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Developing health centres and hospital s indices for Syria, based on HeRAMS dataset 2014
World Health Organization
(2017)
C_WHO
This research paper uses the Health Resources and services Availability Mapping System (HeRAMS) database to develop two composite indices – one for health centres and one for hospitals – in order to analyse and assess the health facilities’ performance across time and to evaluate the di
...
sparities among regions in the Syrian Arab Republic. The indices will provide an evidence-based tool for the main actors in the health sector to identify gaps, to intervene accordingly and to assess the impact of their interventions on the health system. The process of constructing the indices includes description and selection of variables, application of normalization techniques and weighting methods, and sensitivity analysis.
A literature review, analysis of the scope of the HeRAMS database, analysis of the crisis situation, data limitation and expert consultations were the main aspects of the construction process of the indices.
more
Levels and Inequities
DHS Further Analysis Reports No. 110
This study shows large variations in maternal health indicators across high-priority counties in Kenya. Nairobi exceeds the national average on all maternal health indicators in this study, while other highpriority counties consist ... ently are disadvantaged compared with Kenya as a whole in most maternal health indicators. Kisumu exceeds the national average in use of antenatal care, delivery in a health facility, and postnatal care, but not other indicators. Nakuru has fewer women with fertility risk and fewer women who report that the distance they must travel to reach a health facility is a problem.
This study identifies a number of inequities in maternal health indicators across socio-demographic characteristics in the high-priority counties—most in the distribution of delivery care and least in antenatal care. Inequities are also observed in fertility risk and postnatal care. more
DHS Further Analysis Reports No. 110
This study shows large variations in maternal health indicators across high-priority counties in Kenya. Nairobi exceeds the national average on all maternal health indicators in this study, while other highpriority counties consist ... ently are disadvantaged compared with Kenya as a whole in most maternal health indicators. Kisumu exceeds the national average in use of antenatal care, delivery in a health facility, and postnatal care, but not other indicators. Nakuru has fewer women with fertility risk and fewer women who report that the distance they must travel to reach a health facility is a problem.
This study identifies a number of inequities in maternal health indicators across socio-demographic characteristics in the high-priority counties—most in the distribution of delivery care and least in antenatal care. Inequities are also observed in fertility risk and postnatal care. 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
Health Systems for Outcomes Publication | Using qualitative data from Rwanda, this study focuses on four institutional factors that affect health worker performance and career choice: incentives, monitoring arrangements, professional norms and health workers’ intrinsic motivation. It also provides
...
illustrations of three institutional innovations that work, at least in the context of Rwanda: performance pay, the establishment of community health workers and increased attention to the training of health workers.
more
Guide de réadaptation à base communautaire (RBC)
En 2003, une Consultation internationale consacrée à l’examen de la réadaptation à base communautaire organisée à Helsinki a émis un certain nombre de recommandations essentielles. Par la suite, la RBC a été redéfinie, dans un document
...
d’orientation conjoint de l’OIT, l’UNESCO et l’OMS, comme une stratégie faisant partie intégrante du développement communautaire général qui vise à assurer la réadaptation, l’égalité des chances et l’intégration sociale des personnes handicapées.
more
Policy and systems. Global Mental Health(2017),4, e7, page 1 of 6. doi:10.1017/gmh.2017.3
The Global Burden of Disease (GBD) study, a collaborative endeavour of the World
Health Organization (WHO), the World Bank and the Harvard School of Public Health,
drew the attention of the international health community to the burden of neurological
disorders and many other chronic conditions. T
...
his study found that the burden of neurological
disorders was seriously underestimated by traditional epidemiological and health
statistical methods that take into account only mortality rates but not disability rates. The
GBD study showed that over the years the global health impact of neurological disorders
had been underestimated.
more
Свод методических рекомендаций по вопросам политики и оказания услуг в области психического здоровья. На долю психических расстройств приходится значительная ча
...
сть бремени болезней во все странах. Несмотря на то, что уже имеются действенные виды вмешательств, они недоступны для большинства людей, нуждающихся в них. Обеспечить их полноценную доступность
можно путем внесения изменений в политику и законодательство, через создание новых
служб, обеспечение адекватного финансирования и проведение подготовки соответствующих кадров.
more
Women and drugs - Drug use, drug supply and their consequences
United Nations Office on Drugs and Crime
(2018)
C2
World Drug Report 2018
-5-
Infant Psychiatry
Chapter B.2
Psiquiatría infantil
Capítulo B.2
Psychiatrie de l'enfant
Chapitre B.2
Edition en français
Traduction : Claire Rousseau
Sous la direction de : Priscille Gérardin
Avec le soutien de la SFPEADA
Responses to epidemics, emergencies and disasters raise many ethical issues for the people involved, including public health specialists and policy makers. This training manual provides material on ethical issues in research, surveillance and patient care in these difficult contexts.
Свод методических рекомендаций состоит из нескольких тематически связанных и удобных для пользователя модулей для решения широкого спектра задач и приоритетных
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проблем, возникающих при формировании политики и планировании услуг в области психического здоровья. Тематика каждого модуля представляет собой один из ключевых аспектов охраны психического здоровья.
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Свод методических рекомендаций состоит из нескольких тематически связанных и удобных для пользователя модулей для решения широкого спектра задач и приоритетных
...
проблем, возникающих при формировании политики и планировании услуг в области психического здоровья. Тематика каждого модуля представляет собой один из ключевых аспектов охраны психического здоровья.
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Burkina Faso has approximately 10.5 million inhabitants and is divided into 30 provinces. The study took place in the districts of Tougan, Nouna, and Solenzo, in provinces Sourou and Kossi, in north-west Burkina Faso. There is one medical centre in every district capital and 6 to 14 health centres i
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n the surrounding villages. Each health centre covers a population of 10 000 to 15 000. The staff of one health centre generally consists of one nurse, a nurse aid and a midwife as well as one drug vendor for the nearby village pharmacy. The health personnel are trained and paid by the state.
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Résumé.
Malgré les efforts de promotion des mutuelles de santé depuis une décennie et l’existence d’une vingtaine de compagnies privées proposant des polices d’assurance maladie, moins de 1% de la population camerounaise bénéficie d’une couverture maladie. Les facteurs sous jacents
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sont entre autres : (i) la méfiance des ménages vis-à-vis des mutuelles de santé et des assureurs privés; (ii) l’absence d’obligation d’une assurance maladie qui en fait un produit de luxe ; (iii) l’ignorance des avantages des mécanismes assurantiels; (iv) la pauvreté et le montant élevé des primes d’adhésion et des cotisations annuelles ; et (v) la forte prévalence de l’emploi dans le secteur informel (80,6%). Pour y faire face nous proposons de : 1) Créer et pérenniser un environnement favorable à la promotion et au développement des MS ; 2) Subventionner les primes par le Gouvernement, les Partenaires et les Municipalités pour en réduire le prix d’achat ; 3) Instituer une collecte flexible des primes et établir un dispositif attractif de mutualisation du risque et des procédures d’achat qui inspirent confiance aux usagers et aux prestataires des soins.
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