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Publication Years
826
2410
260
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2
Category
2068
189
174
149
123
27
11
Toolboxes
220
159
126
117
105
74
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72
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32
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Census Report Volume 4-F (Thematic report on Population Projections for the Union of Myanmar, States/Regions, Rural and Urban Areas, 2014-2050)
Key findings
- The total population of Myanmar is estimated to be 65 million by 2050. The projection is based on steadily declining population grow ... th rate over the projection period: from 0.9 per cent in 2015 to 0.3 per cent in 2050.
- The proportion of the urban population rises from 29.3 per cent in 2015 to 34.7 in 2050. The rural and urban crude birth rates both decline between 2015 and 2050, but the difference between them narrows to almost zero by the end of the period.
- The population of Yangon grows more rapidly than any other area, by 39 per cent between 2015 and 2031. Other rapidly growing areas include Kayah (37 per cent), Kachin (32 per cent), Nay Pyi Taw (27 per cent), and Shan (26 per cent). Ayeyawady, Magway and Mon lose population, mostly due to migration. more
Key findings
- The total population of Myanmar is estimated to be 65 million by 2050. The projection is based on steadily declining population grow ... th rate over the projection period: from 0.9 per cent in 2015 to 0.3 per cent in 2050.
- The proportion of the urban population rises from 29.3 per cent in 2015 to 34.7 in 2050. The rural and urban crude birth rates both decline between 2015 and 2050, but the difference between them narrows to almost zero by the end of the period.
- The population of Yangon grows more rapidly than any other area, by 39 per cent between 2015 and 2031. Other rapidly growing areas include Kayah (37 per cent), Kachin (32 per cent), Nay Pyi Taw (27 per cent), and Shan (26 per cent). Ayeyawady, Magway and Mon lose population, mostly due to migration. more
Health System Review: Achievements and Challenges
Tangcharoensathien, Viroy; Patcharanarumol, Walaiporn; Panichkriangkrai, Warisa
World Health Organization (WHO)
(2016)
C_WHO
Policy Note: Thailand Health Systems in Transition
By 2002, Universal Health Coverage was achieved through three public insurance schemes: the Civil Servant Medical Benefit Scheme (CSMBS) for civil servants and their dependents, Social Health Insurance (SHI) for formal sector employees, and the U ... niversal Coverage Scheme (UCS) for the remainder of the population.
The establishment of these three schemes has changed the way health care is financed. A supply-led system, under which all Ministry of Public Health (MOPH) health facilities received an annual budget allocation from the MOPH, has now been completely replaced by a system in which the three public purchasers - separated through a purchaser-provider split - manage a demand-led system of financing. more
By 2002, Universal Health Coverage was achieved through three public insurance schemes: the Civil Servant Medical Benefit Scheme (CSMBS) for civil servants and their dependents, Social Health Insurance (SHI) for formal sector employees, and the U ... niversal Coverage Scheme (UCS) for the remainder of the population.
The establishment of these three schemes has changed the way health care is financed. A supply-led system, under which all Ministry of Public Health (MOPH) health facilities received an annual budget allocation from the MOPH, has now been completely replaced by a system in which the three public purchasers - separated through a purchaser-provider split - manage a demand-led system of financing. more
Women and Health Initiative Working Paper No. 1. Women and Health Initiative
Improving maternal health in the context of the sub-Saharan African HIV epidemic requires greater understanding of the relationships between HIV disease and maternal morbidity and mortality, integrated and effective resp ... onses by the health system, and a social context which promotes quality care and encourages use of MCH and HIV services. Advancing the proposed research agenda will make an invaluable contribution by generating needed evidence for policy and practice that improves the maternal health of women who are living with HIV, as well as those who are not. Bringing together maternal health and HIV researchers, policy-makers and program implementers to reduce HIV-related maternal morbidity and mortality and improve the HIV response for women represents an opportunity and a challenge. more
Improving maternal health in the context of the sub-Saharan African HIV epidemic requires greater understanding of the relationships between HIV disease and maternal morbidity and mortality, integrated and effective resp ... onses by the health system, and a social context which promotes quality care and encourages use of MCH and HIV services. Advancing the proposed research agenda will make an invaluable contribution by generating needed evidence for policy and practice that improves the maternal health of women who are living with HIV, as well as those who are not. Bringing together maternal health and HIV researchers, policy-makers and program implementers to reduce HIV-related maternal morbidity and mortality and improve the HIV response for women represents an opportunity and a challenge. more
Version 2, January 2016
The primary purpose of this document is to provide 3MDG stakeholders with some essential information on the MNCH core-indicators for 3MDG, which were derived from the 3MDG Logical Framework, Data Dictionary for Health Service Indicators (2014 June, DoPH, MoH), A ... Guide for Monitoring and Evaluating Child Health Programmes (MEASURE Evaluation, September 2005) and Monitoring Emergency Obstetric Care (WHO/UNICEF/UNFPA/AMDD). Partners are strongly encouraged to integrate the MNCH indicators into their ongoing monitoring and evaluation (M&E) activities.
These indicators are designed to help Partners assess the current state of their activities, their progress towards achieving their targets, and contribution towards the national response. This guideline is designed to improve the quality and consistency of data collected at the township level, which will enhance the accuracy of conclusions drawn when the data are aggregated. more
The primary purpose of this document is to provide 3MDG stakeholders with some essential information on the MNCH core-indicators for 3MDG, which were derived from the 3MDG Logical Framework, Data Dictionary for Health Service Indicators (2014 June, DoPH, MoH), A ... Guide for Monitoring and Evaluating Child Health Programmes (MEASURE Evaluation, September 2005) and Monitoring Emergency Obstetric Care (WHO/UNICEF/UNFPA/AMDD). Partners are strongly encouraged to integrate the MNCH indicators into their ongoing monitoring and evaluation (M&E) activities.
These indicators are designed to help Partners assess the current state of their activities, their progress towards achieving their targets, and contribution towards the national response. This guideline is designed to improve the quality and consistency of data collected at the township level, which will enhance the accuracy of conclusions drawn when the data are aggregated. more
This landscape analysis aims to:
1. Identify and document supportive policies and best practices in family planning program implementation
2. Assess the quality of family planning service provision
3. Propose recommendations for scaling up best family planning practices and new interv ... entions to improve program effectiveness and increase utilization of contraception more
1. Identify and document supportive policies and best practices in family planning program implementation
2. Assess the quality of family planning service provision
3. Propose recommendations for scaling up best family planning practices and new interv ... entions to improve program effectiveness and increase utilization of contraception more
Version-1, June 2018
This document provides 3MDG stakeholders with essential information on SRHR indicators, derived from the 3MDG Logical Framework, Data Dictionary for Health Service Indicators (2014 June, DoPH, MoHA), A Guide to Monitoring and Evaluating Adolescent Reproductive Health Progra ... ms (MEASURE Evaluation, June 2000) and Monitoring National Cervical Cancer Prevention and Control Programmes (WHO, PAHO, 2013). Partners are strongly encouraged to integrate the SRHR indicators into their ongoing monitoring and evaluation (M&E) activities.
These indicators are designed to help partners assess the current state of their activities, their progress towards achieving their targets, and contribution towards the national response. This guideline is designed to improve the quality and consistency of data collected at the township level, which will enhance the accuracy of conclusions drawn when the data are aggregated. more
This document provides 3MDG stakeholders with essential information on SRHR indicators, derived from the 3MDG Logical Framework, Data Dictionary for Health Service Indicators (2014 June, DoPH, MoHA), A Guide to Monitoring and Evaluating Adolescent Reproductive Health Progra ... ms (MEASURE Evaluation, June 2000) and Monitoring National Cervical Cancer Prevention and Control Programmes (WHO, PAHO, 2013). Partners are strongly encouraged to integrate the SRHR indicators into their ongoing monitoring and evaluation (M&E) activities.
These indicators are designed to help partners assess the current state of their activities, their progress towards achieving their targets, and contribution towards the national response. This guideline is designed to improve the quality and consistency of data collected at the township level, which will enhance the accuracy of conclusions drawn when the data are aggregated. more
Lancet Public Health 2018 Published Online September 12, 2018 http://dx.doi.org/10.1016/ S2468-2667(18)30138-5
While the world was gripped by the unfolding COVID-19 pandemic in 2020, children continued to face the same crisis they have for decades: intolerably high mortality rates and vastly inequitable chances at life. In total, more than 5.0 million children under age 5, including 2.4 million newborns, alo
...
ng with 2.2 million children and youth aged 5 to 24 years – 43 per cent of whom are adolescents – died in 2020. This tragic and massive loss of life, most of which was due to preventable or treatable causes, is a stark reminder of the urgent need to end preventable deaths of children and young people.
more
Large File 66 MB!!!
Health-Related Quality of Life of Nigerian Children with Cerebral Palsy
Bosede Abidemi Tella, Caleb Ademola Gbiri, Oluwaseyi Abigail Osho, A E Ogunrinu
Disability, CBR & Inclusive Development Journal (DCIDJ)
(2011)
CC
This article aims to assess the impact of cerebral palsy on health-related quality of life (HRQoL) of Nigerian children.
Musculoskeletal disorders represent a significant problem of modern society which are more pronounced in young people and school children. Etiology of these disorders is found in inadequate ergonomic conditions, too heavy school bag, school furniture inadequate to age, poor posture, sedentary lifest
...
yle, reduction of physical activity and lack of exercise.
more
Stress and Vulnerability to Posttraumatic Stress Disorder in Children and Adolescents
Silva, R.R., Alpert, M., Munoz, D.M., Singh, S., Matzner, F. & Dummit, S.
American Journal of Psychiatry
(2000)
CC
Objective: This study examined the experiential factors and interacting vulnerabilities that contribute to the development of posttraumatic stress disorder (PTSD) in children and adolescents
Am J Psychiatry 2000; 157:1229–1235)
Indian J Psychiatry. 2012 Jan-Mar; 54(1): 41–47.
doi: 10.4103/0019-5545.94644
Sci Rep. 2016; 6: 25920. Published online 2016 May 16. doi: 10.1038/srep25920
Indian J Psychol Med. 2017 Jan-Feb; 39(1): 46–51.
doi: 10.4103/0253-7176.198949
Published: 5 January 2010 Received: 30 January 2009
BMC Neurology 2010, 10:1 doi:10.1186/1471-2377-10-1
This article is available from: http://www.biomedcentral.com/1471-2377/10/1
эпидемиологические исследования паркинсонизма
Е.А. Катунина, Ю.Н. Бездольный
Российский государственный медицинский университет им. Н.И. Пирогова Кафедра неврологии и нейрохирургии лечебного факультета д.м.н., доцент Е.А. Катунина, к.м.н. Ю.Н. Бездольный
(2010)
C2
методические рекомендации на тему эпидемиологические исследования паркинсонизма,
A Manual for Medical Officer
Developed under the Government of India – WHO Collaborative Programme 2008-2009
Accessed: 11.03.2019