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R-AI-diographers: investigating the perceived impact of artificial intelligence on radiographers' careers, roles, and professional identity in the UK
2
Zitationen
25
Autoren
2025
Jahr
Abstract
Introduction: Artificial Intelligence (AI) is being increasingly integrated into radiography, affecting daily responsibilities and workflows. Most studies focus on AI's influence on clinical performance or workflows; fewer explore radiographers' perspectives on how AI affects their roles and the profession. This study aims to investigate the perceived impact of AI on radiographers' careers, roles and professional identity in the UK. Methods: A UK-wide, cross-sectional, online survey including 32 questions was conducted using snowball sampling to gather responses from qualified radiographers and radiography students. The survey gathered data on: (a) demographics, (b) perceived short-term impacts of AI on roles and responsibilities, (c) potential medium-to-long-term impacts, (d) opportunities and threats from AI, and (e) preparedness to work with AI. Overall perceptions (optimism, neutrality, or pessimism) were derived from cumulative answers to a subset of 6 questions. Results: A total of 322 valid responses were received, showing general optimism about medium-to-long-term impact of AI on careers, roles and professional identity (60.7% optimistic). Most respondents (70.8%) reported no formal AI education or training, with AI education emerging as the top priority for improving preparedness in clinical practice. Concerns centered around the potential deskilling of radiographers and AI inefficiencies. However, 81.2% agreed AI would not replace radiographers in the long term. Conclusion: Radiographers are broadly optimistic about AI's impact but express concerns about deskilling due to reliance on AI. While their optimism is encouraging for recruitment and retention, there is a clear need for AI-specific education to enhance preparedness to work with AI.
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Autoren
- G. Walsh
- Nikolaos Stogiannos
- Benard Ohene Botwe
- Kevin P. McHugh
- Alexander Spurge
- Ben Potts
- Chris Gibson
- Winnie Tam
- Chris O’Sullivan
- Anton S. Quinsten
- Rodrigo Garcia Gorga
- Dávid Sipos
- Elona Dybeli
- Moreno Zanardo
- Cláudia Sà dos Reis
- Nejc Mekiš
- C. Buissink
- Andrew England
- Charlotte Beardmore
- Altino Cunha
- Archd. L. Goodall
- Janice St. John-Matthews
- Mark F. McEntee
- Yiannis Kyratsis
- Christina Malamateniou
Institutionen
- St George's, University of London(GB)
- United Imaging Healthcare (China)(CN)
- Athens Medical Center(GR)
- University of Portsmouth(GB)
- Portsmouth Hospitals NHS Trust(GB)
- University Hospital Southampton NHS Foundation Trust(GB)
- Maidstone and Tunbridge Wells NHS Trust(GB)
- Essen University Hospital(DE)
- Deleted Institution
- University of Pecs(HU)
- University of Elbasan(AL)
- IRCCS Policlinico San Donato(IT)
- HES-SO University of Applied Sciences and Arts Western Switzerland(CH)
- HES-SO Vaud(CH)
- Ljubljana University Medical Centre(SI)
- University of Ljubljana(SI)
- University of Groningen(NL)
- University College Cork(IE)
- Royal College of Radiologists(GB)
- City, University of London(GB)
- Erasmus University Rotterdam(NL)
- European Society of Radiology(AT)