From monitoring fire to refugee immunization applications, AI technologies quickly reform out how people provide care during crisis, offering speed, scale and intelligent decisions when lives are on the line.
Study: AI in Humanitarian Health Care: A Game Change player to answer crisis. Credit Picture: Stockvideo24/Shutterstock.com
Artificial Intelligence (AI) is a revolutionary mix of computer technologies that could transform humanitarian health care by developing new crises. A recent review in Borders in artificial intelligence It examines the scope of the responses of the healthcare crisis, showing how it could make them more durable and effective.
Import
AI can work together and dominate various technologies that could provide more effective and high quality healthcare answers to emergency situations, improving decision -making and resource distribution. It can predict natural disasters, ensuring improving real -time communication. Its use could ensure that populations at risk will receive adequate and timely help. The review analyzed the literature and the case of real world studies from 2001 to early 2025, focusing on diseases of diseases, responding to disasters, mental health and moral concerns.
Its scope of AI in humanitarian health care
Some ways in which AI authorizes humanitarian health care are illustrated below.
Improvement of accuracy and speed in disaster answers
AI allows first correspondents and designers to respond faster and accurately to disasters such as floods, earthquakes, hurricanes and fires.
For example, during the Los Angeles fires, AI aircraft depicted the fire in real time and analyzed the data to predict how the flames would spread. This allowed the identification of the best evacuation routes and helped send medical groups to the right places. In addition, the classification of patients with burns with burns or respiratory symptoms ensured that the pores were used to help those in the most in need.
AI is used in refugee camps on a pilot basis to analyze local conditions and predicting the restaurants at an early stage. It also leads to telemedicine applications at remote spots or when local medical resources are overwhelmed. The application of children (CIMA), implemented in Jordan Zaatari refugee camps, supports vaccination in refugee populations and has increased the percentage of vaccinations in such groups.
According to a non-randomized controlled test by EL-Halabi et al (2022), the intervention team using CIMA had a 26% surveillance rate within a week, compared to 22% in the control group, with a 19% relative reduction in monitoring risk.
Infectious surveillance of the disease
The AI can monitor and predict infectious outbreaks, including malaria, tuberculosis and dengue fever, the integration of climate -related variables, the human population movement and socio -economic factors. This could improve the allocation of resources and lead preventive policies.
For example, IBM’s Watson Health is used by the AI application powered by Zzappmalaria’s AI to increase the effectiveness and coverage of malaria elimination strategies while reducing the required campaign time. The application analyzes satellite and environmental data to detect mosquito breeding sites, allowing more targeted and effective larvae.
Mental health support
AI provides counseling to help victims of natural disasters or displacements suffering from anxiety, depression and anxiety. Mental health resources are usually not available in these arrangements, enhancing the value of AI tools.
Chatbots such as WYSA and Woebot use AI to provide psychological support through cognitive behavioral therapy (CBT) and awareness strategies. They provide immediate, multilingual help and help reduce the burden of overwhelmed mental health systems.
AI tools are also used to monitor real -time emotion in social media and emergency channels, helping to identify mental health crisis and allowing targeted intervention. In addition, simulations used by AI to educate mental health professionals in counseling scenarios.
Robotics
Robotic search and rescue devices can help detect and rescue people trapped in debris after earthquakes and other natural disasters. Other robotic devices can help monitor or treat people with infectious situations such as Crown Disease 2019 (COVID-19), enhancing the accessibility of care.
Robotic intentions and other recovery systems also help survivors recover or improve mobility and recover faster. Such platforms will probably be even further used as digital health technologies develop. For example, the Meron application, developed and tested by UNICEF, uses AI to project malnutrition to children by analyzing images, improving diagnosis and care.
Crisis communication
Language differences often prevent humanitarian aid. Physical language processing tools (NLP) translates the guidelines for public health, medical instructions and emergency alerts in other languages, reaching widely different populations and improving compliance with recommendations.
The review notes that tools such as Google Bert and Openai are developed for large language models to perform translations in real time. However, there remain challenges such as the dangers of translation and the bias of data for the training of language models.
Supply of supply chain
AI can optimize help distribution, including medical supplies, food and equipment. Provision of demand rationalize the process and reduces waste, helping people who need to access resources available as soon as possible. Ai -powered aircraft also provide urgent medical attention and vaccines to remote or cut areas.
Organizations such as the World Food Program and Médecins Sans Frontières have begun to use detailed data and systems with power to improve the efficiency of tradition and minimize waste in emergency supply chains.
Healthcare
AI can be used with blockchain to provide victims of disaster with safe identity. This allows them to access health care and medical data anywhere without losing their medical history. This helps both treatment professionals and patients. Pilot studies continue in refugee camps. According to the authors, these digital identities belonging to the breach allow for continuity and reduce the displacement -related administration.
Air conditioning
AI can help predict extreme weather events using environmental and meteorological data. Thus, it can provide timely warning of environmental disasters, including drought, flooding, heat waves, hurricanes and flocks. This would allow for precautionary measures, minimizing the loss of life and damage to ownership.
For example, the Google flood forecast initiative is working in Bangladesh and India, among other things, providing local flood forecasts based on real -time rainfall and river level data in conjunction with local territory. In Africa, AI models are also used for predicting and monitoring patterns of flocks, helping to improve food safety, supporting agricultural preventive answers.
Moral issues
The use of AI in humanitarian health care is provocative unless urgent restrictions are addressed and resolved. These include biased algorithms that could deform medical decisions and incorrectly distribute resources to the wrong people. This could deprive people of people in need that do not have political or social power or representation of assistance. AI training requires deliberate use of different data sets with continuous monitoring and transparency to avoid this.
Data privacy and security are other critical issues. Another question is accountability: Who is responsible for the decisions of patient care of Ae: Doctors, Algorithm developers or humanitarian aid providers?
Infrastructure issues could broaden the inequalities in the field of healthcare, as the solutions powered by AS require internet connectivity and digital infrastructure, which do not have some populations. Regulatory supervision is necessary to ensure the neutral, impartial and human use of AI. This requires cooperation between government and non -governmental interested parties.
As the document points out, achieving AI moral development requires governance, human supervision of critical decisions and deliberate efforts to avoid digital exclusion in low -resource environments.
Conclusion
While interventions operating with AI promise increased response, data making decisions and integration, moral regulation is vital during the phases of planning and implementing such solutions during humanitarian health crises.
With the coordination between governments, NGOs, academic researchers and technology companies, AI has the ability to become a key factor in a more sensitive, fair and humanitarian system of humanitarian health care.