Semantic Clinical Artificial Intelligence vs Native Large Language Model Performance on the USMLE

语义临床人工智能与原生大型语言模型在USMLE考试中的表现对比

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Abstract

IMPORTANCE: Large language models (LLMs) are being implemented in health care. Enhanced accuracy and methods to maintain accuracy over time are needed to maximize LLM benefits. OBJECTIVE: To evaluate whether LLM performance on the US Medical Licensing Examination (USMLE) can be improved by including formally represented semantic clinical knowledge. DESIGN, SETTING, AND PARTICIPANTS: This comparative effectiveness research study was conducted between June 2024 and February 2025 at the Department of Biomedical Informatics, Jacobs School of Medicine and Biomedical Sciences, University at Buffalo, Buffalo, New York, using sample questions from the USMLE Steps 1, 2, and 3. INTERVENTION: Semantic clinical artificial intelligence (SCAI) was developed to insert formally represented semantic clinical knowledge into LLMs using retrieval augmented generation (RAG). MAIN OUTCOMES AND MEASURES: The SCAI method was evaluated by comparing the performance of 3 Llama LLMs (13B, 70B, and 405B; Meta) with and without SCAI RAG on text-based questions from the USMLE Steps 1, 2, and 3. LLM accuracy for answering questions was determined by comparing the LLM output with the USMLE answer key. RESULTS: The LLMs were tested on 87 questions in the USMLE Step 1, 103 in Step 2, and 123 in Step 3. The 13B LLM enhanced by SCAI RAG was associated with significantly improved performance on Steps 1 and 3 but only met the 60% passing threshold on Step 3 (74 questions correct [60.2%]). The 70B and 405B LLMs passed all the USMLE steps with and without SCAI RAG. The SCAI RAG 70B model scored 80 questions (92.0%) correctly on Step 1, 82 (79.6%) on Step 2, and 112 (91.1%) on Step 3. The SCAI RAG 405B model scored 79 (90.8%) correctly on Step 1, 87 (84.5%) on Step 2, and 117 (95.1%) on Step 3. Significant improvements associated with SCAI RAG were found for the 13B model on Steps 1 and 3, the 70B model on Step 2, and the 405B parameter model on Step 3. The 70B model was significantly better than the 13B model, and the 405B model was not significantly better than the 70B model. CONCLUSIONS AND RELEVANCE: In this comparative effectiveness research study, SCAI RAG was associated with significantly improved scores on the USMLE Steps 1, 2, and 3. The 13B model passed Step 3 with RAG, and the 70B and 405B models passed and scored well on Steps 1, 2, and 3 with or without augmentation. New forms of reasoning by LLMs, like semantic reasoning, have potential to improve the accuracy of LLM performance on important medical questions. Improving LLM performance in health care with targeted, up-to-date clinical knowledge is an important step in LLM implementation and acceptance.

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