AI-POWERED PREDICTIVE ANALYTICS IN EMERGENCY MEDICINE: REDUCING RESPONSE TIME AND IMPROVING OUTCOMES
Keywords:
Keywords: emergency medicine, artificial intelligence, patient, doctors, diseases, medical personnel, Medical Service, analysis.Abstract
Abstract: The application of artificial intelligence (SI) technologies in the field
of emergency medicine makes it possible to radically change the quality of medical
services. Artificial intelligence-based predictive analysis plays a particularly important
role in reducing response time and improving outcomes. In emergency situations, every
second is calculated, so there is a need to make quick and clear decisions. With the help
of advanced AI algorithms and the ability to analyze large amounts of data, the
effectiveness of emergency medical care processes is increased.
References
References:
1. Abzalov, D. (2023). The role and capabilities of artificial intelligence in the
detection and treatment of heart disease. Tashkent: Medical University Press.
2. Sahibova, G. A. (2022). Scientific and methodological foundations and practical
application of artificial intelligence technologies in predicting the results of
medical examinations. Journal of medical science, 15(3), 45-58.
3. Nurmukhamedov, T., Hudayberdiev, M., Koraboshev, O. Z., Sodikov, S., &
Hudayberdiev, K. (2024). Artificial intelligence algorithms in emergency
detection. Materials of the scientific conference, 59, 112-120.
4. Mamatov, N. (2021). Application of artificial intelligence tools in the control and
evaluation of Education. Journal of education and Information Technology, 8(2),
30-40.
5. Mukhiddinov, M. (2022). Innovative technologies in artificial intelligence and
medicine. Journal of medical technology, 10(1), 22-35.
6. Abdullayev, S. (2023). Artificial intelligence and expert systems: theoretical and
practical aspects. Information technology and medicine, 12(4), 55-67.
7. Yusupov, B. (2024). Artificial intelligence-based decision-making systems in
emergency medicine. Medicine and informatics, 9(3), 70-82.