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COVID-19 vaccine hesitancy is currently one of the main obstacles to worldwide herd immunity and socioeconomic recovery. Because vaccine coverage can vary between and within countries, it is important
to identify sources of variation so that policies can be tailored to different population groups.
...
In this paper, we analyze the results from a survey designed and implemented in order to identify early adopters and
laggers in six big cities of Latin America. We find that trust in government and science, accurate knowledge about the value of vaccination and vaccine effects, perceived risk of getting sick, and being a student
increase the odds to get vaccinated. We also identify potential laggers as women and populations between 20 and 35 years old who are not students. We discuss specific strategies to promote vaccination among
these populations groups as well as more general strategies designed to gain trust. These findings are specific to the context of Latin America insofar as the underlying factors associated with the choice to be
vaccinated vary significantly by location and in relation to individual-level factors.
more
Climate Change 2021: The Physical Science Basis. Contribution of Working Group I to the Sixth Assessment Report of the Intergovernmental Panel on Climate Change
The frequency of infectious disease epidemics is increasing, and the role of the health sector in the management of epidemics is crucial in terms of response. In the context of infectious disease epidemics, the use of climate-informed early warning systems (EWS) has the potential to increase the eff
...
ectiveness of disease control by intervening before or at the beginning of the epidemic curve, instead of during the downward slope.
Currently, the initiation of interventions is heavily reliant on routine disease surveillance systems – data that often arrive too late for preventative response. However, forecasting of disease outbreaks using surveillance and weather information shows promising potential – there also remains further scope to examine seasonal climate forecasts. By combining these elements in new EWS based on computational models, it will be possible to improve both the timeliness and impact of disease control. The World Health Organization (WHO) is strengthening existing surveillance systems for infectious diseases to enable the development of more robust and timely EWS, which has resulted in the rapid development and innovation of EWS for disease outbreaks.
more
From the start of the COVID-19 pandemic until August 2021, extreme weather events have affected at least 139.2 million people and killed at least 17,242 people in at least 433 unique events. These figures are certainly an underestimate, as they do not include estimates of numbers of people affected
...
by extreme temperatures, or mortality during drought events.
One dimension of the compound risk of COVID-19 and climate extremes was the additional challenge of preparing for and responding to disasters during the pandemic, such as the constraints of physical distancing during evacuations and response operations.
more
Left unabated, climate change will have catastrophic effects on the health of present and future generations. Such effects are already seen in Europe, through more frequent and severe extreme weather events, alterations to water and food systems, and changes in the environmental suitability for infe
...
ctious diseases. As one of the largest current and historical contributors to greenhouse gases and the largest provider of financing for climate change mitigation and adaptation, Europe’s response is crucial, for both human health and the planet. To ensure that health and
wellbeing are protected in this response it is essential to build the capacity to understand, monitor, and quantify health impacts of climate change and the health co-benefits of accelerated action.
more
Today’s children, and their children, are the ones who will live with the consequences of climate change.
Guideline for the handling and the disposal of the remains of people who died of COVID-19
Guia de procedimientos de bioseguridad para la consulta odontologica durant la pandemia por COVID-19
R. D. Blacutt Paniagua; M. V. Larico Rojas; W. S. Hinojosa Gallo
Ministerio de Salud y Deportes Bolivia
(2021)
CC
Guide to bio-safety procedures for dental practices during the COVID-19 pandemic
The COVID-19 pandemic has impacted the world and consequently increased MHPSS needs across various contexts. While National Societies respond to the rising mental health and psychosocial support needs, they are also adapting to and implementing remote support, such as telephone hotlines or other onl
...
ine services. Accordingly, many trainings in psychological first aid (PFA) of staff and volunteers have moved to online platforms.
Throughout the pandemic, the PS Centre developed online approaches, guidances, adaptable tools, videos, podcasts, and other materials on MHPSS. This was to ensure easy access to tools and resources that assist National Societies in their training efforts in MHPSS during COVID-19.
more
Stratégie technique mondiale de lutte contre le paludisme 2016-2030, édition 2021
Pedro Alonso, Kevin Baird, David Brandling-Bennett et al.
World Health Organization (WHO)
(2022)
C_WHO
Guia de diagnostico y tratamiento de COVID-19 en unidades de terapia intensiva - version mayo de 2020
Sociedad Boliviana de Medicina Crítica y Terapia Intensiva
Sociedad Boliviana de Medicina Crítica y Terapia Intensiva Ministerio de Salud Bolivia
(2020)
CC
Guidelines for the diagnosis and treatment of COVID-19 in intensive care units
COVID-19 Management Guide -Version June 2021
Bull World Health Organ 2022;100:50–59 | doi: http://dx.doi.org/10.2471/BLT.21.286689
BMJ Open Science 2021;5:e100202. doi:10.1136/
bmjos-2021-100202
Updated Treatment Guidelines
Job satisfaction among healthcare workers in Ghana and Kenya during the COVID-19 pandemic: Role of perceived preparedness, stress, and burnout
Afulani PA, Nutor JJ, Agbadi P, Gyamerah AO, Musana J, Aborigo RA, et al.
PLOS Global Public Health
(2021)
CC
The COVID-19 pandemic has affected job satisfaction among healthcare workers; yet this has not been empirically examined in sub-Saharan Africa (SSA). We addressed this gap by examining job satisfaction and associated factors among healthcare workers in Ghana and Kenya during the COVID-19 pandemic. W
...
e conducted a cross-sectional study with healthcare workers (N = 1012). The two phased data collection included: (1) survey data collected in Ghana from April 17 to May 31, 2020, and (2) survey data collected in Ghana and Kenya from November 9, 2020, to March 8, 2021. We utilized a quantitative measure of job satisfaction, as well as validated psychosocial measures of perceived preparedness, stress, and burnout; and conducted descriptive, bivariable, and multivariable analysis using ordered logistic regression. We found high levels of job dissatisfaction (38.1%), low perceived preparedness (62.2%), stress (70.5%), and burnout (69.4%) among providers. High perceived preparedness was positively associated with higher job satisfaction (adjusted proportional odds ratio (APOR) = 2.83, CI [1.66,4.84]); while high stress and burnout were associated with lower job satisfaction (APOR = 0.18, CI [0.09,0.37] and APOR = 0.38, CI [0.252,0.583] for high stress and burnout respectively). Other factors positively associated with job satisfaction included prior job satisfaction, perceived appreciation from management, and perceived communication from management. Fear of infection was negatively associated with job satisfaction. The COVID-19 pandemic has negatively impacted job satisfaction among healthcare workers. Inadequate preparedness, stress, and burnout are significant contributing factors. Given the already strained healthcare system and low morale among healthcare workers in SSA, efforts are needed to increase preparedness, better manage stress and burnout, and improve job satisfaction, especially during the pandemic.
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
Health care waste can be difficult to treat and dispose of safely. The environmental and health impacts of waste put extra pressure on resources. Therefore, it is important to try and reduce the quantities of waste wherever possible. Ensure waste is segregated properly at the point of disposal. It i
...
s cheaper and easier to manage general waste through a municipal waste system than infectious or sharps waste which needs treatment before final disposal. Organic general wastes like food and paper can be composted rather than being wasted. Non- hazardous general waste may also be sorted for recycling.
more
Available in English, French, Spanish and Russian from the website https://apps.who.int/iris/handle/10665/344562
ABSTRACT
Objectives: We developed COVID-19 Outbreak Simulator (https://ictr.github.io/covid19-outbreak-simulator/) to quantitatively estimate the effectiveness of preventative and interventive measures to prevent and battle COVID-19 outbreaks for specific populations.