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PlosOne January 20, 2021
https://doi.org/10.1371/journal.pone.0241899
Antibiotic fixed dose combinations (FDCs) can have clinical advantages such as improving effectiveness and adherence to therapy. However, high use of potentially inappropriate FDCs has been reported, with implications for antim
...
icrobial resistance (AMR) and toxicity.
more
Development assistance for health (DAH) has increased substantially in recent years and is seen as important to the improvement of health and health systems in developing countries. As a result, there has been increasing interest in tracking and understanding these resource flows from the global hea
...
lth community. A number of datasets, each with its own strengths and weaknesses, are available to track DAH. In this article we review the available datasets on DAH and summarize the strengths and weaknesses of each of these datasets to help researchers make the best choice of which to use to inform their analysis. Finally, we also provide recommendations about how each of these datasets could be improve
more
The Lancet Regional Health - Americas 2024;30: 100681
Published Online 3 February 2024 https://doi.org/10.1016/j.lana.2024.100681
Lancet Glob Health 2015; 385: e387–95. Open Access
World's largest Science, Technology & Medicine Open Access book publisher
Chapter 7 from the book People's Movements in the 21st Century - Risks, Challenges and Benefits
Childhood multidrug-resistant tuberculosis in the European Union and European Economic Area: an analysis of tuberculosis surveillance data from 2007 to 2015
C. Ködmön; M. van den Boom; P. Zucs, et al.
European Centre for Disease Prevention and Control
(2017)
CC
15. Euro Surveill. 2017;22(47):pii=17-00103
Tracking aid for the WHA nutrition targets: Global spending in 2015 and a roadmap to better data
Alimonte, Mary D'; Thacher, Emily; LeMier, Ryan; Clift, Jack
Results for Development (R4D)
(2018)
C1
In 2017, the World Bank and partners created the Global Investment Framework for Nutrition as a roadmap towards achieving the World Health Assembly (WHA) nutrition targets by 2025. The framework estimates that the world needs to mobilize an annual additional investment of $7 billion per year to scal
...
e-up nutrition-specific interventions at the level needed to achieve the global targets. However, the world is off-track to meet the global targets. And it is unclear whether additional resources will be mobilized for life-saving and cost-effective nutrition-specific interventions, or whether donor support will be enough to meet the annual resource need established by the framework.
more
Results from studies evaluating the effectiveness of focused psychosocial support interventions in children exposed to traumatic events in humanitarian settings in low-income and middle-income countries have been inconsistent, showing varying results by setting and subgroup (eg, age or gender). We a
...
imed to assess the effectiveness of these interventions, and to explore which children are likely to benefit most.
Lancet Glob Health 2018; 6: e390–400
more
BMC Res Notes (2016) 9:182 DOI 10.1186/s13104-016-1993-7
Improving the quality of hospital antibiotic use is a major goal of WHO’s global action plan to combat antimicrobial resistance. The WHO Essential Medicines List Access, Watch, and Reserve (AWaRe) classification could facilitate simple stewardship interventions that are widely applicable globally.
...
We aimed to present data on patterns of paediatric AWaRe antibiotic use that could be used for local and national stewardship interventions.
www.thelancet.com/lancetgh Vol 7 July 2019
more
nContraception and Reproductive Medicine (2017) 2:26 DOI 10.1186/s40834-017-0053-6
Young women in Burkina Faso and Mali are increasingly using modern contraceptives for family planning; however, the LAPM contraceptive prevalence rate remains low. Our analysis indicates that social norms around idea
...
l family size for both men and women continue to drive young women’s choices around family planning and impede use of LAPMs. To increase modern contraceptive use and curb fertility rates, local governments and development organizations should focus on women’s empowerment and include male partners.
more
Since 2001, several Demographic and Health Surveys (DHS) include HIV
testing. For many countries, in particular in sub-Saharan Africa, DHS are
the only national source of data in general population. Several DHS collect
latitude and longitude of s
...
urveyed clusters but the sampling method is not
appropriate to derive local estimates: sample size is not large enough for a
direct spatial interpolation.
We developed a generic approach to map spatial regional trends of HIV
prevalence from DHS. We present how our results from Burkina Faso 2003
DHS shed new light on HIV epidemics.
more
INTRODUCTION: The COVID-19 pandemic has disrupted health systems around the world. The objectives of this study are to estimate the overall effect of the pandemic on essential health service use and outcomes in Mexico, describe observed and predicted trends in services over 24 months, and to estimat
...
e the number of visits lost through December 2020.
METHODS: We used health information system data for January 2019 to December 2020 from the Mexican Institute of Social Security (IMSS), which provides health services for more than half of Mexico's population-65 million people. Our analysis includes nine indicators of service use and three outcome indicators for reproductive, maternal and child health and non-communicable disease services. We used an interrupted time series design and linear generalised estimating equation models to estimate the change in service use and outcomes from April to December 2020. Estimates were expressed using average marginal effects on the risk ratio scale.
RESULTS: The study found that across nine health services, an estimated 8.74 million patient visits were lost in Mexico. This included a decline of over two thirds for breast and cervical cancer screenings (79% and 68%, respectively), over half for sick child visits and female contraceptive services, approximately one-third for childhood vaccinations, diabetes, hypertension and antenatal care consultations, and a decline of 10% for deliveries performed at IMSS. In terms of patient outcomes, the proportion of patients with diabetes and hypertension with controlled conditions declined by 22% and 17%, respectively. Caesarean section rate did not change.
CONCLUSION: Significant disruptions in health services show that the pandemic has strained the resilience of the Mexican health system and calls for urgent efforts to resume essential services and plan for catching up on missed preventive care even as the COVID-19 crisis continues in Mexico.
more
In the region, it is estimated that there are over 650 million persons with disabilities. However, without accurate, timely and disaggregated data, countries are unable to develop effective policies and programmes, monitor the wellbeing of persons w
...
ith disabilities and evaluate the equity and impact of development efforts. This endangers country commitments to ‘leave no one behind’ and undermines their obligations to the Convention on the Rights of Persons with Disabilities.
This groundbreaking report demonstrates the importance of ensuring data is inclusive and provides recommendations for immediate action in order to improve the collection, analysis and reporting of disability data. We hope this report will be used as a tool for future advocacy and ultimately better data for all.
more
Screening programmes for tuberculosis (TB) among immigrants rarely consider the heterogeneity of
risk related to migrants’ country of origin. We assess the performance of a large screening programme in asylum seekers by analysing (i) the difference in yield and numbers needed to screen (NNS) by c
...
ountry and WHO-reported TB burden, (ii) the possible impact of screening thresholds on sensitivity, and (iii) the value of WHO-estimated TB burden to improve the prediction accuracy of screening yield.
more