Structuring medication signeturs as a language regression task: comparison of zero- and few-shot GPT with fine-tuned models.
Electronic health record textual sources such as medication signeturs (sigs) contain valuable information that is not always available in structured form. Commonly processed through manual annotation, this repetitive and time-consuming task could be fully automated using large language models (LLMs). While most sigs include simple instructions, some include complex patterns.
Author(s): Garcia-Agundez, Augusto, Kay, Julia L, Li, Jing, Gianfrancesco, Milena, Rai, Baljeet, Hu, Angela, Schmajuk, Gabriela, Yazdany, Jinoos
DOI: 10.1093/jamiaopen/ooae051