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Evaluating ChatGPT-4's Performance in Identifying Radiological Anatomy in FRCR Part 1 Examination Questions
21
Zitationen
5
Autoren
2024
Jahr
Abstract
Despite its ability to correctly recognize the imaging modality, ChatGPT-4 has significant limitations in interpreting normal radiological anatomy. This indicates the necessity for enhanced training in normal anatomy to better interpret abnormal radiological images. Identifying the correct side of structures in radiological images also remains a challenge for ChatGPT-4.
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