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We combine data on Chinese development projects with data from Demographic and Health Surveys to study the impact of Chinese aid on household welfa
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re in sub-Saharan Africa. We use a novel methodology to test the effect of Chinese aid on three important development outcomes: education, health, and nutrition. For each outcome, we use difference-in-difference estimations to compare household areas near Chinese project sites to control areas located farther away, before and after receiving Chinese aid. This empirical strategy rules out many confounding factors that can bias measuring the impact of Chinese aid on our outcome variables. First, we find that Chinese projects significantly improve education and child mortality in treatment areas, but do not significantly affect nutrition. Second, social sector projects have a larger effect on outcomes than economic projects. Third, we do not find significant effects for projects that ended more than five years before the post-treatment survey wave. Our results are robust to a host of robustness checks.
more
Includes a Special Report on the Financial and Personal Benefits of Early Diagnosis
2018 Alzheimer’s Disease Facts and Figures is a statistical resource for U.S. data related to Alzheimer’s disease,
the most common cause of dementia. Backgro
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und and context for interpretating the data are contained in
the Overview. Additional sections address prevalence, mortality and morbidity, caregiving and use and costs of health care and services. A Special Report discusses the financial and personal benefits of diagnosing earlier in the disease process, in the stage of mild cognitive impairment.
more
Trends in Neonatal Mortality in Rwanda, 2000-2010
Winter, Rebecca, Thomas Pullum, Anne Langston, Ndicunguye V. Mivumbi, Pierre C. Rutayisire, Dieudonne N. Muhoza, and Solange Hakiba
Calverton, Maryland, USA: ICF International.
(2013)
C2
DHS Further Analysis Reports No. 88 - This further analysis examines levels, trends, and determinants of neonatal mortality in Rwanda, using data from the 2000, 2005, and 2010 Rwanda Demographic and Health
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Surveys (RDHS).
more
Massoda Tonye et al. Malar J (2018) 17:156
https://doi.org/10.1186/s12936-018-2284-7
Background: In 2011, the demographic and health survey (DHS) in Cameroon was combined with the multiple indicator
cluster survey. Malaria parasitological
...
data were collected, but the survey period did not overlap with the high
malaria transmission season. A malaria indicator survey (MIS) was also conducted during the same year, within the
malaria peak transmission season. This study compares estimates of the geographical distribution of malaria parasite
risk and of the effects of interventions obtained from the DHS and MIS survey data.
more
Joint data assessment by the Central Statistical Organization and UNDP
The report shows that the National Statistical System of Myanmar has some work ahead of it in terms of preparing for the m ... onitoring of the SDG indicators. Only 44 of the SDG indicators are currently produced and readily available at the national level. However, the good news is that many (97) of the missing indicators can be computed from existing data sources – often with little effort - and don’t require any additional data collection. The report concludes that Myanmar is in a decent position to start monitoring the SDGs, and should start as soon as possible in putting its existing data to full use for the SDGs. more
The report shows that the National Statistical System of Myanmar has some work ahead of it in terms of preparing for the m ... onitoring of the SDG indicators. Only 44 of the SDG indicators are currently produced and readily available at the national level. However, the good news is that many (97) of the missing indicators can be computed from existing data sources – often with little effort - and don’t require any additional data collection. The report concludes that Myanmar is in a decent position to start monitoring the SDGs, and should start as soon as possible in putting its existing data to full use for the SDGs. more
The toolkit offers advice on how national public health authorities could engage with primary care prescribers so as to promote appropriate and responsible use of antibiotics. The toolki
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t contains template materials and some suggested key messages for health professionals, ideas for awareness raising activities, and suggested tactics for getting the messages across to both primary care providers and patients regarding prudent use of antibiotics.
more
PlosOne https://doi.org/10.1371/journal.pone.0161576; Zoonotic diseases have varying public health burden and socio-economic impact across time and geographical settings making their prioritization for prevention and control important at the
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national level. We conducted systematic prioritization of zoonotic diseases and developed a ranked list of these diseases that would guide allocation of resources to enhance their surveillance, prevention, and control.
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The safety of medicines in Zambia - why health workers need to take action | Produced by the National Pharmacovigilance Unit (NPVU)
Internally displaced children are twice invisible in global and national data. First, because internally displaced people (IDPs) of all ages are often unaccounted for. Second, because age-disaggrega
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tion of any kind of data is limited, and even more so for IDPs.
Planning adequate responses to meet the needs of internally displaced children, however, requires having at least a sense of how many there are and where they are. This report presents the first estimates of the number of children living in internal displacement triggered by conflict and violence at the global, regional and national levels.
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 facili
...
ty delivery, 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 12regions.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
Review of Community-Based Management of Acute Malnutrition Implementation in Burkina Faso
Deconinck H., S. Diene, P. Bahwere
Food and Nutrition Technical Assistance II Project (FANTA-2)
(2010)
C2
The United States Agency for International Development (USAID) Bureau for Democracy, Conflict, and Humanitarian Assistance Office of U.S. Foreign Disaster Assistance (DCHA/OFDA) requested Food and Nutrition Technical Assistance II Project (FANTA-2) assistance to review Community-Based Management of
...
Acute Malnutrition (CMAM) in four West African countries—Burkina Faso, Mali, Mauritania, and Niger—to help identify DCHA/OFDA 2010 and 2011 program priorities, including where DCHA/OFDA investment should be directed to support CMAM. The goal was to review CMAM program implementation and its integration into national health systems to provide DCHA/OFDA a status report for each country; draw lessons learned; and make recommendations on challenges, promising practices, gaps, and priority areas for DCHA/OFDA support during 2010 and 2011. The review was intended for DCHA/OFDA program planning purposes and also potentially as an advocacy tool to guide other donors in planning CMAM support in the region. After all four countries have been reviewed, FANTA-2 will develop a synthesis report. The current document presents a summary report on CMAM in Burkina Faso only.
more
The health and socioeconomic crisis triggered by the COVID-19 pandemic has hit the countries of Latin America hard and laid bare the profound inequities about which numerous international, regional and nat
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ional reports have sounded warnings in recent decades. In this context, the historical political and economic exclusion and marginalization of the more than 800 indigenous peoples in the region has been accentuated as a result of insufficient State responses to the crisis, which have not adequately considered the collective rights of these peoples and have had little cultural relevance.
This document provides an overview of the situation of indigenous peoples in the region in the face of the COVID-19 pandemic. It analyses both the State’s and indigenous peoples’ own responses to the crisis, as well as offering a set of recommendations to rectify the neglect of these peoples in the management of the pandemic, centring on their collective rights.
more
This year’s MPI results show that more than two-thirds of the multidimensionally poor—886 millionpeople—live in middle-income countries. A further 440 million live in low-income countries. In both groups, data show, simple
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national averagescan hide enormous inequality inpatterns of povertywithin countries. For instance, in Uganda 55 percentof the population experience multidimensional poverty—similartotheaverage in Sub-Saharan Africa. But Kampala, the capital city, has an MPI rate of sixpercent, whileinthe Karamojaregion, the MPI soars to 96 percent—meaningthat partsof Ugandaspan the extremes of Sub-Saharan Africa.There is even inequality under the same roof. In South Asia, for example, almost a quarter ofchildren under five live in households where at least one child in the household is malnourished but at least one child is not.
There is also inequality among the poor. Findings of the2019 global MPI paint a detailed picture of the many differences in how-and how deeply -people experience poverty. Deprivationsamong the poor varyenormously: in general, higher MPI valuesgo hand in hand with greater variationin the intensity of poverty. Results also show that children suffer poverty more intensely than adults and are more likely to be deprived in all 10 of the MPI indicators, lackingessentialssuch as clean water, sanitation, adequate nutrition or primary education
more
The volume presents data on the surgical burden of disease, disability, congenital anomalies, and trauma, along with health impact and economic analyses of procedures, platforms, and packages to imp
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rove care in settings with severe budget limitations. Essential Surgery identifies 44 surgical procedures that meet the following criteria: they address substantial needs, are cost effective, and are feasible to implement in low- and middle-income countries. If made universally available, the provision of these 44 procedures would avert 1.5 million deaths a year and rank among the most cost effective of all health interventions.
Entire Volume large file: 19 MB!!!
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 delivery, 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 delivery, 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
Journal of Biosocial Science / Volume 34 / Issue 04 / October 2002, pp 525 - 539
DOI: DOI:10.1017/S0021932002005254, Published online: 24 September 2002
This paper examines determinants of one aspect of sexual behaviour – coital frequency – among 2188 married women in the Central African Re
...
public using a secondary analysis of data from the Demographic and Health Survey of 1994–95. Female genital cutting (or circumcision) is practised in the Central African Republic and self-reported circumcision status was included in the questionnaire enabling it to be examined as a possible determinant of coital frequency. Multiple logistic regression was used to find a subset of factors independently associated with coital frequency.
Decreased coital frequency was found in those who had longer duration of marriage, those who were not the most recent wife in a polygamous marriage and those who had more surviving children. Coital frequency was higher in more educated women and those not contracepting because they wanted to get pregnant. After adjusting for confounders no association between
female genital cutting and coital frequency was found. The extent to which women can control coital frequency in this culture is not known and fertility desires may override any negative effects of circumcision on sexual pleasure.
It was therefore not possible to draw conclusions about how female genital cutting affects a woman’s desire for sexual intercourse and consequently there is a need to develop research methods further to investigate this question.
more
The United Nations Development Programme (UNDP) today released two new data dashboards that highlight the huge disparities in countries’ abilities to cope with and recover from the COVID-19 crisis.
The pandemic is more than a global
...
health emergency. It is a systemic human development crisis, already affecting the economic and social dimensions of development in unprecedented ways. Policies to reduce vulnerabilities and build capacities to tackle crises, both in the short and long term, are vital if individuals and societies are to better weather and recover from shocks like this.
more
Covid-19 Epidemiological Surveillance Guide: Public Health Emergency of National Importance for Coronavirus Disease 2019 - version 4
Healthy Settings, a key component of Malawi’s Health Sector Strategic Plan (HSSP) 2011–2016, is the World Health Organization’s (WHO) holistic community-led approach to achieving
...
health improvement by addressing social determinants of health, an approach which is central to the current WHO framework on integrated people-centred health services. Healthy Settings projects by their construct have many different components which vary from one group and community to another depending on their priorities: from housing, hospital improvements and waste management to “softer” interventions like leadership skills training and health promotion. It can be challenging to find relevant indicators to monitor and assess the impact of such a complex holistic project, this paper explores if social capital data can provide useful impact assessment indicators at the start of such a project.
more
The Global Burden of Disease Study (GBD) began 30 years ago with the goal of providing timely, valid and relevant assessments of critical health outcomes. Over this period, the GBD has become progressively more granular. The latest iteration provide
...
s assessments of thousands of outcomes for diseases, injuries and risk factors in more than 200 countries and territories and at the subnational level in more than 20 countries. The GBD is now produced by an active collaboration of over 8,000 scientists and analysts from more than 150 countries. With each GBD iteration, the data, data processing and methods used for data synthesis have evolved, with the goal of enhancing transparency and comparability of measurements and communicating various sources of uncertainty. The GBD has many limitations, but it remains a dynamic, iterative and rigorous attempt to provide meaningful health measurement to a wide range of stakeholders.
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