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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
Sexually Transmitted Diseases Treatment Guidelines, 2015. Wall Chart
Centers for Disease Control and Prevention
(2015)
CC
Community Assessment For Public Health Emergency Response (Casper) Toolkit; third edition 3.2
recommended
2nd edition
Los Módulos de autoaprendizaje sobre tuberculosis son una serie de módulos educativos diseñados para proporcionar información sobre la tuberculosis en un formato de autoaprendizaje. El módulo 6 (“Manejo de pacientes con tuberculosis y mejora de la adherencia al tratamiento”) y el módulo 8
...
(“Investigaciones de contactos de tuberculosis”) están disponibles en español. Los módulos 1-9 están disponibles en inglés.
more
Fact sheet on Tuberculosis in Rwanda
Antibiotics save lives, but poor prescribing practices are putting patients at unnecessary risk for preventable allergic reactions,
super-resistant infections, and deadly diarrhea. Errors in prescribing decisions also contribute to antibiotic resistance, making these drugs less likely to work in th
...
e future.
more
Sexually Transmitted Diseases Treatment Guidelines, 2015
Centers for Disease Control and Prevention
(2015)
CC
MMWR. Recommendations and Reports:
December 16, 2005 / 54(RR15);49-55
Key stakeholders must be involved in the planning, implementation, monitoring and evaluation of NCD plans and programmes. Within a ministry of health there will be different types
...
of stakeholders, such as programme managers and senior managers in departments of prevention, health promotion, and hospital and health services. Other stakeholders may come from ministries for transport, economics, agriculture, and education, funding partners, nongovernmental organizations, civil society and community members. It is critical to ensure that there are clear and accurate descriptions of the policies, plans and programmes, so that all interventions, activities and desired outcomes are clearly understood by all involved in their evaluation.
more
Chagas disease is currently endemic and also predicted to be at increased transmission risk under future climate change scenarios. Similarly, an expansion of areas in the United States at increased
...
risk for Chagas disease transmission is also expected over the next several decades under climate change scenarios. Of particular interest is the predicted northern shift of triatomine species to central regions of the United States with historically unsuitable climates for T. cruzi vectors. The weight of evidence regarding the influences climate change may pose on T. cruzi vector species distributions demonstrates the sensitivity of Chagas disease transmission to future climate variability. In order to advance forecasts for the impact climate change may have on Chagas disease transmission in the Americas, it is imperative to
further develop, utilize, and perhaps combine predictive species distribution modeling approaches that integrate accurate, long term data on climate variables, vector species distributions, Chagas disease incidence, as well as other socio-ecological variables.
more
The National Strategic Plan on Malaria Prevention and Elimination Period 2021 – 2025 seeks to build on the previous national successes of the National Institute of Malariology, Parasitology, and E
...
ntomology (NIMPE) while addressing current challenges to reduce the overall burden of malaria in the Southern and Central provinces and to initiate elimination activities in remaining focal areas of transmission throughout the country. The overall targets proposed to be reached by 2025 are:
Reduce malaria morbidity rate to below 0.015/1,000 population
Reduce malaria mortality rate to below 0.002/100,000 population
Eliminate malaria in 55 provinces
Ensure no malaria outbreaks
To address the urgent threat of drug resistance, Viet Nam has committed to accelerate efforts to eliminate locally-acquired P. falciparum by 2023.
more