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A comparative evaluation of large language models for simplifying prostate cancer pathology reports: ChatGPT and Gemini
0
Zitationen
10
Autoren
2026
Jahr
Abstract
LLMs adopt distinct trade-off strategies between simplifying pathology reports and preserving their structure and logic, influenced by prompt design and textual style. Their application shows potential to enhance patient comprehension and clinical communication. Future work should focus on domain-specific fine-tuning to ensure safe and reliable clinical integration.
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