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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 Af
...
rica, 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
This report provides an overview of the latest tuberculosis (TB) epidemiological situation and is published jointly by the WHO Regional Office for Europe and the European Centre for Disease Prevention and Control. In 2023, 38 993 cases of TB were reported in 29 European Union and European Economic A
...
rea (EU/ EEA) countries, resulting in a notification rate of 8.6 per 100 000 population in the EU/ EEA. This represented a continuation of the slight increase observed in most countries for 2022, while the overall trend has continued to decrease over the last five years. Exceptions to this trend were Cyprus, Greece, Iceland and Slovakia where an increase of 1−3% was observed in 2023 against data reported for 2019. However, the rates for 2020−2021 should be interpreted with caution, given the measures implemented to mitigate the COVID-19 pandemic and their impact on TB data collection and patient access to health service
more
Objective: To review research on associations of trauma type with PTSD in the WHO World Mental Health (WMH) surveys, a series of epidemiological surveys that obtained representative data on trauma-s
...
pecific PTSD.
more
For decades, pollution and its harmful effects on people’s health, the environment, and the planet have been neglected both by Governments and the international development agenda. Yet, pollution is the largest environmental cause of disease and d
...
eath in the world today, responsible for an estimated 9 million premature deaths.
The Lancet Commission on pollution and health addresses the full health and economic costs of air, water, and soil pollution. Through analyses of existing and emerging data, the Commission reveals pollution’s severe and underreported contribution to the Global Burden of Disease. It uncovers the economic costs of pollution to low-income and middle-income countries. The Commission will inform key decision makers around the world about the burden that pollution places on health and economic development, and about available cost-effective pollution control solutions and strategies.
more
Tuberculosis treatment failure results in increased risk of morbidity, drug resistance, transmission and mortality. There are few data about tuberculosis treatment outcomes in Burkina Faso. The current study investigated the factors associated with
...
tuberculosis treatment failure in the central east health region of Burkina Faso.
more
There is currently no systematic global tracking of how many health and essential workers have died after contracting COVID-19.
However, Amnesty International has collated and analysed a wide range of available
...
data that shows that over 3000 health workers are known to have died after contracting COVID-19 in 79 countries around the world.
According to Amnesty International’s monitoring, the countries with the highest numbers of health worker deaths thus far include the USA (507), Russia (545), UK (540, including 262 social care workers), Brazil (351), Mexico (248), Italy (188), Egypt (111), Iran (91), Ecuador (82) and Spain (63).
more
Similar to other parts of the world, the prevalence of type 2 diabetes mellitus (T2DM) in the Asia-Pacific Region has rapidly increased during the last few decades. The purposes of this pilot study were to determine the feasibility and the effects of a capacity building program for Village
...
Health Volunteers (VHVs) to support self-management in a T2DM high risk population from a rural subdistrict in Northeast Thailand. Both quantitative and qualitative data were collected using surveys, focus group discussions, and in-depth interviews. Data were analyzed and used to develop a 12-week capacity building program for VHVs. This program was then implemented on 60 subjects at high risk of T2DM in the selected community. According to the paired t-test and Wilcoxon-signed rank test, VHVs had higher scores on knowledge and self-efficacy of T2DM prevention after a 12 week intervention (p =.03 and p =.02, respectively). Study participants at risk for T2DM also had a significant increase in T2DM knowledge and self-management (p <.001). Implementation of the capacity building program for VHVs in Northeast Thailand was feasible. The key successes were strong community bonding, community empowerment, and support from family and public health nurses. Effects of the program should be examined with those in other Asia-Pacific countries.
more
The Africa Centres for Disease Control and Prevention (Africa CDC) was established in 2017, after the west Africa Ebola virus disease outbreak. Upon creation, the
role of Africa CDC was to mandate strengthening of the capacity of public health inst
...
itutions in Africa to prevent, detect, and respond to disease threats, based on science, policy, and data-driven interventions and programmes, as envisaged by the Abuja Declaration. The inaugural strategic plan was focused on building health systems for emergency preparedness and response. However, from its inception, the organisation recognised the concomitant need to comprehensively strengthen systems to prevent and manage noncommunicable diseases (NCDs) and injuries, and to face the neglected issue of mental health disorders. The division dedicated to these issues was conceptualised, but operationalisation was deferred to a future date.
more
Global cardiovascular disease (CVD) burden is high and rising, especially in low-income and middle-income countries (LMICs). Focussing on 45 LMICs, we aimed to determine (1) the adult population’s median 10-year predicted CVD risk, including its variation within countries by socio-demographic char
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acteristics, and (2) the prevalence of self-reported blood pressure (BP) medication use among those with and without an indication for such medication as per World Health Organization (WHO) guidelines.
more
SCORE Dashboard
recommended
A technical package of five essential interventions with key elements to strengthen country health data and information systems and enable governments to track progress towards the
...
health-related SDGs and national and subnational priorities.
more
Number of Community Health Centers as June 2014 by Province and City in Indonesia
The Health Situation of Toddlers in Indonesia
Maternal Health Situation in Indonesia
Conditions for Achieving the Indonesian Child Health Program
Preliminary data from Member States indicate that the number of cholera cases reported in 2023 as of 15 December has surpassed that of 2022, with over 667 000 cases and 4000 deaths. These figures must be interpreted with caution given the varying su
...
rveillance systems and capacity across countries, which means that 2023 data are not directly comparable to reports from previous years.
more
World malaria report 2024
recommended
New data from the WHO reveal that an estimated 2.2 billion cases of malaria and 12.7 million deaths have been averted since 2000, but the disease remains a serious global health threat, particularly
...
in the WHO African Region. According to WHO’s latest World malaria report, there were an estimated 263 million cases and 597 000 malaria deaths worldwide in 2023. This represents about 11 million more cases in 2023 compared to 2022, and nearly the same number of deaths. Approximately 95% of the deaths occurred in the WHO African Region, where many at risk still lack access to the services they need to prevent, detect and treat the disease.
more
Data received as of July 3, 2017 | WHO and UNICEF estimates of national immunization coverage - next revision available July 15, 2018
Data from l'Enquête Démographique et de Santé (EDS-RDC) en République Démocratique du Congo, 2013-14
Global Burden of Disease (GBD) Compare
recommended
Institute for Health Metrics and Evaluation
(2018)
CC
Analyze updated data about the world’s health levels and trends from 1990 to 2016 in this interactive tool. Use treemaps, maps, arrow diagrams, and other charts to compare causes and risks within
...
a country, compare countries with regions or the world, and explore patterns and trends by country, age, and gender. Drill from a global view into specific details. Compare expected and observed trends. Watch how disease patterns have changed over time. See which causes of death and disability are having more impact and which are waning.
more
Global Burden of Disease (GBD) India Compare
recommended
Analyze data about India’s health levels and trends from 1990 to 2016 in this interactive tool. Use treemaps, maps, arrow diagrams, and other charts to compare causes and risks and explore pattern
...
s and trends by age and sex. Drill from a national view into specific details. Compare expected and observed trends. Watch how disease patterns have changed over time. See which causes of death and disability are having more impact and which are waning.
more