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The objective of the evaluation is to understand whether the CHW program has achieved its intended objectives, thus contributing to the overarching objectives defined in the HSSP III of improving the health status of the population by “Ensuring universal accessibility of quality health services fo
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r all Rwandans”.
This evaluation has focused on CHWs, who are selected, trained and deployed by the MoH to deliver a defined set of tasks at community level. CHWs are the central element of the Community Health Policy and of the community health strategy plan (CHSP) of the MoH.
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Estimating the size of key affected populations (KAP) provides important data for planning and implementing an effective response to the HIV epidemic. In the Philippines, these KAP include males who have sex with males (MSM), female sex workers (FSW), and injecting drug users (IDU). Given the diffic
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ulty in reaching these populations, as well as their high mobility, the process consequently entailed a specific methodology to directly estimate the size of KAP.
The national estimate of MSM was 531,500 or 2.2% (1.8%-3.2%) of males aged 15-49. Within this MSM estimate, figures for transgender women (TGW) and male transactional sex workers (MSW) were determined. The national estimate for TGW was 122,800 or about 0.50% (0.40%-0.75%) of males aged 15-49, and 23% of the MSM population. Meanwhile, MSW comprised 0.35% (0.29%-0.53%) of the male population aged 15-49 and 16% of the MSM population, giving a best estimate of 86,600.
The estimate of combined RFSW and FFSW was 66,100 or 0.28% (0.19%-0.40%) of females aged 15-49. Meanwhile, there are approximately 10,000 to 21,700 IDU or 0.04%-0.09% of males aged 15-49. more
The national estimate of MSM was 531,500 or 2.2% (1.8%-3.2%) of males aged 15-49. Within this MSM estimate, figures for transgender women (TGW) and male transactional sex workers (MSW) were determined. The national estimate for TGW was 122,800 or about 0.50% (0.40%-0.75%) of males aged 15-49, and 23% of the MSM population. Meanwhile, MSW comprised 0.35% (0.29%-0.53%) of the male population aged 15-49 and 16% of the MSM population, giving a best estimate of 86,600.
The estimate of combined RFSW and FFSW was 66,100 or 0.28% (0.19%-0.40%) of females aged 15-49. Meanwhile, there are approximately 10,000 to 21,700 IDU or 0.04%-0.09% of males aged 15-49. more
Punjab Province Report: Nutrition Political Economy, Pakistan
Zaidi, Shehla; Bhutta, Zulfiqar et al.
Institute of Development Studies, Aga Khan University
(2015)
C1
In this report a nutrition governance framework was applied to research and analyse the provincial experience with nutrition policy in Pakistan, looking both at chronic and acute malnutrition. Twenty-one in-depth interviews with key stakeholders were also conducted along with a review of published a
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nd grey literature. Findings were validated and supplemented by consultative provincial roundtable meetings. Punjab’s nutritional puzzle is that it has high levels of chronic malnutrition and micro-nutrient deficiencies despite a surplus production of food and a low poverty level. Under-nutrition is mainly linked to insufficient attention to preventive health strategies and to a lack of connection between relevant sectors such as Education, Health, Poverty, Safe Water and Sanitation, and Food. Strategic opportunities are recommended which include cross-party political support and ownership for nutrition, with steering by executive leadership; multi-sectoral action and functional integration of various departments and programmes with the creation of a central convening structure for effective cross-sectoral coordination; broadening of nutritional activities beyond salt iodization and vitamin A coverage; central co-ordination of monitoring and evaluation and effective partnerships between the state and non-state sector around data production, awareness, advocacy, and monitoring.
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A two-week mission was conducted by WASH and quality UHC technical experts from WHO headquarters and supported by the WHO Ethiopia Country Office (WASH and health systems teams) in July 2016, to understand how change in WASH services and quality improvements have been implemented in Ethiopia at
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national, sub-national and facility levels; to document existing activities; and through the “joint lens” of quality UHC and WASH, to identify and seek to address key bottlenecks in specific areas including leadership, policy/financing, monitoring and evaluation, evidence application and facility improvements. Ethiopia has implemented a number of innovative and successful interventions.
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Together we can Prevent and Control the World's Most Common Diseases
Objectives of the training manual
(1) To improve knowledge of NCD trends, burdens, as well as systems for management and monitoring of NCD services for Township Medical Officers (TMOs), Township Public Health Officers (TP ... HOs), Medical Officers (MOs). The manual can also be used for training of Basic Health staff (BHS), TMOs, TPHOs and MOs,
(2) To equip trainers to train BHS to conduct PEN protocols at the primary care level health centers,
(3) To equip trainers to train in processes to conduct PEN scaling up monitoring , supervision and evaluation activities. more
Objectives of the training manual
(1) To improve knowledge of NCD trends, burdens, as well as systems for management and monitoring of NCD services for Township Medical Officers (TMOs), Township Public Health Officers (TP ... HOs), Medical Officers (MOs). The manual can also be used for training of Basic Health staff (BHS), TMOs, TPHOs and MOs,
(2) To equip trainers to train BHS to conduct PEN protocols at the primary care level health centers,
(3) To equip trainers to train in processes to conduct PEN scaling up monitoring , supervision and evaluation activities. more
In April and May 2015, Nepal was hit by two major earthquakes killing around 9,000 people and leaving many thousands more injured and homeless.
To optimize the speed and volume of critical humanitarian assistance, the HCT has developed this Plan to:
1. Reach a common understanding of earth ... quake risk to ensure early action is taken when required.
2. Establish a minimum level of earthquake preparedness across clusters.
3. Build the basis for a joint HCT response strategy to meet the needs of affected people in the first 6 weeks to 3 months of a response.
4. Define considerations for detailed contingency planning on the basis of the worst-case scenario, especially around access and logistics. more
To optimize the speed and volume of critical humanitarian assistance, the HCT has developed this Plan to:
1. Reach a common understanding of earth ... quake risk to ensure early action is taken when required.
2. Establish a minimum level of earthquake preparedness across clusters.
3. Build the basis for a joint HCT response strategy to meet the needs of affected people in the first 6 weeks to 3 months of a response.
4. Define considerations for detailed contingency planning on the basis of the worst-case scenario, especially around access and logistics. 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
The USAID | DELIVER PROJECT, Task Order 4, developed this guide for quantifying health commodities; it will assist technical advisors, program managers, warehouse managers, procurement officers, and service providers in (1) estimating the total commodity needs and costs for successful implementation
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of national health program strategies and goals, (2) identifying the funding needs and gaps for procuring the required commodities, and (3) planning procurements and shipment delivery schedules to ensure a sustained and effective supply of health commodities.
The step-by-step approach to quantification presented in this guide is complemented by a set of product-specific companion pieces that include detailed instructions for forecasting consumption of antiretroviral drugs, HIV test kits, antimalarial drugs, and laboratory supplies.
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Recently, Sri Lanka has been impacted by multiple natural disasters. Sri Lanka experienced a landslide in October 2014, and flooding in December 2014.8 Sri Lanka withstood the worst drought conditions witnessed in four decades in 2016; the extreme drought conditions extended into 2017 and produced s
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ubstantial economic and social effects. The drought was responsible for an increase in national poverty levels, due to reduced cultivation income, especially for rural farmers. ... In May 2017, Sri Lanka experienced continuous rains causing flash floods and extreme devastation. However, despite natural disasters and challenges posed by a complex political environment, Sri Lanka’s financial performance remained largely satisfactory in the first half of 2017.
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The survey is representative of the Union Territory, its states and regions and urban and rural areas. It was conducted in all the districts and in 296 of the 330 townships of Myanmar. A total of 13,730 households were interviewed. It collects data on the occupations of people, how much income they
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earn, and how they use this to meet the food, housing, health, education and other needs of their families. The main focus of the survey is to produce estimates of poverty and living conditions, to provide core data inputs into the System of National Accounts and the Consumer Price Index and to support monitoring of the Sustainable Development Goals.
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Based on the Vulnerability Index developed in this review, an estimated 22.7 million persons in Myanmar, or 44% of the population, were found to have some form of vulnerability related to human development and/or exposure to active conflict/violence. These people experience varying combinations of p
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oor housing, lack of education, poor educational attainment, lack of access to safe sanitation and improved drinking water, and direct exposure to conflict.
Shan and Ayeyarwady have the largest populations of vulnerable persons, a function of both their size and relative vulnerability in comparison to other States and Regions. Yangon and Shan show the widest variation in vulnerability across townships (in terms of the number of vulnerable persons and their level of vulnerability), followed by Mandalay, Chin and Rakhine.
Original file: 15 MB more
Shan and Ayeyarwady have the largest populations of vulnerable persons, a function of both their size and relative vulnerability in comparison to other States and Regions. Yangon and Shan show the widest variation in vulnerability across townships (in terms of the number of vulnerable persons and their level of vulnerability), followed by Mandalay, Chin and Rakhine.
Original file: 15 MB more
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 analytical report reviews and discusses the potential role and influence of political commitment in implementing endorsements and conducting policy in the field of tuberculosis (TB) prevention and care. It promotes discussion by comparing and analysing the extent to which selected international
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commitments, set out in declarations and other committal documents between 2000 and 2018, may have translated into sustainable action. This reflection is relevant and timely, as the United Nations high-level meeting (UNHLM) on TB recently took place, offering countries the opportunity to take stock of progress made, refocus efforts, and step up global commitments to achieve the United Nations Sustainable Development Goal of eliminating TB by 2030
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The Member States of the Pan American Health Organization/World Health Organization (PAHO/WHO)
that appear in the tables below have used the assessment instrument for mental health systems (WHOAIMS)
(1), as have Anguilla, the British Virgin Islands, Montserrat, and Turks and Caicos, all British
O
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verseas Territories. For the purpose of this report, the countries and territories were grouped into three subregions, as follows:
Central America, Mexico, and the Latin Caribbean, the non-Latin Caribbean, and South America. The tables
also indicate the year each national WHO-AIMS report was published.
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An Economist Intelligence Unit briefing paper | The Economist Intelligence Unit (EIU) undertook a study aimed at assessing the degree of commitment of 15 countries within the AsiaPacific region to integrating those with mental illness into their communities. The research was commissioned and funded
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by Janssen Asia Pacific, a division of Johnson & Johnson Pte. Ltd. This report focuses on the results of this benchmarking study, called the Asia-Pacific Mental Health Integration Index. Drawing on lessons from the EIU’s 2014 European Mental Health Integration Index, this edition index compares the level of effort in each of the countries on indicators associated with integrating individuals suffering from mental illness into society. Data for the Index was collected between March and May 2016. The set of 18 indicators were grouped into four categories.
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In this version of the compendium, each guidance is coded using the International Classification of Health Interventions (ICHI).
The compendium provides a systematic compilation of published guidance from WHO and other UN organizations on health and environment. Guidance on policies and actions a
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s well as awareness raising and capacity building interventions is presented for all major areas of health and environment. Guidance referring to priority settings for action such as cities and other urban settlements, housing, workplaces and health care facilities is also listed. For greater practical relevance, each guidance is classified according to principally involved sectors, level of implementation and instruments for implementation.
The compilation of guidance for each area of health and environment or priority setting for action is accompanied, as available, by information on main sources, exposure assessment and existing guideline values. Important tools and further resources are presented alongside.
This compilation of published guidance on health and environment highlights that a large number of actions across main topics of health and environment, concerning various sectors, and applicable to various levels are available to improve health and reduce environmental risks. This compendium is intended to serve as a repository and easy-to-use and useful resource for decision and policy makers in health and environment at various levels.
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This report explores community-focused change initiatives in the financing, organization, and delivery of mental health services in Peru from 2013 to 2016. It examines the national dimension of reforms but focuses above all on implementation and res
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ults in the economically fragile district of Carabayllo, in northern Lima.
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2nd edition.This updated publication provides programme managers with a user-friendly tool that can: (i) analyse and draw conclusions from historic dengue datasets; (ii) identify appropriate alarm indicators that can predict forthcoming outbreaks at smaller spatial scales; and (iii) use these result
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s and analyses to build an early warning system to detect dengue outbreaks in real time and respond accordingly. This web-based tool can ensure enhanced, fast and secured communication between national and subnational levels, and standardized utilization of surveillance data.
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167,607 dengue cases, including 720 deaths, reported from 1 January to 27 July 2019: 97% higher than in 2018, in spite of a delayed rainy season.
Case Fatality Rate (CFR) of 0.43% as of 27 July 2019 is lower than in the same time period in 2018 (0.54%), but still significantly higher than the reg
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ional average of 0.22% in the Western Pacific.
The Philippines Department of Health (DOH) declared a National Dengue Epidemic on 6 August 2019, urging all regional DOH offices to step up dengue surveillance, case management and outbreak re-sponse, clean-up drives, and vector control in health facilities and communities, conduct Sabayang 4-O’Clock Habit Para sa Deng-Get Out focusing on search and destroy of mosquito breeding sites, and to enable LGUs to use their quick response funds to help address the epidemic.
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