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Abstract The advent of Deep Learning (DL) has significantly propelled the field of diagnostic radiology forward by enhancing image analysis and interpretation. The introduction of the Transformer architecture, followed by the development of Large Language Models (LLMs), has further revolutionized this domain. LLMs now possess the potential to automate and refine the radiology workflow, extending from report generation to assistance in diagnostics and patient care. The integration of multimodal technology with LLMs could potentially leapfrog these applications to unprecedented levels. However, LLMs come with unresolved challenges such as information hallucinations and biases, which can affect clinical reliability. Despite these issues, the legislative and guideline frameworks have yet to catch up with technological advancements. Radiologists must acquire a thorough understanding of these technologies to leverage LLMs’ potential to the fullest while maintaining medical safety and ethics. This review aims to aid in that endeavor.
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Takeshi Nakaura
Rintaro Ito
Daiju Ueda
Japanese Journal of Radiology
The University of Tokyo
Kyoto University
The University of Osaka
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Nakaura et al. (Fri,) studied this question.
www.synapsesocial.com/papers/68e71ba3b6db643587695682 — DOI: https://doi.org/10.1007/s11604-024-01552-0