ARTIFICIAL INTELLIGENCE IN MEDICAL IMAGING: OPPORTUNITIES AND CHALLENGES
DOI:
https://doi.org/10.1259/39k56q10Keywords:
artificial intelligence, radiology, medical imaging, diagnosis, machine learning, deep learning.Abstract
Artificial intelligence (AI) is transforming healthcare, particularly in the field of radiology. Modern algorithms can analyze medical images with remarkable accuracy, assisting radiologists in early detection, diagnosis, and treatment planning. This article reviews the applications of AI in medical imaging, highlights its advantages, and discusses the challenges that must be addressed for its successful integration into clinical practice. Although AI is not intended to replace radiologists, it has the potential to significantly enhance efficiency, reduce errors, and improve patient outcomes.
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