Advertisement

Need for Medical Student Education in Emerging Technologies and Artificial Intelligence: Fostering Enthusiasm, Rather Than Flight, From Specialties Most Affected by Emerging Technologies

Published:December 01, 2022DOI:https://doi.org/10.1016/j.acra.2022.11.018
      We read with interest the article by Atalay and colleagues “The impact of emerging technologies on residency selection by medical students in 2017 and 2021, with a focus on Diagnostic Radiology” published in Academic Radiology (
      • Atalay MK
      • Baird GL
      • Stib MT
      • et al.
      The impact of emerging technologies on residency selection by medical students in 2017 and 2021, with a focus on diagnostic radiology.
      ).
      To read this article in full you will need to make a payment

      Purchase one-time access:

      Academic & Personal: 24 hour online accessCorporate R&D Professionals: 24 hour online access
      One-time access price info
      • For academic or personal research use, select 'Academic and Personal'
      • For corporate R&D use, select 'Corporate R&D Professionals'

      Subscribe:

      Subscribe to Academic Radiology
      Already a print subscriber? Claim online access
      Already an online subscriber? Sign in
      Institutional Access: Sign in to ScienceDirect

      References

        • Atalay MK
        • Baird GL
        • Stib MT
        • et al.
        The impact of emerging technologies on residency selection by medical students in 2017 and 2021, with a focus on diagnostic radiology.
        Acad Radiol. 2022;
        • Park CJ
        • Yi PH
        • Siegel EL.
        Medical student perspectives on the impact of artificial intelligence on the practice of medicine.
        Curr Probl Diagn Radiol. 2021; 50: 614-619
        • Ambinder EP.
        A history of the shift toward full computerization of medicine.
        J Oncol Pract. 2005; 1: 54-56
        • Liu DS
        • Sawyer J
        • Luna A
        • et al.
        Perceptions of US medical students on artificial intelligence in medicine: mixed methods survey study.
        JMIR Med Educ. 2022; 8: e38325
        • European Society of Radiology
        Current practical experience with artificial intelligence in clinical radiology: a survey of the European Society of Radiology.
        Insights Imaging. 2022; 13: 107
        • van Leeuwen KG
        • Schalekamp S
        • Rutten M
        • et al.
        Artificial intelligence in radiology: 100 commercially available products and their scientific evidence.
        Eur Radiol. 2021; 31: 3797-3804
        • Bluemke DA
        • Moy L
        • Bredella MA
        • et al.
        Assessing radiology research on artificial intelligence: a brief guide for authors, reviewers, and readers-from the radiology editorial board.
        Radiology. 2020; 294: 487-489
        • Rouzrokh P
        • Khosravi B
        • Faghani S
        • et al.
        Mitigating Bias in radiology machine learning: 1. Data Handling.
        Radiol Artif Intell. 2022; 4e210290