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1
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
Final report 2016
The National Institute of statistics of Rwanda (NISR) in collaboration with the worldwide Demographic and Health Surveys Program implemented the 2014-15 Rwanda Demographic and Health Survey (RDHS) to collect data for monitoring progress on health programs and policies in Rwanda. This publication ill
...
ustrates the profile of Kigali City
more
The National Institute of statistics of Rwanda (NISR) in collaboration with the worldwide Demographic and Health Surveys Program implemented the 2014-15 Rwanda Demographic and Health Survey (RDHS) to collect data for monitoring progress on health programs and policies in Rwanda. This publication ill
...
ustrates the profile of Eastern Province.
more
he National Institute of statistics of Rwanda (NISR) in collaboration with the worldwide Demographic and Health Surveys Program implemented the 2014-15 Rwanda Demographic and Health Survey (RDHS) to collect data for monitoring progress on health programs and policies in Rwanda. This publication illu
...
strates the profile of Northern Province.
more
The National Institute of statistics of Rwanda (NISR) in collaboration with the worldwide Demographic and Health Surveys Program implemented the 2014-15 Rwanda Demographic and Health Survey (RDHS) to collect data for monitoring progress on health programs and policies in Rwanda. This publication ill
...
ustrates the profile of Southern province
more
This report complements the previous poverty analysis studies by presenting a series of poverty maps of Rwanda at cell and sector levels, based on data from EICV4 and the 2012 Population and Housing Census. A poverty map is simply a map that shows the incidence of poverty in different areas of the c
...
ountry. It allows the viewer to appreciate, at a glance, the geographic dimensions of poverty. Apart from their intrinsic interest, poverty maps may be used to help guide the allocation of resources across local agencies or governmental units, in an effort to better target efforts to reach the poor by pinpointing the small areas of most need.
In 2015, the National Institute of Statistics of Rwanda (NISR) published the Rwanda Poverty Profile Report which provided a detailed portrait of the extent and nature of poverty in the country, while in 2016 a Poverty Trends Analysis Report which complements the Profile study by looking at the trends in poverty between 2010/11 and 2013/14 was also published. Both reports were based on information collected by an integrated household living conditions survey (EICV4) undertaken between October 2013 and September 2014.
more
In 2015, the National Institute of Statistics of Rwanda published the Rwanda Poverty Profile Report 2013/2014,which provided a detailed portrait of the extent and nature of poverty in the country, based on information collected by an integrated household living conditions survey (EICV4) undertaken b
...
etween October 2013 and September 2014.
This report complements the study by looking at the trends in poverty between 2010/11 and 2013/14.It is essential to examine changes in poverty over time, because one of the most important goals of economic Sustainable Development Goals is to eliminate severe poverty by 2030.
more
The Demographic Dividend study on Rwanda assessed the socio economic and human development potential of our country in the short, medium and long-term period using a comprehensive approach. It generated relevant policy and programme information to guide a well informed polciy required to propel Rwan
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da towards achieving its aspirations of being high middle income country by 2035 and high income country by 2050.
The primary objectives of this study were to assess Rwanda’s prospects for harnessing the demographic dividend and demonstrate priority policy and programme options that the country should adopt in order to optimise its chances of earning a maximum demographic dividend in the context of its youthful population and medium, long-term socio economic development aspirations.
more
The Demographic Dividend study on Rwanda assessed the socio-economic and human development potential of our country in the short, medium and long-term period using a comprehensive approach. It generated relevant policy and programme information to guide a well-informed polciy required to propel Rwan
...
da towards achieving its aspirations of being high middle income country by 2035 and high income country by 2050.
The primary objectives of this study were to assess Rwanda’s prospects for harnessing the demographic dividend and demonstrate priority policy and programme options that the country should adopt in order to optimise its chances of earning a maximum demographic dividend in the context of its youthful population and medium, long-term socio-economic development aspirations.
more
The Demographic Dividend study on Rwanda assessed the socio-economic and human development potential of our country in the short, medium and long-term period using a comprehensive approach. It generated relevant policy and programme information to guide a well-informed polciy required to propel Rwan
...
da towards achieving its aspirations of being high middle income country by 2035 and high income country by 2050.
The primary objectives of this study were to assess Rwanda’s prospects for harnessing the demographic dividend and demonstrate priority policy and programme options that the country should adopt in order to optimise its chances of earning a maximum demographic dividend in the context of its youthful population and medium, long-term socio-economic development aspirations.
more
Accessed June 2018 - Détection, la confirmation et de la gestion des épidémies de choléra
This Policy for community-based health insurance answers the will of the Rwandan government to popularize the fundamental aces of the current policy. This document serves as an update to the first policy that was elaborated and published in 2004, and integrates all the changes that have occurred in
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the process since then. This new version of the policy for community based health insurance contributes to the fulfillment of the same objectives as the EDPRS and the Millennium Development Goals (MDG). It integrates system experiences but more especially the devices adapted to the challenges with which community base health insurance are confronted at present.
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Rapport de mission, 10-14 juillet 2017
Madagascar a conduit la mission d’évaluation externe conjointe de la mise en œuvre des capacités du Règlement Sanitaire International (2005) du 10 au 14 juillet 2017. ...
Pour disposer de capacités fonctionnelles et pérennes, le pays devra ren ... forcer encore d’avantage l’ensemble des 19 domaines techniques en mettant en œuvre les recommandations ci-dessous. A cet égard, il est primordial de mettre l’accent sur : i) l’élaboration et l’application de cadres législatifs, propices à l’application du Règlement sanitaire international (2005) et à la gestion des risques de catastrophe ; ii) la coordination multisectorielle dans la mise en œuvre du Règlement sanitaire international (2005) ; iii) le renforcement des capacités du point focal RSI ainsi que sa relation avec tous les secteurs clés dans la prévention, la détection et la riposte ; iv) la rédaction et la mise en œuvre des procédures requises en tenant compte de l’approche englobant l’ensemble des menaces ; et v) l’analyse et la cartographie des risques d’épidémies et de catastrophes, en utilisant une approche multisectorielle qui permettra d’actualiser et d’établir des plans de préparation et de riposte contre les zoonoses, les maladies infectieuses émergentes et ré-émergentes et les facteurs de risque environnementaux en utilisant l’approche « Une seule santé ». more
Madagascar a conduit la mission d’évaluation externe conjointe de la mise en œuvre des capacités du Règlement Sanitaire International (2005) du 10 au 14 juillet 2017. ...
Pour disposer de capacités fonctionnelles et pérennes, le pays devra ren ... forcer encore d’avantage l’ensemble des 19 domaines techniques en mettant en œuvre les recommandations ci-dessous. A cet égard, il est primordial de mettre l’accent sur : i) l’élaboration et l’application de cadres législatifs, propices à l’application du Règlement sanitaire international (2005) et à la gestion des risques de catastrophe ; ii) la coordination multisectorielle dans la mise en œuvre du Règlement sanitaire international (2005) ; iii) le renforcement des capacités du point focal RSI ainsi que sa relation avec tous les secteurs clés dans la prévention, la détection et la riposte ; iv) la rédaction et la mise en œuvre des procédures requises en tenant compte de l’approche englobant l’ensemble des menaces ; et v) l’analyse et la cartographie des risques d’épidémies et de catastrophes, en utilisant une approche multisectorielle qui permettra d’actualiser et d’établir des plans de préparation et de riposte contre les zoonoses, les maladies infectieuses émergentes et ré-émergentes et les facteurs de risque environnementaux en utilisant l’approche « Une seule santé ». 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
A guide to increasing coverage and equity in all communities in the African Region
Expanded Programs on Immunization (EPI) is responsible for vaccines and vaccination to control, eliminate and eradicate vaccine preventable diseases (VPDs). Having strong immunization systems to deliver vaccines ... to those who need them most will play a significant role in achieving the health, equity and economic objectives of several global development goals. more
Expanded Programs on Immunization (EPI) is responsible for vaccines and vaccination to control, eliminate and eradicate vaccine preventable diseases (VPDs). Having strong immunization systems to deliver vaccines ... to those who need them most will play a significant role in achieving the health, equity and economic objectives of several global development goals. more
Guide pour augmenter la couverture et l'équité dans toutes les communautés de la Région africaine (2017)
Les programmes élargis de vaccination (PEV) sont responsables des vaccins et luttent contre les maladies évitables par la vaccination, dans le but de les éliminer, voire les éradique ... r. La présence de systèmes de vaccination solides, aptes à apporter des vaccins à ceux qui en ont le plus besoin, jouera un rôle important dans la réalisation des objectifs de santé et d'équité aussi bien que des objectifs économiques de plusieurs buts de développement mondial. Ces buts comprennent les objectifs de développement durable (ODD) à l'horizon 2030, la Décennie de la vaccination (2011-2020), le programme pour réaliser la couverture universelle d'ici à 2030, le Plan d'action mondial pour les vaccins (2011-2020), les Stratégies et pratiques mondiales de vaccination systématique et le Plan stratégique régional pour la vaccination 2014-2020. more
Les programmes élargis de vaccination (PEV) sont responsables des vaccins et luttent contre les maladies évitables par la vaccination, dans le but de les éliminer, voire les éradique ... r. La présence de systèmes de vaccination solides, aptes à apporter des vaccins à ceux qui en ont le plus besoin, jouera un rôle important dans la réalisation des objectifs de santé et d'équité aussi bien que des objectifs économiques de plusieurs buts de développement mondial. Ces buts comprennent les objectifs de développement durable (ODD) à l'horizon 2030, la Décennie de la vaccination (2011-2020), le programme pour réaliser la couverture universelle d'ici à 2030, le Plan d'action mondial pour les vaccins (2011-2020), les Stratégies et pratiques mondiales de vaccination systématique et le Plan stratégique régional pour la vaccination 2014-2020. more