: Foundation models (FMs) represent a significant evolution in artificial intelligence (AI), impacting diverse fields. Within radiology, this evolution offers greater adaptability, multimodal integration, and improved generalizability compared with traditional narrow AI. Utilizing large-scale pre-training and efficient fine-tuning, FMs can support diverse applications, including image interpretation, report generation, integrative diagnostics combining imaging with clinical/laboratory data, and synthetic data creation, holding significant promise for advancements in precision medicine. However, clinical translation of FMs faces several substantial challenges. Key concerns include the inherent opacity of model decision-making processes, environmental and social sustainability issues, risks to data privacy, complex ethical considerations, such as bias and fairness, and navigating the uncertainty of regulatory frameworks. Moreover, rigorous validation is essential to address inherent stochasticity and the risk of hallucination. This international collaborative effort provides a comprehensive overview of the fundamentals, applications, opportunities, challenges, and prospects of FMs, aiming to guide their responsible and effective adoption in radiology and healthcare.

Foundation models for radiology: fundamentals, applications, opportunities, challenges, risks, and prospects / Akinci D'Antonoli, Tugba; Bluethgen, Christian; Cuocolo, Renato; Klontzas, Michail E; Ponsiglione, Andrea; Kocak, Burak. - In: DIAGNOSTIC AND INTERVENTIONAL RADIOLOGY. - ISSN 1305-3825. - (2025). [10.4274/dir.2025.253445]

Foundation models for radiology: fundamentals, applications, opportunities, challenges, risks, and prospects

Ponsiglione, Andrea;
2025

Abstract

: Foundation models (FMs) represent a significant evolution in artificial intelligence (AI), impacting diverse fields. Within radiology, this evolution offers greater adaptability, multimodal integration, and improved generalizability compared with traditional narrow AI. Utilizing large-scale pre-training and efficient fine-tuning, FMs can support diverse applications, including image interpretation, report generation, integrative diagnostics combining imaging with clinical/laboratory data, and synthetic data creation, holding significant promise for advancements in precision medicine. However, clinical translation of FMs faces several substantial challenges. Key concerns include the inherent opacity of model decision-making processes, environmental and social sustainability issues, risks to data privacy, complex ethical considerations, such as bias and fairness, and navigating the uncertainty of regulatory frameworks. Moreover, rigorous validation is essential to address inherent stochasticity and the risk of hallucination. This international collaborative effort provides a comprehensive overview of the fundamentals, applications, opportunities, challenges, and prospects of FMs, aiming to guide their responsible and effective adoption in radiology and healthcare.
2025
Foundation models for radiology: fundamentals, applications, opportunities, challenges, risks, and prospects / Akinci D'Antonoli, Tugba; Bluethgen, Christian; Cuocolo, Renato; Klontzas, Michail E; Ponsiglione, Andrea; Kocak, Burak. - In: DIAGNOSTIC AND INTERVENTIONAL RADIOLOGY. - ISSN 1305-3825. - (2025). [10.4274/dir.2025.253445]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/1024295
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