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1
In 2015, WHO proposed the use of the Robson classification (also known as the 10-group classification) as a global standard for assessing, monitoring and comparing caesarean section rates both within healthcare facilities and between them. The system classifies all women into one of 10 categories t
...
hat are mutually exclusive and, as a set, totally comprehensive. The categories are based on 5 basic obstetric characteristics that are routinely collected in all maternities (parity, number of foetuses, previous caesarean section, onset of labour, gestational age, and fetal presentation).
more
« Prévenir la thrombose » : Ce que veulent savoir les patients atteints de cancer
Bayadinova, J.A., Sardo, Higgins-Nogareda, V., Scott, J. & MacKinnon, B.
Revue canadienne de soins infirmiers en oncologie
(2022)
CC
Deuxième d’une série consacrée à la prévention de la thrombose associée au cancer (Cancer-Associated Thrombosis, ou CAT en anglais), le présent article a pour but d’améliorer l’enseignement aux patients et leur état de santé. Le premier article, intitulé « Importance de la thromboe
...
mbolie veineuse liée au cancer », expliquait la pathologie ainsi que les lacunes cernées dans les connaissances des patients atteints de cancer (Sardo, Bayadinova, Jenkins et Penton, 2021). Il mettait en lumière le fait que ces patients reçoivent très peu d’information sur le risque de thromboembolie veineuse (TEV). Les stratégies proposées dans le présent article visent à sensibiliser les patients atteints de cancer à la TEV, à fournir des outils d’enseignement aux patients et, en fin de compte, à réduire le fardeau de la thrombose associée au cancer.
more
Senegal has adopted the World Health Organization–Joint United Nations Programme on HIV/AIDS recommended 90-90-90 targets.5 The adoption of this strategy means that the country is expected, by 2020, to have 90% of its population living with HIV diagnosed, 90% of all those diagnosed receiving susta
...
ined HIV treatment, and 90% of those receiving antiretroviral therapy having suppressed viral load measures.5 To achieve these outcomes, having good clinical laboratory services for diagnosis and follow-up will be critical.6 More specifically, investments will be needed to improve laboratory infrastructure, and to facilitate the access and availability of routine viral load and early infant diagnosis (EID) measures through the implementation of point-of-care (POC) diagnostic platforms along with an efficient and sustainable quality assurance programme.
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28 Jan. 2021. L’objet de ce document est de fournir des orientations provisoires sur la sécurité biologique en laboratoire applicable à l’analyse d’échantillons cliniques issus de patients.
Health systems the world over have embraced the value of community health workers (CHWs) in extending essential services to the community level, improving health equity and progressing toward universal health coverage. Governments now have an opportunity to institutionalize CHW programs and professi
...
onalize this essential cadre of the health workforce. What will it take to ensure CHW programs, at scale, can achieve their full potential?
Fortunately, policymakers, funders, NGOs, and other partners seeking to design, revamp, or strengthen CHW programs have a suite of tools at their disposal. One of the longest-standing and most rigorously field-tested of these tools is the Community Health Worker Assessment and Improvement Matrix (CHW AIM), an assessment tool which can be used to design, evaluate and strengthen CHW programs.
You can find this assessment tool on this page here. The matrix is also downloaded on MEDBOX, but if you want, you can register for free and get the matrix. After that follow the points underneath.
accessed 23.07.2021
also available in [Français] [Español]
more
Learn how the decision making process must ensure that appropriate structures and supports are in place to maximize the nursing effort resulting in the best possible care and positive outcomes for the patients/clients, nursing personnel, and the organization.
We developed an integrated vector surveillance (IVS) proposal for cutaneous leishmaniasis (CL) and visceral leishmaniasis (VL) in the Americas, based on eco-epidemiological studies conducted by researchers of the Leishmaniasis Research Network of Argentina. For CL, the transmission was explained in
...
the framework of the edge effect, the increase of vectors and risk of exposure at ecotones and environmental interfaces, and typified as ephemeral, transient, or permanent edges, supporting a cost-effective IVS strategy for early warning of CL outbreaks through an environmental modification alert network, which includes multiple sources of information and actors. In relation to VL, the earliest colonization sites and spatial distribution were explained by modeling and forecasting the most likely hotspots, persistent in time and space, and modulated by environmental variables. Therefore, for VL, a scalar strategy of critical site selection is proposed from a “city” scale based on secondary sources such as remote sensing for the definition of possible areas to monitor and intervene, a scale of restriction from possible to most likely areas through local knowledge, and a “focal site” scale of trap placement through field observation; in this way, IVS activities are carried out at a few sites of the urban landscape and allow a sustainable program.
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This document outlines the concept and content of the WHO people-centred approach to addressing antimicrobial resistance (AMR) in the human health sector. The proposed approach recognizes and aims to address the challenges and health system barriers people face when accessing health services to prev
...
ent, diagnose and treat (drug-resistant) infections. It puts people and their needs at the centre of the AMR response and guides policy-makers in taking programmatic and comprehensive actions to mitigate AMR in line with a proposed package of core interventions. These interventions are based on a review of four pillars and two foundational steps that are critical to overcome barriers faced by people and health systems in addressing AMR.
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Background
Low- and middle-income countries now experience the highest prevalence and mortality rates of cardiovascular disease.
Main text
While improving the availability and delivery of proven, effective therapies will no doubt mitigate this burden, we posit that studies evaluating cardiovasc
...
ular disease risk factors, management strategies and service delivery, in diverse settings and diverse populations, are equally critical to improving outcomes in low- and middle-income countries. Focusing on examples drawn from four cardiovascular diseases — coronary artery disease, stroke, diabetes and kidney disease — we argue that ethnicity, culture and context matter in determining the risk factors for disease as well as the comparative effectiveness of medications and other interventions, particularly diet and lifestyle interventions.
Conclusion
We believe that a host of cohort studies and randomized control trials currently being conducted or planned in low- and middle-income countries, focusing on previously understudied race/ethnic groups, have the potential to increase knowledge about the cause(s) and management of cardiovascular diseases across the world.
more
Diabetes country profiles 2016 - The aim of the diabetes country profiles is to synthesize, in one reference document, the national status of diabetes prevention and control. Each profile includes data on diabetes prevalence and trends; mortality; risk factors; availability of diabetes country plans
...
; monitoring and surveillance; primary prevention and treatment policies and availability of medicines, basic technologies and procedures.
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Journal of the International AIDS Society 2017, 20(Suppl 4):21644
National AIDS Programme in Myanmar has made significant progress in scaling up antiretroviral treatment (ART) services and recognizes the importance of differentiated care for people living with HIV. Indeed, long centred around t ... he hospital and reliant on physicians, the country's HIV response is undergoing a process of successful decentralization with HIV care increasingly being integrated into other health services as part of a systematic effort to expand access to HIV treatment. This study describes implementation of differentiated care in Médecins Sans Frontières (MSF)‐supported programmes and reports its outcomes.
https://doi.org/10.7448/IAS.20.5.21644 more
National AIDS Programme in Myanmar has made significant progress in scaling up antiretroviral treatment (ART) services and recognizes the importance of differentiated care for people living with HIV. Indeed, long centred around t ... he hospital and reliant on physicians, the country's HIV response is undergoing a process of successful decentralization with HIV care increasingly being integrated into other health services as part of a systematic effort to expand access to HIV treatment. This study describes implementation of differentiated care in Médecins Sans Frontières (MSF)‐supported programmes and reports its outcomes.
https://doi.org/10.7448/IAS.20.5.21644 more
This assessment is the first of its kind to be conducted in the south-eastern region of Myanmar. It is an important contribution to ensuring the full inclusion of women and children in Myanmar’s political, social, and cultural systems, with a specific focus on the issue of gender-based violence (G
...
BV) and its impact on these groups in south-eastern Myanmar. The United Nations Population Fund (UNFPA) is grateful for the participation of women, men, boys and girls from Mon, Kayin and Kayah States for sharing their views and experiences during the study.
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