SurgeryLLM: a retrieval-augmented generation large language model framework for surgical decision support and workflow enhancement

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Abstract

SurgeryLLM, a large language model framework using Retrieval Augmented Generation demonstrably incorporated domain-specific knowledge from current evidence-based surgical guidelines when presented with patient-specific data. The successful incorporation of guideline-based information represents a substantial step toward enabling greater surgeon efficiency, improving patient safety, and optimizing surgical outcomes.

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Ong, C. S., Obey, N. T., Zheng, Y., Cohan, A., & Schneider, E. B. (2024). SurgeryLLM: a retrieval-augmented generation large language model framework for surgical decision support and workflow enhancement. Npj Digital Medicine, 7(1). https://doi.org/10.1038/s41746-024-01391-3

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