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1
Journal of Cancer Education
https://doi.org/10.1007/s13187-020-01935-7
International Journal of Basic & Clinical Pharmacology 5(6):2290-2294
DOI: 10.18203/2319-2003.ijbcp20164081
Wet markets have been implicated in multiple zoonotic outbreaks, including COVID-19. They are also a conduit for legal and illegal trade in wildlife, which threatens thousands of species. Yet wet markets supply food to millions of people around the world, and differ drastically in their physical com
...
position, the goods they sell, and the subsequent risks they pose. As such, policy makers need to know how to target their actions to efficiently safeguard human health and biodiversity without depriving people of ready access to food.
more
BMJ 2020; 371 doi: https://doi.org/10.1136/bmj.m3086
Using infectious diseases sensitive to climate as indicators of climate change helps stimulate and inform public health responses
The Lancet, Planetary Health Volume 5, ISSUE 11, e766-e774, November 01, 2021
Increasing human demand for water and changes in water availability due to climate change threatens water security worldwide. Additionally, exploitation of water resources induces stress on freshwater environments, leadi
...
ng to biodiversity loss and reduced ecosystem services. We aimed to conduct a spatially detailed assessment of global human water stress for low to high environmental flow (EF) protection.
more
The Scientific Conceptual Framework for Land Degradation Neutrality (LDN) provides a scientific foundation for understanding, implementing and monitoring LDN. It has been designed to create a bridge between the vision and the practical implementation of LDN, by defining LDN in operational terms. The
...
conceptual framework is a product of the UNCCD Science-Policy Interface.
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Die Klimakrise stellt die größte Bedrohung der menschlichen Gesundheit im21. Jahrhundert dar. Die mit ihr
einhergehenden Umweltveränderungen, die unter anderem zu Hitzewellen, Überflutungen und Unterernährung durch
Ernährungsunsicherheit führen, wirken sich bereits heute negativ auf die Ge
...
sundheit einer großen Anzahl von Menschen aus.
more
Globalization and Health (2021) 17:74 https://doi.org/10.1186/s12992-021-00722-3
PlosOne December 10, 2014 https://doi.org/10.1371/journal.pone.0111913
Plastic pollution is ubiquitous throughout the marine environment, yet estimates of the global abundance and weight of floating plastics have lacked data, particularly from the Southern Hemisphere and remote regions. Here we re
...
port an estimate of the total number of plastic particles and their weight floating in the world's oceans from 24 expeditions (2007–2013) across all five sub-tropical gyres, costal Australia, Bay of Bengal and the Mediterranean Sea conducting surface net tows (N = 680) and visual survey transects of large plastic debris (N = 891). Using an oceanographic model of floating debris dispersal calibrated by our data, and correcting for wind-driven vertical mixing, we estimate a minimum of 5.25 trillion particles weighing 268,940 tons. When comparing between four size classes, two microplastic <4.75 mm and meso- and macroplastic >4.75 mm, a tremendous loss of microplastics is observed from the sea surface compared to expected rates of fragmentation, suggesting there are mechanisms at play that remove <4.75 mm plastic particles from the ocean surface.
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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
...
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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Parte I - Baciloscopía
La tuberculosis persiste como una grave problemática para la salud pública a nivel internacional y nacional dado que continúa siendo una de las diez primeras causas de morbilidad y mortalidad derivada de enfermedades infectocontagiosas en la población.
Objetivos:
- Reforzar la importancia del informe anatomopatológico en el manejo del cáncer
de mama, como elemento fundamental para la toma de decisiones.
- Estandarizar los procedimientos de las técnicas anatomopatológicas a nivel
nacional.
- Establecer los factores pronósticos morfoló
...
gicos, inmunohistoquímicos y
moleculares validados actualmente.
- Establecer un protocolo de informe anatomopatológico completo, reproducible y
estandarizado, orientado a contribuir en el manejo clínico y en la elaboración de
bases de datos.
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En 2009, le Conseil international des infirmières (CII) et l’Organisation mondiale de la Santé (OMS) publiaient la première édition des compétences de base pour les soins infirmiers en cas de catastrophe.
Dans la documentation publiée à
...
l’occasion de la Journée internationale des infirmières en 2019 (La profession infirmière, une voix faite pour diriger – La santé pour tous 2), le CII souligne que les épidémies, les pandémies et la violence sont autant de défis sanitaires majeurs à l’échelle
mondiale, avec un impact potentiellement négatif sur notre santé.
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La Plateforme de partenariat multipartite sur la résistance aux antimicrobiens a pour mission de catalyser une action mondiale de lutte contre la résistance aux antimicrobiens en favorisant la coopération, à tous les niveaux, entre des partenaires très variés qui soutiennent
...
l’approche «Une seule santé» afin de bâtir, pour les générations actuelles et futures, un monde plus sain, plus durable et plus résilient où les médicaments d’importance vitale que sont les antimicrobiens sont préservés et accessibles à tous et à toutes.
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vous pouvez télécharger ici les dernières mises à jour
Preventive chemotherapy with praziquantel (PZQ) is the cornerstone of schistosomiasis control. However, a single dose of PZQ (40 mg/kg) does not cure all infections. Repeated doses of PZQ at short intervals might increase efficacy in terms of cure rate (CR) and intensity reduction rate (IRR). Here,
...
we determined the efficacy of a single versus four repeated treatments with PZQ on Schistosoma mansoni infection in school-aged children from Côte d'Ivoire, using two different diagnostic tests.
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Background:Tracking aid fl ows helps to hold donors accountable and to compare the allocation of resources in relation to health need. With the use of data reported by donors in 2015, we provided estimates of offi cial development assistance and grants from the Bill & Melinda Gates Foundation (coll
...
ectively termed ODA+) to reproductive, maternal, newborn, and child health for 2013 and complete trends in reproductive, maternal, newborn, and child health support for the period 2003–13. Methods: We coded and analysed fi nancial disbursements to reproductive, maternal, newborn, and child health to all recipient countries from all donors reporting to the creditor reporting system database for the year 2013. We also revisited disbursement records for the years 2003–08 and coded disbursements relating to reproductive and sexual health activities resulting in the Countdown dataset for 2003–13. We matched this dataset to the 2015 creditor reporting system dataset and coded any unmatched creditor reporting system records. We analysed trends in ODA+ to reproductive, maternal, newborn, and child health for the period 2003–13, trends in donor contributions, disbursements to recipient countries, and targeting to need.
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We created a dataset to generate estimates of donor-reported ‘official development assistance’ and private grants (ODA+) to reproductive, maternal, newborn and child health (RMNCH) by donor, recipient country and activity type over the period 2003–2013. We collected disbursement information fr
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om the Organisation for Economic Co-operation and Development Creditor Reporting System (CRS) in January 2015. All 2.1 million records across all sectors were coded based on donor name, project title, short and long descriptions, and CRS code describing the purpose of the disbursement. We classified records according to the degree to which they would promote attainment of Millennium Development Goals 4 and 5 (reproductive and sexual health, maternal and newborn health, and child health). We also classified records according to whether they supported prenatal and neonatal health (PNH). The dataset includes project funding as well as allocating shares of general budget support, health sector support and basket funding. The data can be used to analyse resource flows to RMNCH or to other purposes or beneficiaries of ODA+.
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