An international survey on AI in radiology in 1041 radiologists and radiology residents part 2: expectations, hurdles to implementation, and education
Publication date
2021-11
Authors
Huisman, M.
Ranschaert, Erik
Parker, William
Mastrodicasa, Domenico
Koci, Martin
Pinto de Santos, Daniel
Coppola, Francesca
Morozov, Sergey
Zins, Marc
Bohyn, Cedric
Editors
Advisors
Supervisors
Document Type
Article
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cc_by
Abstract
OBJECTIVES: Currently, hurdles to implementation of artificial intelligence (AI) in radiology are a much-debated topic but have not been investigated in the community at large. Also, controversy exists if and to what extent AI should be incorporated into radiology residency programs. METHODS: Between April and July 2019, an international survey took place on AI regarding its impact on the profession and training. The survey was accessible for radiologists and residents and distributed through several radiological societies. Relationships of independent variables with opinions, hurdles, and education were assessed using multivariable logistic regression. RESULTS: The survey was completed by 1041 respondents from 54 countries. A majority (n = 855, 82%) expects that AI will cause a change to the radiology field within 10 years. Most frequently, expected roles of AI in clinical practice were second reader (n = 829, 78%) and work-flow optimization (n = 802, 77%). Ethical and legal issues (n = 630, 62%) and lack of knowledge (n = 584, 57%) were mentioned most often as hurdles to implementation. Expert respondents added lack of labelled images and generalizability issues. A majority (n = 819, 79%) indicated that AI should be incorporated in residency programs, while less support for imaging informatics and AI as a subspecialty was found (n = 241, 23%). CONCLUSIONS: Broad community demand exists for incorporation of AI into residency programs. Based on the results of the current study, integration of AI education seems advisable for radiology residents, including issues related to data management, ethics, and legislation. KEY POINTS: • There is broad demand from the radiological community to incorporate AI into residency programs, but there is less support to recognize imaging informatics as a radiological subspecialty. • Ethical and legal issues and lack of knowledge are recognized as major bottlenecks for AI implementation by the radiological community, while the shortage in labeled data and IT-infrastructure issues are less often recognized as hurdles. • Integrating AI education in radiology curricula including technical aspects of data management, risk of bias, and ethical and legal issues may aid successful integration of AI into diagnostic radiology.
Keywords
Artificial Intelligence, Humans, Motivation, Radiologists, Radiology, Surveys and Questionnaires, Surveys and questionnaires, Diagnostic imaging, Artificial intelligence, Radiology Nuclear Medicine and imaging, Journal Article
Citation
Huisman, M, Ranschaert, E, Parker, W, Mastrodicasa, D, Koci, M, Pinto de Santos, D, Coppola, F, Morozov, S, Zins, M, Bohyn, C, Koç, U, Wu, J, Veean, S, Fleischmann, D, Leiner, T & Willemink, M J 2021, 'An international survey on AI in radiology in 1041 radiologists and radiology residents part 2 : expectations, hurdles to implementation, and education', European Radiology, vol. 31, no. 11, pp. 8797-8806. https://doi.org/10.1007/s00330-021-07782-4