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Publication Years
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2
The paper “Artificial Intelligence for Public Health Surveillance in Africa: Applications and Opportunities” examines how artificial intelligence (AI) can improve public health systems across Africa, particularly in low-resource settings. It explores how machine learning and other AI techniques
...
are being used for disease detection, outbreak prediction, real-time surveillance, and health resource management.
The authors focus on major public health challenges such as HIV, cholera, Ebola, measles, tuberculosis, malaria, COVID-19, and mental health. Through numerous case studies, the paper shows that AI can enhance the accuracy and speed of disease detection, predict outbreaks more effectively than traditional methods, support vaccination strategies, and optimize healthcare resource allocation. At the same time, it discusses important barriers to implementation, including limited data quality, infrastructure constraints, ethical concerns, and shortages of technical expertise.
Overall, the paper highlights AI’s strong potential to strengthen disease surveillance and health outcomes in Africa while emphasizing the need for careful integration, improved data systems, and supportive policy frameworks.
more
Despite gains in childhood survival, more effort is needed to improve the well-being of children with developmental delays and disabilities. All children, including children with developmental delays and disabilities, need nurturing care. Nurturing care can contribute to preventing developmental del
...
ays and protect children who are exposed to risk factors, as well as improve functioning and long-term outcomes for children with developmental disabilities. This Brief outlines why and how nurturing care is relevant for children with developmental delays and disabilities. Recognizing that these children have diverse needs requiring different levels of coordinated and family-centred support, it recommends a set of actions to strengthen policies, services, communities and caregiver capabilities so that these children receive nurturing care.
more
World Health Organization (2018). A practical guide for developing and conducting simulation exercises to test and validate pandemic influenza preparedness plans.
The document is a practical handbook developed by the European Centre for Disease Prevention and Control (ECDC) that provides guidance on how to design, plan, conduct, and evaluate simulation exercises in public health settings. Its main purpose is to help organisations improve their preparedness an
...
d response to communicable disease outbreaks by using structured exercises as a training and evaluation tool. The handbook explains different types of exercises, outlines the steps involved in organising them, and highlights the importance of clear objectives, coordination, and evaluation. Overall, it aims to strengthen emergency preparedness by enabling organisations to identify weaknesses, improve collaboration, and enhance their ability to respond effectively to public health crises.
more
The World report on promoting the health of refugees and migrants: Monitoring progress on the WHO global action plan provides the first global baseline for assessing implementation of the 2019-2030 WHO Global Action Plan on Promoting the Health of Refugees and Migrants (GAP). Building on the 2022 Wo
...
rld report on the health of refugees and migrants, it examines how countries are integrating refugee and migrant health into broader public health, migration governance, development, and universal health coverage (UHC) agendas.
more
Le Profil de pays 2025 sur la santé et les changements climatiques en Haïti est une ressource récemment développée qui offre, pour la première fois, un aperçu clair et accessible de l’intersection entre les tendances climatiques et la santé publique dans le pays. Il synthétise les meilleu
...
res données disponibles ainsi que les connaissances issues du terrain afin de montrer où les aléas climatiques affectent la santé, qui sont les populations les plus à risque, et quelles actions peuvent renforcer efficacement les services et sauver des vies.
more
Artificial intelligence for tuberculosis control: a scoping review of applications in public health
Menon, S.; and K. Ghislein Kuro
(2025)
J Glob Health. 2025;15:04192. This scoping review highlights the potential of AI-driven predictions in national TB programmes to enhance diagnostics, track trends, and strengthen public health surveillance. While promising for reducing transmission and support-
ing TB care in low-resource settings,
...
these models require large-scale validation to ensure real-world applicability, especially for high-risk groups
more
This set of malaria guidelines is a revision to the Version 1.0 released in June 2022, and is intended for medical personnel working in limited-resourced setting of conflicts and emergencies
This guide defines public spaces for children as those that can be easily and freely accessed and enjoyed by all children, either alone or with friends or family, regardless of gender,
ethnicity, sexuality, nationality, social status or physical ability. Whatever their context, these places are saf
...
e from physical hazards (such as pollution, waste, traffic, falls or drowning risks); and social risks (such as crime, exclusion, or bullying). Whether they are streets, neighbourhoods, existing public open spaces, or the small, “liminal” spaces, such as stairwells or alleyways from which children carve out a place for themselves
more
This guidance addresses one type of generative AI, large multi-modal models (LMMs), which can accept one or more type of data input and generate diverse outputs that are not limited to the type of data fed into the algorithm. It has been predicted that LMMs will have wide use and application in heal
...
th care, scientific research, public health and drug development. LMMs are also known as “general-purpose foundation models”, although it is not yet proven whether LMMs can accomplish a wide range of tasks and purposes.
more
A Global Access Framework for Country-Led.
ResponsesThis 2030 Prevention access framework focuses on one of those top-line targets, which covers primary prevention and requires that 90% of people in need of HIV prevention are using effective prevention options by 2030. This target is disaggregated
...
into 15 second-line prevention targets for specific populations and programmes.
The 2030 Prevention Access Framework presents in greater detail the milestones and actions for achieving these targets––all of which are grounded in the three priorities of the Global AIDS Strategy: country-led, resilient and sustainable HIV responses; people-focused services, and community leadership
more
The Gender Assessment Tool for National HIV Responses (Gender Assessment Tool) is intended to assist countries in assessing their HIV epidemic, context and response through an intersectional gender lens, with the aim of strengthening gender-transformative, equitable and rights-based HIV responses. T
...
he 2025 tool places greater emphasis on cost-effectiveness, alignment with national plans, integration and sustainability. Together with a new costing tool and monitoring and evaluation plan template, it is designed to inform the development of country investment cases, funding requests to the Global Fund to Fight AIDS, Tuberculosis and Malaria, and other key national opportunities.
more
This report developed by UNAIDS and the United for Global Mental Health reviews and maps Global Fund investments in priority HIV and TB comorbidities in Grant Cycle 7 (GC7), including key non-communicable diseases (NCDs), cervical, anorectal and other cancers, and mental health and substance use co
...
nditions. It highlights how countries prioritize and are integrating health services and other interventions with HIV and TB programmes to advance person-centered approaches and to sustain HIV and TB responses. Analyzing approved grants from 103 countries, the report finds strong demand for integrated approaches, with 97% of countries prioritizing at least one comorbidity.
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The purpose of this interim guidance is to provide recommendations for planning and implementing RCCE activities that protect and empower communities during MVD outbreaks. The guidance is designed for national and subnational health responders involved in RCCE for MVD readiness and response. It is a
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lso relevant to other stakeholders, such as partner organizations, ministries (such as those involved in social protection), and academics, who contribute to RCCE activities. The document is meant to be adapted alongside national multi-risk/ multisectoral plans, leveraging existing expertise, coordination mechanisms and partnerships.
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Seulement 3 % de la recherche mondiale en santé provient d’Afrique, malgré sa part de 18 % de la population
mondiale et de 25 % de la charge de morbidité. L’un des défis auxquels est confrontée cette recherche limitée en
matière de santé sur le continent provient du cadre défaillant d
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e l’éthique de la recherche et de l’incapacité des
principes internationaux d’éthique de la recherche à protéger de manière optimale les participants africains à la
recherche. Les populations africaines possèdent des cultures, des valeurs, des systèmes de croyances et des
vertus spécifiques qu'il convient d'explorer et de comprendre pour mener la recherche de manière éthiques. Par
exemple, une étude menée en Afrique a révélé que l'information sur les diagnostics, notamment ceux de cancer,
lors du consentement éclairé a été jugée défavorable, ce qui peut altérer le traitement et les résultats des soins
prodigués aux patients. En Afrique, contrairement aux pays développés, l'accent est davantage mis sur
l'autonomie communautaire que sur l'autonomie individuelle. Le niveau d’alphabétisation en santé des populations
africaines est faible par rapport à celui des pays développés, ce qui affecte leur compréhension du consentement
éclairé et compromet leur capacité à prendre des décisions éclairées. Le statut socio-économique inférieur des
populations africaines pourrait également rendre les participants à l'étude vulnérables, car les incitations offertes
pourraient influencer leur décision de participer à l'étude.
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Filoviral hemorrhagic fever (FHF) is caused by ebolaviruses and marburgviruses, which both belongto the family Filoviridae. Egyptian fruit bats (Rousettus aegyptiacus) are the most likely natural reservoir for marburg viruses and entry into caves and mines that they stay in has often been associated
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with outbreaks of MVD. On the other hand, the natural reservoir for ebola viruses remains elusive;however, handling of wild animal carcasses has been associated with some outbreaks of EVD. In thelast two decades, there has been an increase in the incidence of FHF outbreaks in Africa, some beingcaused by a newly found virus and some occurring in previously unaffected areas such as Guinea, Liberia and Sierra Leone, in which the most recent EVD outbreak occurred in 2014. Indeed, the predicted geographic distribution of filoviruses and their potential reservoirs in Africa includes manycountries in which FHF has not been reported. To minimize the risk of virus dissemination inpreviously unaffected areas, there is a need for increased investment in health infrastructure in African countries, policies to facilitate collaboration between health authorities from different countries, implementation of outbreak control measures by relevant multi-disciplinary teams and education of the populations at risk.
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