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Toolboxes
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Data from the 2011 Ethiopia Demographic and Health Survey
Data from the 2011 Ethiopia Demographic and Health Survey
New data indicates declining confidence in childhood vaccines of up to 44 percentage points in some countries during the COVID-19 pandemic
New UNICEF report shows 67 million children missed out on one or more vaccinations over three years due to
...
service disruption caused by strained health systems and diversion of scarce resources, conflict and fragility, and decreased confidence.
more
DHS Working Papers No. 69
This paper uses data from the three Indian National Family Health Surveys (1992-93, 1998-99, 2005-06) to examine how the relationship between household wealth and chil ... d mortality evolved during a time of significant economic change in India. The main predictor is a new measure of household wealth that captures changes in wealth over time. Outcomes include neonatal mortality, postneonatal mortality, child mortality, and under-five mortality. Multivariate analysis is conducted at the national, urban, rural, and regional levels.
Results indicate that the overall relationship between household wealth and mortality weakened over time, as evidenced by the coefficients for under-five mortality at the national level. more
This paper uses data from the three Indian National Family Health Surveys (1992-93, 1998-99, 2005-06) to examine how the relationship between household wealth and chil ... d mortality evolved during a time of significant economic change in India. The main predictor is a new measure of household wealth that captures changes in wealth over time. Outcomes include neonatal mortality, postneonatal mortality, child mortality, and under-five mortality. Multivariate analysis is conducted at the national, urban, rural, and regional levels.
Results indicate that the overall relationship between household wealth and mortality weakened over time, as evidenced by the coefficients for under-five mortality at the national level. more
Accessed on 31.01.2020
The Senegal Continuous Survey is designed to provide yearly data for monitoring the population and health situation in Senegal through both a Demographic and
...
Health Survey and Service Provision Assessment. The 4th phase of the five-year Continuous Survey was implemented in 2016.
more
We combine data on Chinese development projects with data from Demographic and Health Surveys to study the impact of Chinese aid on household welfa
...
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
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
Background: Data on burden of peripheral artery disease (PAD) and its attributable risk factors are valuable for policymaking. We aimed to estimate the burden and risk factors for PAD from 1990 to 2019.
Methods: We extracted the
...
data on prevalence, incidence, death, years lived with disability (YLDs), and years of life lost (YLLs) from the Global Burden of Disease Study 2019 to measure PAD burden. Moreover, the attributable burden to PAD risk factors was also estimated.
Results: Globally, in 2019, 113,443,017 people lived with PAD and 10,504,092 new cases occurred, resulting in 74,063 deaths, 500,893 YLDs, and 1,035,487 YLLs. The absolute numbers of PAD prevalent and incident cases significantly increased between 1990 and 2019, contrasting with the decline trends in age-standardized prevalence and incidence rates. However, no statistically significant changes were detected in the global age-standardized death or YLL rates. The burden of PAD and its temporal trends varied significantly by location, gender, age group, and social-demographic status. Among all potentially modifiable risk factors, age-standardized PAD deaths worldwide were primarily attributable to high fasting plasma glucose, followed by high systolic blood pressure, tobacco, kidney dysfunction, diet high in sodium, and lead exposure.
Conclusion: PAD remained a serious public health problem worldwide. More strategies aimed at implementing cost-effective interventions and addressing modifiable risk factors should be carried out, especially in regions with high or increasing burden.
more
J Fungi (Basel) . 2019 Aug 16;5(3):75. doi: 10.3390/jof5030075 . Namibia is a sub-Saharan country with one of the highest HIV infection rates in the world. Although care and support services are available that cater for opportunistic infections related to HIV, the main focus is narrow and predominan
...
tly aimed at tuberculosis. We aimed to estimate the burden of serious fungal infections in Namibia, currently unknown, based on the size of the population at risk and available epidemiological data. Data were obtained from the World Health Organization (WHO), Joint United Nations Programme on HIV/AIDS (UNAIDS), and published reports.
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.
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
A toolkit for pharmacists.
Emerging data show that medication errors and adverse events cause significant harm to patients’ health and
well-being. It is estimated that the burden of adverse even
...
ts due to medicines is now comparable to that of
widespread diseases, such as malaria or tuberculosis.1 The impacts of medication errors also represent a
burden for health systems, with the annual cost associated with medication errors estimated at USD 42 billion
worldwideharm
more
KoBo Toolbox
Harvard Humanitarian Intitative
United Nations; International Rescue Committee (IRC), et al.
(2014)
CC
Free and open source tool of choice for tens of thousands of humanitarians, development practitioners, global health workers, and researchers around the world. KoBoToolbox is a suite of tools for field dat
...
a collection for use in challenging environments.Quickly collecting reliable information in a humanitarian crisis – especially following a natural disaster such as a large earthquake or a typhoon taking place in a poor country – is the critical link to saving the lives of the most vulnerable. Download the software directly from the website
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
...
Surveys (RDHS).
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
...
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
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
Africa CDC Institute of Pathogen Genomics (IPG) was launched in November 2019 and operates under the Division of Laboratory Systems and Networks.
IPG coordinate the implementation of molecular diagnostics, pathogen genomics and bioinformatics in National Public
...
Health Institutions (NPHIs) and/or Refe-
-rence Laboratories (NRLs) across Africa.
Africa CDC and APHF are coordinating a continental initiative to maximize the benefits of molecular approaches and pathogen genomics for more effective
outbreak preparedness, prevention, response, and for the control and elimination of endemic diseases in Africa. One of Africa CDC’s flagship initiative is the Africa
Pathogen Genomics Initiative (Africa PGI), a partnership that aims to strengthen laboratory systems and enhance genomic surveillance by equipping the continent’s
public health institutions with the tools, training, and data infrastructure.
About the Project
In 2023, 166 outbreaks and public health events were reported in Africa. This calls for a resilient laboratory systems for timely detection and reporting of current and future outbreaks. This project aims to scale up molecular diagnostic and genomic sequencing-based detection and characterization of outbreaks.
Africa CDC is working with Member States to develop guidance, diagnostic algorithm, training and capacity building to enable outbreak detection, and reporting to inform public health response.
more
Existing data on chronic obstructive pulmonary disease (COPD) prevalence are irregularly distributed around the world, and in many geographic regions data are scarce or even nonexistent. This fact h
...
inders the implementation of adequate preventive and therapeutic interventions to reduce the high burden and costs of COPD. In the current study, we have used the Geographic Information System (GIS) inverse distance weighted (IDW) interpolation technique with the objective of visualising spatial data of COPD prevalence in the world and obtaining a visual impression of the magnitude of this global health problem. GIS has been recognised as an effective tool to display the geographical distribution of data, even when they are few and widely separated, as is the case with the prevalence of COPD.
more
The article introduces Pf-HaploAtlas, a new online tool developed by MalariaGEN to track genetic mutations in the Plasmodium falciparum parasite—the most deadly malaria-causing species. This app allows researchers and public health professionals t
...
o explore global data on drug resistance mutations and genetic variation across thousands of parasite genomes. The tool is designed to improve understanding of how malaria parasites evolve and spread, and to support efforts in monitoring antimalarial drug resistance. With an intuitive interface, Pf-HaploAtlas enables users to visualize haplotype patterns, compare regional differences, and access up-to-date data that can inform control strategies and research.
more
This ECDC overview summarises the number of travel-associated malaria cases reported in the EU/EEA in 2023. The cases are based on confirmed reports through the EpiPulse platform and only include infections acquired outside mainland Europe. The data
...
show the number of cases and the infection rate per 100,000 travellers by country of infection. The aim is to inform public health authorities and travellers about malaria risk. Analyses are limited to locations with repeated cases or sufficient case numbers. Infection rates were calculated using IATA air travel data. The findings reflect reported cases only and do not imply ongoing transmission.
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