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1
The unmet need for palliative care in Cox’s Bazar
Background document to the 2018 joint statement by WHO, UNFPA, UNICEF, ICM, ICN, FIGO and IPA: definition of skilled health personnel providing care during childbirth
DHS Further Analysis Reports No. 108 - This report examines levels, trends, and inequalities in maternal health in Rwanda from 2010 to 2014-15 among women age 15-49 with a recent birth. The analysis uses Demographic and Health Survey (DHS) data for 15 key indicators of maternal health: 6 for antenat
...
al care, 3 for delivery, 1 for postnatal care, and 5 for barriers to accessing medical care. Levels and trends in these indicators were analyzed overall and by three background characteristics: women’s education, household wealth quintile, and region.
more
This report investigates the impact of potential misclassification of samples on HIV prevalence estimates for 23 surveys conducted from 2010-2014. In addition to visual inspection of laboratory results, we examined how accounting for potential misclassification of HIV status through Bayesian latent
...
class models affected the prevalence estimates. Two types of Bayesian models were specified: a model that only uses the individual dichotomous test results and a continuous model that uses the quantitative information of the EIA (i.e., the signal-to-cutoff values). Overall, we found that adjusted prevalence estimates matched the surveys’ original results, with overlapping uncertainty intervals. This suggested that misclassification of HIV status should not affect the prevalence estimates in most surveys. However, our analyses suggested that two surveys may be problematic. The prevalence could have been overestimated in the Uganda AIDS Indicator Survey 2011 and the Zambia Demographic and Health Survey 2013-14, although the magnitude of overestimation remains difficult to ascertain. Interpreting results from the Uganda survey is difficult because of the lack of internal quality control and potential violation of the multivariate normality assumption of the continuous Bayesian latent class model. In conclusion, despite the limitations of our latent class models, our analyses suggest that prevalence estimates from most of the surveys reviewed are not affected by sample misclassification.
more
DHS Further Analysis Reports No. 111
This study is a theory-driven analysis of the socio-demographic determinants of maternal care seeking in Kenya. Specifically, it examines predisposing, enabling, and need factors potentially associated with use of antenatal care (ANC), health facility delive ... ry, and timely postnatal care (PNC).
This study uses data from the 2014 Kenya Demographic and Health Survey (KDHS) conducted among women age 15-49 with a live birth in the five years preceding the survey. It includes data from all 47 counties of Kenya, grouped contiguously into 12 regions. We apply Andersen’s Behavioral Model of Health Services Use to examine socio-demographic predictors of health service use. We estimate logistic regression models for adequate use of ANC (defined as attending at least four ANC visits, starting in the first three months of pregnancy), delivery in a health facility, and PNC within 48 hours of delivery. more
This study is a theory-driven analysis of the socio-demographic determinants of maternal care seeking in Kenya. Specifically, it examines predisposing, enabling, and need factors potentially associated with use of antenatal care (ANC), health facility delive ... ry, and timely postnatal care (PNC).
This study uses data from the 2014 Kenya Demographic and Health Survey (KDHS) conducted among women age 15-49 with a live birth in the five years preceding the survey. It includes data from all 47 counties of Kenya, grouped contiguously into 12 regions. We apply Andersen’s Behavioral Model of Health Services Use to examine socio-demographic predictors of health service use. We estimate logistic regression models for adequate use of ANC (defined as attending at least four ANC visits, starting in the first three months of pregnancy), delivery in a health facility, and PNC within 48 hours of delivery. more
Mental Health Atlas 2024
recommended
The Mental Health Atlas 2024 is the seventh in a series that began in 2001, and draws on data from 144 countries to assess mental health policies, laws, information systems, financing, workforce and services. It shows little change in investment: mental health accounts for only 2% of health budgets
...
, unchanged since 2017. Spending disparities are wide, ranging from US$ 65 per person in high-income countries to US$ 0.04 in low-income countries. Workforce shortages remain critical, with a global median of just 13 workers per 100,000 people, and extreme shortages in low- and middle-income countries
more
2018 monitoring report: current status and strategic priorities
The report sets out the status of women’s, children’s and adolescents’ health, and on health systems and social and environmental determinants. Regional dashboards on 16 key indicators highlight where progress is being made o ... r lagging. There is progress overall, but not at the level required to achieve the 2030 goals. There are some areas where progress has stalled or is reversing, namely neonatal mortality, gender inequalities and health in humanitarian settings. more
The report sets out the status of women’s, children’s and adolescents’ health, and on health systems and social and environmental determinants. Regional dashboards on 16 key indicators highlight where progress is being made o ... r lagging. There is progress overall, but not at the level required to achieve the 2030 goals. There are some areas where progress has stalled or is reversing, namely neonatal mortality, gender inequalities and health in humanitarian settings. more
The Essential WASH Actions toolkit expands the connection between WASH and nutrition. This resource offers a comprehensive set of essential WASH actions, references training materials for health workers, nutrition managers and community workers to build capacity, and outlines accompanying behaviors
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needed to support the Essential Nutrition Actions.
more
Breastfeeding
The Rwandan Ministry of Health recognizes the threat that Non-Communicable Diseases (NCDs) pose to health and development in Rwanda and in 2009 articulates strategies to respond to them in the Health Sector Strategic Plan 2012 - 2018 (HSSP3). Among other things, the plan calls for a national prevale
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nce survey on NCD risk factors. This report responds to that call and summarizes the findings of the first NCD risk factor survey in Rwanda conducted from November 2012 to March 2013.
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Rwanda: FEES FOR REGISTRATION OF PHARMACEUTICAL PRODUCTS, MEDICAL DEVICES AND OTHER RELATED SERVICES
MINISTERIAL ORDER Nº 002/17/10/TC OF 27/10/2017 DETERMINING THE FEES FOR REGISTRATION OF PHARMACEUTICAL PRODUCTS, MEDICAL DEVICES AND OTHER RELATED SERVICES | Official Gazette nº 46 of 13/11/2017
Rwanda Guidelines for variation to registered pharmaceutical products.
N°46/2012 of 14/01/2013 - Official Gazette n° Special of 17/01/2013 - LAW No 45/2012 OF 14/01/2013 ON ORGANISATION, FUNCTIONING AND COMPETENCE OF THE COUNCIL OF PHARMACISTS
The role of an essential health benefit in health systems in east and southern Africa: Learning from regional research
R. Loewenson, M. Mamdani and others
Regional Network for Equity in Health in east and southern Africa (EQUINET)
(2018)
C1
Regional Network for Equity in Health in east and southern Africa (EQUINET): Disussion Paper 113
This report synthesises the learning across the full programme of work. It presents the methods used, the context and policy motivations for developing EHBs; how they are being defined, costed, di ... sseminated and used in health systems, including for service provision and quality, resourcing and purchasing services and monitoring and accountability on service delivery and performance, and for learning, useful practice and challenges faced. more
This report synthesises the learning across the full programme of work. It presents the methods used, the context and policy motivations for developing EHBs; how they are being defined, costed, di ... sseminated and used in health systems, including for service provision and quality, resourcing and purchasing services and monitoring and accountability on service delivery and performance, and for learning, useful practice and challenges faced. more
A case study of the Essential Health Care Package in Swaziland
Magagula, Samuel V.
Regional Network for Equity in Health in east and southern Africa (EQUINET)
(2017)
C1
Regional Network for Equity in Health in east and southern Africa (EQUINET): Disussion Paper 112
The Essential Health Benefit (EHB) is known as Essential Health Care Package (EHCP) in Swaziland. This desk review provides evidence on the experience of EHCPs in Swaziland and includes available po ... licy documents and research reports. more
The Essential Health Benefit (EHB) is known as Essential Health Care Package (EHCP) in Swaziland. This desk review provides evidence on the experience of EHCPs in Swaziland and includes available po ... licy documents and research reports. more
ECDC Technical Report
In line with ECDC’s recommendations provided in the ’Risk Assessment of HTLV-1/2 transmission by tissue/cell transplantation’ dated 14 March 2012, this Directive replaces the term ‘incidence’ with ‘prevalence’ in the description of endemic areas of HTLV-1/2 i ... nfection. According to the new requirements ‘HTLV-1 antibody testing must be performed for donors living in, or originating from high-prevalence areas or with sexual partners originating from those areas or where the donor’s parents originate from those areas’ and this applies to both donors of non-reproductive tissues and cells and reproductive cells.
ECDC contracted experts from the Institut Pasteur in Paris to systematically review the published evidence on the distribution of HTLV-1 infection prevalence throughout the world and to identify high-prevalence countries and areas. more
In line with ECDC’s recommendations provided in the ’Risk Assessment of HTLV-1/2 transmission by tissue/cell transplantation’ dated 14 March 2012, this Directive replaces the term ‘incidence’ with ‘prevalence’ in the description of endemic areas of HTLV-1/2 i ... nfection. According to the new requirements ‘HTLV-1 antibody testing must be performed for donors living in, or originating from high-prevalence areas or with sexual partners originating from those areas or where the donor’s parents originate from those areas’ and this applies to both donors of non-reproductive tissues and cells and reproductive cells.
ECDC contracted experts from the Institut Pasteur in Paris to systematically review the published evidence on the distribution of HTLV-1 infection prevalence throughout the world and to identify high-prevalence countries and areas. more