USE OF ARTIFICIAL INTELLIGENCE IN HEALTH SERVICES MANAGEMENT IN TÜRKİYE

USE OF ARTIFICIAL INTELLIGENCE IN HEALTH SERVICES MANAGEMENT IN TÜRKİYE

With the inclusion of technological developments in the health sector, the importance given to artificial intelligence in the field of medicine is increasing. For the future, the application possibilities of artificial intelligence and especially the potential of big data are quite large. There are many uses for artificial intelligence applications in health services, such as surveillance systems, epidemiological analysis, detection of health risks, early diagnosis of diseases, epidemic management and vaccine studies. In addition, there are some potential positive and negative consequences of integrating artificial intelligence into modern medicine. The purpose of this review is to provide information about the concept of artificial intelligence and to evaluate the usage areas, potential benefits and aspects of artificial intelligence in Health Services from a perspective perspective through various application examples.

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