TL;DR
This study demonstrates that Large Language Models, especially GPT-4o, can effectively automate the recognition of vaccine adjuvant names from biomedical literature, significantly aiding cancer vaccine research.
Contribution
It introduces a novel application of LLMs for adjuvant name recognition, achieving high accuracy and surpassing previous methods in biomedical literature extraction tasks.
Findings
GPT-4o achieved 100% precision in adjuvant recognition.
GPT-4o outperformed Llama-3.2 in F1-score on both datasets.
Incorporating intervention context improved model performance.
Abstract
Motivation: An adjuvant is a chemical incorporated into vaccines that enhances their efficacy by improving the immune response. Identifying adjuvant names from cancer vaccine studies is essential for furthering research and enhancing immunotherapies. However, the manual curation from the constantly expanding biomedical literature poses significant challenges. This study explores the automated recognition of vaccine adjuvant names using Large Language Models (LLMs), specifically Generative Pretrained Transformers (GPT) and Large Language Model Meta AI (Llama). Methods: We utilized two datasets: 97 clinical trial records from AdjuvareDB and 290 abstracts annotated with the Vaccine Adjuvant Compendium (VAC). GPT-4o and Llama 3.2 were employed in zero-shot and few-shot learning paradigms with up to four examples per prompt. Prompts explicitly targeted adjuvant names, testing the impact of…
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Taxonomy
MethodsLLaMA
