Responsible AI practice and AI education are central to AI implementation: a rapid review for all medical imaging professionals in Europe

Author:

Walsh Gemma1,Stogiannos Nikolaos12,van de Venter Riaan13,Rainey Clare4,Tam Winnie1,McFadden Sonyia5,McNulty Jonathan P6,Mekis Nejc7,Lewis Sarah8,O'Regan Tracy9,Kumar Amrita10,Huisman Merel11,Bisdas Sotirios1213,Kotter Elmar141516,Pinto dos Santos Daniel15161718,Sá dos Reis Cláudia19,van Ooijen Peter1520,Brady Adrian P1621,Malamateniou Christina119

Affiliation:

1. Division of Midwifery & Radiography, City University of London, London, United Kingdom

2. Medical Imaging Department, Corfu General Hospital, Kontokali, Greece

3. Department of Radiography, School of Clinical Care Sciences, Faculty of Health Sciences, Nelson Mandela University, Port Elizabeth, South Africa

4. School of Health Sciences, Ulster University, Derry~Londonderry, Northern Ireland

5. School of Health Sciences, Ulster University, Coleraine, United Kingdom

6. University College Dublin, School of Medicine, Dublin, Ireland

7. Medical Imaging and Radiotherapy Department, University of Ljubljana, Faculty of Health Sciences, Ljubljana, Slovenia

8. Discipline of Medical Imaging Science, Sydney School of Health Sciences, Faculty of Medicine and Health, University of Sydney, Sydney, Australia

9. The Society and College of Radiographers, London, United Kingdom

10. Frimley Health NHS Foundation Trust, Frimley, United Kingdom

11. Department of Radiology, University Medical Center Utrecht, Utrecht, Netherlands

12. Department of Neuroradiology, University College London Hospitals NHS Trust, London, United Kingdom

13. Department of Brain Repair and Rehabilitation, Institute of Neurology, UCL, London, United Kingdom

14. Department of Radiology, University Medical Centre Freiburg, Freiburg, Germany

15. European Society of Medical Imaging Informatics, Vienna, Austria

16. European Society of Radiology, Am Gestade, Austria

17. Department of Radiology, University Hospital Frankfurt, Frankfurt, Germany

18. Department of Radiology, University Hospital Cologne, Cologne, Germany

19. School of Health Sciences (HESAV), University of Applied Sciences and Arts Western Switzerland (HES-SO), Lausanne, Switzerland

20. Department of Radiation Oncology/Data Science Center in Health (DASH), University of Groningen, University Medical Center Groningen, Groningen, Netherlands

21. University College Cork, Cork, Ireland

Abstract

Artificial intelligence (AI) has transitioned from the lab to the bedside, and it is increasingly being used in healthcare. Radiology and Radiography are on the frontline of AI implementation, because of the use of big data for medical imaging and diagnosis for different patient groups. Safe and effective AI implementation requires that responsible and ethical practices are upheld by all key stakeholders, that there is harmonious collaboration between different professional groups, and customised educational provisions for all involved. This paper outlines key principles of ethical and responsible AI, highlights recent educational initiatives for clinical practitioners and discusses the synergies between all medical imaging professionals as they prepare for the digital future in Europe. Responsible and ethical AI is vital to enhance a culture of safety and trust for healthcare professionals and patients alike. Educational and training provisions for medical imaging professionals on AI is central to the understanding of basic AI principles and applications and there are many offerings currently in Europe. Education can facilitate the transparency of AI tools, but more formalised, university-led training is needed to ensure the academic scrutiny, appropriate pedagogy, multidisciplinarity and customisation to the learners’ unique needs are being adhered to. As radiographers and radiologists work together and with other professionals to understand and harness the benefits of AI in medical imaging, it becomes clear that they are faced with the same challenges and that they have the same needs. The digital future belongs to multidisciplinary teams that work seamlessly together, learn together, manage risk collectively and collaborate for the benefit of the patients they serve.

Publisher

Oxford University Press (OUP)

Subject

General Medicine

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