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GPTON: Generative Pre-trained Transformers enhanced with Ontology Narration for accurate annotation of biological data
Published 12 Oct 2024 in q-bio.QM and cs.AI | (2410.10899v2)
Abstract: By leveraging GPT-4 for ontology narration, we developed GPTON to infuse structured knowledge into LLMs through verbalized ontology terms, achieving accurate text and ontology annotations for over 68% of gene sets in the top five predictions. Manual evaluations confirm GPTON's robustness, highlighting its potential to harness LLMs and structured knowledge to significantly advance biomedical research beyond gene set annotation.
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