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Canadian Association of Radiologists White Paper on Artificial Intelligence in Radiology
496
Zitationen
23
Autoren
2018
Jahr
Abstract
Artificial intelligence (AI) is rapidly moving from an experimental phase to an implementation phase in many fields, including medicine. The combination of improved availability of large datasets, increasing computing power, and advances in learning algorithms has created major performance breakthroughs in the development of AI applications. In the last 5 years, AI techniques known as deep learning have delivered rapidly improving performance in image recognition, caption generation, and speech recognition. Radiology, in particular, is a prime candidate for early adoption of these techniques. It is anticipated that the implementation of AI in radiology over the next decade will significantly improve the quality, value, and depth of radiology's contribution to patient care and population health, and will revolutionize radiologists' workflows. The Canadian Association of Radiologists (CAR) is the national voice of radiology committed to promoting the highest standards in patient-centered imaging, lifelong learning, and research. The CAR has created an AI working group with the mandate to discuss and deliberate on practice, policy, and patient care issues related to the introduction and implementation of AI in imaging. This white paper provides recommendations for the CAR derived from deliberations between members of the AI working group. This white paper on AI in radiology will inform CAR members and policymakers on key terminology, educational needs of members, research and development, partnerships, potential clinical applications, implementation, structure and governance, role of radiologists, and potential impact of AI on radiology in Canada.
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Autoren
- An Tang
- Roger Tam
- Alexandre Cadrin-Chênevert
- Will Guest
- Jaron Chong
- Joseph Barfett
- Leonid Chepelev
- Robyn Cairns
- J. Ross Mitchell
- Mark Cicero
- Manuel Gaudreau Poudrette
- Jacob L. Jaremko
- Caroline Reinhold
- B. Gallix
- Bruce Gray
- Raym Geis
- Timothy O’Connell
- Paul Babyn
- David Koff
- D. Ferguson
- Sheldon Derkatch
- Alexander Bilbily
- Wael Shabana
Institutionen
- Centre Hospitalier de l’Université de Montréal(CA)
- Université de Montréal(CA)
- University of British Columbia(CA)
- Université Laval(CA)
- Centre Intégré de Santé et de Services Sociaux des Laurentides(CA)
- Cegep regional de Lanaudiere(CA)
- Centre intégré de santé et de services sociaux de Chaudière-Appalaches(CA)
- McGill University Health Centre(CA)
- University of Toronto(CA)
- St. Michael's Hospital(CA)
- University of Ottawa(CA)
- BC Children's Hospital(CA)
- Mayo Clinic in Florida(US)
- WinnMed(US)
- Université de Sherbrooke(CA)
- University of Alberta(CA)
- University of Colorado Denver(US)
- National Jewish Health(US)