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4
2
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
...
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
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 d ... ata 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 d ... ata 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
The purpose of the PAS III is to guide Pakistan’s overall national response for HIV and AIDS through 2020, through focused interventions with set targets, costs, roles and responsibilities. The successful implementation of PAS III involves multiple stakeholders to achieve priority outcomes outline
...
d in the Strategy. The Strategy focuses on allocating limited resources to scale up high-impact, high-value interventions such as HTC and treatment to reduce AIDS related deaths and new HIV infections. Priorities in the PAS III have been identified to ensure maximum impact in reducing new infections, especially among key populations, improving treatment uptake and retention, and improving the quality of life of people living with HIV and AIDS in the context of limited financial and human resources.
more
Tracking aid for the WHA nutrition targets: Global spending in 2015 and a roadmap to better data
Alimonte, Mary D'; Thacher, Emily; LeMier, Ryan; Clift, Jack
Results for Development (R4D)
(2018)
C1
In 2017, the World Bank and partners created the Global Investment Framework for Nutrition as a roadmap towards achieving the World Health Assembly (WHA) nutrition targets by 2025. The framework estimates that the world needs to mobilize an annual additional investment of $7 billion per year to scal
...
e-up nutrition-specific interventions at the level needed to achieve the global targets. However, the world is off-track to meet the global targets. And it is unclear whether additional resources will be mobilized for life-saving and cost-effective nutrition-specific interventions, or whether donor support will be enough to meet the annual resource need established by the framework.
more
This publication provides guidance to governments, civil society organizations (nongovernmental organizations and community-based organizations) and other partners implementing HIV prevention, care and treatment programs with key populations. This guide is designed to assist these programs in the de
...
velopment of monitoring systems for frontline workers (such as peer outreach workers, staff outreach supervisors and program managers) to understand performance. It includes comprehensive tools and forms that various levels of staff can use to collect and analyze data to manage and improve a program.
more
This toolkit provides practical guidance to governments, funders, civil society organizations and other implementing partners on conducting a gender analysis and using findings to inform HIV prevention, care and treatment programs with key populations. It outlines considerations and steps for conduc
...
ting a gender analysis; explores how to engage with stakeholders, including key population members, in a meaningful partnership; shares lessons learned from a comprehensive gender analysis in Kenya and an abridged gender analysis in Cameroon; and provides tools and resources for conducting a gender analysis with key populations.
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Delivering quality health services: A global imperative for universal health coverage
Kieny, Marie-Paule; Evans, Timothy Grant; Scarpetta, Stefano; Kelley, Edward T.; Klazinga, Niek; Forde, Ian; Veillard, Jeremy Henri Maurice; Leatherman, Sheila; Syed, Shamsuzzoha; Kim, Sun Mean; Nejad, Sepideh Bagheri; Donaldson, Liam
World Health Organization (WHO), Organisation for Economic Co-operation and Development (OECD), and The World Bank
(2018)
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Poor quality health services are holding back progress on improving health in countries at all income levels.
Today, inaccurate diagnosis, medication errors, inappropriate or unnecessary treatment, inadequate or unsafe clinical facilities or practices, or providers who lack adequate training an ... d expertise prevail in all countries.
The situation is worst in low and middle-income countries where 10 percent of hospitalized patients can expect to acquire an infection during their stay, as compared to seven percent in high income countries. This is despite hospital acquired infections being easily avoided through better hygiene, improved infection control practices and appropriate use of antimicrobials.. At the same time, one in ten patients is harmed during medical treatment in high income countries. more
Today, inaccurate diagnosis, medication errors, inappropriate or unnecessary treatment, inadequate or unsafe clinical facilities or practices, or providers who lack adequate training an ... d expertise prevail in all countries.
The situation is worst in low and middle-income countries where 10 percent of hospitalized patients can expect to acquire an infection during their stay, as compared to seven percent in high income countries. This is despite hospital acquired infections being easily avoided through better hygiene, improved infection control practices and appropriate use of antimicrobials.. At the same time, one in ten patients is harmed during medical treatment in high income countries. more
This learning report attempts to understand the drivers for, and barriers to, effective implementation as well as review the experiences of Start Fund members in responding to these outbreaks to support evidence-based decision-making within the Start Network at project, crisis, and system level. Spe
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cifically, it analyses the effectiveness, efficiency, and relevance of Start Fund disease outbreak responses by reviewing and analysing funding, decision-making and response activities before ultimately exploring implications and recommendations.
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Addressing Forced Displacement through Development Planning and Co-operation: Guidance for Donor Policy Makers and Practitioners
Mwangi, Annabel; Gamez, Laura et al.
Organisation for Economic Co-operation and Development (OECD)
(2017)
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OECD Development Policy Tools
Recognising that donor policies and responses constantly evolve, this guidance recommends that donors operating in situations of forced displacement prioritise three broad areas of work, where they can best contribute to existing capacities at the national, regiona ... l and global levels. more
Recognising that donor policies and responses constantly evolve, this guidance recommends that donors operating in situations of forced displacement prioritise three broad areas of work, where they can best contribute to existing capacities at the national, regiona ... l and global levels. more
This working paper is a case study on South Sudan as an important refugee country of origin. The case study looks at issues of forced displacement in South Sudan and underscores the linkages between internally displaced persons and South Sudanese refugees. The case study highlights the importance of
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understanding local contexts and root drivers of conflict and displacement. It reviews evaluations of programmes in South Sudan, including past efforts at state building and refugee resettlement to look at learning within the international community. The study was undertaken as part of a wider research project on learning from evaluations to improve responses to situations of forced displacement .
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2nd Generation HIV Surveillance in Pakistan, Round 5
Le présent manuel a pour objet d'orienter les États membres sur les aspects pratiques du maintien des normes sanitaires aux frontières internationales dans les ports, les aéroports et les passages à niveau (points d'entrée) énoncés dans le Règlement sanitaire international (2005). Il fourni
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t des conseils techniques pour l'élaboration d'un programme complet de surveillance systématique des vecteurs de maladies et de lutte intégrée contre les vecteurs aux points d'entrée.
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Punjab Province Report: Nutrition Political Economy, Pakistan
Zaidi, Shehla; Bhutta, Zulfiqar et al.
Institute of Development Studies, Aga Khan University
(2015)
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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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An attempt has been made to map the incidence of uni-dimensional and multi-dimensional poverty simultaneously arguably for the first time in Pakistan. While multi-dimensional poverty map is calculated using PSLM 2010-11; small area estimation technique is utilized to map uni-dimensional poverty usin
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g both nationally representative HIES (Household Integrated Economic Survey) and district-level representative PSLM (Pakistan Standard of Living Measurement) for the same year of 2010-11. The result indicates the existence of spatial distribution of poverty pockets in each of the four provinces of Pakistan. Furthermore, it is also observed that these pockets of poverty are more concentrated in the desert and mountains regions of the country.
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