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The IDF Diabetes Atlas report highlights the disproportionate prevalence of type 2 diabetes (T2D) among Indigenous Peoples globally. It emphasizes the social and health disparities resulting from colonization, loss of traditional practices, and syst
...
emic inequities. The report includes prevalence data across various Indigenous populations, identifying significant variability and often higher rates among Indigenous women compared to men. The report calls for culturally responsive and community-driven interventions to address diabetes prevention and management while advocating for better data collection and representation to support Indigenous communities worldwide.
more
Background
The objective of this study was to investigate the effects of reduction, cessation, and resumption of smoking on cancer development.
Methods
The authors identified 893,582 participants who currently smoked, had undergone a health scr
...
eening in 2009, and had a follow-up screening in 2011. Among them, 682,996 participated in a third screening in 2013. Participants were categorized as quitters, reducers I (≥50% reduction), reducers II (<50% reduction), sustainers (referent), or increasers (≥20% increase). Outcome data were obtained through December 31, 2018.
Results
Reducers I exhibited a decreased risk of all cancers (adjusted hazard ratio [aHR], 0.96; 95% confidence interval [CI], 0.93-0.99), smoking-related cancers (aHR, 0.95; 95% CI, 0.92-0.99), and lung cancer (aHR, 0.83; 95% CI, 0.77-0.88). Quitters had the lowest risk of all cancers (aHR, 0.94; 95% CI, 0.92-0.96), smoking-related cancers (aHR, 0.91; 95% CI, 0.89-0.93), and lung cancer (aHR, 0.79; 95% CI, 0.76-0.83). In further analysis with 3 consecutive screenings, additional smoking reduction (from reducers II to reducers I) lowered the risk of lung cancer (aHR, 0.74; 95% CI, 0.58-0.94) in comparison with sustainers. Quitting among reducers I further decreased the risk of all cancers (aHR, 0.90; 95% CI, 0.80-1.00), smoking-related cancers (aHR, 0.81; 95% CI, 0.81-0.92), and lung cancer (aHR, 0.66; 95% CI, 0.52-0.84) in comparison with sustainers. Smoking resumption after quitting, even at a lower level, increased the risk of smoking-related cancers (aHR, 1.19; 95% CI, 1.06-1.33) and lung cancer (aHR, 1.48; 95% CI, 1.21-1.80) in comparison with sustained quitting.
Conclusions
Smoking cessation and, to a lesser extent, smoking reduction decreased the risks of cancer. Smoking resumption increased cancer risks in comparison with sustained quitting.
more
The article analyzes the prevalence and risk factors of chronic respiratory diseases, focusing on sub-Saharan Africa. It highlights that environmental exposures, such as biomass fuel usage and air pollution, significantly contribute to respiratory health
...
issues in the region. The research underlines the limited healthcare infrastructure, insufficient diagnostic tools, and the need for comprehensive data collection to better understand the burden of respiratory diseases. The authors advocate for targeted public health interventions, improved access to healthcare, and policies aimed at reducing exposure to risk factors to mitigate the prevalence of respiratory conditions.
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An Estimate of the Prevalence of COPD in Africa: A Systematic Analysis
Adeloye, D.; Basquil, C.; Papana, A.; et al.
COPD: Journal of Chronic Obstructive Pulmonary Disease
(2014)
CC2
The article provides a systematic analysis estimating the prevalence of Chronic Obstructive Pulmonary Disease (COPD) across Africa. It highlights the significant health burden COPD imposes on the continent, emphasizing varying prevalence rates influ
...
enced by factors such as tobacco smoking, exposure to biomass fuel, and occupational hazards. The analysis reveals substantial gaps in data and disparities in COPD diagnosis and management across different African countries. The authors call for more comprehensive data collection, increased awareness, and better healthcare infrastructure to effectively address and manage COPD in Africa.
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Malar J 23, 333 (2024). https://doi.org/10.1186/s12936-024-05165-w.
Prioritization of spending on prevention, anti-malarial medicines, and health systems strengthening can fight incident cases and fatalities simultaneously, especially in resource-
...
scarce, malaria-endemic countries. Furthermore, improving the availability, frequency of collection, and quality of detailed disaggregated spending data is essential to support work that strengthens the evidence base on spending efficiency and work that improves understanding of how spending on malaria could be leveraged to bridge gaps in equity across population groups.
more
The Severe Malaria Observatory (SMO) is a global knowledge platform designed to enable professionals working on severe malaria, such as researchers, clinicians, public health experts, programme managers, policymakers and technical partners, to acces
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s, share and analyse reliable data on malaria complications.
more
The ACT Consortium was an international research collaboration dedicated to evaluating the effectiveness, safety and implementation of artemisinin-based combination therapies (ACTs) for treating malaria. Operating across multiple countries in Africa and Asia, the consortium conducted over 25 studies
...
focused on improving malaria case management, drug delivery, diagnostic practices and patient outcomes. Emphasising interdisciplinary research, the consortium generated robust evidence to inform national malaria control policies and global health strategies. This website serves as a comprehensive archive of the consortium's work, providing researchers, policymakers, and programme implementers in global health and infectious disease control with access to protocols, guidance documents, data tools, and peer-reviewed publications.
Accessed on 15/0//2025.
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Malaria No More is a non-profit organisation dedicated to eradicating malaria, a preventable and treatable disease, in our lifetime. Through innovative partnerships, advocacy and data-driven solutions, Malaria No More works globally to ensure access
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to prevention tools, diagnostics and treatment, particularly in vulnerable regions. Malaria No More focuses on high-impact campaigns, technological innovation and policy engagement, collaborating with governments, health organisations and private sector partners to accelerate progress towards malaria eradication and save lives.
more
The Malaria Atlas Project (MAP) is a global research initiative that provides high-resolution, evidence-based spatial data on malaria transmission, risk and impact. MAP combines field data, satellit
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e imagery, and advanced geostatistical modelling to deliver open-access maps, datasets, and analytical tools that support malaria control and elimination strategies worldwide. MAP empowers researchers, policymakers, and public health practitioners by providing them with accurate, up-to-date geographic insights to inform resource allocation and intervention planning.
more
The African Leaders Malaria Alliance (ALMA) is a coalition of African heads of state and government who are committed to accelerating the elimination of malaria and improving health outcomes across the continent. Through its scorecard tools, advocac
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y campaigns, and partnerships with regional and global health organisations, ALMA provides a platform for political leadership, accountability, and data-driven decision-making.
more
The Guidelines for the Use of the APCA African Palliative Outcome Scale (POS) has been developed by the APCA, in collaboration with
stakeholders, to help appropriately trained health practitioners and researchers across the region to utilise t
...
he APCA African POS in their work place (Powell et al, 2007; Warria et al, 2007). Not only do the guidelines provide a clear rationale for measuring palliative care outcomes, but they also outline practical information on how to use the tool to collect data and analyse its results. So why is there a need for these guidelines?
Palliative care as a concept and discipline is not well understood across Africa, and its development is still embryonic in many countries. While there are many obstacles that hinder palliative care development on the continent, a key challenge is the lack of accurate information about the palliative care being provided and its outcomes. The APCA African POS is a useful tool to help us measure these outcomes and, given that
measuring palliative care outcomes remains a relatively new concept, it is important to guide people on how to use the tool. Of course, these guidelines are not intended to address everything related to the measurement of palliative care outcomes; they contain only essential information for providers. More detailed information on the use of outcome tools, and in particular within the research setting, can be gained from contacting relevantly trained professionals.
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The report showed commitments made three decades ago to protect the rights of children remain unfulfilled for millions. Violence still affects countless children. Discrimination based on age, gender, disability, sexual orientation and religion harms children worldwide.
Key factors include a lack
...
of investment in critically important services. Most countries fall well short of spending the 5-6% of GDP needed to ensure universal coverage of essential health care. And foreign aid, which many lower income countries rely on, is falling short in areas such as health, education, protection and child care.
Another factor, the report said, is the lack of quality data. Governments tend to rely on data that reflects national averages, making it difficult to identify the needs of specific children and to monitor progress. Comprehensive data collection and disaggregation of data by gender, age, disability and locality, are increasingly important as rights violations disproportionately affect disadvantaged children.
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Recent increases in family planning (FP) use have been reported among women of reproductive age in union (WRAU) in Senegal. However, trends have not been monitored among harder-to-reach groups (including adolescents, unmarried and rural poor women), key to understanding whether FP progress is equita
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ble. We combined data from six Demographic and Health Surveys conducted in Senegal between 1992/93 and 2014. We examined FP trends over time among WRAU and subgroups, and trends in knowledge of FP and intention to use among women with unmet need for FP. Our results show that percent demand satisfied is lower among rural poor women and adolescents than WRAU, although higher among unmarried women. Marked recent increases have been observed in all subgroups, however fewer than 50% of women in need of FP use modern contraception in Senegal. Knowledge of FP has risen steadily among women with unmet need; however, intention to use FP has remained stable at around 40% since 2005 for all groups except unmarried women (75% of whom intend to use). Significant progress in meeting the need for FP has been achieved in Senegal, but more needs to be done particularly to improve acceptability of FP, and to strategically target interventions toward adolescents and rural poor women.
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The second ECDC/EFSA/EMA joint report on the integrated analysis of antimicrobial consumption (AMC) and antimicrobial resistance (AMR) in bacteria from humans and food-producing animals addressed data obtained by the Agencies’ EU-wide surveillance
...
networks for 2013–2015. AMC in both sectors, expressed in mg/kg of estimated biomass, were compared at country and European level. Substantial variations between countries were observed in both sectors. Estimated data on AMC for pigs and poultry were used for the first time. Univariate and multivariate analyses were applied to study associations between AMC and AMR. In 2014, the average AMC was higher in animals (152 mg/kg) than in humans (124 mg/kg), but the opposite applied to the median AMC (67 and 118 mg/kg, respectively). In 18 of 28 countries, AMC was lower in animals than in humans. Univariate analysis showed statistically-significant (p < 0.05) associations between AMC and AMR for fluoroquinolones and Escherichia coli in both sectors, for 3rd- and 4th-generation cephalosporins and E. coli in humans, and tetracyclines and polymyxins and E. coli in animals. In humans, there was a statistically-significant association between AMC and AMR for carbapenems and polymyxins in Klebsiella pneumoniae. Consumption of macrolides in animals was significantly associated with macrolide resistance in Campylobacter coli in animals and humans. Multivariate analyses provided a unique approach to assess the contributions of AMC in humans and animals and AMR in bacteria from animals to AMR in bacteria from humans. Multivariate analyses demonstrated that 3rd- and 4th-generation cephalosporin and fluoroquinolone resistance in E. coli from humans was associated with corresponding AMC in humans, whereas resistance to fluoroquinolones in Salmonella spp. and Campylobacter spp. from humans was related to consumption of fluoroquinolones in animals. These results suggest that from a ‘One-health’ perspective, there is potential in both sectors to further develop prudent use of antimicrobials and thereby reduce AMR.
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Since the release of the first volume in May 2020, the COVID-19 pandemic has continued to rage around the world. By mid-March, 2021, countries around the globe had reported over 123 million cases—a nearly five-fold increase since this report’s previous volume—and over 2.7 million deaths attrib
...
uted to the disease. And while new case loads are currently on the rise again, the global health community has already administered almost 400 million doses of vaccines, at last offering some signs of hope and progress.
Economic impacts threaten to undo decades of recent progress in poverty reduction, child nutrition and gender equality, and exacerbate efforts to support refugees, migrants, and other vulnerable communities. National and local governments—together with international and private-sector partners—must deploy vaccines as efficiently, safely and equitably as possible while still monitoring for new outbreaks and continuing policies to protect those who do not yet have immunity.
More than ever, the world needs reliable and trustworthy data and statistics to inform these important decisions. The United Nations and all member organizations of the Committee for the Coordination of Statistical Activities (CCSA) collect and make available a wealth of information for assessing the multifaceted impacts of the pandemic. This report updates some of the global and regional trends presented in Volume I and offers a snapshot of how COVID-19 continues to affect the world today across multiple domains.
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sobre la base de las orientaciones actuales de la OMS, 31 de mayo de 2021. Memorando
This aide-mémoire presents information on use and procurement of masks for community outreach interventions, with a focus on those for malaria, neglected tropical diseases, tuberculosis, HIV/AIDS and vaccine-preve
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ntable diseases. It details requirements for the different types of professionals involved (e.g. health workers, social mobilizers, data collectors, logisticians, insecticide spraying personnel, etc.), based on their level of risk of potential exposure to SARS-CoV-2.
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Introduction: Considering the global prevalence of coronavirus disease 2019 (COVID-19), a vaccine is being developed to control the disease as a complementary solution to hygiene measures—and better, in social terms, than social distancing. Given that a vaccine will eventually be produced, informa
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tion will be needed to support a potential campaign to promote vaccination.
Objective: The aim of this study was to determine the variables affecting the likelihood of refusal and indecision toward a vaccine against COVID-19 and to determine the acceptance of the vaccine for different scenarios of effectiveness and side effects.
Materials and Methods: A multinomial logistic regression method based on the Health Belief Model was used to estimate the current methodology, using data obtained by an online anonymous survey of 370 respondents in Chile.
Results: The results indicate that 49% of respondents were willing to be vaccinated, with 28% undecided or 77% of individuals who would potentially be willing to be inoculated. The main variables that explained the probability of rejection or indecision were associated with the severity of COVID-19, such as, the side effects and effectiveness of the vaccine; perceived benefits, including immunity, decreased fear of contagion, and the protection of oneself and the environment; action signals, such as, responses from ones' family and the government, available information, and specialists' recommendations; and susceptibility, including the contagion rate per 1,000 inhabitants and relatives with COVID-19, among others. Our analysis of hypothetical vaccine scenarios revealed that individuals preferred less risky vaccines in terms of fewer side effects, rather than effectiveness. Additionally, the variables that explained the indecision toward or rejection of a potential COVID-19 vaccine could be used in designing public health policies.
Conclusions: We discovered that it is necessary to formulate specific, differentiated vaccination-promotion strategies for the anti-vaccine and undecided groups based on the factors that explain the probability of individuals refusing or expressing hesitation toward vaccination.
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Global Epidemiology of Buruli Ulcer, 2010–2017, and Analysis of 2014 WHO Programmatic Targets
Omansen, T.F.; A. Erbowor-Becksen, R. Yotsu,
Emerging Infectious Diseases (EID) Journal
(2019)
C_CDC
Emerging Infectious Diseases • www.cdc.gov/eid • Vol. 25, No. 12, December 2019 2183
Buruli ulcer is a neglected tropical disease caused by Myocobacterium ulcerans; it manifests as a skin lesion, nodule, or ulcer that can be extensive and disabling. To assess the global burden and the progress
...
on disease control, we analyzed epidemiologic data reported by countries to the World Health Organization during 2010–2017.
more
Baseline Mapping of Neglected Tropical Diseases in Africa: The Accelerated WHO/AFRO Mapping Project
Rebollo M.P., Onyeze A.N., Tiendrebeogo A. et al
The American Society of Tropical Medicine and Hygiene
(2021)
C2
ajtmh.20-1538 Volume 104, 6. Mapping is a prerequisite for effective implementation of interventions against neglected tropical diseases (NTDs). Before the accelerated World Health Organization (WHO)/Regional Office for Africa (AFRO) NTD Mapping Pr
...
oject was initiated in 2014, mapping efforts in many countries were frequently carried out in an ad hoc and nonstandardized fashion. In 2013, there were at least 2,200 different districts (of the 4,851 districts in the WHO African region) that still required mapping, and in many of these districts, more than one disease needed to be mapped. During its 3-year duration from January 2014 through the end of 2016, the project carried out mapping surveysfor one ormore NTDs in at least 2,500 districts in 37 African countries. At the end of 2016, most (90%) of the 4,851 districts had completed the WHO-required mapping surveys for the five targeted Preventive Chemotherapy (PC)-NTDs, and the impact of this accelerated WHO/AFRO NTD Mapping Project proved to be much greater than just the detailed mapping results themselves. Indeed, the AFRO Mapping
Project dramatically energized and empowered national NTD programs, attracted donor support for expanding these programs, and developed both a robust NTD mapping database and data portal. By clarifying the prevalence and burden
of NTDs, the project provided not only the metrics and technical framework for guiding and tracking program implementation and success but also the research opportunities for developing improved diagnostic and epidemiologic sampling tools for all 5 PC-NTDs—lymphatic filariasis, onchocerciasis, schistosomiasis, soil-transmitted helminthiasis, and trachoma.
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Background
Access to medicines is important for long‐term care of cardiovascular diseases and hypertension. This study provides a cross‐country assessment of availability, prices, and affordability of cardiovascular disease and hypertension medicines to identify areas for improvement in access
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to medication treatment.
Methods and Results
We used the World Health Organization online repository of national essential medicines lists (EMLs) for 53 countries to transcribe the information on the inclusion of 12 cardiovascular disease/hypertension medications within each country's essential medicines list. Data on availability, price, and affordability were obtained from 84 surveys in 59 countries that used the World Health Organization's Health Action International survey methodology. We summarized and compared the indicators across lowest‐price generic and originator brand medicines in the public and private sectors and by country income groups. The average availability of the select medications was 54% in low‐ and lower‐middle‐income countries and 60% in high‐ and upper‐middle‐income countries, and was higher for generic (61%) than brand medicines (41%). The average patient median price ratio was 80.3 for brand and 16.7 for generic medicines and was higher for patients in low‐ and lower‐middle‐income countries compared with high‐ and upper‐middle‐income countries across all medicine categories. The costs of 1 month's antihypertensive medications were, on average, 6.0 days’ wage for brand medicine and 1.8 days’ wage for generics. Affordability was lower in low‐ and lower‐middle‐income countries than high‐ and upper‐middle‐income countries for both brand and generic medications.
Conclusions
The availability and accessibility of pharmaceuticals is an ongoing challenge for health systems. Low availability and high costs are major barriers to the use of and adherence to essential cardiovascular disease and antihypertensive medications worldwide, particularly in low‐ and lower‐middle‐income countries.
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