Upskilling or deskilling? Measurable role of an AI-supported training for radiology residents: a lesson from the pandemic

Abstract Objectives This article aims to evaluate the use and effects of an artificial intelligence system supporting a critical diagnostic task during radiology resident training, addressing a research gap in this field. Materials and methods We involved eight residents evaluating 150 CXRs in three...

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Main Authors: Mattia Savardi, Alberto Signoroni, Sergio Benini, Filippo Vaccher, Matteo Alberti, Pietro Ciolli, Nunzia Di Meo, Teresa Falcone, Marco Ramanzin, Barbara Romano, Federica Sozzi, Davide Farina
Format: Article
Language:English
Published: SpringerOpen 2025-01-01
Series:Insights into Imaging
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Online Access:https://doi.org/10.1186/s13244-024-01893-4
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Summary:Abstract Objectives This article aims to evaluate the use and effects of an artificial intelligence system supporting a critical diagnostic task during radiology resident training, addressing a research gap in this field. Materials and methods We involved eight residents evaluating 150 CXRs in three scenarios: no AI, on-demand AI, and integrated-AI. The considered task was the assessment of a multi-regional severity score of lung compromise in patients affected by COVID-19. The chosen artificial intelligence tool, fully integrated in the RIS/PACS, demonstrated superior performance in scoring compared to the average radiologist. Using quantitative metrics and questionnaires, we measured the ‘upskilling’ effects of using AI support and residents’ resilience to ‘deskilling,’ i.e., their ability to overcome AI errors. Results Residents required AI in 70% of cases when left free to choose. AI support significantly reduced severity score errors and increased inter-rater agreement by 22%. Residents were resilient to AI errors above an acceptability threshold. Questionnaires indicated high tool usefulness, reliability, and explainability, with a preference for collaborative AI scenarios. Conclusion With this work, we gathered quantitative and qualitative evidence of the beneficial use of a high-performance AI tool that is well integrated into the diagnostic workflow as a training aid for radiology residents. Critical relevance statement Balancing educational benefits and deskilling risks is essential to exploit AI systems as effective learning tools in radiology residency programs. Our work highlights metrics for evaluating these aspects. Key Points Insights into AI tools’ effects in radiology resident training are lacking. Metrics were defined to observe residents using an AI tool in different settings. This approach is advisable for evaluating AI tools in radiology training. Graphical Abstract
ISSN:1869-4101