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.
more
When setting national drinking-water quality regulations and standards, many countries consider the WHO Guidelines for drinking-water quality (GDWQ). To better understand the extent to which the GDWQ are used and reflected in these standards, this global review summarizes information from 104
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countries and territories on values specified in national drinking-water quality standards for aesthetic, chemical, microbiological and radiological parameters.
The information provided will support regulatory agencies and other key stakeholders to access and compare data when setting or revising national drinking-water quality regulations and standards. more
The information provided will support regulatory agencies and other key stakeholders to access and compare data when setting or revising national drinking-water quality regulations and standards. more
Impact of health systems strengthening on coverage of maternal health services in Rwanda, 2000–2010: a systematic review
Maurice Bucagu, Jean M. Kagubare, Paulin Basinga, Fidèle Ngabo, Barbara K Timmons & Angela C Lee
Reproductive Health Matters
(2012)
CC
From 2000 to 2010, Rwanda implemented comprehensive health sector reforms to strengthen the public health system, with the aim of reducing maternal and newborn deaths in line with Millennium Development Goal 5, among many other improvements in national health. Based on a systematic review of the lit
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erature, national policy documents and three Demographic & Health Surveys (2000, 2005 and 2010), this paper describes the reforms and the policies they were based on, and provides data on the extent of Rwanda’s progress in expanding the coverage of four key women’s health services. Progress took place in 2000–2005 and became more rapid after 2006, mostly in rural areas, when the national facility-based childbirth policy, performance-based financing, and community-based health insurance were scaled up. Between 2006 and 2010, the following increases in coverage took place as compared to 2000–2005, particularly in rural areas, where most poor women live: births with skilled attendance (77% increase vs. 26%), institutional delivery (146% increase vs. 8%), and contraceptive prevalence (351% increase vs. 150%). The primary factors in these improvements were increases in the health workforce and their skills, performance-based financing, community-based health insurance, and better leadership and governance. Further research is needed to determine the impact of these changes on health outcomes in women and children.
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West: Drada & Nagar Haveli, Daman & Diu, Goa, Gujarat, Maharashtra
South: Andhra Pradesh & Telangana, Karnataka, Kerala, Puducherry, Tamil Nadu
This technical document consists of epidemiological profiles (fact-sheets) for States and districts based on information available from multiple ... data sources including the HIV Sentinel Surveillance (HSS) and the Integrated Biological and Behavioural Surveillance (IBBS). Given the need for focussed prevention efforts in low/high prevalence and vulnerable States/districts, the information presented will be useful for policy makers, program planners at national/State/ district level, researchers, and academicians in identification of areas for priority attention and also to derive meaningful conclusions for programme planning, implementation, monitoring and scale-up. This document will be a quick reference for the HIV/AIDS situation in a State/district, risk and safe behaviour of the high risk groups, their level of knowledge about STIs and HIV/AIDS, experience of violence, HIV testing and ART awareness and exposure to HIV/AIDS prevention. more
South: Andhra Pradesh & Telangana, Karnataka, Kerala, Puducherry, Tamil Nadu
This technical document consists of epidemiological profiles (fact-sheets) for States and districts based on information available from multiple ... data sources including the HIV Sentinel Surveillance (HSS) and the Integrated Biological and Behavioural Surveillance (IBBS). Given the need for focussed prevention efforts in low/high prevalence and vulnerable States/districts, the information presented will be useful for policy makers, program planners at national/State/ district level, researchers, and academicians in identification of areas for priority attention and also to derive meaningful conclusions for programme planning, implementation, monitoring and scale-up. This document will be a quick reference for the HIV/AIDS situation in a State/district, risk and safe behaviour of the high risk groups, their level of knowledge about STIs and HIV/AIDS, experience of violence, HIV testing and ART awareness and exposure to HIV/AIDS prevention. more
Northern: Chandigarh, Delhi, Haryana, Himachal Pradesh, Jammu & Kashmir, Punjab, Rajasthan, and Uttarakhand
Central: Chhattisgarh, Madhya Pradesh and Uttar Pradesh
Eastern: Andaman & Nicobar, Bihar, Jharkhand, Odisha and West Bengal
This technical document consists of epidemiological ... profiles (fact-sheets) for States and districts based on information available from multiple data sources including the HIV Sentinel Surveillance (HSS) and the Integrated Biological and Behavioural Surveillance (IBBS). Given the need for focussed prevention efforts in low/high prevalence and vulnerable States/districts, the information presented will be useful for policy makers, program planners at national/State/ district level, researchers, and academicians in identification of areas for priority attention and also to derive meaningful conclusions for programme planning, implementation, monitoring and scale-up. This document will be a quick reference for the HIV/AIDS situation in a State/district, risk and safe behaviour of the high risk groups, their level of knowledge about STIs and HIV/AIDS, experience of violence, HIV testing and ART awareness and exposure to HIV/AIDS prevention. more
Central: Chhattisgarh, Madhya Pradesh and Uttar Pradesh
Eastern: Andaman & Nicobar, Bihar, Jharkhand, Odisha and West Bengal
This technical document consists of epidemiological ... profiles (fact-sheets) for States and districts based on information available from multiple data sources including the HIV Sentinel Surveillance (HSS) and the Integrated Biological and Behavioural Surveillance (IBBS). Given the need for focussed prevention efforts in low/high prevalence and vulnerable States/districts, the information presented will be useful for policy makers, program planners at national/State/ district level, researchers, and academicians in identification of areas for priority attention and also to derive meaningful conclusions for programme planning, implementation, monitoring and scale-up. This document will be a quick reference for the HIV/AIDS situation in a State/district, risk and safe behaviour of the high risk groups, their level of knowledge about STIs and HIV/AIDS, experience of violence, HIV testing and ART awareness and exposure to HIV/AIDS prevention. more
A comprehensive compilation is provided of the medicinal plants of the Southeast Asian country of Myanmar (formerly Burma). This contribution, containing 123 families, 367 genera, and 472 species, was compiled from earlier treatments, monographs, books, and pamphlets, with some medicinal uses and pr
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eparations translated from Burmese to English. The entry for each species includes the Latin binomial, author(s), common Myanmar and English names, range, medicinal uses and preparations, and additional notes. Of the 472 species, 63 or 13% of them have been assessed for conservation status and are listed in the IUCN Red List of Threatened Species (IUCN 2017). Two species are listed as Extinct in the Wild, four as Threatened (two Endangered, two Vulnerable), two as Near Threatened, 48 Least Concerned, and seven Data Deficient. Botanic gardens worldwide hold 444 species (94%) within their living collections, while 28 species (6%) are not found any botanic garden. Preserving the traditional knowledge of Myanmar healers contributes to Target 13 of the Global Strategy for Plant Conservation
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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
No publication year indicated
In the context of the floods in August 2015 in Myanmar, the Disaster Risk Reduction Working Group (DRR WG) was requested to provide clear recommendations to the DMH (Department of Hydrology and Meteorology)to strengthen preparedness activities, in particular for t ... he next Monsoon season. UNDP as the lead of the DRR WG’s Policy Technical Task force carried out a desk review on EW (Early Warning) from all the DRR WG’s members at national and community levels. The document synthesizes the received information related to baseline surveys, lessons learned from the 2015’s floods, studies, project documents and initial recommendations on EW. Those serve as a base to this analysis and its overall recommendations. more
In the context of the floods in August 2015 in Myanmar, the Disaster Risk Reduction Working Group (DRR WG) was requested to provide clear recommendations to the DMH (Department of Hydrology and Meteorology)to strengthen preparedness activities, in particular for t ... he next Monsoon season. UNDP as the lead of the DRR WG’s Policy Technical Task force carried out a desk review on EW (Early Warning) from all the DRR WG’s members at national and community levels. The document synthesizes the received information related to baseline surveys, lessons learned from the 2015’s floods, studies, project documents and initial recommendations on EW. Those serve as a base to this analysis and its overall recommendations. more
Submitted to the US Agency for International Development by the Systems for Improved Access to Pharmaceuticals and Services (SIAPS) Program. Arlington, VA: Management Sciences for Health. Submitted to the United Nations Children’s Fund by JSI, Arlington, VA: JSI Research & Training Institute, Inc.
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This guide will assist program managers, service providers, and technical experts when conducting a quantification of commodity needs for the 13 reproductive, maternal, newborn, and child health commodities prioritized by the UN Commission on Life-Saving Commodities for Women and Children. This quantification supplement should be used with the main guide—Quantification of Health Commodities: A Guide to Forecasting and Supply Planning for Procurement. * This supplement describes the steps in forecasting consumption of these supplies when consumption and service data are not available; after which, to complete the quantification, the users should refer to the main quantification guide for the supply planning step.
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The 2012 NDRMP lays out the Disaster Risk Management (DRM) architecture of the country and provides guidance for DRM intervention at all levels. However, implementation has been slow and resource challenges exist throughout the government.
The PNG government’s policy and institutional framework ... for DRM still faces numerous obstacles. The main challenges in moving towards a more proactive and systematic approach to manage risks and build resilience include 1.) the limited coordination between DRM and Climate Change Adaptation agencies; 2.) the slow migration from emphasis on response to risk reduction and management; 3.) the limited institutional capacity for planning and design of risk informed investments; and 4.) the lack of available historic natural hazard data, which hinders the assessment of risks. more
The PNG government’s policy and institutional framework ... for DRM still faces numerous obstacles. The main challenges in moving towards a more proactive and systematic approach to manage risks and build resilience include 1.) the limited coordination between DRM and Climate Change Adaptation agencies; 2.) the slow migration from emphasis on response to risk reduction and management; 3.) the limited institutional capacity for planning and design of risk informed investments; and 4.) the lack of available historic natural hazard data, which hinders the assessment of risks. more
Despite improvements in recent years, the prevalence of undernutrition among women and children in Myanmar remains unacceptably high. One in three children are stunted and about 8% are acutely malnourished. Micronutrient deficiencies are common among infants, young children and pregnant women. In fa
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ct, more than 80% of children 6 to 23 months of age and 70% of pregnant women are anemic. To better understand the determinants of undernutrition and the linkages between food security, livelihoods and nutrition in Myanmar as a whole as well as in specific geographic areas where programs supported by the Livelihoods, Food Security Trust Fund (LIFT) are being implemented, the LEARN project has reviewed food and nutrition security data from the past five years and synthesized relevant findings into this report.
Following the Introduction, Section 2 presents national level data on the food and nutrition security situation in Myanmar in the past five years. Sections 3, 4 and 5 present data on food and nutrition security from the various agro-ecological zones that are of interest to LIFT, namely the Coastal/Delta, Dry, and Uplands. more
Following the Introduction, Section 2 presents national level data on the food and nutrition security situation in Myanmar in the past five years. Sections 3, 4 and 5 present data on food and nutrition security from the various agro-ecological zones that are of interest to LIFT, namely the Coastal/Delta, Dry, and Uplands. more
The International Water Management Institute (IWMI) was commissioned to undertake a rapid review of access to and management of water resources in the Dry Zone, to assist LIFT and other potential donors and investors to identify the key issues and the priority actions for water management.
The ... study had three main components:
• A water resources assessment (surface and ground water) of availability, current use, and patterns, trends and variability at different spatial and temporal scales.
• Community survey to evaluate issues of water availability, access and management for different livelihood types in 24 local communities, including evaluation of institutional arrangements in relation to farming strategies and water management practices
• Review and analysis of existing program investments in water in the Dry Zone
Findings from the study are available in three reports (for details, see last page). more
The ... study had three main components:
• A water resources assessment (surface and ground water) of availability, current use, and patterns, trends and variability at different spatial and temporal scales.
• Community survey to evaluate issues of water availability, access and management for different livelihood types in 24 local communities, including evaluation of institutional arrangements in relation to farming strategies and water management practices
• Review and analysis of existing program investments in water in the Dry Zone
Findings from the study are available in three reports (for details, see last page). more
The Sphere Handbook. Humanitarian Charter and Minimum Standards in Humanitarian Response. New Edition
recommended
Humanitarian Charter and Minimum Standards in Humanitarian Response.
The 2018 Sphere Handbook builds on the latest developments and learning in the humanitarian sector. Among the improvements of the new edition, readers will find a stronger focus on the role of local authorities and communities as
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actors of their own recovery. Guidance on context analysis to apply the standards has also been strengthened. New standards have also been developed, informed by recent practice and learning, such as WASH and healthcare settings in disease outbreaks, security of tenure in shelter and settlement, and palliative care in health. Different ways to deliver or enable assistance, including cash-based assistance, are also integrated into the Handbook.
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