Advancing large language models as patient education tools for inflammatory bowel disease

将大型语言模型作为炎症性肠病患者教育工具

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Abstract

This article evaluates the transformative potential of large language models (LLMs) as patient education tools for managing inflammatory bowel disease. The discussion highlights their ability to deliver nuanced and personalized information, addressing limitations in traditional educational materials. Key considerations include the necessity for domain-specific fine-tuning to enhance accuracy, the adoption of robust evaluation metrics beyond readability, and the integration of LLMs with clinical decision support systems to improve real-time patient education. Ethical and accessibility challenges, such as algorithmic bias, data privacy, and digital literacy, are also examined. Recommendations emphasize the importance of interdisciplinary collaboration to optimize LLM integration, ensuring equitable access and improved patient outcomes. By advancing LLM technology, healthcare can empower patients with accurate and personalized information, enhancing engagement and disease management.

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