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The monograph contained in this volume was prepared following the ninety-third meeting of the Joint Food and Agriculture Organization of the United Nations (FAO)/World Health Organization (WHO) Expert Committee on Food Additives (JECFA), which met virtually online from 24 March–1 April 2022. This
...
monograph summarizes the data on the contaminant group trichothecenes T-2 and HT-2 toxins reviewed by the Committee. A monograph on the other features of this contaminant group, which were discussed at a previous meeting in 2001, are published in WHO Food Additives Series 47.
more
Burden of fungal asthma in Africa: A systematic review and meta-analysis
Kwizera, R.; Musaazi, J.; Meya, D.B.; et al.
PLOS ONE, which is part of the Public Library of Science (PLOS)
(2019)
CC2
Asthma is one of the neglected diseases in Africa with a high prevalence. Allergic fungal diseases have been reported to complicate asthma progression and treatment outcomes. However, data about fungal asthma and its associated complications are lim
...
ited in Africa. We aimed to estimate the burden of fungal asthma among adults and children in Africa using a systematic review.
more
Asbestos-related diseases in mineworkers: a clinicopathological study
Ndlovu, N.; Rees, D.; Murray, J.; et al.
ERJ Open Research, part of the European Respiratory Society (ERS)
(2017)
CC
This study compared clinical and autopsy findings for three asbestos-related diseases (asbestosis, mesothelioma and lung cancer) in former asbestos mineworkers, and explored factors that influenced agreement between clinical and autopsy findings using data
...
from two compensation systems. In South Africa, statutory compensation for occupational lung diseases in mineworkers makes provisions for autopsy examinations of the cardio-respiratory organs at the National Institute for Occupational Health (NIOH) in Johannesburg. In addition, the Johannesburg-based Asbestos Relief Trust and Kgalagadi Relief Trust (the “Trusts”) compensate individuals with defined asbestos-related diseases who worked in or lived near qualifying asbestos mining or processing operations. The Trusts also compensate dependents of deceased qualifying mineworkers and therefore encourage statutory autopsies for the detection of previously undiagnosed asbestos-related disease or disease that may have progressed to higher compensation grades.
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The article presents findings from the BREATHE study, which assessed the distribution of COPD-related symptoms in the Middle East and North Africa (MENA) region. The study involved a large cross-sectional survey in 11 countries, collecting data on r
...
espiratory symptoms, smoking habits, and potential COPD prevalence in adults aged 40 and older. Results showed that 14.3% of the surveyed population reported symptoms consistent with COPD, with variations across countries. Women reported symptoms more frequently than men, though diagnosed COPD was more common in men. The study highlighted smoking, including waterpipe use, as significant risk factors and called attention to underdiagnosed COPD in the region, emphasizing the need for increased awareness and better diagnostic practices.
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This study identifies barriers and provides recommendations to improve asthma care in children across sub-Saharan Africa, where qualitative data is lacking despite high rates.
Asthma, hay fever and eczema are three common chronic conditions. There have been no recent multi-country data on the burden of these three conditions in adults; the aims of this study are to fill this evidence gap.
The Global Asthma Network Phase
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I is a multi-country cross-sectional population-based study using the same core methodology as the International Study of Asthma and Allergies in Childhood Phase III. It provides data on the burden of asthma, hay fever and eczema in children and adolescents, and, for the first time, in their parents/guardians.
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The Asthma Control Questionnaire (ACQ)1 was developed and validated to measure the primary clinical goal of asthma management as identified by international guidelines. They indicate that to achieve good control, treatment should minimise day and night time symptoms, activity limitation, airway narr
...
owing and rescue bronchodilator use and thus reduce the risk of life-threatening exacerbations and long-term morbidity. The importance of including all aspects of control in the assessment of individual patients was emphasised by a recent factor analysis which showed that clinical asthma is composed of distinct components which are not closely correlated with each other.6 However, in some studies it may not be possible to collect airway calibre or short-acting β2-agonists data. Previous analysis of non-clinical trial data suggested that when ACQ scores are analysed as group data, the heterogeneity of the way in which individual patients present with inadequate control is lost in the estimation of the mean and the need to measure each individual component of asthma control may become unnecessary. In this analysis, ACQ data from a clinical trial was used to evaluate the measurement properties (reliability, responsiveness, validity and interpretability), of three shortened versions of the ACQ. In addition, we have examined whether the precision and accuracy of estimating the effect of the intervention on asthma control was maintained when the two questions concerning airway calibre and short-acting β2-agonists use were omitted from the trial analysis.
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Globally, it is estimated that 1 billion people suffer from acute and chronic respiratory conditions, making them major causes of illness and death. Although there is a relative lack of data and evidence on lung diseases beyond tuberculosis (TB) in
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Sub-Saharan Africa (SSA), their estimated regional burden is large and growing. In addition, there is a poorly understood relationship between infections, such as TB, and non-infectious causes of lung health problems. The problem in lung diseases in SSA is exacerbated by many factors, including under-prioritisation, under-treatment and weak preventative measures.
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As Uganda builds back from the COVID-19 shock, the Ugandan government is strengthening its commitment to a more gender-inclusive and sustainable economy. This report supports these efforts by describing the gendered impacts of COVID-19 and provides recommendations for Ugandan policy makers and World
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Bank Group operations to ensure women’s participation in an inclusive and sustainable recovery. It presents gender-disaggregated data from three main sources: high-frequency phone surveys that track the impacts of the COVID-19 shock: one of Ugandan nationals conducted in June and one of refugees conducted in November 2020; interviews with 28 representatives of government institutions, development partners, and women’s organizations in Kampala and in rural areas; and a review of relevant policy and gray literature on climate change, the green economy, and women’s economic empowerment.
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Open Forum Infect Dis . 2022 Apr 5;9(5):ofac148.doi: 10.1093/ofid/ofac148. eCollection 2022 May. Dolutegravir HIV drug resistance (HIVDR) data from Africa remain sparse. We reviewed HIVDR results of Malawians on dolutegravir-based antiretroviral the
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rapy (November 2020– September 2021). Of 6462 eligible clients, 33 samples were submitted to South Africa, 27 were sequenced successfully, and 8 (30%) had dolutegravir HIVDR. Malawi urgently requires adequate HIVDR testing capacity.
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To identify and to assess factors enhancing or hindering the delivery of breast and cervical cancer screening services in Malawi with regard to accessibility, uptake, acceptability and effectiveness.
Systematic review of published scientific evidence. A search of six bibliographic databases and gre
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y literature was executed to identify relevant studies conducted in Malawi in the English language, with no time or study design restrictions. Data extraction was conducted in Excel and evidence synthesis followed a thematic analysis approach to identify and compare emerging themes.
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This report on global leishmaniasis surveillance follows those published in 2016–2023.2–6 Six indicators of leishmaniasis are publicly available from the Global Health Observatory (GHO).7 In addition to the GHO, country profiles with up to 30 indicators are published, with detailed
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data received from 45 Member States.
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The Countdown country profiles present in one place the latest evidence to assess country progress in improving women’s, children’s and adolescents’ health. The profiles, including an interactive version of them and all associated data, can be
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found by viewing the latest country profile data.
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A manual for impact assessments. The SCH Practical and Precision Assessment (SPPA) strategy is an evidence-based approach for conducting impact assessments for SCH. The SPPA was identified by programme managers and SCH experts from the African region as a feasible and sufficiently accurate approach
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after reviewing and discussing the results of a multi-country study. This manual describes the resulting Practical and Precision Assessments approach and includes a discussion of the underlying concepts, factors to consider when determining what approach is appropriate, and how to interpret the collected data. The manual also includes annexes with standard operating procedures for conducting the stool and urine analyses.
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Weekly Epidemiological Record. This report summarizes application of the SAFE strategy against trachoma during 2023. It includes estimates of the global population at risk of trachoma blindness based on district-by-district data submitted to WHO by
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national programmes. Summarizing the epidemiological situation in this way is inherently complex because, for any district, up to 3 serial estimates of prevalence may be valid at different times during a calendar year.
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To realize Agenda 2030, aid agencies, private philanthropies, and their partners in the Global South need better data to monitor how official development finance (ODF) dollars advance the Sustainable Development Goals (SDGs) and avoid missing the ma
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rk. In this report, we summarize the results of a novel effort to tag and analyze 2.7 million ODF projects between 2010-2021 using machine learning to understand their contributions to the SDG thematic areas at a goal
and target level. This time frame is instructive: it compares the last six years of the Millennium Development Goals era and the first six years of the new SDG age, from early optimism to later uncertainty about the resilience of the agenda to drive collective commitments amid unanticipated global shocks.
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The COVID-19 pandemic disrupted health systems in 2020, but it is unclear how financial hardship due to out-of-pocket (OOP) health-care costs was affected. We analysed catastrophic health expenditure (CHE) in 2020 in
five countries with available household expenditure
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data: Belarus, Mexico, Peru, Russia, and Viet Nam. In Mexico and Peru, we also conducted an analysis of drivers of change in CHE in 2020 using publicly available data.
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This question bank is a menu of qualitative questions related to healthcare workers’ knowledge, perceptions and practices during infectious disease outbreaks. The question bank will generate qualitative data on healthcare workers’ subjective und
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erstandings of risks, case management, protection and wider outbreak operations. These data can be used to inform risk communication and community engagement activities as well as other response pillars. Some of the issues covered in these questions are complex, for example stigma or views on vaccine safety
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The Malaria Elimination Guide to Targeted Surveillance and Response in High-Risk Populations (HRP Guide) provides practical operational guidance to identify and characterize populations at highest risk of malaria and design and implement data-driven
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and targeted surveillance and response activities for these populations. This guide is designed for national malaria program managers and their implementing partners, including non-governmental organizations and researchers.
The HRP Guide is available in English, French, Portuguese, and Spanish.
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Malaria ist nach wie vor eine lebensbedrohliche Krankheit, insbesondere in Afrika. Jährlich gibt es rund 228 Millionen Fälle mit hohen Sterberaten, vor allem bei Kindern unter fünf Jahren. Drei Absolvent:innen des Masterstudiengangs „Applied Information and
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Data Science“ entwickeln die Smartphone-App „Malatec“, die eine schnelle und kostengünstige Malaria-Diagnose ermöglichen soll. Die Diagnose erfolgt mithilfe eines preiswerten, 3D-gedruckten Mikroskops (unter 5 CHF) in Kombination mit einem Algorithmus, der auf neuronalen Netzen basiert und die Malaria-Parasiten in gefärbten Blutproben automatisch erkennt und zählt.
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