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Efficiency and Quality of Generative AI–Assisted Radiograph Reporting
21
Zitationen
14
Autoren
2025
Jahr
Abstract
In this prospective cohort study of clinical use of a generative model for draft radiological reporting, model use was associated with improved radiologist documentation efficiency while maintaining clinical quality and demonstrated potential to detect studies containing a pneumothorax requiring immediate intervention. This study suggests the potential for radiologist and generative AI collaboration to improve clinical care delivery.
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