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Developing prompts from large language model for extracting clinical information from pathology and ultrasound reports in breast cancer
121
Zitationen
5
Autoren
2023
Jahr
Abstract
Developing and facilitating prompts for LLM to derive clinical factors was efficient to extract crucial information from huge medical records. This study demonstrated the potential of the application of natural language processing using LLM model in breast cancer patients. Prompts from the current study can be re-used for other research to collect clinical information.
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