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Accuracy, readability, and understandability of large language models for prostate cancer information to the public
62
Zitationen
15
Autoren
2024
Jahr
Abstract
GPT shows promise for correct patient education for prostate cancer-related contents, but the technology is not designed for delivering patients information. Prompting the model to respond with accuracy, completeness, clarity and readability may enhance its utility when used for GPT-powered medical chatbots.
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