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Intelligent Imaging: Artificial Intelligence Augmented Nuclear Medicine.

Geoffrey M Currie1

  • 1School of Dentistry and Health Sciences, Charles Sturt University, Wagga Wagga, Australia gcurrie@csu.edu.au.

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|August 12, 2019
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Summary
This summary is machine-generated.

Artificial intelligence (AI) enhances nuclear medicine and radiology by improving physician capabilities. This technology offers opportunities for physicists and technologists, integrating AI without displacing human resources.

Keywords:
artificial intelligenceartificial neural networkconvolutional neural networkdeep learningnuclear medicine

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Area of Science:

  • Medical Imaging and Diagnostics
  • Radiology
  • Nuclear Medicine

Background:

  • Artificial intelligence (AI) is a disruptive technology in medical imaging.
  • Significant debate exists regarding AI's impact on radiologists' careers.
  • AI presents opportunities to enhance physician capabilities in nuclear medicine.

Purpose of the Study:

  • To introduce current clinical applications of machine learning and deep learning in nuclear medicine and radiology.
  • To explore how AI can be assimilated into practice without displacing human resources.
  • To provide insight into the principles and opportunities of AI in medical imaging.

Main Methods:

  • Review of current clinical applications of machine learning.
  • Review of current clinical applications of deep learning.
  • Analysis of AI's impact on the roles of physicians, physicists, and technologists.

Main Results:

  • AI enhances the capabilities of physicians in nuclear medicine.
  • AI impacts the responsibilities of physicists and technologists.
  • Clinical applications of machine learning and deep learning are being introduced.

Conclusions:

  • AI integration in nuclear medicine and radiology offers significant opportunities.
  • Seamless assimilation of AI requires understanding its principles and impact on human resources.
  • AI is transforming medical imaging practices, enhancing rather than replacing human expertise.