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Using artificial intelligence to generate medical literature for urology patients: a comparison of three different large language models
17
Zitationen
5
Autoren
2024
Jahr
Abstract
While LLMs can generate PILs that may help reduce healthcare professional workload, generated content requires clinician input for accuracy and inclusion of health literacy aids, such as images. LLM-generated PILs were above the average reading level for adults, necessitating improvement in LLM algorithms and/or prompt design. How satisfied patients are to LLM-generated PILs remains to be evaluated.
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