Strengths, Weaknesses, Opportunities, and Threats Analysis of Artificial Intelligence and Machine Learning Applications in Radiology.

Journal: Journal of the American College of Radiology : JACR
Published Date:

Abstract

Currently, the use of artificial intelligence (AI) in radiology, particularly machine learning (ML), has become a reality in clinical practice. Since the end of the last century, several ML algorithms have been introduced for a wide range of common imaging tasks, not only for diagnostic purposes but also for image acquisition and postprocessing. AI is now recognized to be a driving initiative in every aspect of radiology. There is growing evidence of the advantages of AI in radiology creating seamless imaging workflows for radiologists or even replacing radiologists. Most of the current AI methods have some internal and external disadvantages that are impeding their ultimate implementation in the clinical arena. As such, AI can be considered a portion of a business trying to be introduced in the health care market. For this reason, this review analyzes the current status of AI, and specifically ML, applied to radiology from the scope of strengths, weaknesses, opportunities, and threats (SWOT) analysis.

Authors

  • Teodoro Martín Noguerol
    MRI Unit, Radiology Department, Health Time, Jaén, Spain.
  • Félix Paulano-Godino
    3D Printing Unit, Engineering Department, Health Time, Jaén, Spain.
  • María Teresa Martín-Valdivia
    SINAI Research Group, Computer Science Department, Advanced Studies Center in ICT (CEATIC), Universidad de Jaén, Jaén, Spain.
  • Christine O Menias
    Department of Radiology, Mayo Clinic, Scottsdale, Arizona.
  • Antonio Luna
    MRI Unit, Radiology Department, Health Time, Jaén, Spain. Electronic address: aluna70@htime.org.