The function of artificial intelligence and its sub-branches in the field of health
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Abstract
Nowadays, computers and smartphones, tablets and other electronic gadgets have become indispensable for human life. Human health is paramount. It is very important to know the use of robotic applications in the health sector and to closely follow the general developments related to this issue. The human brain is in a constant state of interaction with this technology. The specialties formed by the adaptation of nanotechnology to human health; tissue engineering is very important for people. Artificial intelligence is one of the greatest engineering works in the history of mankind and the world. Artificial Intelligence technology has become a field that humanity has often heard about with the increase of epidemic diseases. Artificial intelligence is the ability to exhibit human-like behavior. Artificial intelligence has the potential to make scientific research, an area where people focus, much more efficient and increase the speed of scientific research by a factor. In this study, the importance and usability of machine learning in human health were investigated by literature review. The results obtained from different studies are shown in the figures.
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