Artificial Intelligence in Radiology

Maged Naser, Mohamed MN, Lamia H. Shehata

Abstract


The quick improvement of artificial intelligence (AI) has led to its boundless use in numerous industries, including medical care. Artificial intelligence can possibly be an extraordinary innovation that will fundamentally affect tolerant consideration.

Especially, AI has a promising part in radiology, wherein PCs are essential and new technological progresses are regularly searched out and adopted early in clinical practice. We present an outline of the essential meanings of normal terms, the advancement of an AI ecosystem in imaging and its incentive in relieving the difficulties of usage in clinical practice.


Keywords


Radiology, Artificial Intelligence, Machine Learning

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References


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DOI: http://dx.doi.org/10.52155/ijpsat.v23.2.2379

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