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Journal of Biosocial Science / Volume 34 / Issue 04 / October 2002, pp 525 - 539
DOI: DOI:10.1017/S0021932002005254, Published online: 24 September 2002
This paper examines determinants of one aspect of sexual behaviour – coital frequency – among 2188 married women in the Central African Re
...
public using a secondary analysis of data from the Demographic and Health Survey of 1994–95. Female genital cutting (or circumcision) is practised in the Central African Republic and self-reported circumcision status was included in the questionnaire enabling it to be examined as a possible determinant of coital frequency. Multiple logistic regression was used to find a subset of factors independently associated with coital frequency.
Decreased coital frequency was found in those who had longer duration of marriage, those who were not the most recent wife in a polygamous marriage and those who had more surviving children. Coital frequency was higher in more educated women and those not contracepting because they wanted to get pregnant. After adjusting for confounders no association between
female genital cutting and coital frequency was found. The extent to which women can control coital frequency in this culture is not known and fertility desires may override any negative effects of circumcision on sexual pleasure.
It was therefore not possible to draw conclusions about how female genital cutting affects a woman’s desire for sexual intercourse and consequently there is a need to develop research methods further to investigate this question.
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
The role of environmental contamination in transmission of COVID-19 virus is currently not clear. This protocol has been designed to determine (viable) virus presence and persistence on fomites in various locations where a patient infected with COVID-19 is currently receiving care or being isolated,
...
and to understand how this may relate to COVID-19 transmission events in these settings. It is therefore important that it is done as part of a comprehensive outbreak investigation and that information obtained by environmental studies is combined with the results of epidemiological, laboratory and sequence data from COVID-19 patient investigations.
more
Community feedback considered in this report was collected through information received from Community Engagement and Accountability (CEA) focal points,as well as through primary data collection,in 10 African countries.Red Cross and Red Crescent Nat
...
ional Society CEA focal points were asked to share the main rumours, observation, beliefs, questions or suggestions they are hearing in their countries andto grade them according to their frequency. Focal points from the following countries provided information this way: Botswana, Burundi, Cameroon, Niger, South Africa.
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The spread of COVID-19 poses a challenge for emerging markets such as those in Africa and Latin America. While governments around the world are suffering from a shortage of ventilators, hospital beds, and personal protective equipment, availability of these items is already extremely limited in some
...
countries.
You can also view the results in the interactive dashboard below, which will be updated with new data over time.
more
This paper introduces a new dataset of official financing—including foreign aid and other forms of concessional and non-concessional state financing—from China to 138 countries between 2000 and 2014. We use these data to investigate whether and
...
to what extent Chinese aid affects economic growth in recipient countries. To account for the endogeneity of aid, we employ an instrumental-variables strategy that relies on exogenous variation in the supply of Chinese aid over time resulting from changes in Chinese steel production. Variation across recipient countries results from a country’s probability of receiving aid. Controlling for year- and recipient-fixed effects that capture the levels of these variables, their interaction provides a powerful and excludable instrument. Our results show that Chinese official development assistance (ODA) boosts economic growth in recipient countries. For the average recipient country, we estimate that one additional Chinese ODA project produces a 0.7 percentage point increase in economic growth two years after the project is committed. We also benchmark the effectiveness of Chinese aid vis-á-vis the World Bank, the United States, and all members of the OECD’s Development Assistance Committee (DAC).
more
Recognizing the extent to which the COVID-19 outbreaks affects women and men differently is hugely important. Some preliminary data suggested that more men than women are dying, potentially due to sex-based immunological differences, higher rates of
...
cardiovascular disease for men and lifestyle choices, such as smoking. However, the experiences and lessons learned from the Zika and Ebola outbreaks and the HIV pandemic demonstrate that robust gender analysis and informed, gender-integrated response are vital to strengthen the access and acceptability of the humanitarian services needed to meet the distinct needs of women and girls, as well as men and boy and LGBTI people.
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BUKO Pharma-Kampagne has investigated the causes and consequences of antibiotic resistance in India, South Africa, Tanzania and Germany. Together with our partners we collected data and did interviews with numerous stakeholders. The outcome is prese
...
nted in a brochure that is now available in English
Resistant bacteria are spreading worldwide. In collaboration with partners in India, Tanzania, South Africa and Germany, we have investigated the causes and consequences of this spread.2 This Pharma-Brief Special presents the results. It examines the risks for humans, animals and the environment. It focuses on local problems and approaches, international interactions and the re-sponsibility of doctors, farmers and consumers.
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There is currently no systematic global tracking of how many health and essential workers have died after contracting COVID-19.
However, Amnesty International has collated and analysed a wide range of available data that shows that over 3000 health
...
workers are known to have died after contracting COVID-19 in 79 countries around the world.
According to Amnesty International’s monitoring, the countries with the highest numbers of health worker deaths thus far include the USA (507), Russia (545), UK (540, including 262 social care workers), Brazil (351), Mexico (248), Italy (188), Egypt (111), Iran (91), Ecuador (82) and Spain (63).
more
The semi-structured guided interviewing on ICU nurses in a medical center of southern Taiwan wasapproved by the IRB at the research department of the hospital and data collection was carried out from January toJune 2012. The investigator repeatedly
...
read the transcribed text, and found statements relevant to the themes in thetranscriptions to form significant statements as the basis of data analysis. To ensure the rigor of this study, theinvestigator adopted the approach of trustworthiness of qualitative research proposed by Lincoln and Gu.
more
Top 20 on Face Masks
recommended
Almost all organizations recommend masks for the general public. Unfortunately, earlier in the pandemic, many did exactly the opposite – due to limited data but also due to concerns about diminished mask supply for healthcare workers and out of fe
...
ar that masked individuals might be tempted to ignore rules of social distancing. In addition, conflicting national guidelines have led to variable public compliance. A few physicians, in line with some COVidiots, still argue against face masks
more
Results of rapid assessment
The COVID-19 pandemic has disrupted or halted critical mental health services in 93% of countries worldwide while the demand for mental health is increasing, according to a new WHO survey. The survey of 130 countries provides the first global
...
data showing the devastating impact of COVID-19 on access to mental health services and underscores the urgent need for increased funding.
more
Whole-genome sequencing (WGS) provides a vast amount of information and the highest possible resolution for pathogen subtyping. The application of WGS for global surveillance can provide information on the early emergence and spread of AMR and further inform timely policy development on AMR control.
...
Sequencing data emanating from AMR surveillance may provide key information to guide the development of rapid diagnostic tools for better and more rapid characterization of AMR, and thus complement phenotypic methods. This document addresses the applications of WGS for AMR surveillance, including the benefits and limitations of current WGS technologies
more
The report finds that, as of 3 November, in 87 countries with age-disaggregated data, children and adolescents under 20 years of age accounted for 1 in 9 of COVID-19 infections, or 11 per cent of the 25.7 million infections reported by these countri
...
es. More reliable, age-disaggregated data on infection, deaths and testing is needed to better understand how the crisis impacts the most vulnerable children and guide the response
more
Antimalarial drug resistance has emerged as a threat to global malaria control efforts, particularly in the Greater Mekong subregion. Drawing on data collected through more than 1000 therapeutic efficacy studies as well as molecular marker studies o
...
f Plasmodium falciparum drug resistance, the Report on antimalarial drug efficacy, resistance and response: 10 years of surveillance (2010–2019) presents a decade’s worth of data on drug efficacy and surveillance, as well as recommendations to monitor and protect the efficacy of malaria treatment in the decades to come.
more
Exciting news this week with @Pfizer reporting their mRNA vaccine is 90% effective, based on their Phase III clinical trial data. Dr. Tom looks inside the virus to break down how mRNA vaccines work, and whether news this promising means we can final
...
ly relax.
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The European Medicines Agency (EMA) is evaluating potential COVID-19 treatments and vaccines to enable promising medicines to reach patients as soon as possible. It is also interacting with medicine developers and making use of real-world data to mo
...
nitor the safety and effectiveness of medicines used in patients with COVID-19.
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This document outlines the evaluation process that WHO undertakes to assess novel tools and strategies targeted at VBDs. Its aim is to articulate the linkage between the generation of evidence that demonstrates public health impact of novel interventions, and the development of policy recommendation
...
s based on the generated data. The document defines standards for the evaluation process, as well as the steps that an applicant needs to undertake, along with some guiding principles that aim to support applicants in the development of submissions with WHO.
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August 2020, The Africa Joint Continental Strategy for COVID-19 is underpinned by the need to limit transmission, prevent deaths and reduce associated harms. Participation by African nations in clinical trials is an essential step to ensure that sufficient
...
data is generated on the safety and efficacy of the most promising vaccine candidates among the region’s populations.
While current COVID-19 clinical trial activity on the continent is limited, Africa has substantial experience and capabilities to conduct clinical trials for preventative vaccines across a range of diseases, and many organizations on the continent are working tirelessly to help prepare additional trials on potential COVID-19 vaccines. As the number of candidate vaccines in the development pipeline continues to increase, it will be important for organizations responsible for managing clinical trials in the region to partner with vaccine developers to identify potential and appropriate trial locations, provide support to remove any critical obstacles impeding commencement and progress of trials, and to provide oversight ensuring that trials are conducted safely and ethically.
more
International Migration 2020 Highlights presents key facts and messages regarding international migration globally and by region during 2000-2020, based on the 2020 revision of the international migrant stock data set, which provides updated estimat
...
es of numbers of persons living outside their country of birth, classified by age, sex and origin, for 232 countries and areas. This Highlights also reviews policies and programmes to promote planned and well-managed migration and provides an overview of SDG indicator 10.7.2 on the number of countries with migration policies to facilitate orderly, safe, regular and responsible migration and mobility of people, used for measuring progress toward the achievement of SDG target 10.7.
You can download this paper and the full report in Arabic, Chinese, English, French, Russian ans Spanish
more