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<scp>AI</scp>‐driven simplification of surgical reports in gynecologic oncology: A potential tool for patient education
3
Zitationen
7
Autoren
2025
Jahr
Abstract
Advanced language models like GPT-4 can transform unedited surgical reports to improve clarity about the procedure and its outcomes. It offers considerable promise for enhancing patient education. However, concerns about medical precision underscore the need for rigorous oversight to safely integrate AI into patient education. Over the medium term, AI-generated, simplified versions of these reports-and other medical records-could be effortlessly integrated into standard automated postoperative care and digital discharge systems.
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