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Publication Years
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2960
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Category
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Toolboxes
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3
In 2014, the Ministry of Health (MOH) in Malawi conducted a nationwide assessment of emergency obstetric and newborn care (EmONC) services. This cross-sectional facility-based survey used 10 data collection modules.
...
Data collection began on 23rd September 2014 and concluded on 17th October 2014, in all 28 districts. Facilities in both the public and private sector (for-profit and not-for-profit) were included. Since the focus of the assessment was obstetric and newborn care, health facilities that did not offer maternal and newborn health (MNH) services were not selected. In all districts, a census of all hospitals and a 60 percent random sample of health centres that ought to have performed deliveries in the previous year yielded a total of 365 facilities: 87 hospitals and 278 health centres. All these facilities were visited during the assessment. During analysis, weighting procedures were applied to extrapolate results to the district and national level, representing all 87 hospitals and 464 health centres. Such weighting was necessary as a stratified random sample of health centres was taken and weighting applied to all indicators and presentations that have health facility as a unit of measurement. Case reviews and provider’s interviews, on the other hand, are not weighted as their sampling strategy is based on convenience.
more
Nepal is on target to meet the Millennium Development Goals for maternal and child health despite high levels of poverty, poor infrastructure, difficult terrain and recent conflict. Each year, nearly 35000 Nepali children die before their fifth birthday, with almost two-thirds of these deaths occurr
...
ing in the first month of life, the neonatal period. As part of a multi-country analysis, we examined changes for newborn survival between 2000 and 2010 in terms of mortality, coverage and health system indicators as well as national and donor funding.
more
The Newborn Situational Analysis reports of 2009 and 2011, as well as the “Bottleneck analysis on neonatal health” of 2013, culminated in the Nigeria launch of “Call to action on Newborn health” at the first National Newborn Health Conference in 2014. This call to action provided the framewo
...
rk for the development of the Nigeria Every Newborn Action
Plan (NiENAP). The NiENAP lays out a vision to end preventable stillbirths and newborn deaths by accelerating progress and scaling up evidence- based high-impact and cost effective interventions. The plan is guided by the principles of country-leadership, integration, accountability, equity, human rights, innovation and research. This blue print outlines our commitment as government and stakeholders to repositioning newborn health as we implement approaches that impact on the lives of newborns for improved health outcome.
more
It is the policy of the GoR to ensure that children’s rights are met through the provision of basic needs and services for all children in the country, and protect them from abuse and exploitation. Children are defined as persons below the age of
...
18 years and the ICRP covers children from the time before their birth until they complete the age of 18 years. The Integrated Child Rights Policy of Rwanda is based on seven key themes: Identity and Nationality; Family and Alternative Care; Survival, Health and Standards of Living; Education; Protection; Justice; and Child Participation.
more
The World Health Organization (WHO) endorses the use of population-based prevalence surveys for estimating the prevalence of trachoma. In general, the prevalence of TF in children aged 1–9 years and the prevalence of TT in adults aged ≥ 15 years are measured at the same time in any district bein
...
g surveyed. This was the approach of the Global Trachoma Mapping Project, which undertook baseline surveys in > 1500 districts worldwide in order to provide the data required to start interventions where needed.
The survey design recommended by WHO is a two-stage cluster random sample survey, which uses probability proportional to size sampling to select 20–30 villages, and random, systematic or quasi-random sampling to select 25–30 households in each of those villages. In most surveys, everyone aged ≥ 1 year living in selected households is examined. more
The survey design recommended by WHO is a two-stage cluster random sample survey, which uses probability proportional to size sampling to select 20–30 villages, and random, systematic or quasi-random sampling to select 25–30 households in each of those villages. In most surveys, everyone aged ≥ 1 year living in selected households is examined. more
A concept (leaflet)
This document outlines the concept of a stimulus package for rabies elimination. The aim of a stimulus package is to catalyse rabies control by starting community projects, building local capacity and using success to generate momentum for growth. Governments could apply for ... a package, which would provide technical and material support to run small, successful rabies control projects. These in turn build evidence for the feasibility of larger scale elimination, generate enthusiasm foaction and promote investment for sustainability and up scaling. Data reporting in return for the packages would allow the documentation of successes and lessons learnt to benefit global elimination efforts more broadly. more
This document outlines the concept of a stimulus package for rabies elimination. The aim of a stimulus package is to catalyse rabies control by starting community projects, building local capacity and using success to generate momentum for growth. Governments could apply for ... a package, which would provide technical and material support to run small, successful rabies control projects. These in turn build evidence for the feasibility of larger scale elimination, generate enthusiasm foaction and promote investment for sustainability and up scaling. Data reporting in return for the packages would allow the documentation of successes and lessons learnt to benefit global elimination efforts more broadly. 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
...
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.
more
Cross-sectional Survey to Assess Prevalence of Disability and Access to Services in Albay Province, The Philippines
Hodge, M., Bolinas, A., Jaucian, E., et al.
Disability, CBR & Inclusive Development Journal (DCIDJ)
(2017)
CC
In this article a cluster randomized cross-sectional survey, conducted in Albay Province in the Philippines in April 2016, was used to assess the prevalence of disability and access to support services. This was done with the purpose of generating representative
...
data for local programme development. A cross-sectional survey was carried out with the WG/UNICEF methodology to examine the prevalence of disabilities, and the accessibility and coverage of relevant services. The aim is for this information to be used for public policy formulation at all levels, as well as to improve communication and advocacy on disabilities.
more
TRAINING MANUAL on DISABILITY STATISTICS
World Health Organization United Nations Economic and Social Commission for Asia and the Pacific
United Nations
(2008)
C2
WHO/ESCAP Training Manual on Disability Statistics | This training manual intends to enhance the understanding of the ICF-based approach to disability measurement. It provides an overview of the ICF framework as well as guidelines on how to operationalize the underlying concepts of functioning and
...
disability into data collection, dissemination and analysis.
more
This guide includes information relevant for tuberculosis (TB) program and laboratory managers, as well as Ministry of Health officials across disease programs interested in establishing integrated solutions for specimen referral. Though TB-focused in name, it offers integration-oriented assessment,
...
design, and monitoring guidance related to improving coordination and efficiency, and is relevant for other programs as well. Country case studies include viral load and early infant diagnosis (EID) in Uganda and EID in Ethiopia.
more
Journal of the International AIDS Society 2017, 20(Suppl 4):21644
National AIDS Programme in Myanmar has made significant progress in scaling up antiretroviral treatment (ART) services and recognizes the importance of differentiated care for people living with HIV. Indeed, long centred around t ... he hospital and reliant on physicians, the country's HIV response is undergoing a process of successful decentralization with HIV care increasingly being integrated into other health services as part of a systematic effort to expand access to HIV treatment. This study describes implementation of differentiated care in Médecins Sans Frontières (MSF)‐supported programmes and reports its outcomes.
https://doi.org/10.7448/IAS.20.5.21644 more
National AIDS Programme in Myanmar has made significant progress in scaling up antiretroviral treatment (ART) services and recognizes the importance of differentiated care for people living with HIV. Indeed, long centred around t ... he hospital and reliant on physicians, the country's HIV response is undergoing a process of successful decentralization with HIV care increasingly being integrated into other health services as part of a systematic effort to expand access to HIV treatment. This study describes implementation of differentiated care in Médecins Sans Frontières (MSF)‐supported programmes and reports its outcomes.
https://doi.org/10.7448/IAS.20.5.21644 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 o ... f the 272 (69.9%) participants who conceded that they 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 o ... f the 272 (69.9%) participants who conceded that they 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
Medicinal plants occupied an important position in the socio-cultural, spiritual and medicinal arena of rural people of India. T
The present report is based on contribution made by members of the task force and many other experts on medicinal plants. We hope the report on implementation will promot
...
e sustainable and equitable development of medicinal plants sector provide "Health for All", boost exports, and will improve livelihood of the people and green the country for the present and the
generation to come.
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
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 act ... ivities 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 act ... ivities 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
Rohingya Refugee Response Gender Analysis: Recognizing and responding to gender inequalities
Toma, Iulia; Chowdhury, Mita; Laiju, Mushfika; Gora, Nina; Padamada, Nicola
Oxfam, Action Against Hunger, Save the Children
(2018)
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This gender analysis was conducted to understand the different risks and vulnerabilities but also opportunities and skills for Rohingya and host community women, men, boys and girls. Data collection was conducted over three weeks from 8 April to 29
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April 2018. The work aimed to identify the different needs, concerns, risks and vulnerabilities of women, girls, boys and men in both Rohingya refugee communities and host communities in the Cox’s Bazar district of Bangladesh. The analysis shows various gaps in the humanitarian response for both communities, especially in terms of accountability, communication with affected communities and disaster preparedness, but also in equitable access to services, in particular for women and girls, and especially for the Rohingya community. The key findings are presented below, along with recommendations for action.
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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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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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This guide provides national stakeholders and advocates with information and guidance to update the national essential medicines list to include a new commodity, a new indication, or a new formulation based on the available evidence and based on country
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need and disease burden. While the actors, timeline, and process may vary from country to country, this guide presents the broad steps involved in revising an EML for any health commodity. Additional resources and a glossary are included to provide supplemental information and to clarify key terms.
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The Indonesian government has reformed its laws, policies, and institutions to better manage disaster risk since the significant 2004 Indian Ocean Tsunami. The Government of Indonesia now has contingency plans for every disaster-prone city which identifies its vulnerabilities, outlines the relief re
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sponse, and builds overall preparedness. In 2007, the government introduced a disaster management bill that incorporated disaster management prevention into disaster management response. In 2008, Indonesia created the National Disaster Management Agency (Badan Nasional Penanggulangan Bencana, BNPB). The new shift led to the strengthening of the country’s disaster management agency, and the addition of district branches and representatives. Despite the progress made, more work is needed at the local level as well as integration of disaster risk reduction in government departments.11 Under Indonesia’s 2007 Disaster Management law, provincial and district administrations are mandated to head disaster management during a crisis.
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