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Publication Years
1
4432
8461
1096
64
3
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Category
5845
809
729
688
638
246
134
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Toolboxes
1349
1056
704
687
523
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424
404
381
371
361
297
260
238
232
201
183
182
181
149
103
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12
2
Background:Neonatal mortality accounts for 43% of global under-five deaths and is decreasing more slowly than maternal or child mortality. Donor funding has increased for maternal, newborn, and child health (MNCH), but no analysis to date has disagg
...
regated aid for newborns. We evaluated if and how aid flows for newborn care can be tracked, examined changes in the last decade, and considered methodological implications for tracking funding for specific population groups or diseases. MethodsandFindings:We critically reviewed and categorised previous analyses of aid to specific populations, diseases, or types of activities. We then developed and refined key terms related to newborn survival in seven languages and searched titles and descriptions of donor disbursement records in the Organisation for Economic Co-operation and Development’s Creditor Reporting System database, 2002–2010. We compared results with the Countdown to 2015 database of aid for MNCH (2003–2008) and the search strategy used by the Institute for Health Metrics and Evaluation. Prior to 2005, key terms related to newborns were rare in disbursement records but their frequency increased markedly thereafter. Only two mentions were found of ‘‘stillbirth’’ and only nine references were found to ‘‘fetus’’ in any spelling variant or language
more
Food Security in a World of Natural Resource Scarcity. The Role of Agricultural Technologies
Mark W. Rosegrant | Jawoo Koo | Nicola Cenacchi; et al.
International Food Policy Research Institute
(2014)
This book is aimed at policymakers in ministries of agriculture and national agricultural research institutes, as well as multilateral development banks and the private sector and provides guidance on various technology strategies and which to pursu
...
e as competition grows for land, water, and energy across productive sectors and even increasingly across borders. Climate change, population, and income growth will drive food demand in the coming decades. Food prices are also expected to significantly increase between 2005 and 2050 and the number of people at risk of hunger in the developing world would grow from 881 million in 2005 to more than a billion people by 2050. This book endeavors to respond to the challenge of growing food sustainably without degrading our natural resource bas
more
This guide is a resource for physicians and other health care professionals who provide care and treatment to patients with drug-resistant tuberculosis.
Responses of the Catholic Church to HIV and AIDS in Africa: Lessons learned. Summary
Fleischer, K. et al.
German Bishops' Conference Research Group on International Church Affairs
(2015)
CC
An international field study by African and German Theologicans and health workers
The Handbook is primarily addressed to child protection coordination teams, which may include coordinators, co-leads and information managers, the guidance is equally valid for all members of the child protection coordination group, including national
...
and international nongovernmental organizations (NGOs), government representatives and other members, who seek to achieve an effective and coordinated response
more
This guidance highlights tangible, evidence-based priority actions in health and WASH programs to achieve the Global Targets for nutrition. Throughout the guidance the importance of cross-sectoral collaboration within and outside the Red Cross Red C
...
rescent Movement to holistically address nutrition is emphasised.
more
Guide to community engagement in WASH
recommended
A practioner's guide, based on lessons from Ebola.
This guide is a compilation of best practices and key lessons learned through Oxfam’s experience of community engagement during the 2014–15 Ebola response in Sierra Leone and Liberia. It aims to inform public
...
health practitioners and programme teams about the design and implementation of community-centred approaches
more
Emergence of antimicrobial resistance is a result of the use, overuse and misuse of antibiotics both in humans and animals. In Ethiopia, there are indications on the misuse of antibiotics by health care providers’, unskilled practitioners, and dru
...
g consumers. These coupled with rapid spread of resistant bacteria and inadequate surveillance contributed to the problem. Bacterial infections are the major causes of death in Ethiopia. Studies on antibacterial resistance and on bacterial infections have shown that emerging antibacterial resistance threatens the management of bacterial infections; however, the prevention and containment has received far too little attention.
more
Disability Inclusion | Published by Child Development & Rights and Sustainable Health on behalf of World Vision International.
DHS Methodological Report No. 20
This study used Service Provision Assessment (SPA) and Demographic and Health Survey (DHS) data from Haiti, Malawi, and Tanzania to compare traditionally used additive methods with a data reduction method— ... principal component analysis (PCA).
We scored the quality of health facilities with three approaches (simple additive, weighted additive, and PCA) for two constructs: quality of services, with only facilities-level data, and quality of care, which incorporates observation and client data. We ranked facilities as high, medium, or low quality based on their scores. Our results indicated that the rankings change with the scoring methodology. There was more consistency in the rankings of facilities by the simple additive and PCA methods than the weighted additive and PCA-based rankings. This may be due to the low factor loadings and little variance explained by the first component in the PCA. We aggregated facility scores to their respective DHS clusters (Haiti, Malawi) or regions (Tanzania) and geographically linked them to women interviewed in DHS surveys to test associations between the use of family planning services and the quality environment, as measured with each index. more
This study used Service Provision Assessment (SPA) and Demographic and Health Survey (DHS) data from Haiti, Malawi, and Tanzania to compare traditionally used additive methods with a data reduction method— ... principal component analysis (PCA).
We scored the quality of health facilities with three approaches (simple additive, weighted additive, and PCA) for two constructs: quality of services, with only facilities-level data, and quality of care, which incorporates observation and client data. We ranked facilities as high, medium, or low quality based on their scores. Our results indicated that the rankings change with the scoring methodology. There was more consistency in the rankings of facilities by the simple additive and PCA methods than the weighted additive and PCA-based rankings. This may be due to the low factor loadings and little variance explained by the first component in the PCA. We aggregated facility scores to their respective DHS clusters (Haiti, Malawi) or regions (Tanzania) and geographically linked them to women interviewed in DHS surveys to test associations between the use of family planning services and the quality environment, as measured with each index. more
The report examines financing in the battle against malaria, focusing on the role of foreign aid. It analyzes whether or not a disease such as malaria can be controlled or eliminated in Africa without health aid. It also presents a theoretical model
...
of the economics of malaria and shows how health aid can help avoid the “disease trap.” While calling for increased funding from international sources to fight malaria, it also recommends that African countries step up their own efforts, including on domestic resource mobilization. In 2016, governments of endemic countries contributed 31% of the estimated total of US $ 2.7 billion.
more
A policy brief on child marriage in Zambia. Child marriage is a human rights violation, and endangers young people' personal development and well-being; thus reducing opportunities to realize their full potential. Protecting girls from child marriage is a
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national priority and key towards sustainable development.
more
This toolkit for integrated vector management (IVM) is designed to help national and regional programme managers coordinate across sectors to design and run large IVM programmes.
The toolkit provides the technical detail required to plan, implement
...
, monitor and evaluate an IVM approach. IVM can be used when the aim is to control or eliminate vector-borne diseases and can also contribute to insecticide resistance management. This toolkit provides information on where vector-borne diseases are endemic and what interventions should be used, presenting case studies on IVM as well as relevant guidance documents for reference.
The diseases that are the focus of this toolkit are malaria, lymphatic filariasis, dengue, leishmaniasis, onchocerciasis, human African trypanosomiasis and schistosomiasis. It also includes information on other viral diseases (Rift Valley fever, West Nile fever, Chikungunya, yellow fever) and trachoma. If other vector-borne diseases appear in a country or area, vector control with an IVM approach should be adopted, as per national priorities. more
The diseases that are the focus of this toolkit are malaria, lymphatic filariasis, dengue, leishmaniasis, onchocerciasis, human African trypanosomiasis and schistosomiasis. It also includes information on other viral diseases (Rift Valley fever, West Nile fever, Chikungunya, yellow fever) and trachoma. If other vector-borne diseases appear in a country or area, vector control with an IVM approach should be adopted, as per national priorities. more
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 available 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 available 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
Following the declaration of the 9th Ebola Disease Outbreak (EVD) on 8 May 2018 by the Democratic Republic of Congo (DRC) Ministry of Health, the WHO has raised the alert for neighbouring countries of the Democratic Republic of the Congo (DRC) which
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share extensive borders, hosting DRC refugees and are used as corridors for DRC population movement. On 1 August 2018, just one week after the declaration of the end of the Ebola outbreak in Equator province, the 10th Ebola epidemic of the DRC was declared in the provinces of North Kivu and Ituri, which are among the most populated provinces in the DRC that also share borders with Uganda and Rwanda.
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Disability Data Collection in Community-based Rehabilitation
Sunil Deepak, Franesca Ortali, Geraldine Mason Halls, Tulgamaa Damdinsuren, Enhbuyant Lhagvajav, Steven Msowoya, Malek Qutteina, Jayanth Kumar
Disability, CBR & Inclusive Development Journal (DCIDJ)
(2016)
CC
Today there are Community-based Rehabilitation (CBR) programmes in a large number of countries. In many countries, the CBR approach is a part of the national rehabilitation services. However, there is a lack of reliable data about persons with disab
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ilities who benefit from CBR and the kind of benefits they receive. This article reviews the disability data collection systems and presents some case studies to understand the influence of operational factors on data collection in the CBR programmes. The review shows that most CBR programmes use a variable number of broad functional categories to collect information about persons with disabilities, combined occasionally with more specific diagnostic categories. This categorisation is influenced by local contexts and operational factors, including the limitations of human and material resources available for its implementation, making it difficult to have comparable CBR data. Therefore, any strategies to strengthen the data collection in CBR programmes must take these operational factors into account.
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This manual aims to provide an overview of this subject to health care professionals, paramedics and other voluntary services involved in health care promotion
Prise en charge de la tuberculose en milieu carceral Senegalais: Étas des lieux et recommendations - Rapport final
CollSeck,A.M.; S. Kaba
Ministère de la Santé et de l’Action Sociale et Ministère de la Justice
(2014)
C2
La lutte contre la tuberculose est une des priorités du ministère de la santé. C’est ainsi que le Plan Stratégique National de lutte contre la Tuberculose 2013-2017 du Sénégal a inscrit dans son programme d’actions la préoccupation de mie
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ux d’améliorer la prise en charge des personnes vulnérables, dont les prisonniers. L’état de santé est un indicateur clef du bien être de la société, et les prisons servent de miroir. Une bonne compréhension des conditions sanitaires des détenus pourrait contribuer à améliorer le système de santé publique d’un pays. L’environnement carcéral est bien reconnu comme un lieu où les conditions de vie sont propices à la concentration de l’ensemble des maladies de la société, en premier lieu, les morbidités infectieuses.
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Antibiotic stewardship refers to coordinated efforts and activities that seek to measure and improve use of antibiotics. Implementation of ASPs has demonstrated positive public health and clinical impacts including reducing costs, lengths of hospita
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l stays, and the burden of antibiotic resistance while maintaining or improving patient outcomes. The U.S. Centers for Disease Control and Prevention (CDC) released the Core Elements of Hospital Antibiotic Stewardship Programs in 2014, which outlines essential components for ASPs in hospitals and provides practical guidance for implementing a robust ASPin an acute care facility. Variations to the Core Elements have been developed to deal with the particular challenges in small, rural or critical access hospitals in the United States and in outpatient facilities and nursing homes.
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The purpose of this work is to estimate potential COVID-19 case burdens in each African nation considering various social distancing interventions. Given current trends in case burden, the model estimates the potential resource needs that would be needed under different scenarios. The model is for p
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lanning purposes and is based on current understanding and the most up-to-date assumptions. Results reported here are not forecasts but scenarios that may unfold given the assumptions about social-distancing and population health.
You can download scenarios for North Africa; Middle Africa; West Africa, East Africa and South Africa
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