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Publication Years
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Toolboxes
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7
1
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
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
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
...
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
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 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
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
These standard operating procedures are intended to be used when a Member State wishes to request validation of national elimination of trachoma as a public health problem following implementation of the SAFE strategy,1 which comprises: surgery for trachomatous trichiasis, antibiotics to clear infec
...
tion,
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
Every day, health-care providers are being attacked, patients discriminated against, ambulances held up at checkpoints, hospitals bombed, medical supplies looted and entire communities cut off from critical services around the world.
Between January 2012 and December 2014, the ICRC documented n ... early 2,400 violent incidents against health care in 11 countries experiencing armed conflict or other violence. In over 90% of cases, local health-care providers were affected, seriously threatening the effectiveness and sustainability of national health-care systems. These numbers might well just be the tip of the iceberg more
Between January 2012 and December 2014, the ICRC documented n ... early 2,400 violent incidents against health care in 11 countries experiencing armed conflict or other violence. In over 90% of cases, local health-care providers were affected, seriously threatening the effectiveness and sustainability of national health-care systems. These numbers might well just be the tip of the iceberg more
Handbook for HIV/Aids Training
The guide is designed to help disaster managers in national Governments gain basic knowledge of how to use international tools and services. It aims to support the growing disaster response and disaster response preparedness capabilities that exist at national level across Asia and the Pacific.
... The guide is for national disaster management organizations (NDMOs) and line ministries involved in disaster response and disaster response preparedness. It is also a reference document for representatives of intergovernmental organizations, civilsociety actors and disaster-affected people.
The guide concentrates on key tools and services that can be helpful to disaster managers during the response and response preparedness phases of the disaster programme cycle. more
... The guide is for national disaster management organizations (NDMOs) and line ministries involved in disaster response and disaster response preparedness. It is also a reference document for representatives of intergovernmental organizations, civilsociety actors and disaster-affected people.
The guide concentrates on key tools and services that can be helpful to disaster managers during the response and response preparedness phases of the disaster programme cycle. more
January - December 2017
Program Implementation Manual (PIM)
The Save One Million Lives Program for Results (SOML PforR) is a Federal Government of Nigeria maternal and child health program, supported by the World Bank, which provides incentives based on achievement of results (health outcomes) and helps to drive insti ... tutional processes needed to achieve these results. This Program Implementation Manual provides a description of the program and operational guidelines for effective implementation. The Manual contains guidelines and procedures relating to disbursements and fund flows, institutional arrangements, financial management as well as monitoring and evaluation, while providing clear definition of the roles and responsibilities of all stakeholders. more
The Save One Million Lives Program for Results (SOML PforR) is a Federal Government of Nigeria maternal and child health program, supported by the World Bank, which provides incentives based on achievement of results (health outcomes) and helps to drive insti ... tutional processes needed to achieve these results. This Program Implementation Manual provides a description of the program and operational guidelines for effective implementation. The Manual contains guidelines and procedures relating to disbursements and fund flows, institutional arrangements, financial management as well as monitoring and evaluation, while providing clear definition of the roles and responsibilities of all stakeholders. more
The purpose of this strategy is to guide the planning, management and development of human resources for health in Rwanda for the period 2011 - 2016. The overall aim of the plan is to increase the number of appropriately skilled, motivated and equitably distributed health service providers for Rwand
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a.
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Pathways to progress: a multi-level approach to strengthening health systems
Samuels, F., Amaya, A.B., Rodríguez Pose, R. and Balabanova, D.
Overseas Development Institute
(2014)
C1
Findings on maternal and child health in Nepal, Mozambique and
Rwanda, and neglected tropical diseases in Cambodia and Sierra Leone | This report synthesises findings from five country case studies from the health dimension of this project, which focus on maternal and child health (MCH) (Mozambique
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,Nepal, Rwanda) and neglected tropical diseases (NTDs)(Cambodia, Sierra Leone). MCH was selected given its centrality in two of the Millennium Development Goals (MDGs) and its ability to act as a proxy for strengthened health systems. NTDs, while until recently relatively neglected in global policy debates, are now attracting more interest, not least because they are viewed as diseases of the poor whose treatment could positively impact on most of the other MDGs.
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Paying for performance (P4P) provides financial incentives for providers to increase the use and quality of care. P4P can affect health care by providing incentives for providers to put more effort into specific activities, and by increasing the amount of resources available to finance the delivery
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of services. This paper evaluates the impact of P4P on the use and quality of prenatal, institutional delivery, and child preventive care using data produced from a prospective quasi-experimental evaluation nested into the national rollout of P4P in Rwanda. Treatment facilities were enrolled in the P4P scheme in 2006 and comparison facilities were enrolled two years later. The incentive effect is isolated from the resource effect by increasing comparison facilities’ input-based budgets by the average P4P payments to the treatment facilities. The data were collected from 166 facilities and a random sample of 2158 households. P4P had a large and significant positive impact on institutional deliveries and preventive care visits by young children, and improved quality of prenatal care. The authors find no effect on the number of prenatal care visits or on immunization rates. P4P had the greatest effect on those services that had the highest payment rates and needed the lowest provider effort. P4P financial performance incentives can improve both the use of and the quality of health services. Because the analysis isolates the incentive effect from the resource effect in P4P, the results indicate that an equal amount of financial resources without the incentives would not have achieved the same gain in outcomes.
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