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Publication Years
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1024
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Category
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Toolboxes
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2
Research Article
PLOS ONE | https://doi.org/10.1371/journal.pone.0192791 February 15, 2018
The classification of digital health interventions (DHIs) categorizes the different ways in which digital and mobile technologies are being used to support health system needs. Historically, the diverse communities working in digital health—including government stakeholders, technologists, clinic
...
ians, implementers, network operators, researchers, donors— have lacked a mutually understandable language with which to assess and articulate functionality. A shared and standardized vocabulary was recognized as necessary to identify gaps and duplication, evaluate effectiveness, and facilitate alignment across different digital health implementations. Targeted primarily at public health audiences, this Classification framework aims to promote an accessible and bridging language for health program planners to articulate functionalities of digital health implementations.
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Dziva Chikwari et al. Implementation Science (2018) 13:70 https://doi.org/10.1186/s13012-018-0762-5
Since the World Health Organization (WHO) launched the Global Antimicrobial Resistance Surveillance System (GLASS) in 2015, there has been rapidly growing awareness among many African countries that they need to be doing more to combat antimicrobial resistance (AMR). The Africa Centres fo
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r Disease Control and Prevention (CDC) was officially inaugurated in January 2017 and will support countries commencing surveillance for serious infectious disease threats in Africa, including resistance. Review of the recent WHO GLASS report suggests that, while certain nations do have some surveillance systems in place, very few countries in Africa currently conduct effective routine surveillance.
African Journal of Laboratory MedicineISSN: (Online) 2225-2010, (Print) 2225-2002
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Approche pratique de formulation d’une politique et d’une stratégie pour l’amélioration de la qualité des soins
In the current absence of vaccine for COVID-19, public health response target breaking the chain of infection by focusing on the mode of transmission. This paper summarizes current evidence-base around the transmission dynamics, pathogenic, and clinical features of COVID-19, to critically identify i
...
f there are any gaps in the current IPC guidelines.
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Nested case-control study of health workers exposed to confirmed COVID-19 patients.
Similar objectives to the cohort study but case-control studies may be cheaper and provide robust evidence to characterize and assess the risk factors for SARS-CoV-2 infection in health workers exposed to COVID-19 p
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atients.
Health workers with confirmed COVID-19 will be recruited as cases and other health workers in the same health care setting without infection will be recruited as controls (incidence density sampling).
Secondary objectives are similar to the cohort study.
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The study on health facility preparedness for cholera outbreak response in Cameroon evaluates the ability of healthcare facilities in four cholera-prone districts to manage cholera outbreaks. The findings highlight significant weaknesses, including limited surveillance systems, inadequate access to
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water, poor sanitation, and lack of essential medical supplies such as Oral Rehydration Solution (ORS) and cholera case management guidelines. Many health facilities also lacked trained personnel and proper waste disposal systems, increasing the risk of disease spread within healthcare centers. The study underscores the urgent need for improved hygiene infrastructure, better training, and resource allocation to enhance outbreak response and reduce cholera-related mortality.
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Rev Méd Hondur, Vol 88, Núm 2, 202
14 de setembro de 2020Este Modelo de Valores fornece orientações globais para alocação de vacinas contra a COVID-19 entre os países, e orientações nacionais de priorização de grupos para vacinação dentro dos países em caso de oferta limi
...
tada. O Modelo destina-se a auxiliar os elaboradores de políticas públicas e assessores especializados nos âmbitos global, regional e nacional nas decisões sobre alocação e priorização de vacinas contra a COVID-19. Este documento foi endossado pelo Grupo Consultivo Estratégico de Especialistas em Imunização
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23 décembre 2020 Ce document résume les recommandations de l'OMS concernant l'utilisation rationnelle des équipements de protection individuelle (EPI) dans les établissements de soins de santé et les stratégies temporaires en cas de pénurie aiguë d'approvisionnement. Ce document contient ég
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alement 2 sections en annexe qui décrivent les recommandations actualisées d'utilisation des EPI pour les travailleurs de la santé en fonction du scénario de transmission, du milieu et de l'activité dans le contexte de COVID-19 (annexe 1), et des considérations actualisées pour la décontamination ou le retraitement des EPI (annexe 2). Ce guide est destiné aux autorités de santé publique, aux organisations et aux personnes de référence impliquées dans les décisions concernant la distribution, la gestion et l'utilisation des EPI par les travailleurs de la santé.
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The tools are designed to complement existing guidelines, protocols and tools for GBV prevention and response, and should not be used in isolation from these. GBV practitioners are encouraged to adapt the tools to their individual programs and contexts, and to integrate pieces into standard GBV tool
...
s and resources.
You can download from English, French and Arabic Version
http://www.womensrefugeecommission.org/research-resources/building-capacity-for-disability-inclusion-in-gender-based-violence-gbv-programming-in-humanitarian-settings-overview/
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orientations provisoires, 25 juin 2021. Des tests de diagnostic rapides et précis sont un outil essentiel pour prévenir et contrôler la propagation du COVID-19. Ce document décrit les recommandations relatives aux stratégies nationales de dépistage et
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à l'utilisation de la PCR et des tests antigéniques rapides dans différents scénarios de transmission de l'épidémie de COVID-19, y compris la manière dont les tests pourraient être rationalisés dans les milieux à faibles ressources. Tous les tests doivent être suivis d'une réponse de santé publique forte, comprenant l'isolement des personnes dont le test est positif et la fourniture de soins, la recherche des contacts et la mise en quarantaine des contacts.
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To guide One Health capacity building efforts in the Republic of Guinea in the wake of the 2014–2016 Ebola virus disease (EVD) outbreak, we sought to identify and assess the existing systems and structures for zoonotic disease detection and control. We partnered with the government ministries resp
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onsible for human, animal, and environmental health to identify a list of zoonotic diseases – rabies, anthrax, brucellosis, viral hemorrhagic fevers, trypanosomiasis and highly pathogenic avian influenza – as the country's top priorities. We used each priority disease as a case study to identify existing processes for prevention, surveillance, diagnosis, laboratory confirmation, reporting and response across the three ministries. Results were used to produce disease-specific systems “maps” emphasizing linkages across the systems, as well as opportunities for improvement. We identified brucellosis as a particularly neglected condition. Past efforts to build avian influenza capabilities, which had degraded substantially in less than a decade, highlighted the challenge of sustainability. We observed a keen interest across sectors to reinvigorate national rabies control, and given the regional and global support for One Health approaches to rabies elimination, rabies could serve as an ideal disease to test incipient One Health coordination mechanisms and procedures. Overall, we identified five major categories of gaps and challenges: (1) Coordination; (2) Training; (3) Infrastructure; (4) Public Awareness; and (5) Research. We developed and prioritized recommendations to address the gaps, estimated the level of resource investment needed, and estimated a timeline for implementation. These prioritized recommendations can be used by the Government of Guinea to plan strategically for future One Health efforts, ideally under the auspices of the national One Health Platform. This work demonstrates an effective methodology for mapping systems and structures for zoonotic diseases, and the benefit of conducting a baseline review of systemic capabilities prior to embarking on capacity building efforts.
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Association between Ambient Temperature and Hospitalization for Renal Diseases in Brazil during 2000–2015: A Nationwide Case-Crossover Study
Bo Wen, Rongbin Xu, Yao Wu, Micheline de Sousa Zanotti Stagliorio Coelho et al.
The Lancet Regional Health – Americas
(2021)
CC
Climate change is increasing the risks of injuries, diseases, and deaths globally. However, the association between ambient temperature and renal diseases has not been fully characterized. This study aimed to quantify the risk and attributable burden for hospitalizations of renal diseases related to
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ambient temperature.
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